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Science Foundation for Climate, Weather and Environmental Prediction and Services in 21st Century Courtesy of NASA Earth Science Enterprise A Compendium of papers submitted for Publication in the Bulletin of the American Meteorological Society (AMS) WMO Research Department 1. An Earth-System Prediction Initiative for the 21st Century 2. Addressing the Complexity of the Earth System 3. Climate Prediction from Weeks to Decades in the 21st Century: Towards a New Generation of World Climate Research and Computing Facilities 4. A Unified Modeling Approach to Climate System Prediction 5. Toward A Seamless Process for the Prediction of Weather and Climate: the advancement of sub-seasonal to seasonal prediction 6. The Multi-scale Organization of Tropical Convection and its Interaction with the Global Circulation: Year of Tropical Convection (YOTC) An Earth-System Prediction Initiative for the 21st Century Melvyn Shapiro 1 , Jagadish Shukla2, Michel Béland3, John Church4, Kevin Trenberth5, Randall Dole6, Richard Anthes7, Brian Hoskins8, Guy Brasseur9, Mike Wallace10, Gordon McBean11, Antonio Busalacchi12, Ghassem Asrar13, David Rogers14, Gilbert Brunet15, Leonard Barrie16, David Parsons17, David Burridge18, Tetsuo Nakazawa19, Martin Miller20, Philippe Bougeault21, Zoltan Toth22, Gerald Meehl23, Mitch Moncrieff24, Hervé Le Treut25, Alberto Troccoli26, Tim Palmer27, Jochem Marotzke28, John Mitchell29, Adrian Simmons30, Brian Mills31, Øystein Hov32, Haraldur Olafsson33, Takeshi Enomoto34, Jim Caughey 35, Louis Uccellini36 and Arlene Lang37. Capsule: The foundation for an international initiative to accelerate advances in knowledge, prediction, use and value of weather, climate and Earth-system prediction information. 1 Cooperative Institute for Environmental Sciences, University of Colorado, Boulder CO, USA, Geophysical Institute, University of Bergen, Bergen, Norway, National Center for Atmospheric Research (NCAR), Boulder CO, USA; 2Professor, George Mason University (GMU), and President, Institute of Global Environment and Society (IGES), USA; 3President, WMO Commission on Atmospheric Sciences (CAS) at Environment Canada's Atmospheric Science and Technology Directorate, Montreal, Canada; 4 Centre for Australian Weather and Climate Research, a partnership between the Bureau of Meteorology and CSIRO, Hobart, SIRO, Australia; 5Chair, World Climate Research Progamme (WCRP) Observations and Assimilation Panel at the National Center for Atmospheric Research (NCAR), Boulder CO, USA; 6 NOAA Earth System Research Laboratory, Boulder CO, USA; 7President of the University Corporation for Atmospheric Research, Boulder CO, USA; 7Head, Dynamical Processes Group, Dept. of Meteorology, Univ. of Reading, UK; 9Director, Earth and Sun Systems Laboratory and Associate Director of NCAR, Boulder CO, USA; 10Professor, Dept. of Meteorology, Univ. of Washington, Seattle WA, USA; 11Professor, Institute for Catastrophic Loss Reduction at University of Western Ontario, London, Ontario, Canada; 12Chair, WCRP Joint Scientific Committee, Earth System Science Interdisciplinary Center (ESSIC), Univ. of Maryland USA; 13Director, WCRP, Geneva, Switzerland; 14 President, Health and Climate Foundation, Washington, D.C., USA; 15Chair, WMO-WWRP Joint Steering Committee and Research Director of Environment, Canada; 16Director, WMO-WWRP, Geneva; 17 Chief, WMO-WWRP, Geneva; 18 WMO, Geneva, Switzerland; 19Chair, Asian Regional Committee for THORPEX, Meteorological Research Institute, Japan Meteorological Agency, Japan; 20Chair, WMOCAS/WCRP Working Group on Numerical Experimentation (WGNE) at ECMWF, Reading, UK 21Head of Research, MeteoFrance, Toulouse, France ; 21NOAA/NWS/NCEP, Environmental Modeling Center, Camp Springs, MD, USA; 22Chair, GFS-TIGG Working Group, NOAA/NCEP Environmental Modeling Center, USA; 23NCAR, USA; 24Co-chair, Year Of Tropical Convection (YOTC), NCAR, Boulder CO, USA; 25Directeur du Laboratoire de Météorologie Dynamique, France; 26; Environmental Systems Science Centre, University of Reading, Reading, UK; 27Head Probability Forecasting and Diagnostics Division, ECMWF, UK; 28Director, Max Planck Institute for Meteorology, DE; 29Met. Office, UK; 30 Chair GCOS/WCRP Atmospheric Observation Panel for Climate and ECMWF; 31Adaptation and Impacts Research Division, Environment Canada; 32Director of Research, Norwegian Meteorological Institute, Oslo, Norway; 33University of Iceland and University of Bergen, Norway, 34Earth Simulator Center and, Japan Agency for Marine-Earth Science and Technology, Japan; 35Scientific Officer, THe Observing-system Research and Predictability Experiment (WWRP-THORPEX), Geneva; 36Director, NOAA/NWS/National Centers for Environmental Modeling, USA, 37; NCAR ,Boulder CO, USA. 1 1. Introduction We stand at the threshold of accelerating advances in the prediction of high-impact weather and climate, and the complex interaction between the physical-biologicalchemical Earth system 2 and global societies (NRC 2007, 2008). This opportunity stems from notable achievements in monitoring and predicting weather hazards, climate variability and change, and the use of this information. As examples, regional predictions on spatial scales of a few kilometers and time scales from minuets to days, provide timely and accurate warnings of tornados, flash-flood rainstorms, disruptive snow and ice storms, excessive river flows, coastal storm surges, hurricane track and intensity, and airquality emergencies. Global 5-day forecasts have an accuracy comparable to 2-day forecasts of 25 years ago (Fig. 1), with an increasing ability to identify the possibility of extreme local weather 7 to 10 days in advance. Seasonal forecasts provide useful information on the development of El Niño/La Niña and their influence on regional weather, such as shifts in the North Pacific storm track. Assessments and projections of global temperature, sea level, ice and precipitation over decades to centuries were critical in establishing human influences on climate change and provided the scientific underpinning for international action to reduce greenhouse gas and aerosol emissions; Meehl et al. 2007. Risk, impact, adaptation, mitigation and assessment models are increasingly important in exposing vulnerabilities and evaluating the outcomes of different decisions. These accomplishments are among the most significant scientific, technological and societal achievements of the 20th century. The necessity and opportunity to capitalize on these achievements was recognized by the World Meteorological Organization (WMO), World Climate Research Program (WCRP) and International Geosphere-Biosphere Programme (IGBP), whose representatives introduced the foundation for an Earth-system Prediction Initiative at the Group on Earth Observations (GEO) Summit, 2007, Cape Town, South Africa (Shapiro et al. 2007). The Initiative would provide the international framework for revolutionary advances in Earthsystem prediction and help managers of disaster response, public health and food security, water supply, energy, and environmental policy minimize the impacts of extreme weather and climate. This endeavor is as challenging as the International Space Station, Genome Project, and Hubble Telescope, with a high societal benefits-to-cost ratio. It will contribute to international programs for advancing observing systems and prediction, such as the Global Climate Observing System (GCOS), WCRP, World Weather Research Programme (WWRP), and hence to the Global Earth Observation System of Systems (GEOSS). It will build upon the International Council for Science (ICSU), International Ocean Commission (IOC), WMO, World Health Organization (WHO) and GEO, to coordinate the effort across the weather, climate, Earth-system, natural-hazards, and socioeconomic communities. 2 The Earth-system encompasses the atmosphere and its chemical composition, the oceans, land/sea-ice and other cryosphere components; the land-surface, including surface hydrology and wetlands, lakes and human activities. On short-time scales, it includes phenomena that result from the interaction between one or more components, such as ocean waves and storm surges. On longer time scales (e.g., climate), the terrestrial and ocean ecosystems, including the carbon and nitrogen cycles and slowly varying cryosphere components (e.g., the large continental ice sheets and permafrost) are also part of the Earth-system. 2 Fig. 1: Evolution of forecast skill for the extratropical northern and southern hemispheres, January 1980 to August 2008. Anomaly-correlation coefficients of 3, 5, 7 and 10-day ECMWF 500-mb height forecasts are plotted as 12-month running means. Shading shows differences in scores between hemispheres at the forecast ranges indicated (updated from Simmons and Hollingsworth 2002). This article introduces the rationale for this Initiative, while the companion papers in this issue by Brunet et al. 2009, Moncrieff et al. 2009, Shukla et al. 2009 and Nobre et al. 2009, present key research aspects and institutional perspectives. 2. Rationale Hurricane Katrina, the deadly 2003 European heat wave, the multi-decadal drought south of the Sahel and the unprecedented wildfires in Australia in 2009 attest to the vulnerability of modern society and the environment to adverse weather and climate. In fact, 75 percent of natural disasters are triggered by extreme weather and climate 3 . Effective mitigation and adaptation to this vulnerability requires accurate prediction at global, regional and local scales. Today’s observation and prediction systems address specific needs of environmentally sensitive sectors and resources, including energy, water, human health, transportation, agriculture, fisheries, leisure, ecosystems, biodiversity, and national security. Probabilistic predictions provide quantitative measures of the likelihood of occurrence and severity of different outcomes, including potentially catastrophic extremes. These capabilities yield substantial benefits, because 3 http://www.unisdr.org/eng/media-room/facts-sheets/2008-disasters-in-numbers-ISDR-CRED.pdf 3 they enable rational decisions that reduce human, economic and environmental losses, and also maximize economic opportunities. The opportunities include selection of optimal trade routes, energy allocation, crop selection, and pollutant emission mitigation strategies. These achievements and opportunities are the culmination of investments by governments, international agencies and other stakeholders in underpinning science and technology and their transition to operational services. These investments greatly expanded our capability to observe the atmosphere, oceans, land and cryosphere, including bio-geochemical properties. High-performance computers, global communications, and improvements in numerical methods, have been crucial to advances in predictions and applications. Investments in research have advanced knowledge of atmospheric and oceanic predictability and provided insight into the requirements for addressing the influence of climate variability and change on regional high-impact weather. Based on the achievements, we foresee the potential to respond more effectively and realize even greater benefit from these and future investments (NRC 2007). The vulnerability of society and the environment to regional weather extremes within a changing climate and projections that these extremes will increase in coming decades (Meehl et al. 2007; CCSP, 2008) increases the urgency for advancing mitigation and adaptation capabilities. We must better inform climate-change mitigation policies, in particular, carbon sequestration and its interaction with other biogeochemical cycles like reactive nitrogen. This requires introduction and more accurate representation of key processes in climate models, such as the Earth/ocean methane release and glacial and seaice melting. The present suites of climate models are limited in their capability to provide the required level of detailed regional information. It is also imperative that we reduce the uncertainty of climate-change predictions and scenarios. There is a corresponding necessity to advance predictive skill and diversify forecast applications on hourly-toseasonal time scales. Accelerated progress will optimize policy and risk management decisions valued at billions of dollars. The potential to accelerate further advances depends critically on cooperation across many nations, international organizations and scientific disciplines. If we are to address these fundamental challenges, it is essential to bridge individual disciplinary boundaries and move toward a more comprehensive Earth-system approach, with predictive capability that considers interactions between different system components and across time scales. The connectivity between climate, weather, landsurface properties, biochemical processes, human health and ecosystems is exemplified by the regional-to-global impact of Saharan sand and dust storms; Fig. 2. These storms, and those of the other great deserts, e.g., the Gobi of China, are a major source of tropospheric aerosols that represent a significant component in the atmospheric regionalto-global radiative balance, thereby affecting climate e.g., Kaufman, et al. 2002; Li, et al. 2004. Variations in seasonal to sub-seasonal climate circulations, such as the negative phase of the North Atlantic Oscillation (NAO), deflect the North Atlantic storm track southward into the Mediterranean and North Africa, where individual cyclones become catalysts for massive sand and dust events, such in Fig. 2. Cyclone interactions with mountains of North Africa contribute to localized enhancements of the desert winds through mountain waves over the Atlas and Haggar ranges, and enhanced surface wind 4 around the smaller Tibesti and Ajir mountains; Todd, et al, 2005. In addition, the large amplitude diurnal temperature cycle over the Sahara modulates the depth of the planetary boundary layer and hence the diurnal concentration of sand and dust; Schepanski, et al. 2007. When transported westward over the Atlantic, Saharan dust may affect development of tropical cyclones (Evan et al 2006) and replenish nutrients in the soils of the Amazon, which is critical to the sustainability of the rain forest. Northward transport is a major source of aerosols to Europe impacting visibility, health and local weather, e.g., temperature and precipitation. Saharan dust provides nutrients to ocean biota, whose concentrations modulate the opacity of the upper ocean and its radiative characteristics and the oceanic uptake of carbon dioxide, providing another feedback to the climate system. Saharan aerosols are under investigation as major contributors to central African meningitis epidemics that can affect 250,000 people each year. In short, this is not simply a weather problem or climate problem, or an atmosphere, ocean, land surface, chemistry or biology problem. It is all of these and more. Comprehensive understanding of such events and their consequences requires consideration of the interactions among the different Earth-system components, including interactions with and implications for humankind. MOROCCO MAURITANIA MALI Fig. 2: MODIS satellite view of an extreme Saharan sand and dust event on 6 March 2004. The possibility of "climate surprises", i.e., unexpected rapid climate changes outside of current climate models projections, presents another important example of the necessity 5 for developing a comprehensive Earth-system approach. Anticipating rapid climate change is a major scientific challenge and a central concern for decision makers, with potentially enormous implications for society and the environment. Possible triggers for rapid changes include relatively fast processes in the Earth system, such as changes in biology through enhanced methane release associated with melting permafrost; changes in sea ice extent, with the annual minimum Arctic sea-ice extent having declined approximately 30 percent over the last 29 years and changes in hydrological processes; NRC 2002 and CCSP 2008. Rapid changes typically involve feedbacks among different components of the Earth system, necessitating more comprehensive and integrative approaches to address this challenge. Reducing the likelihood of future climate surprises requires improved observations and monitoring of Earth-system components and their interactions, advances in understanding the causes for rapid changes, and substantial improvements in modeling, including incorporation of processes not present in current generation climate models; CCSP 2008. Because of the rapid nature of component interactions, joint studies of weather, climate and earth-system phenomena are very informative as to possible responses and feedbacks among the different system components, as in the case of Saharan dust storms. 3. A holistic approach Earth-system sciences, mitigation and adaptation strategies require a suite of diagnostic and prediction models integrated over all spatial and temporal scales; Dole 2008, Palmer et al. 2008, Brunet et al. 2009, Hurrell et al. 2009 and Meehl et al. 2009. This holistic approach is spatially and temporally continuous, spanning highly-localized cloud systems to global circulations, from minutes to millennia; linking mesoscale weather life cycles and climate variability and change. It is integrated across the disciplines of physics, mathematics, chemistry, social and decision sciences, and their Earth-system elements. It requires coordination and support across academic institutions, government research and service agencies, private enterprise providers, hazard risk-reduction and adaptation government agencies, and humanitarian organizations. It bridges political boundaries from municipalities to nations to the world. Within this framework, socioeconomic and environmental requirements play a leading role in the design and implementation of a new generation of science-based global to regional early warning and planning systems. In order for weather, climate and Earth-system information to have timely and beneficial impacts, it must have the following elements: content with accuracy and precision in space and time, and relevance of product information to the users, including a quantified estimate of its accuracy, and probability of occurrence of particular events; distribution of products on spatial and temporal scales sufficient for action; communication with product formats that users can comprehend and interpret; integration of information into user decision-support systems; recognition by users that the information has value; and response to the information. These elements are links along a chain of action. If any link is weak or broken, then the impact and the value of the information will be diminished. Socioeconomic research and its applications can identify ways to strengthen these links 6 and lead to the development of new methods for enhancing the use and value of weather, climate, Earth-system, and socioeconomic information. 4. Core elements The Earth-system Prediction Initiative will provide the basis for more skilful predictions of weather, climate and Earth-system processes. This includes their interactions, past, present and future variability and change, and known confidence. It will involve advanced observing capabilities and data assimilation, diagnostic and prediction models, and address ways in which predictions inform and affect decision-making frameworks. The research and tools required to achieve these objectives will include: Climate and weather observations to monitor the properties and evolution of the Earth system, as well as changes in forcing of the system. The observations must satisfy the climate principles promoted by GCOS for the design/implementation of observations as an element of GEOSS. They must be anchored with benchmark measurements and strive for accuracy, noting that continuity is a primary requirement for reliable detection of global-to-regional anomalies. This requires stemming the ongoing decline in surface and upper-air global observing networks and the development and implementation of a new generation of in-situ and space-based systems to meet the ever increasing observational demands of the prediction and early -warning systems of today and in future generations. A comprehensive coordinated observing system is the backbone of this Earth information system; Trenberth 2008. High-resolution global and regional data-assimilation and analysis systems that integrate observations of the atmosphere, ocean, land and ice from space-based, aircraft, and ground-based observing platforms across the full suite of Earth system modeling components. The Global Monitoring for Environmental and Security (GMES) initiative (Hollingsworth et al. 2008), Fig. 3, exemplifies a step in this direction. This process provides the basis for the analysis and reanalysis (as systems improve and more historical data are recovered) of the long-term observational record that is required for monitoring and assessing past events and change, including their socioeconomic impacts. It provides the basis for the analysis of present conditions for initializing new predictions and for verifying earlier predictions. An important aspect linking all these core elements is the performance of Observing System Simulation Experiments (OSSEs) to assess the role and value of new and future observations and measurement platforms in support of Earthsystem monitoring and prediction. 7 Fig. 3: Air pollutant forecast for Europe prepared by the German Aerospace Research Establishment-German Remote Sensing Data Center (DLR-DFD) as part of the GMES Service Element PROMOTE funded by the European Space Agency. It shows the 72h ensemble forecast for surface-level particulate matter (PM10) for 7 October, 2007. Advanced prediction models that capture the complex interaction among the atmosphere, oceans, and other components of the Earth system and the human dimension. These models must have sufficient resolution to faithfully represent the multi-scale processes of the Earth-system appropriate for the spatial scale of the applications (Figs. 4, 5); see Brunet et al. 2009 and Shukla et al. 2009; Nobre et al. 2009, this issue. These models will incorporate increasingly diverse components of the Earth system. For example, the next IPCC assessment will include, for the first time, models with interactive carbon cycles. To address challenges like the potential for rapid changes in sea level beyond current IPCC projections, future models will incorporate dynamical ice sheet components to better assess the potential for accelerated ice loss. Human interactions with the system will be modeled as well; Nobre, et al. 2009, this issue. Addressing needs for increased model resolution and complexity will require substantial increases in computing capacity beyond current generation global NWP and/or IPCC models, as discussed in more detail below. 8 Fig. 4: Left panel, global cloud distribution in a 320-km coarse-resolution climate simulation experiment. Right panel, same, but for a 20-km resolution simulation with the same model, comparable in resolution to the most advanced operational weather forecast models of today (Moncrieff et al. 2009). The proposed Initiative will provide high-resolution climate models that capture the properties of regional high-impact weather events, such as tropical cyclones; heat waves; sand and dust storms, associated within multi-decadal climate projections of climate variability and change (Courtesy of Shintaro Karahawa, Earth Simulator Center/JAMSTEC). Fig. 5: The capability of high-resolution regional forecast models to predict the intensity of high-impact weather events, such as the 29 August 2005 landfall of hurricane Katrina, over New Orleans, Louisiana, USA, (Davis et al. 2008). NCAR/WRF simulation of Hurricane Katrina precipitation radar reflectivity computed 3-days before landfall (left), compared with radar observations of the actual landfall (right). Within the next decade, global data-assimilation and deterministic and ensemble medium-range to seasonal prediction systems will advance to such high-resolution capabilities. 9 It is essential that numerical experimentation with high-resolution weather, climate and complex Earth-system models, with established fidelity and skill, provide scientificallybased assessments of the global-to-regional impact of engineering hypotheses (Fig. 6), for controlling climate variability and change prior to their design and implementation, as discussed in Keith 2001; Angel 2006; Crutzen 2006; Latham et al. 2008; Robock 2008 . Fig. 6: Schematic representation of various climate-engineering proposals, from Keith 2001. Attribution and diagnostic studies to determine causes of past and current conditions including extreme events, such as severe droughts, heat waves, and cyclone frequency, intensity and tracks. Distinguishing between natural variability and human-forced longterm trends is vital to informing both adaptation and mitigation decisions. Establishing attribution requires good estimates of different process forcing, including ensemble model experiments of sufficient size to determine the most likely cause or causes for features of interest at a specified level of confidence. Attribution studies address the predictability of the system, the odds of the observed anomalies and extremes being realized, and the confidence that can be placed in the predictions. This element includes performance assessment and analysis of detailed numerical simulations of weather, climate and Earth-system processes conducted under the WWRP, WCRP-THORPEX, WGNE, GAW, ICSU, IOC and WMO-sponsored programs. Modern information and decision systems that provide timely, user-friendly, issuetargeted production of weather, ocean, climate and Earth-system information crucial in assisting decision-making processes for risk reduction and adapting to weather and climate events, developing mitigation policies and achieving sustainable development. This necessitates engagement of the users of environmental information to assess and incorporate their requirements, see, e.g., ICSU 2008. Heightened multi-disciplinary collaborations and applications that encourage scientists in natural sciences to interact with colleagues from health, economic, water, agriculture, energy, food, and policy disciplines. Recent examples are the Meningitis 10 Environmental Risk Information Technologies (MERIT) project4 and the UCAR Africa Initiative 5 on tropical health/climate/weather linkages. Collaborations such as the WCRP and WWRP-THORPEX Year of Tropical Convection (YOTC) are engaging the weather and climate communities to improve the prediction of the multi-scale organization of tropical precipitating cloud systems (Fig. 7), see Brunet, et al. 2009 and Moncrieff et al. 2009, this issue. The 2007-2008 International Polar Year (IPY) 6 included a multidisciplinary approach to marine biology issues, ocean and atmospheric physics, chemistry, and social sciences. These recent collaborations provide a template for future efforts. Data and forecast archives to provide an internationally-coordinated Earth-information system (see NRC 2003) to store and manage data and enable access to global-to-regional operational and historical analyses and forecasts of weather, air quality, climate, other Earth-system components and socioeconomic impacts, commensurate with the highest resolution achievable, given near-term observational and computational constraints. The archive should facilitate advanced analysis and visualizations of observed and predicted events, including assessment of the effectiveness of mitigation and adaptation actions. Fig. 7: Multi-scale tropical convective organization associated with a Madden-Julian Oscillation (MJO) over the Indian Ocean on 2 May 2002 (left panel). By 9 May 2002 (right panel), the MJO propagated eastwards over Indonesia and spawned twin tropical cyclones in its wake, leading to flooding rains and hurricane-force winds over northern Madagascar, and heavy precipitation over Yemen. The twin tropical cyclones illustrate high-impact organised weather events directly associated with large-scale convective organisation and equatorial waves (see, Moncrieff et al. 2009, this issue). High-performance computing (HPC) is crucial to accelerate advances in prediction models and their socioeconomic applications. These models are links in a chain, 4 http://www.hc-foundation.org http://www.africa.ucar.edu/index.html 6 http://www.ipy.org/ 5 11 involving access to billions of time-dependent observations that fuel data-assimilation systems, which in turn provide the initial conditions to a series of prediction and projection models. The scope ranges from minutes to hours for severe weather events, to decades and centuries for climate change scenarios and ecosystem impacts. Advanced HPC will facilitate high-resolution ensemble prediction systems that include many hundreds of possible predictions and projections. These models will incorporate more realistic processes and a high degree of Earth-system complexity, including two-way interactions between society and predicted responses. This requires dedicated facilities with sustained speeds well beyond that of the most advanced computers of today, but which are achievable within the next 10-20 years, see Shukla et al. 2009, this issue. Realizing the full research and operational benefits of HPC will require advanced data processing and visualization methods, user-friendly high-speed and broad-bandwidth communication and common data formats. It will include training of scientists in the use of advanced computer systems and integrated data-distribution systems that facilitate access to most information in near real time. It will also require the development of advanced numerical methods and software systems to enable modelling systems to fully exploit the capacity of future generations of supercomputers. 5. Deliverables The proposed Earth-system Prediction Initiative will: • Provide improved monitoring and projections of multi-decadal, global-toregional climate change, including, statistics of projected changes in extreme regional weather events and the full range of socioeconomic and environmental outcomes, including assumptions, confidence and uncertainty. This will provide a science-based foundation for long-term adaptation and mitigation strategies and sustainable development of global societies. • Accelerate advances short-term weather forecasts, and predictions of seasonal through inter-annual regional high-impact weather, such as the frequency, intensity and tracks winter storms and tropical cyclones, and the onset and cessation of regional heat and cold waves, droughts and floods. This will contribute to mitigation and adaptation strategies required for management of energy, water, food production, health, the economy, emergency response and the support of other environmental and socioeconomic strategic planning. It places a high priority on early-warning systems to reduce vulnerability to famine, water shortage, pestilence and disease in developing nations and promote social and economic development. • Assess the responses and possible unintended consequences of climateengineering hypotheses for controlling climate variability and change through experimentation with high-resolution weather, climate and complex Earthsystem models. 12 • Contribute to the establishment and further development of emerging national and international climate services. 6. The Way Forward In order to succeed, the Earth System Prediction Initiative requires: Interdisciplinary research and applications: This demands intellectual respect across the scientific disciplines; collaboration between those who excel in their own field; joint proposal development guided by multi-agency and multi-national environmental and socioeconomic priorities; long term commitments from scientists, supporting agencies and stakeholders. It will benefit from the establishment of national and international research centers (see Shukla et al. 2009b, this issue) with access to sufficient computing capability, and scientific and technical resources to develop and implement research objectives on the scale envisioned, including drawing upon the broad expertise in universities, private industry, governments and other research centers. Excitement and challenge: The endeavour must not only motivate the scientific community, but communicate the importance and the character of its multi-generational impacts and benefits. Most importantly, it must capture the hearts and inspire the minds of young scientists. Global and regional engagement: The nature and complexity of the scientific and socioeconomic challenges, and the resources, intellect, technology, and infrastructure requires partnerships for the successful development and implementation of the Initiative. In this context, the success of the Global Atmospheric Research Program, GARP ( Döös 2004; Uppala et al. 2004) provides a template for the successful outcome of global engagement. GARP was the catalyst for great advances in knowledge, global observations and prediction of the coupled atmosphere-ocean circulations in the second half of the 20th century. The ECMWF pooled scientific and management capabilities of the Europe to advance medium-range deterministic and probabilistic (ensemble) forecast skill, and the fundamentals of data assimilation, to a level of success that would not have been achievable if undertaken by a single nation. The Initiative requires champions to inform governments and other stakeholders of the urgency of supporting the effort, recognizing that such enterprises take years to succeed. In this vein, international organizations and agencies are currently coordinating activities that embrace components of the proposed Initiative. These activities include: • GEO as an international coordination framework across disciplines, and observational, prediction, and information systems, that will advocate for advancing climate, weather, water and Earth-system prediction. GEO aims to implement the GEO 2009-2011 Work Plan, and several tasks relevant to this 13 Initiative, e.g. Task CL-09-01: Environmental Information for Decisionmaking, Risk Management and Adaptation 7 . • The World Meteorological Organization, sponsor of the World Weather Research Programme (WWRP), the Global Atmosphere Watch (GAW) air chemistry research programme and co-sponsor of GCOS and the World Climate Research Programme (WCRP) are implementing the concepts outlined in this article. In June 2008, the Executive Council of WMO commissioned a Task Team On Research Aspects Of An Enhanced Climate, Weather, Water And Environmental Prediction Framework 8 to prepare a strategy focusing on strengthening prediction research and related scientific assessments in support of enhanced climate, weather, water and environmental services in the next decade for consideration by the National Hydrological and Meteorological Services and their research partners. The WWRP and WCRP joint scientific committees are coordinating these recommendations linking global weather and climate research. • The engagement of ICSU through its co-sponsorship of GCOS and WCRP and its academic constituency. 7. The Grand Challenge The proposed Initiative will require unprecedented international collaboration and good will, making the global scope of the problem inescapable. All nations stand to benefit from its success. As nations, we have collaborated to advance global observing systems, weather forecasting, climate prediction, communication networks, and emergency preparedness and response. We must now extend this collaboration to embrace the full Earth-system and the next frontier of socioeconomic and environmental applications of our science. Our community and its supporting organizations are poised for the discoveries ahead, and the opportunity to make its knowledge available to users and decision makers. This is our grand challenge. Addressing this challenge will provide deliverables that are at the forefront of meeting the needs of global societies and the destiny of our planet. 7 8 http://www.earthobservations.org/documents.shtml http://www.wmo.int/ecrtt 14 8. References Angel, R., 2006: Feasibility of cooling the earth with a cloud of small spacecraft near the inner La15 Grange-point (l1), Proc. Natl. Acad. Sci., 103, 17184–17189. Crutzen, P. 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Appendix 1: Acronyms CAS: Commission for Atmospheric Science CIRES: Co-operative Institute for Research in Environmental Science CliC: Climate and the Cryosphere project of WCRP CLIVAR, Climate Variability and Predictability project of WCRP COPES: Coordinated Observation and Prediction of the Earth System ECMWF: European Centre for Medium-range Weather Forecasts GAW: Global Atmospheric Watch GCOS: Global Climate Observing System GEO: Group on Earth Observations GEOSS: Global Earth Observation System of Systems GEWEX: Global Energy and Water cycle Experiment project of the WCRP GMES: Global Monitoring for Environment and Security HPC: High Performance Computing ICSU: International Council for Science IGBP: International Geosphere-Biosphere Programme ILEAPS: Integrated Land Ecosystem-Atmosphere Processes Study IOC: International Organizing Committee IPCC: Intergovernmental Panel on Climate Change IPY: International Polar Year JAMSTEC: Japan Agency for Marine-Earth Science and Technology MERIT: Meningitis Environmental Risk Information Technologies NCAR: National Center for Atmosphere Research NCEP: National Centers for Environmental Prediction NHMS: National Hydrological and Meteorological Service NOAA: National Oceanographic and Atmospheric Administration NRC: National Research Council NWP: Numerical Weather Prediction OSSEs: Observing System Simulation Experiments PROMOTE: PROtocol MOniToring for the GMES Service Element 17 SOLAS: Surface Ocean-Lower Atmospheric Study SPARC: Stratospheric Processes And their Role in Climate project of WCRP THORPEX: THe Observing-system, Research, and Predictability EXperiment UCAR: University Corporation for Atmospheric Research WCRP: World Climate Research Programme WGNE: Working Group on Numerical Experimentation WHO: World Health Organization WMO: World Meteorological Organization WWRP: World Weather Research Programme WRF: Weather Research and Forecast model YOTC: Year of Tropical Convection 18 Addressing the Complexity of the Earth System Carlos A. Nobre1, Guy P. Brasseur2, Melvyn A. Shapiro3, Myanna Lahsen4, Gilbert Brunet5, Antonio J. Busalacchi6, Kathy Hibbard7, Sybil Seitzinger8, Kevin Noone9, and Jean P. B. Ometto4 1 National Institute for Space Research (INPE), Brazil; 2National Center for Atmospheric Research (NCAR), Boulder, CO, USA; 3NOAA-CIRES and NCAR, Boulder, CO, USA and Geophysical Institute, University of Bergen, Norway; 4National Institute for Space Research (INPE), Brazil; 5Meteorological Research Division of Environment Canada, Montreal, Canada; 6Earth System Science Interdisciplinary Center, University of Maryland, USA; 7IGBP/Analysis, Integration and Modeling of the Earth System (AIMES) Office, Boulder, CO, USA; 8International Geosphere-Biosphere Programme (IGBP), Stockholm, Sweden; 9University of Stockholm, Sweden. Submitted to the Bulletin of the American Meteorological Society - BAMS August 2009 Capsule: A prediction system that integrates physical, biogeochemical and societal processes in a unified Earth system framework and aspires to account for interactions between weather, climate, biogeochemistry and society. Abstract This paper addresses the role of the Earth-system biosphere and highlights the complex: interactions between the biosphere and the atmosphere in the Amazon Basin, and the impacts of changes in nitrogen cycling, ocean chemistry, and land use. It introduces three important requirements for accelerating the development and use of Earth system information. The first is to develop Earth-system analysis and prediction models that account for physical, chemical and biological processes, and their interactions in the coupled atmosphere-ocean-land-ice system. The development of these models requires partnerships between academia, national research centers, and operational prediction facilities, and will build upon the accomplishments in weather and climate prediction systems. They will highlight the regional aspects of global environmental change, and include modules for water resources, agriculture, forestry, energy, air quality, health, etc. The second requirement is to model interactions between humans and the weatherclimate-biogeochemical system. The will introduce novel methodologies that account for societal drivers, impacts and feedbacks. This is a challenging endeavor requiring creative solutions and some compromises because human behavior cannot yet be fully represented within the framework of present-day physical prediction systems. 1. Introduction It is increasingly evident that the consequences of human activities have interfered with the natural forces regulating the Earth system, potentially endangering the system’s longterm sustainability. There is evidence that these activities have altered atmospheric composition, climate, and terrestrial, coastal and marine ecosystems, and are responsible for increased emissions of greenhouse gases and aerosols, as well as, e.g., land-use changes and the detrimental impacts of nitrogen-fertilizer production and its applications. There is a risk that human influences on natural processes will exceed the limits for human and environmental security. Species and ecosystems are threatened by habitat loss, over-harvesting, air, water and soil pollution and climate change. In some cases, the interactions of species and ecosystems with weather, water and climate systems further aggravate the effects. Immediate and concerted actions are required to mitigate and adapt to recent and anticipated changes. Humans benefited from intervening in the natural evolution of the Earth system. These interventions include energy production, industrialization and urbanization, water irrigation, food production, health improvement, etc. Many of these benefits have been unequally distributed amongst human societies and some have come at considerable cost to the environment and humans, e.g., those associated with coal strip mining, deforestation, and loss of air and water quality. Not all of these costs are fully recognized within the political and economic frameworks that guide development decisions, including how these compounding costs will burden future generations. Estimates of the value of the services that ecosystems provide and recognition that these services have no substitutes suggest the need for identification and pursuit of more robust and sustainable development pathways. Sustainable development requires adapting to changing conditions without compromising the wellbeing of current and future generations. Earth-system science assesses and seeks to predict the natural and human-driven processes, including their interactions on the evolution and habitability of the planet. Its goal is to develop and deliver knowledge to guide effective responses to global and regional hazards and changes. This requires recognizing that the Earth system is interactive, involving its atmosphere, oceans, ice, land, biogeochemical, and human components, and that the Earth system can be advertently and inadvertently perturbed by human activities, with both positive and negative consequences. It is essential to accelerate the development and implementation of advanced global-to-regional monitoring and prediction systems that provide quantitative information for effective mitigation of and adaptation to global environmental change. As noted in Shapiro et al. (2010), effectively predicting the evolution of the full Earth system in a way that embraces the next frontier of socio-economic and environmental applications demands international commitment and coordination. This paper proposes the development of a prediction system that integrates physical, biogeochemical and societal processes in a unified Earth system framework. Section 2 introduces the role of the biosphere. Section 3 discusses the development of Earth-system prediction models. Section 4 presents future directions for accounting for the complexity of the Earth system in sufficient detail and yielding useful projections and predictions of its future states, on the basis of a range of different scenarios and assumptions. 2. The Role of the Biosphere The biosphere is the “life zone” of the Earth system. It embraces all living things, including their two-way interactions with the geophysical and biological elements within the lithosphere (solid Earth), the hydrosphere and the atmosphere. Until recently, the biosphere was primarily studied within the context of geophysical influences, with lesser attention to the feedbacks of biospheric processes on weather and climate. There exist many active biogeochemical feedback systems within the Earth system, several of which exhibit highly nonlinear behavior. Abrupt changes can be triggered by both natural and human activities. There can be “tipping points” of the Earth system that society may not want to transgress (Steffen, et al., 2003; Lenton et al., 2008; Rockström et al., 2009). Examples of planetary-to-regional interactions linking human activities, ecosystems, biogeochemical cycles and the physical weather/climate system include: Biosphere-Atmosphere Interactions in the Amazon Basin: Modeling experiments suggest that there may exist an vegetation-climate bi-stability in the Amazon basin in which two stable states emerge: a state dominated by tropical forests and a second state subsuming a mix of tropical forests and open savannas (Oyama and Nobre 2003 and Salazar, et al. 2007). This finding is consistent with paleo-climatic evidence of savanna replacing parts of the tropical forest in the Holocene (Mayle and Power, 2008). The current energy and water balance within the Amazon basin is driven by rainforest vegetation albedo and evapotranspiration. There is the potential that external forcing by global climate variability and change or by land cover change (deforestation) (Sampaio et al., 2007) could transition the stable state of forests into the stable state of forests and savannas (Nobre and Borma, 2009), resulting in a radically altered energy balance of the region. Surface energy and hydrology balances modulate the strength and location of organized convective cloud systems over the Amazon rainforest, which in turn modulate the strength and location of the Inter-Tropical Convergence Zone (ITCZ). The associated changes in the tropical convective heating and momentum flux can alter the intensity and location of the northern and southern hemispheric subtropical jet stream, potentially affecting sub-tropical and mid-latitude weather patterns. Model simulations show that anthropogenic changes in the Amazon basin biosphere, e.g., deforestation, affect surface temperature and precipitation as far away as North America, the African continent, and the Himalayan region, that in turn influence the African and Asian monsoon circulations (Nobre et al., 1991; Gedney and Valdes, 2000; Werth and Avissar, 2002). In this way, changes in one region can reverberate throughout the entire Earth system. Changes in Nutrient (Nitrogen) Cycling: As recently as the 1960s, nitrogen was primarily controlled by natural processes, and biological N2-fixation in supported up to 2 billion people on Earth.. Today, anthropogenically produced reactive nitrogen, i.e., industrial N2-fixation for fertilizer production, biological N2-fixation associated with leguminous crops and NOx emissions from fossil fuel combustion exceeds natural sources to terrestrial ecosystems (Galloway et al. 2008). Anthropogenic reactive nitrogen has ledto massive increases in food production. The mobility of nitrogen compounds can also produce unanticipated and detrimental consequences substantial distances from the original emission location, at several geographical scales. Nitrogen compounds travel through the Earth’s atmosphere and aquatic systems, and can be transported by humans in food and animal feed by international commerce. The exponential increase in anthropogenic nitrogen is a significant factor in climate change, through direct effects of aerosol-N, NOx and N2O on climate and through linkages between the N and C cycles. Furthermore, excess N contributes to loss of terrestrial biodiversity, and causes a variety of pollution problems, including increasing surface-level ozone and eutrophication and related effects, in freshwater- and marine ecosystems, including anoxic “dead zones” in coastal marine systems. Atmospheric transport of anthropogenic nitrogen accounts for approximately one third of the open ocean’s external (non-recycled) nitrogen supply and up to three percent of the annual new marine biological production (Duce et al. 2008). By contrast, the shortage of nitrogenbased fertilizer in many developing countries has contributed to food insecurity and continuing degradation of land fertility (Vitouseck et al, 2009). It is a major priority to optimize the use of nitrogen to promote human sustainability, while minimizing its harmful environmental, including climate, impacts. Earth system models need to incorporate the multiplicity of effects of disturbances in the nitrogen cycle at regional and global scales on land, atmosphere, and marine processes, including the associated feedbacks between the latter. This includes the coupling of N, C and other elemental cycles in global climate models. Changes in Ocean Biosphere-Atmosphere Interactions: Physical and biological processes in the oceans have important feedbacks on climate and CO2 fluxes globally. For example, the amplitude and phasing of the El Niño-Southern Oscillation (ENSO) from year to year in the equatorial Pacific Ocean affects seasonal climate, including rainfall and temperature, and terrestrial ecosystem CO2 fluxes in many areas of the world. El Niño episodes lead to less precipitation and higher temperatures in northern Brazil and equatorial Africa resulting in suppression of vegetation and enhanced soil decomposition thus increasing CO2 release to the atmosphere (Qian et al. 2008). Such changes in temperature and precipitation related to ENSO have societal impacts on agricultural production, water availability, and energy demand, among others, which affect terrestrial CO2 fluxes. Biological processes in the oceans affect climate through the production of volatile organic compounds e.g., dimethyl sulfide and isoprene, which are oxidized in the atmosphere forming secondary organic aerosols, which in turn modify the chemical composition and size distribution of marine cloud condensation nuclei, thus affecting cloudiness and decreasing the radiative flux to the Earth’s surface (Charlson et al. 1987; Meskhidze and Nenes 2006). As noted by Shapiro et al. 2009, the nutrient fertilization of the ocean by sand and dust mobilized by synoptic and mesoscale weather systems over the Sahara, Gobi and Australian deserts, has a dramatic influence on the ocean biology, which feeds back into ocean radiative and carbon cycle processes. The oceans provide an extremely valuable function by removing CO2 from the atmosphere. The oceans removes approximately 25% of the atmospheric carbon dioxide (CO2) released by human through dissolution of CO2 into sea water and the uptake of carbon by marine organisms. However, when CO2 dissolves in the oceans, it increases the acidity (decreases pH) of the surface water, which has a detrimental effect on some marine organisms. If the pH decreases sufficiently, the calcium carbonate produced by some marine organisms to make their solid shells (aragonite, a meta-stable form of calcium carbonate) becomes soluble. Through this process, parts of the southern ocean could become corrosive to aragonite by as early as 2050-2060 (Orr, et al., 2005), leading to substantial changes in ecosystem composition and dynamics. Ocean acidification threatens the health of coral reefs, as well as the bio-diverse and very important ecosystems associated with them (Guinotte et al., 2003). Many other marine organisms (e.g., foraminifera, pteropods) that form aragonite could be severely impacted, presumably with effects up the food chain, leading to negative consequences for humans dependent on fish and marine products as a primary source of protein. Changes in land use and land cover: For thousands of years, humans have modified land for food, water, habitat and the pursuit of happiness (Redman 1999; Thomas 1956). Current rates, extent, and intensity of land use and land cover changes are driving unprecedented changes in ecosystems and environmental processes at local, regional and global scales (Turner et al., 2007). Recent widespread human transformation of once highly diverse natural ecosystems into relatively species-poor managed ecosystems places great pressure on environments, potentially altering ecological functions and life support services that are vital to the well-being of human societies (Steffen et al., 2004). Reductions in biodiversity can alter both the magnitude and stability of ecosystem processes and human livelihoods (Constanza et al., 2007). Processes that influence plant productivity, soil moisture and fertility, water quality, atmospheric composition and many other local and global environmental conditions become forcings and responses to weather, and climate change that ultimately affect human welfare and the health of the planet (Steffen et al., 2004). 3. Earth-System Prediction Models Earth-System Models (ESM) are being developed at different levels of complexity in order to advance knowledge of mechanisms and their interactions that determine the evolution of the Earth system at the global and regional scales. These models are testbeds for simulations of the coupled natural-human system to address issues beyond physical weather and climate systems. They provide a predictive capability for, e.g., marine and terrestrial ecosystems, surface hydrology, the needs of different socioeconomic sectors, such as agriculture, industry, energy, health, etc. ESMs are also suited to assess the value of observations within a predictive context through data assimilation approaches applied to the coupled Earth System. They can identify and optimize the observational systems required for sustained monitoring and improved prediction from days to decades. A key challenge is the incorporation of human interactions within for next-generation ESMs to provide the coupling between physical weather/climate models, impact models and integrated assessment models. Figure 1 is a conceptualization of the diverse elements of a unified ESM system, and the important links between existing models and observations of the atmospheric, ocean and land processes. Such tools will play a key role in assessing risks and identifying potential societal hazards as well as opportunities. TowardsOperational Earth System Monitoring, Assimilation and Prediction Systems Atmosphere Models The Earth System Unifying the Models Climate / Weather Models The Predictive Earth System Hydrology Process Models Ocean Models Land Surface Models Natural Hazard Prediction Terrestrial Biosphere Models Megaflops Gigaflops Teraflops 2000 Petaflops 2010 Fig. 1: A conceptualization of the development of a complex Earth-system analysis and prediction system for assimilating observations, and providing experimental and operational forecasts for the state of the atmosphere, ocean and land. The investments in high-capacity computers are critical in order to facilitate combining the diverse interacting components at high spatial resolution and so provide a dynamical view of the complex evolution of the Earth system and of its coupled interaction with human activities. Figure 2 presents a conceptual modelling system that couples the physical climate system with biogeochemical cycles (greenhouse gases), atmospheric chemistry, aerosol microphysics, ecosystem dynamics and hydrology in an environment affected by anthropogenic emissions, land-use change and fires, urbanization and perturbations in land hydrology through activities such as damming and irrigation. It encompasses key physical, biological and chemical interactions. The introduction of such complex processes in Earth-system prediction systems is a challenge that can only be met if key processes are simultaneously studied in the laboratory and through field experiments and observational programs to assess their representations in the models. It is also well recognized that weather processes have significant up-scale effects on the evolution of climate processes in the Earth system, and vice-versa (Brunet et. al, 2010). Many of the envisaged ESM applications will address prediction problems that will encompass time scales from few hours to decades. Hence ESM development will necessitate an unprecedented multi-disciplinary collaborative effort between the climate, weather and biosphere scientific communities. Fig. 2: Interactions between the physical climate, greenhouse gases, aserosols, gas-phase atmospheric chemistry, ecosystem dynamics, land-use and the water system. These interactions have to be included in the formulation of Earth system models (Source: Peter Cox, personal communication). A noteworthy accomplishment in Earth system predictions on short time scales (days) is the implementation of the European GEMS/MACC Project coordinated by the European Center for Medium-range Weather Forecast (ECMWF). ECMWF is now issuing global and regional daily predictions of the atmospheric composition 1 . Such products will help 1 http://gems.ecmwf.int/ reduce the vulnerability of populations to air pollution, particularly in urbanized areas. It provides information on the short- and longer-term evolution of biogeochemical cycles under a changing climate, such as the carbon cycle, for instance. An example of the predicted global distribution of a reactive gas such as carbon monoxide (CO) is shown in Figure 3. In the case of carbon dioxide (CO2), observations from the Atmospheric Infrared Sounder (AIRS) are assimilated by ECMWF in their model. Global budgets of carbon dioxide have been derived by inverse modeling. Figure 3 also shows the monthly average surface exchanges of CO2 estimated for July 2005. The atmospheric transport has been computed by the general circulation model of the Laboratoire de Météorologie Dynamique at a resolution of 3.75×2.5 deg2 (longitude-latitude), nudged to the ECMWF analyzed winds. The CO2 atmospheric reanalysis is in the form of 6-hourly, twodimensional mean concentration fields in the free troposphere, where the AIRS CO2 weighting function peaks. Fig. 3: Top: Predicted global distribution of carbon monoxide surface mixing ratio [ppb] by ECMWF (EU-funded GEMS Project) with assimilation of space observations. Bottom: Monthly mean exchange surface flux of carbon [gC m-2 day-1] derived from atmospheric CO2 observations by the Atmospheric Infrared Sounder (AIRS) and atmospheric transport calculated using winds from the ECMWF reanalysis. An example of a regional Earth system model (Figure 4) is the Chesapeake Bay Forecast System (CBFS) developed at the University of Maryland’s Earth System Science Interdisciplinary Center. The CBFS provides decision support to enable policy makers, urban development planners, natural resource managers and planners, as well as a variety of private users, to base their decisions on a convenient information system. The Chesapeake Bay is undergoing climate and environmental change, and will continue to undergo such change over the next 50 years, due to its exposure to sea-level rise, past and continuing changes in land use and land cover change, fishing pressure, and increasing population density. A paramount question facing decision makers in the region is how to prepare and adapt to the anticipated change in the coming decades. The CBFS is based on downscaled coupled land-atmosphere-ocean-ecosystem models, combined with remotelysensed observations. It provides integrated Earth system analyses and prediction capabilities for the Chesapeake Bay and its watershed, with products designed to address user needs at time scales from days to decades. Fig. 4: The Chesapeake Bay Forecast System Decision Support Interface depicting the land cover/land use types at 30 m resolution incorporated into the coupled ocean-atmopshere-landecosystem model of the Chesapaeake Bay watershed (left), changes to nitrogen loading to the Bay if all run off from poultry farms is remediated by 2018 (middle), and present nitrogen concentrations in Chesapeake Bay (right). Current coupled weather-climate-Earth system models highlight natural processes, and treat human actions as external forcing parameters. A major task for the next decade is to develop methodologies by which qualitative information associated with human activities can be includedr in prediction models. Natural and social science knowledge and approaches must be joined to address a range of environmental. For instance, to improve climate projections and their relevance, it is important to account for relevant social dynamics in coupled biogeochemical cycle climate models. A possible path forward is to couple reduced-form GCMs (models of lesser complexity) with social dynamics in a nonstructural way, creating a range of defined scenarios through integration of information about possible pathways, related to energy sources, consumption, and land use, for instance, with what is known about the role of path-dependency, human psychology, and other factors bearing on behavioral tendencies. Earth-system models of intermediate complexity provide a starting point for the development of models that couple natural and social knowledge, and allow for the development of new methodologies. While such models do not simulate in detail all the processes involved, they can provide helpful heuristics allowing societies to anticipate and consider in greater depth the trade-offs between various energy paths, among other things. Figure 5 shows a conceptual view of a modeling framework that seeks to account not only for the influences of human actions on the natural systems – as done in classic approaches – but also for the impacts of environmental goods and services on human welfare. Important feedbacks in the Earth system occur through societal responses. Fig. 5: A coupled human-environmental modeling framework that accounts not only for the influences of human actions on the natural systems, but also for the impacts of environmental good and services on human welfare. 4. Summary and Future Directions This paper introduced three important requirements for accelerating the development and use of Earth system information. The first is to develop Earth system analysis and prediction models that account for multi-scale weather and climate processes, chemical and biological processes, and their interactions in the coupled atmosphere-ocean-land-ice system. These models require partnerships between academia, national research centers, and operational analysis and prediction facilities. They will build upon accomplishments in weather and climate predictions. The second is to model the interactions between humans and the weather-climate-biogeochemical system. This includes a global modeling framework that incorporates all aspects of physics, biology and chemistry and will highlight the regional aspects of global change, and include modules for water resources, agriculture, forestry, energy, air quality, health, etc. The third is to introduce appropriate methodologies that account for societal drivers, impacts and feedbacks. This is a major endeavor because the laws governing human behavior are not easily represented within the framework of present-day physical prediction systems. The development of comprehensive high-resolution weather and climate models (Brunet, et al., 2010; Moncrieff et al., 2010; Shapiro et al., 2010; Shukla et al., 2010) is critical to realization of the full benefit of the Earth system models. To successfully meet these new challenges, the support of teams that are both disciplinary and interdisciplinary, national and international, will be essential, as will the availability of high performance computing facilities. On this point, the last sixty-year track record of the science of weather and climate prediction provides a solid base for confidence. The current awareness of the state of the biosphere and availability of environmental resources and services drive demand for better ESM simulations. The expectation is that societies will benefit from sector- and user-specific information about such things as air quality and availability and quality of water. ESMs and their predictions can be useful as a basis for improved management of the Earth system, including its natural resources, at regional and global scales. The cost of the issues calculated by ESMs, combined with the cost of taking action, can inform deliberation as to possible solutions (for instance, in the areas of adaptation, mitigation and geo-engineering). Despite the progress in ESMs and the vast increase of available observations, there are still important gaps in our knowledge of the Earth system. These gaps reduce the usefulness of the model output for policy processes, and suggest the need for major advances in monitoring, analysis and prediction systems, combined with accelerated research to address unresolved processes and feedbacks in the Earth system. 5. References Brunet, G., M. A. Shapiro, B. Hoskins, M. Moncrieff, R. Dole, G. N. Kiladis, B. Kirtman, A. Lorenc, B. Mills, R. Morss, S. Polavarapu, D. Rogers, J. Schaake, and J. 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Zamora, 2008: Impacts of Atmospheric Anthropogenic Nitrogen on the Open Ocean, Science 320: 893-897. Galloway, J.N., A.R. Townsend, J.W. Erisman, M. Bekunda, Z. Cai, J.R. Freney, L.A. Martinelli, S.P. Seitzinger, and M.A. Sutton. 2008. Transformation of the nitrogen cycle: Recent trends, questions, and potential solutions. Science. 320:889-892. Gedney, N and P.J. Valdes, 2000: The effect of Amazonian deforestation on the northern hemisphere circulation and climate, Geophys. Res. Lett., 27, 12753-12758. Guinotte, J. M., R. W. Buddemeier, and J. A. Kleypas, 2003: Future coral reef habitat marginality: temporal and spaeial effects of climate change in the Pacific basin. Coral Reefs, 22, 551-558. Lenton, T. M., H. Held, E. Kriegler, J. W. Hall, W. Lucht, S. Rahmstorf, and H. J. Schellnhuber, 2008: Inaugural Article: Tipping elements in the Earth's climate system. Proceedings of the National Academy of Sciences, 105, 1786-1793. Mayle, F. E. & Power, M. J. 2008 Impact of a drier Early- Mid-Holocene climate upon Amazonian forests. Phil. Trans. R. Soc. B 363, 1829–1838. (doi:10.1098/rstb. 2007.0019). Meskhidze, N. and A. Nenes. 2006: Phytoplankton and cloudiness in the Southern Ocean. Science 314: 1419-1423. Moncrieff, M., D. Waliser, M.A. Shapiro, 2009: The mesoscale organization of tropical convection and its interaction with the global circulation: the Year of Tropical convection (YOTC). Bull. Amer. Met. Soc., this issue. Nobre, C. A. ; Sellers, P. ; Shukla, J., 1991: Amazonian Deforestation and Regional Climate Change. Journal of Climate, v. 4, n. 10, p. 957-988k. Nobre, C. A. and L. Borma, 2009: ‘Tipping Points’ of the Amazon Forest. Current Opinion on Environmental Sustainability (in press). Orr, J. C., V. J. Fabry, O. Aumont, L. Bopp, S. C. Doney, R. A. Feely, A. Gnanadesikan, N. Gruber, A. Ishida, F. Joos, R. M. Key, K. Lindsay, E. Maier-Reimer, R. Matear, P. Monfray, A. Mouchet, R. G. Najjar, G.-K. Plattner, K. B. Rodgers, C. L. Sabine, J. L. Sarmiento, R. Schlitzer, R. D. Slater, I. J. Totterdell, M.-F. Weirig, Y. Yamanaka, and A. Yool, 2005: Anthropogenic ocean acidification over the twenty-first century and its impact on calcifying organisms. Nature, 437, 681-686. Oyama, M. D. and C. A. Nobre, 2003: A new climate-vegetation equilibrium state for tropical South America. Geophys. Res. Lett., 30, 2199. Qian, H., J. Renu, and Z. Ning. 2008. Response of the terrestrial carbon cycle to the El Niño-Southern Oscillation. Tellus 60B, 537-550. Redman CL, 1999. Human Impact on Ancient Environments. Univ of Arizona Press, Tucson, AZ. Rockström, J. et al., 2009. Planetary Boundaries: Exploring the safe operating space for humanity in the Anthropocene. Nature (in press). Shapiro, M. A., and others, 2010: An Earth-System Prediction Initiative for the 21st Century, Bull. Amer. Meteor. Soc., this issue. Shukla, J., T.N. Palmer, R. Hagedorn, B. Hoskins, J. Kinter, J. Marotzke, M. Miller, J. Slingo, 2009b: Climate Prediction from Weeks to Decades in the 21st Century: Towards a New Generation of World Climate Research and Computing Facilities. Bull. Amer. Meteor. Soc., this issue. Salazar, L. F., C. A. Nobre, and M. D. Oyama, 2007: Climate change consequences on the biome distribution in tropical South America. Geophys. Res. Lett., 34, L09708. Sampaio G, Nobre C, Costa MH, Satyamurty P, Soares-Filho BS, Cardoso M, 2007: Regional climate change over eastern Amazonia caused by pasture and soybean cropland expansion. Geophys.l Res. Lett., 34 (L17709). Snyder, P. K., C. Delire, and J. A. Foley, 2004: Evaluating the influence of different vegetation biomes on the global climate. Climate Dynamics, 23, 279-302. Steffen, W., A. Sanderson, P. Tyson, J. Jäger, P. A. Matson, B. Moore III, F. Oldfield, K. Richardson, H. J. Schellnhuber, B. L. Turner II, and R. Wasson, Eds., 2004: Global change and the earth system: a planet under pressure. Global change - the IGBP series, Springer-Verlag, 336 pp. Thomas WM, Jr, ed., 1956: Man’s Role in Changing the Face of the Earth. Univ of Chicago Press, Chicago. Turner et al., 2007: Land Change Science Special Feature: The emergence of land change science for global environmental change and sustainability. Proceedings of the National Academy of Sciences, vol. 105, issue 7, pp. 2751-2751. Vitousek, P. M., R. Naylor, T. Crews, M. B. David, L. E. Drinkwater, E. Holland, P. J. Johnes, J. Katzenberger, L. A. Martinelli, P. A. Matson, G. Nziguheba, D. Ojima, C. A. Palm, G. P. Robertson,P. A. Sanchez,A. R. Townsend,F. S. Zhang, 2009: Nutrient Imbalances in Agricultural Development. Science, 340, 1519-1520 Werth, D. and R. Avissar, 2002: The local and global effects of Amazon deforestation, J. Geophys. Res., 107, D20, 8087, doi:10.1029/2001JD000717. Climate Prediction from Weeks to Decades in the 21st Century: Towards a New Generation of World Climate Research and Computing Facilities J. Shukla, T.N. Palmer, R. Hagedorn, B. Hoskins, J. Kinter, J. Marotzke, M. Miller, J. Slingo Abstract The impending threat of global climate change and its regional manifestations are among the most important and urgent problems facing humanity. Society needs accurate and reliable estimates of changes in the probability of regional weather variations to develop science-based adaptation and mitigation strategies. Recent advances in weather prediction and in our understanding and ability to model the climate system suggest that it is both necessary and possible to revolutionize climate prediction to meet these societal needs. However, the scientific workforce and the computational capability required to bring about such a revolution is not available in any single nation. Motivated by the success of internationally-funded infrastructure in other areas of science, this paper argues that, because of the complexity of the climate system, and because the regional manifestations of climate change are mainly through changes in the statistics of regional weather variations, the scientific and computational requirements to predict its behavior reliably are so enormous that the nations of the world should create a small number of multi-national research and high performance computing facilities dedicated to the grand challenges of predicting climate change on both global and regional scales over the coming decades. Such facilities will play a key role in the development of next generation climate models, build global capacity, nurture a highly trained workforce, and engage the global user community, policymakers and stakeholders. We recommend the creation of a small number of highly connected multi-national facilities with computer capability at each facility of about 20 petaflop in the near future and about 200 petaflop by the end of the next decade. Each facility should have sufficient scientific workforce to develop and maintain the modeling software and data analysis infrastructure. Such facilities will enable future IPCC assessment to be made using about 10 km resolution climate models; seasonal and decadal predictions using 3-5 km cloud system resolving atmosphere models and eddy revolving ocean models; and fundamental research on weather-climate interactions using about 1 km resolution models. Each facility should have enabling infrastructure including hardware, software and data analysis support, and scientific capacity to interact with the national centers and other visitors. This -1- will enable the climate community to provide society with climate predictions which are based on our best knowledge of science and the most advanced technology. 1. Why do we need to revolutionize climate predictions? Weather and climate conditions are undisputedly major factors for the well-being and development of society, impacting on all scales from individual lives to global economies (Sachs, 2008). Human societies have flourished by adapting to and taking advantage of current climate conditions. However, it has been estimated that during the past 25 years, weather-related disasters have caused more than 600,000 fatalities and $1.3 trillion of economic losses. This demonstrates humanity’s dependence on favorable weather and climate conditions, and reminds us of the fragility of the relationship between climate and society. Extensive research by the world’s climate community assessed by the Intergovernmental Panel on Climate Change (IPCC), has established with a high degree of confidence that humans are affecting Earth’s climate. It is now recognized by scientists and world leaders that climate change is perhaps the gravest of the many threats that humanity will have to face in the coming century. Considering the increasing frequency of extreme weather and climate events together with our enhanced vulnerability to weather and climate hazards, caused by rapid economic and population growth, humanitarian and economic losses will continue to rise. As the Stern Report on the economics of climate change has emphasized, (Stern, 2007), climate change is a trillion-dollar problem: while cutting emissions of greenhouse gases to mitigate climate change could cost the world economy by as much as 1% of its GDP, the effects of inaction will be many times greater than this. IPCC reports have alerted society to the risk the world faces from climate change, and climate-change related policies are beginning to be formulated by governments around the world. However, formulating cost-effective and responsible mitigation and adaptation strategies requires reliable answers to specific questions about the details of climate change. How far can greenhouse-gas concentrations rise before dangerous climate changes are inevitable? Since greenhouse-gas concentrations are already at unprecedented levels, what level of investment is needed for society to adapt to inevitable climate changes? How will climate change at the regional level not just in terms of temperature, but other key variables such as precipitation and storminess? For example, what is needed to ensure that society in regions at risk of increased levels of drought will have adequate water supplies, while those in regions at risk of increased levels of precipitation are sufficiently protected against flooding? Questions like: “Is New Orleans sustainable?” or “When should we begin planning to re-accommodate the hundreds of millions of climate refugees from lowlying areas of the globe, left homeless if the Greenland and West Antarctic ice sheets begin to disintegrate?” will have to be answered. What if society is unable to substantially reduce CO2 emissions in the coming centuries? There are centuries of coal ready to mine and -2- many experts feel it will be difficult to prevent developing countries from burning it, especially if their governments’ prime aspiration is to improve the standard of living of its citizens to be comparable to those of the developed countries. If climate change proves to be as severe as some estimates suggest, we may be forced to consider radical measures to offset global warming. Such measures might not only be expensive, but also potentially dangerous to the Earth system. Answering such questions will require detailed quantitative predictions of climate change for the coming century on both global and regional scales, and with sufficient detail to provide statistics on hazardous weather events. In view of the critical role that climate prediction will play in determining governmental strategies worldwide on climate mitigation and adaptation and the enormous economic impact the decisions will have on society, it is imperative that the predictions have a high level of reliability. Indeed there are several features of climate change for which the current IPCC models show robust levels of consistency. However, large disagreement among the individual model predictions which form the basis of the IPCC reports, points to the fact that there remains considerable uncertainty in the magnitude of future climate change, especially on the regional scale. Furthermore, the inability of current climate models to describe accurately key modes of variability of climate indicates common model deficiencies. This makes the long-term prediction of regional climate even more uncertain. At the World Modelling Summit for Climate Prediction (Shukla et. al., 2009), attended by a large number of scientists from many countries (http://wcrp.wmo.int), it was declared that the scientific community currently lacks the appropriate tools (models and computers) to make the step change in climate prediction required to give fully trustworthy answers to the questions posed by society. On the other hand, there is universal agreement among scientists and policy makers that sustainable development of the world’s societies will require science-based adaptation strategies. There is also a near-universal agreement among scientists that climate models must be run at a sufficiently high resolution to be able to accurately represent the key regional climate processes in the atmosphere, and in the oceans. But the constraint of limited climate-dedicated computing power at the national, institutional or university level has meant that contemporary climate models have to resort to highly truncated representations of the mathematical laws of physics. Currently, scientists have to over-simplify key physical processes due to lack of sufficient computing power needed to represent them adequately. Hurricanes are good examples to illustrate this point. It is perhaps not widely known that, unlike the daily weather forecasts, the forecasts of the number and strength of hurricanes in the coming season issued by national weather services are not based on prediction methods which use the laws of physics. Instead they use empirical methods based on the past performance of certain pre-selected indicators (e.g. Bell et al. 2008). Current global climate models used to predict climate change likewise do not resolve hurricanes. Since the eyewall of a hurricane is about 10-20 km -3- wide, it is impossible for climate models with a spatial resolution of 200 km to describe hurricanes realistically. To interpret possible hurricane behavior from the output of these models, various proxies for hurricanes are used and conclusions are drawn about hurricanes in a future climate based on the behavior of these proxies. From both simple theory and by inspection of diagnostics of model-generated energy spectra, the scales reasonably described by a numerical model of the atmosphere or ocean are many times larger than the nominal grid length. This means that typical climate model resolution (with 200 km grids in the atmosphere and 100 km grids in the ocean) cannot represent many sub-synoptic scale systems at all, and only poorly represent many smaller baroclinic features. The atmospheric storm tracks in these models underestimate the number of storms actually observed, and the statistics of mid-latitude blocking are poorly simulated (Jung et al., 2007). Use of much higher resolutions can improve both the description of important structures within synoptic weather systems, further refine the blocking skill and provide opportunities to capture the true intensity of the highly energetic mesoscale systems both in the tropics and higher latitudes. It is often said that high-resolution regional models, widely used to provide climate impact assessments at the regional and local level, can be used to provide information including, for example, the changing frequency and intensity of hurricanes This is a questionable concept in the context of climate change (WCRP, 2007). Regional downscaling cannot capture the global telecommunications of regional variations and cannot improve this aspect of regional prediction. For example, the effects of increases in CO2 are felt by hurricanes through changes in the large-scale circulation of atmosphere and oceans, and the precursors of hurricanes are often formed far away from the regions ultimately affected. It is well known that the frequency of Atlantic hurricanes is strongly influenced by Pacific Ocean temperatures. It can be argued that only a global-high resolution climate model can estimate the changes in the frequency and intensity of hurricanes, and indeed other hazardous and high impact weather events, in a changing climate. We believe it is unacceptable that society should have to make major decisions about the habitability of hurricane-affected coastal areas using information from climate models which cannot resolve hurricanes; especially when scientific knowledge and technology now exist which would allow more informed decisions to be made. The requirement to increase resolution of climate models is based on considerable experience with weather and short term climate prediction where predictive skill has steadily improved during the past 30 years as models use higher resolution and better representations of physical processes. The experience by Japanese research groups to simulate global weather by use of a most powerful supercomputer, the Earth Simulator, with horizontal resolution of 3.5-10km has established the scientific basis for very highresolution models.In the last 20 years or so, operational weather centers have made several significant horizontal resolution changes (with concomitant changes in vertical resolution). -4- Each change to higher resolution improves accuracy in a) the representation of basic components such as orography and land/sea definition, b) synoptic and sub-synoptic systems, c) weather features and parameters such as fronts, cloud and rain bands, jets etc., and d) assimilating observations, both space-based and surface-based. Each change also contributes significantly to the long-term positive trends in objective forecast skill measures which are seen in the major numerical weather prediction (NWP) centers’ performance statistics. Furthermore there is little doubt that further refinements in resolution, will continue these improvements. In addition to the intrinsic merits of running climate models at a resolution comparable with that of NWP models, the continual confrontation of an NWP model with observations can provide important constraints on much longer timescale climate predictions, when the same model is used in climate mode. That is, an ability to apply the insights and constraints of numerical weather prediction to climate is one of the key motivations for the development of so-called seamless prediction systems, as first discussed by Palmer and Webster (1995). Examples of the use of seamless prediction techniques to calibrate probabilistic climate change projections have been given by Palmer et al (2008). Short-range (limited-area) forecast models at ultra-high resolutions are giving some encouraging results using grid lengths of a few kilometers, without parameterizing deep convection (e.g. Fudeyasu et al. 2008). Since the features reasonably resolved by a discrete model have scales more than five times the grid length, such grids are still far from resolving individual deep convective clouds. Nevertheless, these models better resolve macrostructures such as downdraft outflows and other mesoscale processes, likely leading to the perceived benefits. Much more realistic kinetic energy spectra are also captured with grids of 10 km or less. However, higher resolution alone is not sufficient to improve simulation of current climate. Considerable research effort, including the design and implementation of physical parameterizations, is required to improve the simulation of climate variability using very high-resolution models. Explicitly resolving deep-convective clouds, which requires designing and utilizing global climate models with grid resolutions of the order of 1 km, poses many research issues, and the computational factors challenge the whole algorithmic design. Exstensive research needs to be done to ensure that once the grid resolution is high enough (~1 km) to resolve the convective cloud systems, the rapid growth of the uncertainties in these unpredictable cloud systems do not overwhelm the predictable largest scale flow. The requirement to represent properly the processes of deep convective cloud systems and hurricane rain bands in the atmosphere, and energetic eddies in the oceans, are only some of several reasons why climate prediction modeling must have substantially more powerful and dedicated computing and research infrastructure than is currently -5- available at the individual institute or university level. Other requirement for substantial increases in available computer power and enhanced research efforts are summarized as follows. • For predictions on the century timescale, models must represent more than just the physical climate system; they must also represent a range of biogeochemical processes, so that the concentrations of radiatively-active gases can be predicted. Presently, representation of such biogeochemical processes in climate models is crude, again at least in part because of limitations of computer power. • A key prognostic variable for any prediction is uncertainty. Prediction uncertainty can be estimated by making an ensemble of forecasts, varying uncertain aspects of the initial conditions, the model equations, and other input fields such as greenhouse gas concentrations - a process known as ensemble forecasting, now well established in numerical weather forecasting and seasonal climate prediction. Due to lack of sufficient scientific and computational capacity, it is currently not feasible to sample uncertainty adequately with models of sufficient resolution or complexity. • Climate models must be tested by running them over past paleoclimatic epochs, for example to assess whether they can simulate past glacial/interglacial cycles, and some of the abrupt climate changes known to have occurred during past glacial periods. Currently there are insufficient computer resources to run contemporary climate models over periods much longer than a few centuries. • The ingestion of Earth observations into climate models requires the development of what is known as data assimilation capability. Operational data assimilation is an exceptionally complex computational process, allowing sophisticated validation and initialization of climate models, currently impossible in most climate institutes due to the lack of computer resources. A sustained research effort to develop assimilation techniques for the total climate system (land, ocean, cryosphere, etc.) is needed. Consequently, the full value of space-based observations is not being realized because space-based observations are typically made on scales much smaller than the resolution of current climate models. Together with the problem of insufficient resolution, the above considerations collectively argue for a very substantial augmentation of computer power and research effort, needed to make reliable, quantitative predictions of regional climate change. For this reason the participants of the World Modelling Summit concluded that it is time to accelerate progress in climate modelling in order to be able to fulfill society’s needs and expectations from climate science. -6- 2. What is necessary to fulfill society’s expectations? It is somewhat ironic that the science community uses climate models with insufficient and inadequate spatial resolution, not because of a lack of knowledge of physics and dynamics of climate, but because of the lack of powerful computers, and the lack of a critical mass of qualified scientists working together as a team to build a new generation of weather and climate models. The scientific basis and knowledge for building such models, and the evidence for improving predictions using models with higher resolution and better representation of physical processes has been available for more than 20 years. However, the underlying infrastructure, which enables climate models to simulate and predict the current and future climate, exists only in national laboratories. Because current computational infrastructures are funded for only short periods (typically 5 years), no single modeling center in the world has been able to plan and acquire the required supercomputing resources and the critical mass of scientists to build and run climate models with cloud system resolving atmosphere, eddy resolving oceans, and landscape resolving land surfaces for predictions over the next century. 2.1 High Performance Computing Requirements The operational NWP centers have been able to increase the spatial resolution of global weather forecast models from about 100 km in 1990 to about 20 km today. This has been possible because of about a 1000-fold increase over the past 25 years in the sustained speed of computers from about 1 Gigaflop (1 gigaflop = 109 floating point operations per second) to about 1 Teraflop (1 teraflop = 1012 floating point operations per second). For example, the computer at the European Centre for Medium-range Weather Forecasts (ECMWF), with a sustained speed of about 2 Teraflops, is currently able to produce 10-day weather forecasts in about 20 minutes with a global atmosphere model of about 20 km resolution. If, for argument’s sake, we were to run the ECMWF weather forecast model as a climate model coupled to an equally complex and computationally demanding global ocean model, both with about 4 km resolution, achieving a century of simulation each month, the sustained speed of the computers would have to increase another 1000-fold to about 2 Petaflops (1 petaflop = 1015 floating point operations per second). This does not take into consideration the need for additional computing power to include more complexity (biogeochemistry etc.) which is required to advance from physical climate system models to physical - chemical - biological Earth system models, and larger ensembles. The global atmospheric model currently with the highest spatial resolution of about 3.5 km is the NICAM model being run on the Earth Simulator in Japan (Satoh et al. 2008). With NICAM sustaining 7.4 Teraflops on the Earth Simulator, 24 hours of simulation takes about 6 hours. As in the example of the ECMWF model, running NICAM at 3.5 km resolution as a climate change model fully coupled to a global ocean model and integrated -7- for a century per month, the capability has to be increased by a factor of 250, which is similarly about 2 Petaflops sustained. How can this huge increase in computing capability be achieved? The manufacturers of high-performance computers predict that within three years, a peak computing performance of about 20 Petaflops will be achievable (e.g., http://www03.ibm.com/press/us/en/pressrelease/26599.wss). Within the decade following the introduction of multi-petaflop machines, peak speeds of 200 Petaflops might be achievable, giving sustained performance of up to 20 Petaflops on typical fluid dynamical codes. Large domain limited area models with 1 km grids and climate simulations with 3-10 km grids, with much improved (possibly stochastic-dynamic) parameterizations, are likely to be the best way forward given the computing potential of the next decade, leading to improved simulations through better parameterizations, better physical understanding of phenomena, better appreciation of the shortcomings of current methods and better basic dynamics of the building blocks of climate. The ‘grand challenge’ of running global models at 1 km resolution should be tackled. It is unlikely to be possible to make production runs at this resolution in the next 10 years, but this should not prevent extensive research experimentation on basic weatherclimate interactions at cloud-system permitting resolution. 2.2 Infrastructure Requirements Using very high performance computing power efficiently requires adequate infrastructure and human resources. First of all, current climate model software is not designed for the massively parallel architecture of multi-petaflop machines. This implies that major recoding will be needed to fully exploit the opportunities offered by available machines. Such a task can only be handled if a critical number of scientists work together in a dedicated team. That is, a sufficient number of computing specialists and climate scientists have to be gathered and motivated to work together to achieve this challenging goal. Secondly, the data volumes produced by the proposed new generation climate models will increase by orders of magnitudes. This will pose enormous technical challenges of archiving, interrogating, analyzing and visualizing the data produced by these high resolution simulations. Efficient and optimum utilization of the outputs from such high resolution models by a large number of scientists worldwide will require development of novel techniques and solutions, requiring the collaboration of many dedicated technical and scientific experts. Experience shows that the success of major international collaborations critically depends on the development and adherence to universally accepted standards and methods. Resources can only be efficiently used if appropriate tools are available to exploit their potential. Therefore, it is imperative that the facilities proposed -8- here comprise both computing and human resources. Only the two components together will ensure the success of this new endeavor. 3. How can we realize the necessary facilities? Climate models have traditionally been developed by individual government institutes and university departments around the world. However, over the last few decades it has become a well-established tenet that many of the most scientifically and technically challenging problems can only be tackled by investment in the type of infrastructure unaffordable at the national level. These days, much cutting-edge scientific research is achieved through international collaboration. For example, countries have come together to fund the development of high-energy particle accelerators to probe the nature of matter on the smallest scales, and powerful telescopes to probe the structure of the universe on the largest scales. Recently, several countries announced the creation of a single jointly-funded laboratory called ITER (International Thermonuclear Experimental Reactor) to create sustainable nuclear fusion on Earth (http://www.iter.org/index.htm). The type of facility enabled by such multi-national funding would not have been possible at the national level, and, as a result, neither would the resulting scientific breakthroughs. The success of international investment in scientific and technical infrastructure is also apparent in weather and seasonal climate prediction, as illustrated by the European Centre for Medium-Range Weather Forecasts and the International Research Institute for Climate and Society. The notion of funding science infrastructure at the international level is not new. CERN (Hermann et. al, 1987) and the Hubble Telescope (http://en.wikipedia.org/wiki/Hubble_telescope) are outstanding successful examples of internationally funded infrastructure, and the ITER nuclear fusion facility may prove to be another. Indeed, the Consultative Group on International Agricultural Research (CGIAR) is credited with launching the Green revolution leading to sustainable food security and poverty reduction in the world (Evenson and Gollin, 2003). We assert that the climate prediction community needs the sort of international infrastructure that particle physicists, nuclear fusion researchers, astronomers and others now take for granted. We propose to take climate prediction science into the 21st century through the creation of a small number of international research and high-performance computing facilities dedicated entirely to the problem of climate research and prediction. More specifically, we propose facilities where global climate models can be run over century timescales with resolutions which allow the key climatic processes, involving the organized deep-convective cloud system in the atmosphere, and energetic eddies in the oceans to be explicitly resolved. Such machines will not be available at the laboratory level, and are unlikely to be available at national levels, in the coming decade. However, we argue that concerted international funding would stimulate the computing industry to produce the sort of machine required in the -9- coming 5-10 years. As in particle physics, astronomy, and nuclear fusion physics, the sort of facility which would enable breakthroughs in climate research, would be unaffordable at the national level. Climate change is a global problem and therefore it is reasonable that the solution to the problem of providing governments and society with reliable predictions of climate change also lies at the global level. Such facilities would draw on the strengths of existing weather and climate prediction centers. The cost of such a single facility (order 1 billion dollars for scientific workforce and powerful computers over 5 years), if shared among the nations of the world with contributions in proportion to national GDP, would be affordable at the national level. At present, a huge quantity of space-based observations are acquired at a cost of tens of billions of dollars annually. The spatial resolution at which satellites provide data (1-10 km) is so much finer than the resolution of models (50-200 km), and the research and computing infrastructure is so inadequate, that only a small fraction of space-based observations is being assimilated in forecast models. A research and supercomputing facility with sustained Petaflop computing capability and a critical mass of scientists will also accelerate progress in data assimilation (an important component for multi-decadal forecasts) and prediction of the total climate system. Another key focus of these international facilities will be to facilitate very highresolution global forecasts on timescales of a few decades. Decadal prediction combines both the need for accurate initial conditions, central to weather forecasting, and the need for scenarios of greenhouse gases, central to centennial climate prediction. A main focus for decadal and multi-decadal prediction will be modes of climate variability. For example, in the coming decades, can we make useful predictions about changes in the Atlantic Meridional Overturning Circulation? Is El Niño likely to become more or less prevalent, more or less intense? Decadal and multi-decadal predictions will, for example, provide regional forecasts of precipitation change for the first half of the 21st Century, which are key inputs to infrastructure investment (e.g. in terms of reservoir capacity or flood defense capability) to adapt to predicted climate change. Such multi-petaflop computational facilities, dedicated to climate simulation and prediction, will be beyond the financial means of individual institutes and universities. Indeed it now appears likely that the multi-petaflop machines in the USA, Europe and Japan will be funded at the national level, for multi-purpose scientific applications. There are indeed many demands on very high-performance computing: nanotechnology, biology, astrophysics, high-energy physics and so on. In this case, climate applications would only receive a small share of time on such national-level computing infrastructure. Moreover, the machine architecture may not necessarily be optimal, so sharing time on such computers with multiple scientific applications would certainly not provide society with the best possible climate predictions. Establishing a small number of dedicated computing - 10 - facilities at the international level will allow climate predictions, at both global and regional level, to be made using models whose realism is commensurate with the need to guide policy on limiting carbon emissions, and to provide the basis for science-based adaptation strategies for guiding infrastructure decisions to adapt to regional climate change. Funding for such multi-national facilities should not and cannot compete with the funding for national centers. In fact, each national center must be an important and integral part of these facilities, and funding for the national centers should also be enhanced. Considering the global humanitarian aspects of the problem, foundations and international organizations should be viewed as possible funders. The need for accurate global climate predictions in a changing climate will remain for several decades and such multi-national facilities should not be subject to year-to-year funding uncertainties. Private corporations, wealthy individuals and foundations should be approached to create an endowment fund so that sustained funding can be guaranteed. The return on investments in enhancing existing climate modelling activities, and creating major international research and computing facilities is expected to be quite high. Such facilities would almost certainly enable the accuracy and reliability of predictions of global weather and short-term climate variations to be improved. Such a research and computing facility will help national weather services to improve the day-to-day weather forecasts of extreme, high-impact weather events and provide invaluable information to agencies responsible for management of weather-related disasters. The new generation of models will have an improved representation of the statistics of daily weather, and therefore, will have the potential to provide better predictions of regional climate variations on seasonal time scales. Even modest improvements in prediction of seasonal and interannual variations will provide huge socio-economic benefits to global societies by proper application of climate forecasts to the agriculture, water resources, health and energy sectors of national and international economies. Based on these estimates, we propose that governments, the computing industry and the science community work together toward the common goal of establishing a small number of highly connected international research and computing facilities with sustained computer capability of at least 20 Petaflops within five years, and at least 200 Petaflops by the end of the next decade. This two-step approach would enable us to achieve the more immediate goal of running global climate models for multi-decadal climate predictions and IPCC projections at a resolution of about 10 km. This will also enable seasonal and decadal prediction experiments with climate models at a resolution of 3-5 km. In parallel to that, these facilities should be used to address the many research questions related to the grand challenge of running global climate models at a much higher resolution of about 1 km. These are, of course, current goals. By the time individual weather services might have acquired such computers for routine weather prediction, the international facilities will be producing climate predictions using computers of a much higher capability. - 11 - 4. Summary By recognizing the threat of climate change and starting to formulate adaptation and mitigation strategies, society now requires reliable, quantitative predictions of regional climate change, not just temperature, but of precipitation, storminess and other relevant variables. Since current climate systems models are not able to provide predictions with adequate accuracy and detail, climate prediction needs to be revolutionized to be able to fulfill society’s expectations. To accelerate progress in understanding the mechanisms of climate variations, and predicting future climate change with reliable estimates of uncertainties, the existing national facilities should be enhanced, and in addition, a small number of multi-national research and computing facilities dedicated to climate prediction, with resources and capabilities beyond those of a single national effort, should be established. We recommend the creation of a small number of highly connected multinational facilities with computer capability for each facility of at least 20 Petaflop in the near future and 200 Petaflops by the end of the next decade. A major benefit of internationally coordinated climate prediction facilities will be to provide science-based adaptation strategies to the policymakers in a changing climate. Leaders of many nations will be faced with extremely serious questions, for example: Will the Gulf Coast remain habitable? Should New Orleans be rebuilt? Should Holland be building higher dikes? How do we relocate hundreds of millions of climate refugees? Are countries like Bangladesh and Mauritius sustainable? These questions are so profound and implications of decisions in response to these questions are so enormous that policymakers must base their adaptation strategies on the most reliable information that the current state of the science can provide. The key goal of climate research is to provide society with the best possible estimates of the predictability of climate. It is inevitable that some day the societal demand for policy-relevant climate predictions will be so great that the most advanced technology and the best available talent will be brought to bear to address this great challenge. We are proposing that the time to begin that process has now arrived! - 12 - References: Bell, G. D., and Co-authors 2008: The 2007 Atlantic Hurricane Season: A Climate Perspective. State of the Climate in 2007. A. M. Waple and J. H. Lawrimore, Eds. Bull. Amer. Meteor. Soc., 89, S1-S78. Evenson, R. E. and D. Gollin, 2003: Assessing the Impact of the Green Revolution, 1960 to 2000. Science, 300, 758. Fudeyasu, H., Y. Wang, M. Satoh, T. Nasuno, H. Miura, and W. Yanase, 2008: Global cloud-system-resolving model NICAM successfully simulated the life cycles of two real tropical cyclones. Geophys. Res. Lett., 35, doi:10.1029/2008GL036003. Hermann, A., J. Krige, L. Belloni, D. Pestre, and U. Mersits, 1987: History of CERN. North Holland. Jung, T., S. K. Gulev, I. Rudeva, V. Soloviov, 2007: Sensitivity of extratropical cyclone characteristics to horizontal resolution in the ECMWF model. Quart. J. Roy. Meteor. Soc., 132, 1839 – 1857. Palmer. T.N. and P.J. Webster, 1995: Towards a unified approach to climate and weather prediction. Global Change. EUR 15158 427pp European Commission. ISBN 92826-7757-5. Palmer, T.N., F.-J. Doblas-Reyes, M.Rodwell, A.Weisheimer, 2008: Towards seamless prediction: calibration of climate change forecasts using seasonal prediction. Bull. Amer. Meteor. Soc., 89, 459-470. Rodwell, M and T.N. Palmer, 2007: Using numerical weather prediction to assess climate models. Quart. J. Roy. Meteor. Soc., 133, 129-146. Sachs, J.D., 2008: Common Wealth, Economies for a Crowded Planet. Allen Lane, Penguin Books. Satoh, M., T. Nasuno, H. Miura, H. Tomita, S. Iga, and Y. Takayabu (2008b): Precipitation statistics comparison between global cloud resolving simulation with NICAM and TRMM PR data. In High Resolution Numerical Modelling of the Atmosphere and Ocean, W. Ohfuchi and K. Hamilton, eds. (Springer, New York), 99 – 112. Shukla J, R. Hagedorn, B. Hoskins, J. Kinter, J. Marotzke, M. Miller, T. Palmer, J. Slingo, 2009: Revolution in Climate Prediction is Both Necessary and Possible: A Declaration at the World Modelling Summit for Climate Prediction. Bull. Amer. Meteor. Soc., 90, 16-19. - 13 - Stern, N., 2007: The economics of climate change: the Stern review Cambridge University Press (Cambridge, UK), 692 p. WCRP, 2007: Report of the Twenty-eighth session of the Joint Scientific Committee, Zanzibar, Tanzania, 26-30 March 2007. WMO/TD-No. 1395, pp. 173-176. - 14 - AMERICAN METEOROLOGICAL SOCIETY Bulletin of the American Meteorological Society EARLY ONLINE RELEASE This is a preliminary PDF of the author-produced manuscript that has been peer-reviewed and accepted for publication. Since it is being posted so soon after acceptance, it has not yet been copyedited, formatted, or processed by AMS Publications. This preliminary version of the manuscript may be downloaded, distributed, and cited, but please be aware that there will be visual differences and possibly some content differences between this version and the final published version The DOI for this manuscript is doi: 10.1175/2009BAMS2752.1 The final published version of this manuscript will replace the preliminary version at the above DOI once it is available. © 2009 American Meteorological Society A Unified Modeling Approach to Climate System Prediction James Hurrell*1, Gerald A. Meehl1, David Bader2, Thomas L. Delworth3, Ben Kirtman4, and Bruce Wielicki5 1 National Center for Atmospheric Research, Boulder, CO 2 Lawrence Livermore National Laboratory, Livermore, CA 3 Geophysical Fluid Dynamics Laboratory, NOAA, Princeton, NJ 4 Rosenstiel School of Marine and Atmospheric Science, University of Miami, Miami, FL and Center for Ocean-Land-Atmosphere Studies, Calverton, MD 5 NASA Langley Research Center, Hampton, VA Bulletin of the American Meteorological Society Revised: 17 February, 2009 Final Revision: 26 June 2009 * Corresponding author: [email protected] National Center for Atmospheric Research╬ Climate Analysis Section P.O. Box 3000 Boulder, CO 80307-3000 Phone: 303-497-1383 Fax: 303-497-1333 ╬ The National Center for Atmospheric Research is sponsored by the National Science Foundation 1 Capsule Summary Demand for more accurate predictions of regional climate necessitates a unified modeling approach explicitly recognizing that many processes are common to predictions across time scales. Applying and testing models with this approach has many benefits. 2 Abstract There is a new perspective of a continuum of prediction problems, with a blurring of the distinction between short-term predictions and long-term climate projections. At the heart of this new perspective is the realization that all climate system predictions, regardless of time scale, share common processes and mechanisms; moreover, interactions across time and space scales are fundamental to the climate system itself. Further, just as seasonal to interannual predictions start from an estimate of the state of the climate system, there is a growing realization that decadal and longer term climate predictions could be initialized with estimates of the current observed state of the atmosphere, oceans, cryosphere, and land surface. Even though the prediction problem itself is seamless, the best practical approach to it may be described as unified: models aimed at different time scales and phenomena may have large commonality but place emphasis on different aspects of the system. The potential benefits of this commonality are significant and include improved predictions on all time scales and stronger collaboration and shared knowledge, infrastructure and technical capabilities among those in the weather and climate prediction communities. 3 1. Introduction The global coupled atmosphere-ocean-land-cryosphere system exhibits a wide range of physical and dynamical phenomena with associated physical, biological and chemical feedbacks that collectively result in a continuum of temporal and spatial variability. The traditional boundaries between weather and climate are, therefore, somewhat artificial. The large scale climate, for instance, determines the environment for microscale (1 km or less) and mesoscale (several km to several hundred km) processes that govern weather and local climate, and these small scale processes likely have significant impacts on the evolution of the large scale circulation (Fig. 1, derived from Meehl et al. 2001). The accurate representation of this continuum of variability in numerical models is, consequently, a challenging but essential goal. Fundamental barriers to advancing weather and climate prediction on time scales from days to years, as well as longstanding systematic errors in weather and climate models, are partly attributable to our limited understanding and capability to simulate the complex, multi-scale interactions intrinsic to atmospheric, oceanic and cryospheric fluid motions. The purpose of this paper is to identify some of the research questions and challenges that are raised by the movement towards a more unified modeling framework that provides for the hierarchical treatment of forecast and climate phenomena that span a wide range of space and time scales. This has sometimes been referred to as the “seamless prediction” of weather and climate (WCRP 2005; Palmer et al. 2008; Shapiro et al. 2009; Brunet et al. 2009). The central unifying theme is that all climate system predictions, regardless of time scale, share processes and mechanisms that consequently could benefit from initialization of coupled general circulation models with 4 best estimates of the observed state of the climate (e.g., Smith et al. 2007; Keenlyside et al. 2008; Pohlmann et al. 2009). But what is the best method of initialization, given biases in models that make observations possibly incompatible with the model climate state, and how can predictions best be performed and verified? Hurricane prediction, for example, has traditionally been regarded as a short-term weather prediction from an initialized atmospheric model. However, hurricanes generate a cold wake as they churn up the ocean and not only extract considerable amounts of heat through evaporative cooling but also mix heat down into the thermocline (e.g., Emanuel 2001, 2006; Trenberth and Fasullo 2007; Korty et al. 2008). Feedback from the cold wake is now thought to be important to improving the forecast accuracy of intensity and track, and the heat and fresh water fluxes could contribute to multi-decadal variability in the Atlantic Ocean climate system (e.g. Hu and Meehl 2009). Hence, hurricane forecasting is a short-term coupled problem as well as a longer term climate problem requiring not only an initialized atmospheric model, but also the initialization of a model of the ocean and its heat content. 2. Scale interactions and climate system predictions Scale interactions, both spatial and temporal, are the dominant feature of all aspects of atmospheric and oceanic prediction. The hope is that predictions will improve as models begin to explicitly resolve processes on ever finer spatial scales. Weather and climate predictions, consequently, have been major drivers for higher resolution models requiring advanced numerical and physical techniques and for sophisticated computing systems. 5 State-of-the-art weather forecasting is carried out using Atmospheric General Circulation Models (AGCMs) that have traditionally been forced with sea surface temperature (SST) anomalies observed at some initial time, but are then projected and damped toward climatological conditions as the integrations proceed out to typically 1014 days. On these time scales, dynamical interactions of the atmosphere with other climate system components were generally thought to be unimportant and, therefore, have typically not been included. For decadal to centennial predictions, the radiative forcings and coupled interactions and feedbacks among the climate system components are critical. Usually, these coupled model integrations are initialized from an arbitrary and relatively stable climate state obtained from a several-century control (without external forcing) integration. Such coupled “Atmosphere-Ocean General Circulation Models” (AOGCMs) typically include components of the atmosphere, ocean, land surface and sea ice. These two time scales address two distinct scientific problems. For a weather forecast on the scale of days, deterministic time evolution of individual synoptic systems must be forecast as an initial value problem and effects of longer-term coupled processes, such as the Meridional Overturning Circulation (MOC) in the ocean, are small. For climate time scales of seasonal and beyond, statistics of the collections of weather systems are of interest and are crucial to the fidelity of the climate simulation and/or prediction, but the deterministic time evolution of the weather systems cannot be predicted. For seasonal predictions, coupled air-sea interactions are especially important, but it is an open question whether the prediction of an El Niño event depends critically on aspects of the climate system that evolve on oven longer timescales, such as the MOC or 6 the state of the Pacific Decadal Oscillation (PDO). For even longer time scales, however, interactions of the atmosphere with not only the ocean, but also the sea ice, land, snow cover, land ice, and fresh water reservoirs become very important. Biogeochemistry and interactive vegetation, and external effects, such as changes in solar activity, volcanic eruptions, and human influences, all influence the evolution of the climate system. While the validity of the assumptions made in designing and conducting numerical experiments must be evaluated in the context of the problem being studied, a more unified approach explicitly recognizes the importance of processes and mechanisms shared across the time and space scales, and the potential benefit of greater convergence of methods used in weather and climate forecasting, in particular with regards to initialization of the climate system. The El Niño/Southern Oscillation (ENSO) phenomenon, for example, can now be predicted with some skill with an initialized state of the atmosphere and at least an upper ocean model of the tropical Pacific, but profound gaps in our prediction abilities remain. Large systematic errors in the coupled models mean that: (i) the coupled model mean state does not agree with the observed mean state with sufficient fidelity; and (ii) the space-time evolution of the simulated climate anomalies is not sufficiently realistic. Historically, these two problems have been addressed from semi-empirical perspectives. The first approach is to improve the individual physical parameterizations in the component models (e.g., Toniazzo et al. 2008). A specific example (Fig. 2) is the improvement in the simulation of ENSO by the Community Climate System Model (CCSM; Collins et al. 2006) after improvements to the parameterization of deep convection in the atmospheric model component (Neale et al. 2008). The second 7 approach has centered on how best to use imperfect models to make predictions: for example, through calibration analysis (Rodwell and Palmer 2007; Palmer et al. 2008), by utilizing a multi-model ensemble, or through stochastic-dynamic parameterization (e.g., Palmer et al., 2009; see Section 4d). Another relevant consideration is that current climate models have been limited to relatively coarse resolution compared to numerical weather prediction (NWP) models. The coarse resolution limits the accurate simulation of atmospheric (e.g., the MaddenJulian Oscillation (MJO) and synoptic weather systems) and oceanic (e.g., tropical instability waves) dynamics and, thus, their interactions with climate. A way forward is to better resolve the weather-climate link (e.g., Palmer et al. 2008), but how best to represent the important missing elements of the simulation of day-to-day weather in climate models? The typical assumption for sub-grid scale parameterization is to assume that the statistics of sub-grid scale processes can be parameterized in terms of the grid scale variables. However, in many cases this assumption may be seriously flawed. An alternative strategy has been to reduce the grid size of the model and resolve more of the motions explicitly as in NWP (e.g., Shapiro and Thorpe 2004), but this approach has been limited, so far, by available computing power. The history of climate prediction has been marked by compromise between model resolution, the inclusion of additional processes, the length and number of simulations, and available computing resources. Global climate predictions would certainly benefit from running AOGCMs at resolutions near or matching current NWP models (Shapiro et al. 2009), but it has not yet been feasible to marshal the considerable computer resources necessary (e.g., Shukla 2009). 8 3. Improving climate models a. Upscaling research The climate research community is beginning to use higher resolution (~50 km) models for the decadal prediction problem (e.g., Meehl et al. 2009), but global modeling frameworks that resolve mesoscale processes are needed to improve our understanding of the multi-scale interactions in the coupled system, identify those of greatest importance, and document their effects on climate. Ultimately, such basic research will help determine how to better represent small-scale processes in relatively coarse resolution Earth System Models (ESMs). We refer to the impacts of small-scale processes on larger scales as “upscaling”. There is a wide range of upscale interactions to be considered. Current parameterization schemes do not adequately handle the mesoscale organization of convection, which is a critical missing link in the scale interaction process (e.g., Moncrieff et al. 2007; 2009). The limited representation of convection and cloud processes is likely a major factor in the inadequate simulation of tropical oscillations (Fig. 3). Cloud and convective processes also appear to play a role in the well known double Inter-Tropical Convergence Zone (ITCZ) bias issue (e.g., Fig. 4, top), though coupled processes involving a systematically intense equatorial cold tongue in the ocean also likely contribute to this persistent systematic error (Randall et al. 2007). Uncertainty in the representation of clouds (on all scales) is also a major influence in the response of the climate system to changes in radiative forcing. Improved simulation of cloud processes in the Multi-scale Modeling Framework (MMF; Randall et al. 2003), which embeds two-dimensional cloud resolving physics within three-dimensional 9 weather scale physics, has shown improved MJO variability and reduced the bias in Kelvin wave propagation (Fig. 3; see Khairoutdinov et al. 2008). Another scale interaction problem is the challenge in modeling the Subtropical Eastern Boundary (STEB) regimes off the coasts of Southwest Africa, Peru-EcuadorChile, and Baja-Southern California. These regimes are marked by marine stratus, equatorward alongshore winds, and ocean upwelling. Large and Danabasoglu (2006) suggest that better resolution of these features produce not only a better simulation of the regional climate, but also effects that propagate and strongly influence the large-scale climate system, reducing rainfall biases across the tropical oceans (Fig. 4, bottom). Other examples of “hot spots” with significant upscaled effects include the monsoon regions of India and Tibet and Central and South America where steep topographical gradients and mesoscale processes such as low-level jets and mesoscale convective complexes play an important role in the water and energy budgets locally and remotely (e.g., Webster 2006). Over the Maritime Continent, Lorenz and Jacob (2005) presented a study of two-way coupling using global and regional models and demonstrated large and positive impacts on the tropospheric temperature and large scale circulation in the global climate simulation. Clearly, addressing these errors is critical to climate prediction on all time scales. Therefore, there is a strong need to develop pilot projects to demonstrate the methodologies and impacts of multi-scale interactions on the regional and global climate. While numerical models and techniques will be central to this effort, so too will be sophisticated theoretical and physical research to both understand and specify the critical 10 interactions. Significant increases to computing resources to facilitate explicit simulation of smaller-scale processes and their interactions with the larger scale will be essential. b. Value of testing models on all time scales A paradigm has long been that it is not essential to get all of the details of weather correct as long as their statistically averaged effects on the climate system are adequately captured. A key question is whether the rectification effects of small scale and high frequency weather events can be adequately captured if details are not explicitly represented. Water resources are a case in point as they rely on good predictions of precipitation. This means not only precipitation amount but also precipitation intensity, frequency, duration and type (snow versus rain). The character of precipitation affects runoff and flooding, and thus soil moisture and stream flow. The diurnal and annual cycles provide excellent tests for model evaluation. Model response to these well-known climate forcings can provide crucial insights on a host of important physical processes. For example, the diurnal cycle is strongest in summer over land and affects the timing, location and intensity of precipitation events. Models typically have onset of precipitation that is too early in the day and with insufficient intensity compared with observations, demonstrating the need to improve boundary layer and convective processes in models (e.g., Trenberth et al. 2003; Trenberth 2008a). The annual cycle is an obvious strong test for measuring the response of a model to a major climate forcing, albeit one that affects only those parts of the climate system capable of responding on such a short time scale. Interannual variability, such as how well models simulate ENSO, provides another necessary but not sufficient test of models. These tests 11 highlight the shortcomings and help identify steps to be taken to build confidence in models (WCRP 2008). 4. Prediction across scales a. Effect of initial conditions For weather prediction, detailed analyses of the observed state of the atmosphere are required but uncertainties in the initial state grow rapidly over several days. Other components of the climate system are typically fixed as observed. For climate predictions, the initial state of the atmosphere is less critical, and states separated by a day or so can be substituted. However, the initial states of other climate system components become vital. For predictions of a season to a year or so, the SSTs, sea ice extent and upper ocean heat content, soil moisture, snow cover, and state of surface vegetation over land are all important. Such initial value predictions are already operational for forecasting El Niño, and extensions to the global oceans are under way. For the decadal prediction problem, increased information throughout the ocean could be essential (Smith et al. 2007; Trenberth 2008b; Meehl et al. 2009; Shukla 2009). Initial conditions for the global ocean could conceivably be provided by existing ocean data assimilation exercises. However, hindcast predictions for the 20th century, which are desirable to test models, are severely hampered by poor salinity reconstructions prior to the early 2000’s when ARGO floats began to provide much better depictions of temperature and salinity in the upper 2000 m of the near-global ocean. Challenging research tasks are to develop optimal methods for initializing climate model predictions with the current observational network and identifying an optimal set of ocean observations to use for initializing climate predictions (Meehl et al. 2009). 12 The mass, extent, thickness, and state of sea ice and snow cover are vital at high latitudes. The states of soil moisture and surface vegetation are especially important in understanding and predicting warm season precipitation and temperature anomalies along with other aspects of the land surface, but are difficult to quantify. Any information on systematic changes to the atmosphere (especially its composition and influences from volcanic eruptions) as well as external forcings, such as from changes in the sun, are also needed; otherwise these are specified as fixed at climatological average values. The errors induced by incorrect initial conditions should become less apparent as the simulations evolve as systematic “boundary” and external influences become more important, but could still be evident through the course of the simulations. A good rule of thumb for prediction is that an upper bound on predictability corresponds approximately to one lifecycle of the phenomenon being considered. Hence one could hope to predict a single convective element, cyclone wave, MJO cycle, ENSO warm event, or fluctuation of the Atlantic MOC over its lifecycle, but not the second generation event. This rule of thumb is consistent with the climate system being a chaotic dynamical system with limited predictability. Additional predictability, however, could arise from the slowly evolving components of the climate system. The pathways leading from high frequency processes to low frequency phenomena, however, may progressively involve more aspects of the climate system. For example, convection associated with the MJO needs the ocean mixed layer to be accurately specified in the initial state. Thus it follows that the MJO influence on ENSO needs an accurate depiction of the initial state of the Southern Oscillation and the thermocline slope across the equatorial Pacific. A unified modeling approach to climate system 13 prediction, in principle, lets all of these interactions occur as they do in nature. If the models fall short, one can track how and learn why. b. Effect of systematic errors Another significant obstacle is the systematic errors present in current AOGCMs. Some of these errors, such as the double ITCZ (Fig. 4, top), are very persistent and have been present in multiple generations of coupled models. One approach to addressing such errors is to vary the parameters in various physical parameterizations within the range of uncertainty based on observations in an effort to reduce the known biases and to form an ensemble of the uncertainty. A second approach is to improve the models so that they more accurately simulate the phenomena in question. This can occur through enhanced resolution, improved knowledge of the relevant physics from observations, improvements in the parameterizations of unresolved physics, and numerical experimentation to better understand existing parameterizations. Efforts to reduce the systematic errors are crucial, since biases in the mean state could affect a climate model’s climate sensitivity (the response to altered radiative forcing) and, thus, its utility as a predictive tool. Quantifying the effects of systematic errors is difficult because of the highly non-linear nature of the climate system. One promising approach, at least for the atmospheric component, is to run it in NWP hindcast mode and observe the biases as they develop (Phillips et al. 2004). To understand the implication of systematic errors on forecast skill, it is important to note how coupled forecasts are initialized. Due to the limitations of both observational ocean data and computer resources, one way to initialize a coupled model is to start with initial states determined separately for the atmosphere and ocean (e.g., coupling an 14 atmospheric initial state to an ocean re-analysis product). However, the sub-surface ocean thermal state associated with the ocean initial condition is likely significantly different than the climate of the free running coupled model. As a consequence, at forecast initialization, the coupled model rapidly adjusts away from the observed climate estimate towards the coupled model climate that is itself a product of its own systematic errors. This adjustment in the tropics is primarily accomplished via Kelvin waves, which ultimately lead to an erroneous SST response 2-4 months into the forecast evolution. This is often referred to as an “initialization shock” or “coupling shock”. One approach to address coupling shock is through “anomaly initialization” (Schneider et al. 1999; see also Smith et al. 2007; Keenlyside et al. 2008; Pohlmann et al. 2009). In this approach, models are initialized with observed anomalies added to the model climate, rather than initialized with observed values, and the model climate is removed to obtain forecast anomalies. Ultimately, the solution to this problem is to improve the simulation of the coupled modes of the climate system. For example, preliminary results with the NOAA climate forecast system (CFS) indicate that a higher horizontal resolution model has more irregularity of tropical eastern Pacific SST associated with ENSO, and the amplitude of the SST variability is in better agreement with observed estimates. Atmospheric model resolution experiments conducted with the Italian SINTEX coupled model also indicate significant improvements in simulated ENSO periodicity with increasing atmospheric model resolution (Navarra et al. 2008). However, as shown in Fig. 2, improvements to the parameterization of deep atmospheric convection have also led to a better simulation of ENSO frequency in the CCSM (Neale et al. 2008), and Toniazzo et al. (2008) 15 demonstrate the sensitivity of the simulation of ENSO in a version of the Hadley Centre coupled model to perturbed atmospheric parameters. Therefore, improvements in model fidelity with increasing resolution are likely part of the solution, but not the entire answer. Active research efforts on how to initialize the coupled modes of the coupled models, given that they do not agree with those of nature (Zhang et al. 2007a), recognize that the best state estimate for the individual component models may not be best for coupled forecasts. Much of the research focuses on how to identify the slow manifold described by the observed estimates and the coupled model and how a mapping between them can be derived. A promising avenue is the use of fully coupled assimilation systems (Zhang et al. 2007a). c. Predictability Although deterministic atmospheric predictability is limited to approximately two weeks (e.g., Kleeman 2007), on longer time scales at least two types of predictions may be possible. The first is a prediction of the internal variability of the climate system based on an initialized state of the ocean, atmosphere, land and cryosphere system. Coupled ocean-atmosphere interactions, for instance, are likely important for understanding the temporal evolution of some extratropical, regional modes of climate variability, such as the North Atlantic Oscillation (Hurrell et al. 2006) and local modes of coupled variability in the Atlantic and Indian Ocean basins (e.g., Xie and Carton 2004; Webster 2006). Moreover, land surface processes, and the influence of the stratosphere on the state of the troposphere, might also be a significant source of predictability, at least on seasonal time scales (e.g., Baldwin 2003). 16 First attempts at “decadal prediction” with an AOGCM showed reduced error growth in large-scale averaged surface temperature over ten year periods as a result of the initialized climate state (Smith et al. 2007; Keenlyside et al. 2008; Pohlmann et al. 2009). Decadal scale predictability in the ocean may occur from the thermal inertia of the initialized anomalies in ocean heat content, but additional predictability may also arise from fluctuations in gyre and overturning circulations (e.g., Delworth and Mann 2000; Dong and Sutton 2005), particularly in the Atlantic (Fig. 5). Multi-decadal variations in Atlantic SSTs have been linked to low-frequency boreal summer changes in rainfall and drought in the continental United States (e.g., Schubert et al. 2004; Sutton and Hodson 2005) as well as hemispheric-scale temperature anomalies (Zhang et al. 2007b). They may also have implications for North Atlantic hurricane forecasts (e.g., Zhang and Delworth 2006). It is possible that decadal scale predictability exists in the Pacific Ocean as well (e.g., Meehl and Hu 2006). In addition to the potential sources of predictability from the initial values of the system, predictability may also be derived from past and future changes in radiative forcing (Hansen et al. 2005; IPCC 2007; Smith et al. 2007). Past emissions of greenhouse gases have committed the climate system to future warming as the ocean comes into equilibrium with the altered radiative forcing. In addition, the best possible estimates of future emissions of radiatively important pollutants are needed for making predictions, as well as modeling capabilities to accurately simulate both how these pollutants affect the global energy, carbon and sulfur cycles, and how the climate system subsequently responds to that altered forcing. In this regard, the phase and amplitude of the solar cycle 17 and unpredictable volcanic eruptions can be significant “wild cards” to such predictions (Ammann and Naveau 2009). d. Single versus multiple model predictions The purpose of ensemble prediction is to quantify the uncertainty in the forecast from errors in the initial conditions, errors in the model (or multiple models), or a fundamental lack of predictability in the phenomenon itself (e.g., Hawkins and Sutton 2009). This technique is commonly used for NWP where many ensemble members are generated from the same model. It is also relevant for seasonal forecasting where more than one model can be used, since a simulation average across different models is presently more skillful than a simulation from a single model (e.g., Glecker et al 2008; Kirtman and Min 2009). The rainfall variability simulated by nine-member ensembles of several state-of-theart AGCMs forced by observed SSTs (Fig. 6) is very different in the rainfall (signal) variance (first column) despite the common SST forcing. This uncertainty reflects differences in model formulation, and it is larger than the uncertainty due to initial conditions (middle column) highlighting the utility of the multi-model approach. There are a number of different strategies currently employed to combine models for the purpose of prediction. The simplest and most common approach is to have the various modeling centers make ensemble predictions and then devise statistical strategies (i.e., Bayesian, linear regression) for combining the models (e.g., Palmer et al. 2004). It is also possible to take a specific model and systematically probe the uncertainty in the model formulation by varying the parameters in the model (Stainforth et al. 2005). Both approaches have strengths and weaknesses, but neither strategy is completely satisfactory 18 in terms of adequately resolving the uncertainty. Another recently proposed methodology is to use stochastic-dynamic parameterization techniques which perturb parameterizations in such a way as to improve on the benefits of a multi-model ensemble by using a single model (Palmer et al. 2009). e. Verification A quick scan through the Journal of Climate reveals a dizzying array of different climate metrics both interesting and important. Furthermore, the attraction to use metrics to select the “best” model for an application is problematic (Gleckler et al. 2008). Metrics differ in variable, time scale, space scale, or functional representation. The same is not true in weather prediction, where some estimates of both prediction limits and the impact of different weather prediction metrics can be determined. The skill of daily weather forecasts can be verified many times and a quantification of model skill is relatively straightforward. The problem is more difficult for seasonal prediction since a large number of seasons and those forecast states must pass in order to build up forecast verification statistics. For decadal and longer time scales, the problem of quantifying prediction skill becomes even more difficult, and the metrics will likely involve how the forecasts are used in applications. Even if we could test long term climate models with all possible climate metrics proposed in the last decade of journal papers, we have no current method to prioritize or weight their impact in measuring uncertainty in predicting future climate change for temperature, precipitation, soil moisture and other variables of critical interest to society. 19 There has been some recent progress in this direction using perturbed physics ensembles (PPEs; Stainforth et al. 2005). PPEs are climate models that perturb uncertain physical parameterizations instead of initial conditions. The non-dimensional error in Fig. 7 (from Murphy et al. 2004) is defined as the ratio of climate model rms error versus observations to the interannual natural variability of the same climate variable metric: in essence a signal to noise measure. A large range of a given non-dimensional climate metric indicates sensitivity. The whisker plots in Fig. 7 confirm the intuition that climate variables associated with energetics (cloud, radiation, sea ice) appear more sensitive than classical weather dynamical variables (e.g., 500 hPa streamfunction). Further work along these lines is critically needed to discover methodologies to define rigorous climate metrics capable of determining climate prediction uncertainty. The essential question is this: what climate metrics for hindcast climate prediction accuracy can be used to determine the uncertainty bounds on future climate prediction accuracy? If this question can be answered, a second benefit will be the ability to more rigorously define climate observation requirements. 5. Concluding remarks Strategies for a more unified approach to climate system prediction currently include: (i) using IPCC class coupled climate models for predictions on time scales of days to decades; (ii) using NWP class models for seasonal to decadal prediction, after modification to properly account for changing radiative forcing; and (iii) developing very high resolution models with mesoscale processes explicitly resolved, either globally or by nesting high resolution regional models within global climate models. There are other emerging approaches as well, such as the concept of beginning integrations with higher 20 resolution to satisfy weather forecast requirements, then cascading down to lower resolution versions of the model with consistent physical parameterization schemes for longer time scale predictions. All of these approaches attempt to remove the distinction between weather and climate by taking advantage of the processes and mechanisms that characterize the climate system at all time and space scales. Questions are being raised as to whether model development efforts should be focused on improving AOGCMs before attempting ESMs, with their added complexities of coupled carbon and nitrogen cycles, chemistry, aerosols, dynamic vegetation and other components. With a unified modeling approach, the common processes can be addressed in both classes of models and progress can be made on both fronts. There are other potential benefits of using similar models for predictions on different time scales. Among them are skill improvement in both weather and climate forecasts, stronger collaboration and shared knowledge among those in the weather and climate “communities” working on physical parameterization schemes, data assimilation schemes and initialization methods, and shared infrastructure and technical capabilities. A significant step forward is a planned set of coordinated climate change experiments called the Coupled Model Intercomparison Project phase 5 (CMIP5; Taylor et al. 2009). The strategy is to approach the climate change prediction problem in a unified way with two classes of related climate models to address two time scales: higher resolution (~50 km) AOGCMs for decadal predications out to about the year 2035 (Meehl et al. 2009), and lower resolution (~200 km) versions of the same models but with a coupled carbon cycle and perhaps simple chemistry, dynamic vegetation, and prognostic aerosols for century and longer climate change integrations. The latter experiments would 21 quantify the magnitude of important feedbacks that will determine the ultimate degree of climate change in the second half of the 21st century (Meehl and Hibbard 2007; Hibbard et al. 2007). Computer resource and other limitations will likely dictate that resolving certain processes and phenomena could still require alternative strategies for many years into the future. A case in point is the need to represent hurricanes in a special class of climate models that could include embedded regional models with resolutions of about 5 km in order to adequately depict their extreme intensity and their effects on the ocean and the energy and water cycles. Additionally, current and future efforts with ESMs will allow for more complete assessments of the physics of climate change by including additional components and processes that are not essential to the shorter time scales. The computational burden of the ESMs will test the feasible limits of explicit resolution of multi-scale interactions and more regional discrimination of climate change impacts. Moreover, given relatively large systematic errors, the additional feedbacks from more interactive components of ESMs clearly increase the uncertainty in the magnitude and nature of the climate changes projected in future scenario simulations. The time-evolving ingredients required for future scenario integrations with ESMs also still must be estimated as a range of possible outcomes based to a large extent on the unpredictable nature of human actions. These, along with observational data needs, logistical issues related to coupling strategies and coupled initialization, and the scientific questions related to the myriad of unconstrained and poorly understood feedbacks, are significant aspects of these emerging ESMs that will continue to stretch both computational and human resources for the foreseeable 22 future. However, activities that have already begun indicate we are moving into a new and exciting era of climate system prediction that will, by nature of the converging interests, modeling tools and methodologies, produce greater interactions among previously separate communities and thereby provide better predictions of the climate system at all time and space scales. Acknowledgements The authors wish to thank two anonymous referees, as well as Kevin Trenberth, Joe Tribbia, Greg Holland, Tony Busalacchi and Rick Rosen for their constructive comments and suggestions on earlier versions of the manuscript. 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Space scales are indicated on the left, and possible forecasts are shown on the right. Though “synoptic” is the smallest time scale, these interactions could continue to infinitely short time scales and small space scales. Figure 2. Summary statistics of Niño-3.4 (170ºW-120ºW; 5ºN-5ºS) monthly SST anomalies. Time series and wavelet analysis for 100 simulated years from (a) CCSM3 (Collins et al. 2006); (b) after modifications to the CCSM3 parameterization for deep convection; c) the most recent 80 years of the observed HadiSST record, in addition to d) power spectra; e) autocorrelation; and f) average variance for each calendar month, for all model runs. See Neale et al. (2008) for details. Figure 3. Space-time spectrum of the 15°S-15°N symmetric component of precipitation, divided by the background spectrum. Observational estimates from an atmospheric reanalysis product are in the top panel and the lower panel shows results from a coupled climate model simulation. 31 Figure 4. (Top) Difference between annual mean precipitation from a multi-century control simulation with CCSM3 and observational estimates (1979-2007) from the Global Precipitation Climatology Project (Adler et al. 2003). (Bottom) Changes in simulated CCSM3 oceanic precipitation in a fully coupled simulation, but with ocean temperature and salinity restored to observed values in the Subtropical Eastern Boundary (STEB) regimes off the coasts of Southwest Africa, Peru-Ecuador-Chile, and BajaSouthern California. Note the reduction in rainfall biases not only locally, but across the tropical oceans. Adapted from Large and Danabasolgu (2006). Figure 5. One example of decadal scale predictability of the Atlantic MOC as computed in the GFDL CM2.1 global coupled climate model. A 5-member ensemble of predictability experiments is shown, in which each ensemble member used identical initial conditions for the ocean, land, and sea ice. These are taken from 1 January 1101 in a long control integration. The ensemble members differed in their atmospheric initial conditions, which come from January 6, 11, 16, 21, and 26 from the same year in the control integration. The quantity plotted is an index of the MOC, defined as the maximum stream function value in the North Atlantic each year, indicating the northward mass flow in the upper layers of the North Atlantic (1 Sverdrup = 106 m3 s-1). The relatively low spread among ensemble members in the first 10 years suggests substantial decadal predictability. Additional ensembles were calculated, some if which had similar predictability, and others of which had very little predictability. 32 Figure 6. Rainfall variability simulated by several AGCMs forced with observed sea surface temperatures. Each model simulation includes an ensemble of nine initial conditions, the differences in which are designed to mimic potential observational errors. The first column shows the rainfall variance of the ensemble mean of each model. This is the signal variance. The second column shows the variance about the ensemble mean or the variance due to atmospheric internal dynamics. The last column is the ratio of the ensemble mean variance divided by the internal dynamics variance, i.e., a signal to noise ratio. Results from WCRP/Clivar/WGSIP SMIP project and figure courtesy of In Sik Kang Seoul National University. Figure 7. Values of the Climate Prediction Index (CPI) of Murphy et al. (2004), and its 32 components (black boxes and bars, representing surface and atmospheric variables) from the perturbed physics ensemble (PPE). The components are calculated as the r.m.s. difference between simulated and observed present-day climatological mean patterns divided by the r.m.s value of the standard deviation of simulated interannual variations. The plot shows averages of values calculated separately for each season of the year. Bars show the full range of the ensemble distribution of values, boxes show the range encompassed by the 5th and 95th percentiles, and the horizontal line within each box shows the median. The CPI is calculated as the r.m.s. value of the 32 components for a given ensemble member. Adapted from Murphy et al. (2004: see their article for more detail). 33 Figure 1. Schematic illustrating interactions between various time and space scales in the climate system. Space scales are indicated on the left, and possible forecasts are shown on the right. Though “synoptic” is the smallest time scale, these interactions could continue to infinitely short time scales and small space scales. 34 Figure 2. Summary statistics of Niño-3.4 (170ºW-120ºW; 5ºN-5ºS) monthly SST anomalies. Time series and wavelet analysis for 100 simulated years from (a) CCSM3 (Collins et al. 2006); (b) after modifications to the CCSM3 parameterization for deep convection; c) the most recent 80 years of the observed HadiSST record, in addition to d) power spectra; e) autocorrelation; and f) average variance for each calendar month, for all model runs. See Neale et al. (2008) for details. 35 Figure 3. Space-time spectrum of the 15°S-15°N symmetric component of precipitation, divided by the background spectrum. Observational estimates from an atmospheric reanalysis product are in the top panel and the lower panel shows results from a coupled climate model simulation. 36 Figure 4. (Top) Difference between annual mean precipitation from a multi-century control simulation with CCSM3 and observational estimates (1979-2007) from the Global Precipitation Climatology Project (Adler et al. 2003). (Bottom) Changes in simulated CCSM3 oceanic precipitation in a fully coupled simulation, but with ocean temperature and salinity restored to observed values in the Subtropical Eastern Boundary (STEB) regimes off the coasts of Southwest Africa, Peru-Ecuador-Chile, and Baja-Southern California. Note the reduction in rainfall biases not only locally, but across the tropical oceans. All units are mm day-1. Adapted from Large and Danabasolgu (2006). 37 Figure 5. One example of decadal scale predictability of the Atlantic MOC as computed in the GFDL CM2.1 global coupled climate model. A 5-member ensemble of predictability experiments is shown, in which each ensemble member used identical initial conditions for the ocean, land, and sea ice. These are taken from 1 January 1101 in a long control integration. The ensemble members differed in their atmospheric initial conditions, which come from January 6, 11, 16, 21, and 26 from the same year in the control integration. The quantity plotted is an index of the MOC, defined as the maximum stream function value in the North Atlantic each year, indicating the northward mass flow in the upper layers of the North Atlantic (1 Sverdrup = 106 m3 s-1). The relatively low spread among ensemble members in the first 10 years suggests substantial decadal predictability. Additional ensembles were calculated, some if which had similar predictability, and others of which had very little predictability. 38 Figure 6. Rainfall variability simulated by several AGCMs forced with observed sea surface temperatures. Each model simulation includes an ensemble of nine initial conditions, the differences in which are designed to mimic potential observational errors. The first column shows the rainfall variance of the ensemble mean of each model. This is the signal variance. The second column shows the variance about the ensemble mean or the variance due to atmospheric internal dynamics. The last column is the ratio of the ensemble mean variance divided by the internal dynamics variance, i.e., a signal to noise ratio. Results from WCRP/Clivar/WGSIP SMIP project, and figure courtesy of In Sik Kang Seoul National University. 39 Figure 7. Values of the Climate Prediction Index (CPI) of Murphy et al. (2004), and its 32 components (black boxes and bars, representing surface and atmospheric variables) from the perturbed physics ensemble (PPE). The components are calculated as the r.m.s. difference between simulated and observed present-day climatological mean patterns divided by the r.m.s value of the standard deviation of simulated interannual variations. The plot shows averages of values calculated separately for each season of the year. Bars show the full range of the ensemble distribution of values, boxes show the range encompassed by the 5th and 95th percentiles, and the horizontal line within each box shows the median. The CPI is calculated as the r.m.s. value of the 32 components for a given ensemble member. Adapted from Murphy et al. (2004: see their article for more detail). 40 Toward A Seamless Process for the Prediction of Weather and Climate: the advancement of sub-seasonal to seasonal prediction A weather and climate research community’s collaborative effort for the advancement of the science of sub-seasonal to seasonal prediction and its socio-economic applications. Gilbert Brunet, Meteorological Research Division, Environment Canada 1 Melvyn Shapiro, National Oceanic and Atmospheric Administration, USA Brian Hoskins, Grantham Institute for Climate Change, Imperial College and University of Reading, UK Mitch Moncrieff, National Center for Atmospheric Research, University Corporation for Atmospheric Research, USA Randal Dole, Earth System Research Laboratory, National Oceanic and Atmospheric Administration, USA George N. Kiladis, Earth System Research Laboratory, National Oceanic and Atmospheric Administration, USA Ben Kirtman, Center for Ocean-Land-Atmosphere Studies Calverton and Rosenstiel School for Marine and Atmospheric Science, University of Miami, USA Andrew Lorenc, Met Office, UK Brian Mills, Adaptation and Impacts Research Division, Environment Canada Rebecca Morss, National Center for Atmospheric Research, University Corporation for Atmospheric Research, USA Saroja Polavarapu, Meteorological Research Division, Environment Canada David Rogers, Health and Climate Foundation, USA 1 Corresponding author address: Gilbert Brunet, Meteorological Research Division, Environment Canada, 2121 Trans-Canada Highway, Dorval, Quebec, Canada, H9P 1J3. E-mail : [email protected] Page 1 John Schaake, NWS Office of Hydrologic Development, National Oceanic and Atmospheric Administration Jagadish Shukla, Earth Sciences and Global Change, George Mason University, USA Submitted to BAMS, December 29, 2008. Page 2 ABSTRACT The World Weather Research Programme (WWRP) and World Climate Research Programme (WCRP) have identified collaborations and scientific priorities to accelerate advances in analysis and prediction at sub-seasonal to seasonal time scales in order to: i) advance knowledge of mesoscale to planetary-scale interactions and their prediction; ii) develop high-resolution global-regional climate simulations with advanced physical processes representation to improve the predictive skill of the sub-seasonal and seasonal variability of high-impact events, such as seasonal drought and floods, blocking, tropical and extratropical cyclones; iii) contribute to the improvement of data-assimilation methods for monitoring and prediction of the coupled ocean-atmosphere-land and Earth system; iv) develop and transfer related diagnostic and prognostic information tailored to user needs for accurate weather and climate forecasts and their socio-economic decision making. The document puts forward specific underpinning research, linkage and requirements necessary to achieve the goals of the proposed collaborative effort. Page 3 1. Introduction This document was prepared by scientists associated with the WWRP and WCRP. The leading component within the WMO/WWRP is The Observing-system Research and Predictability EXperiment (THORPEX) that aspires to accelerate improvements in the accuracy of 1-day to 2-week high-impact weather forecasts and the use of this information for the benefit of society. The WCRP is sponsored by the International Council for Science (ICSU), the World Meteorological Organization (WMO) and the Intergovernmental Oceanographic Commission (IOC) of UNESCO, with overarching objectives to determine the predictability of climate and the effect of human activities on climate. WWRP and WCRP share the responsibility to advance scientific knowledge and the science infrastructure to provide society and decision-makers with: i) accurate predictions of high-impact weather, climate and environmental events; ii) information for the reduction of socioeconomic and environmental losses related to high-impact weather, climate variability and change. The collaboration is timely because of recent advances in observing technologies, field and laboratory process studies, data-assimilation techniques, and coupled numerical models of weather and climate prediction aided by high-performance computing advances. The challenge is to leverage these advances to develop and apply new forecast and diagnostic products and increase their applications to the economy and society. The next generation of numerical climate and weather prediction operational systems, based on coupled ocean-land-atmosphere models, will greatly benefit from this broad effort. Page 4 The collaborative research is described within the framework of background, underpinning research, linkage and requirements. The research objectives are: • Seamless weather/climate prediction including Ensemble Prediction Systems (EPSs) • The multi-scale organisation of tropical convection and its two-way interaction with the global circulation • Data assimilation for coupled models as a prediction and validation tool for weather and climate research • Utilization of sub-seasonal and seasonal predictions for social and economic benefits 2. Seamless Weather/Climate Ensemble Prediction Systems (EPSs) Background: A fundamental principle of seamless prediction is that the global coupled atmosphere-ocean-land-cryosphere system exhibits a wide range of dynamical, physical, biological and chemical interactions involving a scale of spatial and temporal variability of the overall system. The traditional boundaries between weather and climate are non-physical. As explained in Hurrell et al. (2009) for example, the slowly varying planetary-scale circulation preconditions the environment for the “fast-acting” micro-scale Page 5 and mesoscale processes of daily high-impact weather and regional climate. As an example, there is evidence that natural climate variations, such as ENSO and the North Atlantic Oscillation/Northern Annular Mode, significantly alter the intensity, track and frequency of hazardous weather, such as extratropical and tropical cyclones and associated high-impact weather. Longer-term regional variations have been observed, such as decadal variability in tropical cyclones and the multi-decadal drought in the Sahel region. Conversely, small-scale processes have significant up-scale effects on the evolution of the large-scale circulation and the interactions among the components of the global climate system. The challenge facing the weather and climate science communities is to improve the prediction of the spatial-temporal continuum of the interactions between weather/climate and Earth-system 2 . Bridging the gap between forecasting high-impact events at daily-to-seasonal timescales would benefit from coordinating the activities of the WCRP CLIVAR Climate-system Historical Forecast Project (CHFP) and the THORPEX Interactive Grand Global Ensemble (TIGGE). There is evidence that weather and climate ensemble prediction has greater use and value from a Multi-model Ensemble Prediction System (MEPS) approach. Compelling evidence is that different physics, numerics and initial conditions of the contributing EPSs provide more useful probability density functions (PDFs) than those obtained from a single EPS. Moreover, the MEPS approach identifies which outcomes are EPS independent, and hence likely to be robust. 2 In this context the Earth-system is understood to mean the atmosphere and its chemical composition, the oceans, sea-ice and other cryosphere components, the land-surface, including surface hydrology and wetlands, lakes, and short-time scale phenomena that result from the interaction between one or more components, such as ocean waves and storm surge. On longer (e.g. climate) time scales, the terrestrial and ocean ecosystems, including the carbon and nitrogen cycles, and slowly varying cryosphere components such as the large continental ice sheets and permafrost, are also considered to be part of the Earth-system. Page 6 While a goal of weather and climate EPS is to produce model outputs that are unbiased, together with ensemble forecasts that properly account for uncertainty, models have biases and atmospheric ensemble predictions only partially account for the true uncertainty. Because of the complexity of the weather and climate systems, it is a non-trivial task to post-process model output for their applications. This is especially true for seamless forecast applications where a wide range of future time horizons must be addressed. Efforts have largely focused on Model Output Systems (MOS) approaches that are very useful but only partially meet the needs of users. This is because the skill and uncertainty of weather and climate forecasts are highly space and time-scale dependent. Accounting for this dependency is critical for many EPS applications that are sensitive to the space-time variability of weather and climate events. The necessity of evaluating MEPs biases and forecasting skill in the sub-seasonal time scale will require hindcast experiments. Ensemble prediction systems are widely used for weather and environmental (e.g. hydrological) prediction by operational services throughout the world. Ensemble forecasts not only offer an estimate of the most probable future state of a system, but also provide an estimate of the range of possible outcomes. From the perspective of decision-making, assessing how climate sub-seasonal to seasonal variations may alter the frequencies, intensities, and locations of high-impact events is an issue of the highest priority. Many users are risk averse, in that they are often more concerned with quantitative estimates of the probability of occurrence of high-impact events than with the most probable future state. Page 7 Interaction among spatial and temporal scales are fundamental to weather and climate. Atmospheric, hydrologic, biospheric, cryospheric and oceanic models, and their interactions, are essential to both weather and climate predictions. Modelling and predicting seasonal climate anomalies requires a realistic treatment of the effects of sea-surface temperature, sea ice, snow, soil wetness, vegetation, stratospheric processes, and chemical composition. It is well recognized that sub-seasonal and seasonal prediction systems must realistically represent day-to-day weather fluctuations and their statistical characteristics. The collaboration between the CHFP and TIGGE activities will provide the unique opportunity to bring the weather and climate communities together to address MEPS on time scale from weeks-to-season. As an example, there is indication (Palmer et al. 2008) that the statistical characteristics of dynamical and physical processes, like the atmospheric response to sea surface temperature, in seasonal forecast based on a MEPS can be utilize to assess the reliability of climate projection done with the same MEPS. Operational weather forecast systems provide our best representation of synoptic-scale and mesoscale weather events. However, these short-range to medium-range (~10 days) forecast models traditionally have not addressed key interactions, e.g. at the air-sea-ice interface. We know that this is problematic on time scales beyond two weeks. It may well be an impediment to improving forecasts on shorter time scales, particularly for high-impact weather events. These events include extratropical and tropical cyclones that, through interaction with the ocean mixed layer, can precondition the atmosphere-ocean interface for subsequent storms. Seasonal prediction systems, on the other hand, typically Page 8 include such coupled interactions, yet they fail to adequately resolve mesoscale weather systems. Consideration of current operational ENSO forecasting indicates that the coupled models give good guidance as to the future evolution of SST up to 6 months in advance. However, there are profound gaps in our prediction capabilities in part due to large systematic errors in the coupled models. These errors are perhaps, most noticeable in the equatorial Atlantic where the coupled models fail to capture the east-west SST contrast. These mean state errors and errors in the evolution of climate anomalies have been addressed semi-empirically, such as to improve the individual physical parameterizations in the models and allow for imperfect models in EPSs and MEPSs (Hurrell et al, 2009). The seamless prediction approach raises a third problem, that current climate models poorly represent the statistics of weather events for which there is predictive skill. Moreover, the specification of accurate initial conditions has an impact on the skill of daily-to-seasonal prediction (Section 4). The issue then becomes: What are the important missing elements of the statistics of the physical processes and data-assimilation aspects? The typical assumption for sub-grid scale parameterization is to assume that the statistics of sub-grid scale processes can be parameterized in terms of the grid-scale variables. An alternative strategy is to increase the grid-resolution of the model and explicitly represent key dynamical/thermodynamical processes (Section 3). While this approach has yielded some improvements, it is limited by the available computing capacity and incomplete explicit representations. Page 9 Underpinning Research: A central science issue is the development and use of ensemble-based modelling in order to improve probabilistic estimates of the likelihood of high-impact events. Because of the relatively small scale of many events, there will be an ongoing need to improve model resolution and develop alternative downscaling techniques, especially for specific user-applications such as hydrology. The requirements for both ensemble prediction methods and greatly increased spatial resolution imply a need for substantial future improvements in computational power and data storage. There are a wide range of scale interactions to be considered within the context of improving EPSs. One of the most critical is the manner in which moist convection and its associated mesoscale organisation drive regional and global circulations. Such interactions directly affect the capability to simulate important climatic and weather features such as ENSO and tropical cyclones, respectively. They also affect simulations at higher latitudes, as the export of wave energy and momentum from the tropics is an important driver of mid-latitude circulations. These research issues are discussed in Section 3. There is also the problem of forecasting initial conditions in the stratosphere. The stratosphere has more intrinsic memory than the troposphere, with significant intra-seasonal memory (during winter) in the polar regions, and inter-annual memory in the tropical winds. Thus, correct stratospheric initial conditions, and realistic retention of those conditions in the model, are required for accurate sub-seasonal and seasonal prediction (Section 4). Page 10 Linkages: Both the TIGGE and CHFP communities are planning multi-model multi-institutional numerical experiments using state-of-the-art models and computing systems, which generate large data sets that need to be shared. The sharing of sub-seasonal to seasonal prediction datasets, from both retrospective forecasts and near real-time forecasts, requires a common framework for comparison and diagnostic activities to bridge the TIGGE and CHFP communities. Requirements: Terms of reference for collaboration between TIGGE and CHFP must be established. In particular, a limited number of data archive centres need to be identified and support the scientific and user communities. These databases will require unprecedented storage capacity. Note that TIGGE is already providing such support to the participating centres for MEPS, but limited to two-week forecasts. 3. Tropical convection and its two-way interaction with the global circulation Background: Tropical convection exhibits a remarkable variability and organization across space- and time-scales, ranging from individual cumulus clouds, to mesoscale cloud clusters to super clusters (families of mesoscale clusters) organized within synoptic-scale disturbances. Tropical synoptic activity is often associated with equatorially-trapped wave modes of the atmospheric circulation (Wheeler et al. 2000; Yang et al. 2007), which in turn organize tropical convection: a highly nonlinear scale-interaction problem. Forecast skill in the tropics is therefore dependent upon representing both equatorial waves and convective organization. The limitation of contemporary weather and climate-prediction Page 11 models to realistically represent the life-cycle of equatorial waves and organized convection is usually attributed to inadequacies in parameterizations of moist physical processes. Such basic inadequacies compromise the skill of forecasts on timescales of days to weeks and beyond, including projections of climate change. It follows that the parameterization of organized tropical convection is a critical issue. In the Madden Julian Oscillation (MJO) and other convectively coupled equatorial waves and in monsoons, precipitating convection organizes into coherent structures (convective clusters) on spatial scales up to 1000 times that of an individual cumulonimbus. The MJO excites Rossby wave trains that propagate into extratopical Pacific and North American and North Atlantic regions causing episodes of high-impact weather. In Table 1, a time-lagged likelihood study (Lin et al. 2008) shows that the NAO index for different phases of the MJO indicates a two-way connection between the NAO and the tropical convection of the MJO. A possible triggering and/or amplifying mechanism for MJO is linked to an important change of upper zonal wind in the tropical Atlantic associated with the NAO. Advances in the representation of the tropical-extratropical interactions would lead to more skilful prediction of regional-to-global weather and climate. This success will translate into socio-economic applications for improving early-warning systems for weather-climate induced hazards, e.g. agriculture, water management, and health. The MJO is considered to be a significant aspect of ENSO through its forcing of the equatorial ocean (e.g. Kutsuwada and McPhaden 2002). We are poised to advance the representation of convective Page 12 organization in global weather, climate and Earth-prediction models given our knowledge of the systemic properties of organized tropical convection. There is substantial interaction between the tropical and extratropical atmosphere from synoptic to decadal time scales and beyond. At the synoptic scale, energy originating at high latitudes propagates into the tropics through Rossby wave dispersion, initiating in regions of upper-level westerly flow in the Pacific and Atlantic storm tracks. Such wave trains frequently excite convection within the Inter Tropical Convergence Zone (ITCZ), transporting moisture from the tropical boundary layer into the upper-troposphere and transporting it poleward ahead of troughs extending into extratropics of both hemisphere (Knippertz 2007). Moisture transport between the tropics and extratropics is enhanced during such synoptic-scale events. Australia, Europe and North and South America are impacted by the tropical moist intrusions, sometimes leading to sustained episodes of heavy precipitation and flooding. Other aspects of sub-seasonal variability within the extratropical storm tracks that pose problems for both weather forecast and climate models are the initiation and maintenance of blocking and wave-mean flow interactions. These contribute to variability in teleconnection patterns, such as the North Atlantic Oscillation (NAO) and Pacific-North American (PNA). Underpinning Research: Research with cloud-system resolving models (CSRMs) should be undertaken using a horizontal grid-spacing of 1 km or finer, as well as CSRMS nested in coarser global simulations. Present computer capacity precludes cloud-resolving representations of moist convection in global sub-seasonal-to-seasonal deterministic Page 13 prediction models and EPSs. It is therefore essential to accelerate efforts to improve traditional convective parameterizations. The following research foci were identified at the March 2006, THORPEX and WCRP international workshop at the ICTP, Trieste, Italy (Moncrieff et al., 2007): • Develop metrics/description of the daily, sub-seasonal, and seasonal characteristics of the MJO and organized convection that encapsulate our knowledge of these interactions, and assess model/forecast validation with the aim of guiding future research. • Promote collaboration on the use of Numerical Weather Prediction (NWP)-type experiments for exploring error growth in simulations of the MJO and other modes of organized convection and of two-way interactions between tropical and extratropical weather and climate systems. • Integrate process studies of observed organized convection based on satellite and ground-based remote sensing (including 3D Doppler radar), with in situ measurements to provide improvements and validation of high-resolution models as it is proposed in the WWRP/WCRP Year of Tropical Convection (Moncrieff and Shapiro, 2009). • Consider the feasibility and strategy for the design and implementation of field campaigns on organized convection (e.g., over the Indian Ocean) guided by high-resolution modelling studies. Page 14 • Develop a strategy for demonstration and assessment of socio-economic benefits and applications arising from advanced knowledge and predictive skill of multi-scale tropical weather/climate events on timescales of days to seasons. Linkages: In order to advance the aforementioned research objectives it will be necessary to: i) promote collaboration on forecast demonstration experiments coupling prediction systems based on statistical techniques with those based on dynamical models to assess the value of improved MJO/organized convection simulations for deterministic and ensemble prediction on timescales up to 4 weeks; ii) promote the transfer of advanced knowledge and predictive skill of organized convection into improvements for operational NWP and climate models through links with key groups within GEWEX/CLIVAR/THORPEX, as well as operational prediction centers; iii) promote international collaboration on CSRM studies for exploring the upscale energy cascade associated with organized convection in order to optimize use of computing resources and to share the development of data analysis tools. Requirements: Achieving the goals of the above research objectives will require: i) operational high-resolution global analysis and 10-day forecasts; ii) access to High-Performance Computing (HPC) centers for high-resolution regional and global numerical weather, climate and environmental science activities (Shapiro et al., 2009, Shukla et al., 2009). This will lead to efficient numerical models, advanced experimental design, and improved data processing, distribution and analysis; iii) maintaining existing and implementing planned satellite missions that observe tropical cloud and precipitation Page 15 to provide long-term capability for process studies, data assimilation and prediction in collaboration with WMO Global Climate Observing System (GCOS). This includes access to experimental in situ and satellite observations to establish data bases for diagnostic studies. 4. Data assimilation for coupled models as a prediction and validation tool for weather and climate research Background: Fundamental issues, related to data-assimilation at different scales, must be addressed before we can design “seamless” Earth system prediction systems. Historically, data assimilation research and its applications have focussed mostly on the requirements of operational forecast deliverables for short to medium-range applications. As operational forecasting has extended into sub-seasonal prediction, improved data-assimilation in the tropics, ocean, upper atmosphere and Earth-system information have become necessary. A unified system will accelerate improvement of weather/climate models and applications as advocated by Palmer and Webster (1995). The return on the investment by society in existing and new observations will be significantly increased by advances in data assimilation systems. Data assimilation is the process of fitting a numerical prediction model to observations, allowing for the error characteristics of both. The model carries information in time, allowing more observations to influence the estimated state at any time, so using a good model is crucial. The models used in existing NWP systems are therefore designed to utilise available computer power: future Earth system models are anticipated to do Page 16 likewise. Practical assimilation methods have to allow for the error characteristics of model forecasts, without the enormous computer costs required to calculate them fully. Data assimilation innovations (observation minus prediction) allow a diagnosis of errors while they are still small, before they interact significantly with other fields. This established NWP approach is also proving beneficial for climate models, see Rodwell and Palmer (2007), through application in centres where climate and NWP modelling is unified and by the WGNE Transpose AMIP programme. The method permits direct comparison of parameterised variables such as clouds and precipitation with synoptic observations, satellite and field campaign measurements. Underpinning Research: It will not be possible, with foreseeable computers, to conceive of a single data-assimilation method for an Earth system model with the complexity required for seamless prediction. What is possible is a composite system, applying different assimilation steps to different scales and components of the total Earth system model. These can be based on the methods currently used in specialised systems, such as NWP. Recent attempts to build such a composite system use a two-way interaction model for the forecast step, but apply assimilation to each component separately. Ideally, the assimilation should be coupled, so that observed information in one component is used to correct fields in the other coupled component. One of the few attempts to do this is coupled land-atmosphere assimilation, where soil moisture is corrected based on errors in atmospheric forecasts of near-surface temperature and humidity. Yet many land surface modellers distrust such soil moisture analyses; because of compensating errors they can Page 17 give soil moistures which reduce atmospheric forecast errors but do not correspond to actual soil moistures nor do they conserve the water budget. Coupled data assimilation must be accompanied by a much better characterization of the errors and biases in components of a coupled model (e.g. atmosphere and the upper ocean). Only then can we successfully correct them as part of the data assimilation process. In addition the following topics need addressing for a seamless coupled system: One challenge that needs to be addressed in the seamless prediction problem is the fact that assimilation methods attempt to estimate only a certain range of scales (temporal and spatial). For example, all current operational implementations of 4D variational assimilation compare measurements to model forecasts over a fixed assimilation window and assume that the flow evolution is weakly nonlinear during this window. This implies that time and spatial scales for which this is true can be well resolved if those same scales are observed. Thus, for the global NWP assimilation problem, with an assimilation window of 6 or 12 hours, synoptic scale flow can be estimated since it is well observed. Similarly, a high resolution cloud-scale model with a very short assimilation window can resolve fine scales if they are observed, for example by Doppler radar. However, when a model can simulate a very wide range of scales of motion, this method of assimilation can be limiting. Thus, for a global model with extremely high resolution, synoptic scale flow has a nonlinear time scale commensurate with the assimilation window, but convective scale motions do not. In addition, convective scale motion is not completely observed over the whole globe. Thus 4D variational assimilation methods (as implemented currently) rely on the fact that larger scales can generate smaller Page 18 scales through nonlinear interactions. The final analysis of the global model with extremely high resolution will contain fine scale features which are developed during the nonlinear forecast. However, these features may not match the observed flow on these fine scales. An alternate approach to the global prediction problem uses ensembles of forecasts. Then an ensemble of possible fine scale structures will be obtained. In this case, it would be useful to know not only which ensemble members are most accurate, but also whether observations can help constrain the range of the ensemble in terms of the power at scales which are not completely observed. In other words, how can assimilation methods make use of information about power on these scales? Such information might come directly from satellite images or indirectly from measurements of eddy-fluxes for instance from observations of large scales of the MJO, plus an understanding of the convection necessary to drive them, or from estimates of an eddy-flux needed to give the observed ocean state, or from measurements of the age of stratospheric air and the Brewer-Dobson circulation plus an understanding of the vertical eddy fluxes which drive this circulation. Part of the problem with these types of indirect measurements is that they contain information about time scales which are much longer than those resolved by current assimilation schemes. Thus, a major challenge will be to build a composite assimilation system for the Earth-system capable of dealing with a wide range of time scales, from atmospheric to oceanic time scales. Besides obtaining an initial condition for launching a weather forecast, data assimilation methodology can also be used for parameter estimation. Since the largest uncertainties with climate and weather models are associated with their physical parameterizations, Page 19 improvements in these schemes may reap great benefits. This process has been used in the NWP context, but is relatively new for climate models. It is simple enough to determine uncertain parameters for a given parameterization scheme (such as gravity wave drag or convective schemes). However, if the scheme is not of the correct form (i.e. it has too few or too many parameters, or is missing processes) then the results of assimilation may not lead to useful parameter estimates. However, the failure of the assimilation process could provide an indication of the inappropriateness of a given scheme without directly indicating how it should be improved. Thus, close collaboration with model developers is needed to interpret assimilation results and address flaws in specific schemes. As an example, Figure 1 shows that a gravity wave drag (GWD) scheme can provide the dominant forcing in the mesosphere for some phenomena (here a stratospheric sudden warming). The GWD parameterization is responsible for the mesospheric cooling (upwelling) simulated at 80 km over the polar cap in an ensemble of forecasts that captures the stratospheric warming (thick solid). For the forecasts that miss the stratospheric warming (thin solid curve), the upwelling and associated cooling due to parameterized waves is much smaller. In these experiments, observations were only assimilated below 50 km so the mesospheric response occurs entirely through the model dynamics. This example shows that the zonal-mean mesosphere is slaved to the stratosphere through GWD, raising the prospect of using data assimilation of mesospheric observations to constrain GWD parameters. Linkages: Data assimilation, fitting models to observations, should be a key component in model development. This already occurs for NWP, but is less common for climate models. Page 20 The trend toward unified weather/climate models, and activities such as the WGNE Transpose-AMIP programme should help this. The coupled seamless prediction system requires unified data assimilation and model development. There is need to test “climate modelling in a deterministic prediction mode” as advocated by Morel (2007). The utilization of deterministic forecasts to validate climate models has already been forged for the middle atmosphere through the WCRP SPARC programme. Ocean assimilation is now part of seasonal prediction programmes. Environmental monitoring initiatives have linked assimilation with models of atmospheric composition. Requirements: New resources would accelerate the development of seamless coupled model and data assimilation systems discussed above. One mechanism to achieve this is through the various re-analysis projects which are designed to provide a historical record for climate studies as promoted also in Trenberth (2008). In the past these have been based on operational NWP systems; most of the resources were directed towards gathering and quality controlling the observations and performing the assimilation. Next-generation developments can no longer rely on operational forecast systems but require an interdisciplinary research programme on data-assimilation methodologies. 5. Socio-Economic Applications of Sub-Seasonal and Seasonal Predictions Background: The primary rationale for pursuing a seamless prediction process is that the resulting information will influence decisions that contribute to the achievement of societal objectives, including: i) protection of life and property; ii) enhancement of socioeconomic well-being; iii) improvement of the quality of life; and iv) sustainability of the environment Page 21 (Shapiro et al., 2009). Such objectives are embodied in the broad mandates, missions, and visions of national governments or international organizations (e.g., Rogers et al. 2007). The rationale has merit in that weather and climate predictions to date have made significant albeit variable contributions to a wide range of economic sectors and public policy issues, including: i) agriculture, water resources and the natural environment; ii) human health; iii) tourism and human welfare; iv) energy, transport and communications; v) urban settlement and sustainable development; vi) economics and financial services (WMO 2008). Weather forecasts have been proven useful for many forms of tactical decision-making in these sectors and the number of applications to longer-term operational and planning decisions—including those related to climate change—is growing. However, there is considerable evidence of underutilization of weather and climate information that may be rooted as much in a lack of understanding of the decision-making context and requirements of users as in the precision or accuracy of atmospheric predictions. A variety of constraints make it difficult for decision-makers to benefit fully from scientific information and for the science to satisfy users’ needs (Jasanoff and Wynne 1998, Morss et al. 2005, Rayner et al. 2005). A seamless prediction process may help resolve this problem. Take public health for example. Figure 2 depicts a sample of public health decisions covering a wide range of temporal scales. Each may be influenced by weather, climate and even climate change predictions, but only in combination with other pieces of information (e.g., expected disease outbreak patterns, available medical supplies and resources, etc.) that more directly relate to important health outcomes of interest to decision-makers. In Page 22 this sense the term seamless extends beyond the realm of atmospheric predictions to include consideration of biophysical and socio-economic factors that are pertinent to successful decision-making and outcomes from the user’s perspective. Potential benefits are greatest in developing nations, especially in Africa where at least 30 climate-sensitive diseases pose a major threat to the lives and livelihoods of millions of people. More than 500 million Africans live in regions endemic to malaria, which is highly correlated with the seasonal climate, and a further 125 million live in regions prone to epidemic malaria, which is correlated with climate anomalies (Connor and Thomson 2005). The response time to a particular outbreak or epidemic is greater than one week and often much longer, depending on the time it takes to identify cases and integrate the information from different clinics—this makes this issue ideal for atmospheric prediction applications at seasonal and sub-seasonal timescales, the key integrating period for seamless weather and climate prediction. Developing an enriched concept of seamless prediction with WWRP/WCRP will require active involvement of researchers from physical and social science disciplines along with service providers and users/decision-makers (Morss et al. 2008). Previous experience at the science-society interface has demonstrated that much scientific research provides little, if any, direct benefit to society without focused interdisciplinary efforts dedicated to providing relevant, useable information that helps key decision-makers address specific societal issues (Fothergill 2000, White et al. 2001). Page 23 Underpinning Research: The specific type of research required will depend on the weather- or climate-sensitive issue, geographic area, and decision context, as will the most appropriate disciplinary expertise and methodologies. Priority projects may be selected based on their potential contribution to the societal objectives listed previously (e.g., locations with greatest weather- and climate-related mortality or property loss; vulnerable economic sectors) or where existing programmes, activities and interdisciplinary collaborations can be leveraged (e.g., MERIT project 3 ). Regardless, efforts should focus on: i) understanding the relevance of weather and climate information to the issue, the decision context, and decision-maker’s information needs; ii) identifying new or improved weather- and climate-related information that is likely to help decision-makers address the socioeconomic issue; iii) exploring the most effective mechanisms for generating and communicating the decision-relevant weather and climate information; iv) assessing the use and value in decision-making, making refinements as needed; v) implementing strategies for sustainable, effective provision of the most valuable new weather- and climate-related information and vi) transferring knowledge and experiences to other regions. Linkages: Linkages are needed with: i) policy- and decision-makers from industry, government, and non-governmental organizations involved in managing the weather- or climate-sensitive issue or activity of concern; ii) weather, climate and hydrometeorological service 3 Meningitis Environmental Risk Information Technologies (MERIT) project http://merit.hc-foundation.org/aboutMERIT.html Page 24 providers; and iii) social and interdisciplinary scientists with expertise in the issue or activity of concern. Examples of specific existing programs to link with include: i) the Hydrological Ensemble Prediction Experiment (HEPEX), an international project to advance technologies for hydrological forecasting comprised primarily of researchers, forecasters, water managers, and users; ii) Climate for Development in Africa Programme (ClimDev Africa), a major effort designed to increase the availability of climate information to communities and economic sectors throughout Africa; iii) the World Bank’s Disaster Risk Reduction program, which plans to help modernize service providers so that the operational services can take advantage of scientific advances in a timely manner; and iv) the Global Environmental Change and Human Health initiative (Confalonieri and McMichael 2007), one of four joint projects of the Earth System Partnerhsip (ESSP) and geared to quantifying and modeling health impacts and vulnerability and evaluating adaptation measures. Efforts should also contribute to the WMO Madrid Conference Action Plan (WMO 2007). Requirements: The specific capacity needed depends on the socioeconomic application area, the country or region, and the project. Within each country or region, it is important to determine where the greatest potential for use of sub-seasonal to seasonal forecasts exists, and where largest social benefit and biggest buy-in can be realized. These areas can then be used as a focus for articulating requirements. Another need is for closer ties among weather and climate research centres that can provide state-of-the-art weather and climate forecast information in a form that can be easily accessed by non-atmospheric scientists, Page 25 user groups interested in applying the information, and intermediaries who understand both the scientific and socioeconomic issues (Shapiro et al., 2009). Liaison with programmes such as WAS*IS (Demuth et al. 2007), START (http://www.start.org) and DISCCRS (http://www.disccrs.org/) will be of particular assistance in developing the pool of interdisciplinary scientists. Aknowledgement: We would like to thank the comments and/or support of Antonio J. Busalacchi, Philippe Bougeault, Eric Brun, David Burridge, John Church, Pascale Decluse, Michel Déqué, Russel Elsberry, Tom Hamill, Ann Henderson-Sellers, Gudrun Magnusdottir, Martin Miller, L. Aogallo, Steven Pawson, Kamal Puri, Adrian Simmons, Julia Slingo, Soroosh Sorooshian, Istvan Szunyogh, Theodore Shepherd, Ilana Wainer, Duane Waliser and Laurie Wilson. 2.4 References Confalonieri, U. and A. McMichael (eds.), 2007: Global Environmental Change and Human Health Science Plan and Implementation Strategy. Earth System Science Partnership (DIVERSITAS, IGBP, IHDP, and WCRP) Report No.4; Global Environmental Change and Human Health Report No.1 (Confalonieri, U. and A. McMichael, co-chairs) (http://www.igbp.net/documents/GECHH-SP.pdf) Connor, S.J. and M.C. Thomson, 2005: Epidemic malaria: preparing for the unexpected. A policy brief, in SciDevNet dossier on malaria, SciDevNet. Demuth, J. L., E. Gruntfest, R. E. Morss, S. Drobot, and J. K. Lazo, 2007: Weather and Society * Integrated Studies (WAS*IS): Building a community for integrating meteorology and social science. Bull. Amer. Meteor. Soc., 88, 1729-1737. Page 26 Fothergill, A., 2000: Knowledge transfer between researchers and practitioners. Nat. Hazards Rev., 1, 91–98. Hurrell, James, G.A. Meehl, D. Bader, T. Delworth, B. Kirtman and B. Wielicki, 2009: Climate system prediction. To appear in BAMS. Jasanoff, S., and B. Wynne, 1998: Science and decisionmaking. Human Choice and Climate Change, S. Rayner and E. L. Malone, Eds., Battelle Press, 1–87. Kutsuwada, K., and M. McPhaden, 2002: Intraseasonal variations in the upper equatorial Pacific Ocean prior to and during the 1997-1998 El Niño. J. Phys. Oceanogr., 32, 1133-1149. Knippertz, P., 2007: Tropical-extratropical interactions related to upper-level troughs at low latitudes. Dyn. Atmos. Oceans, 43, 36-62. Lin, H., G. Brunet, J. Derome 2008 An observed connection between the North Atlantic Oscillation and the Madden-Julian Oscillation. To appear in Journal of Climate. Moncrieff, M.W., M.A. Shapiro, J. Slingo and F. Molteni, 2007: Collaborative research at the intersection of weather and climate. WMO Bulletin, Vol.56 (3), July 2007, p.204-211. Moncrieff, M.W., M.A. Shapiro, 2009: A scientific basis for addressing the multi-scale organization of tropical convection and its interaction with the global circulation. To appear in BAMS. Morel, P. 2007: Can GEWEX become the cutting edge of WCRP? GEWEX/WCRP News, Vol.17, No. 4,7-11) Page 27 Morss, R. E., O. V. Wilhelmi, M. W. Downton, and E. Gruntfest, 2005: Flood risk, uncertainty, and scientific information for decision-making: Lessons from an interdisciplinary project. Bull. Amer. Meteor. Soc., 86, 1593–1601. Morss, R. E., J. K. Lazo, B. G. Brown, H. E. Brooks, P. T. Ganderton, and B. N. Mills, 2008: Societal and economic research and applications for weather forecasts: Priorities for the North American THORPEX program. Bull. Amer. Meteor. Soc., 89, 335-346. Palmer. T.N. and P.J.Webster, 1995: Towards a unified approach to climate and weather prediction. Global Change. EUR 15158, 427pp, European Commission. ISBN 92-826-7757-5 Palmer, T.N., F. J. Doblas-Reyes, A. Weisheimer, and M. J. Rodwell 2008: Toward Seamless Prediction: Calibration of Climate Change Projections Using Seasonal Forecasts. Bull. Amer. Meteor. Soc., 89, 459–470. Rayner, S., D. Lach, and H. Ingram, 2005: Weather forecasts are for wimps. Climatic Change, 69, 197-227. Ren, S., S. M. Polavarapu, and T. G. Shepherd (2008), Vertical propagation of information in a middle atmosphere data assimilation system by gravity-wave drag feedbacks, Geophys. Res. Lett., 35, L06804, doi:10.1029/2007GL032699. 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E., 2008: Observational needs for climate prediction and adaptation. WMO Bulletin, 57 (1), 17-21. Wheeler, M., G.N. Kiladis, and P.J. Webster (2000), Large-scale dynamical fields associated with convectively-coupled equatorial waves, J. Atmos. Sci., 57, 613-640. White, G. F., R. W. Kates, and I. Burton, 2001: Knowing better and losing even more: The use of knowledge in hazards management. Environ. Hazards, 3, 81–92. WMO (World Meteorological Organization) 2007: Madrid Conference Statement and Action Plan. Adopted by the International Conference on Secure and Sustainable Living: Social and economic benefits of weather, climate and water services. Madrid, Spain 19-22 March 2007. WMO JN 13753. Page 29 WMO (World Meteorological Organization) 2008: Secure and Sustainable Living: The findings of the Madrid Conference on Social and Economic Benefits of Weather, Climate and Water Services. To be published. Yang, G. –Y., B. Hoskins, and J. Slingo (2007), Convectively coupled equatorial waves. Part I: Horizontal and vertical structures, J. Atmos. Sci., 64, 3406-3423. Page 30 Phase Lag −5 1 2 3 −35 −40 4 Lag −4 Lag −3 5 6 7 +49 +49 +52 +46 −40 8 +46 Lag −2 +50 Lag −1 Lag 0 Lag 1 Lag 2 +47 Lag 3 +48 +45 −42 +47 +45 −46 +50 +42 Lag 4 Lag 5 −41 −41 −41 −48 −39 −48 −42 −41 Table 1: Lagged probability composites of the NAO index with respect to each MJO phase. Lag n means that the NAO lags the MJO of the specific phase by n pentads, while Lag –n Page 31 represents that the NAO leads the MJO by n pentads. Positive values are for upper tercile, while negative, while negative for low tercile. Values shown are only for those pass a 0.05 significance level according to a Monte Carlo test. (From Lin et al. 2008) Page 32 Figure 1: Residual vertical velocity (w*) induced by the resolved waves (dashed) and non-orographic gravity wave drag (GWD) parameterization (solid) in the steady, “downward control” limit. The calculation is area weighted and averaged over the polar cap (60°-90°S) and over the period Sept. 25 – Oct. 1, 2002 for an ensemble of 3 forecasts that capture (thick curves) or miss (thin curves) the 2002 stratospheric sudden warming in the southern hemisphere. Positive w* is associated with cooling, and negative w* with warming. The GWD parameterization is responsible for the mesospheric cooling (upwelling) around 80 km in the forecast “hits” (thick solid). (From Ren et al. 2008) Page 33 Figure 2. Simplified set of public health- related decisions and supporting information Page 34 The Multi-scale Organization of Tropical Convection and its Interaction with the Global Circulation: Year of Tropical Convection (YOTC) Capsule: International research at the weather-climate intersection utilizing observations, highresolution prediction systems, cloud-system models and theory with emphasis on representing convective organization in global models. Mitchell W. Moncrieff1, National Center for Atmospheric Research, USA Duane E. Waliser, Jet Propulsion Laboratory, USA Melvyn . A. Shapiro, CIRES/NOAA/Univ. Colorado, USA; Geophysics Institute, University of Bergen, Norway Ghassem R. Asrar, World Meteorological Organization, Geneva, Switzerland Leonard A. Barrie, World Meteorological Organization, Geneva, Switzerland Submitted to Bull. Amer. Meteor. Soc. 1 Corresponding author address: Mitchell W. Moncrieff, Mesoscale and Microscale Meteorology Division, National Center for Atmospheric Research, 1850 Table Mesa Drive, Boulder, CO 80305, USA. E-mail: [email protected] 1 ABSTRACT Improving the representation of precipitating convection and its multi-scale organization in regionalto-global weather prediction and climate models is a critical challenge addressed by a new international research project, the Year of Tropical Convection (YOTC). This project provides the framework, infrastructure and research objectives for an unsurpassed integrated observationalnumerical research resource with emphasis on time scales up to seasonal, thereby addressing issues at the intersection weather and climate. The research employs high-resolution operational global prediction models, operational/research satellite-borne, air-borne and surface-based observations, ultra-high-resolution regional-to-global cloud-system resolving models, and idealized models. The YOTC is a key element of “seamless prediction” described in Brunet et al.; Shapiro et al; Shukla et al., this issue. 1. Introduction The prediction of weather and climate and the global hydrological cycle involves moist physical processes and how they are coupled to the large-scale circulation of the atmosphere and the oceanic boundary layer. Precipitating convection organized into cloud systems on mesoscales (~10-1000 km) represents a continuum of interaction whose thermodynamic and dynamical properties affect the regional-to-global atmospheric circulation. Improving the representation of moist convection in models used for regional-to-global weather prediction and climate prediction requires a more realistic treatment of organized convection. New approaches are available to comprehensively address convective organization, an issue that has confronted prediction models since their inception over four decades ago. In response to this challenge, a team of scientists inaugurated an integrative research project, the Year of Tropical Convection (YOTC). This project has been encouraged and endorsed as a priority activity by the World Climate Research Programme (WCRP) and the World Weather Research 2 Programme (WWRP), as summarized in Waliser and Moncrieff, 2008. The emphasis on the tropics recognizes its key role in the Earth’s weather-climate system, as well as the uncertainties weather and climate models encounter in association with tropical convection and convection-related processes. The emphasis on convective organization recognizes that contemporary convective parameterizations do not adequately represent key processes, including the mesoscale dynamics that are central to organized convective systems and their scale interactions. There are important distinctions between the initiation, organization and maintenance of moist convection in the extratropical compared to the tropical atmosphere. Figure 1 illustrates the basis of this distinction in terms of the global distribution of vertically integrated water vapor: the moist tropics and the relatively dry extratropics. These two zones are clearly demarcated apart from the atmospheric “rivers” of moisture flowing episodically from the tropics to the extratropics. • Extratropical moist convection is primarily initiated through a down-scale cascade of energy from planetary-scale to the synoptic-scale (extratropical cyclones), to the mesoscale (fronts and jet streams), and to the small scale (cumulus and turbulence). This cascade is associated with a quasi-balanced baroclinic redistribution of energy and involves interaction between convection, the planetary boundary-layer and radiation. Parameterized and explicit representations of convection in contemporary prediction models have reasonable fidelity in the extratropics owing, in part, to the successful reproduction in these models of the synopticbaroclinic life-cycle that controls interaction between synoptic and mesoscale motions and the embedded convection. The subsequent organization of convection has an upscale component especially in sheared environments, such as squall lines and cloud clusters. This dynamical coherence modulates the mid-latitude baroclinic lifecycles, subsequent down-stream Rossbywave dispersion, and the maintenance of the mean zonal flow. 3 Tropical moist convection is more complex than extratropical convection because in the tropics the direct baroclinic control of convection is a secondary element. Tropical convection is modulated by mean-state circulations, such as the Intertropical Convergence Zone (ITCZ), El NinoSouthern Oscillation (ENSO), the monsoon systems, tropical waves, and the variability of the ocean mixed layer. The large-scale tropical circulation is responsive to, if not primarily forced by, the upscale effects of multi-scale convective organization up to thousands of times the scale of individual cumulus. Individual cumulus convection is a comparatively disorganized process that does not effectively couple synoptic-to-planetary scale motion. Hence the spatial-temporal organization of convection in the cloud-to-synoptic spectral range is requisite to the accurate representations of the large-scale tropical circulation (Moncrieff 2004). Conversely, extratropical-totropical Rossby-wave dispersion and winter-time cold surges from the Asian continent propagating into the tropics exert a downscale control that on occasion activates organized tropical convection and the MJO, e.g., Kiladis, 1998. There are important connections between the tropics and extratropics in which convection plays a central role that can involve hemispheric and global scales. The weather systems of the midlatitude storm tracks (extratropical cyclones) are driven by the potential energy released in global-scale almost horizontal slantwise convective motion -- conveyor belts of warm, moist tropical/sub-tropical air and cold, dry polar air that act to equilibrate the pole-equator gradient of diabatic heating. The slantwise convection conditions the environment in the extratropics (thermodynamic stratification and vertical shear), thereby affecting the organization and intensity of the extratropical moist convection as indicates above. An association of large-scale organized tropical heating with Rossby wave global teleconnections and the modulation of the midlatitude storm tracks is illustrated in Fig. 2, adapted from Shapiro and Thorpe 2004. This aspect was addressed by Hoskins and Karoly, 1981; Trenberth et al., 1988. 4 Additional global teleconnections have been proposed by Branstator (2002) and Weickmann and Berry (2007). The effects of physiography (e.g., coasts, land-use, and orography) modulate the convective lifecycles, notably over Africa, the Americas, China, India, and the Indonesian Maritime Continent. Propagating organized systems in the lee of mountain chains affect the diurnal cycle of precipitation and radiative energy in the tropics and extratropics, e.g., Laing and Fritsch, 1997; Carbone et al., 2002; Knievel et al., 2004. Neither the physiography nor the convective organization are resolved in present-day climate models. 2. Convective organization in the context of weather-climate models While researchers have addressed the parameterization of organized convection, progress has been limited because organized convection is distinct from cumulus convection especially in terms of its dynamical morphology and transport properties (Moncrieff and Liu 2006, Fig. 1). Contemporary parameterizations do not represent the dynamics and scale-interactions associated with multi-scale convective systems, (e.g., the super-cluster in Fig. 3) with the result that global models have difficulty in reproducing multi-scale convective organization associated with the Madden-Julian Oscillation (MJO) illustrated by Nakazawa, 1988; c.f., Miura et al., 2008, and Sperber et al., 2008. Organized convection interacts with the synoptic-to-large scale atmospheric circulation through thermodynamic (e.g., diabatic heating) and dynamical processes (e.g., vertical transport of horizontal momentum), exemplified as the stratiform precipitation and mesoscale downdraft regions of mesoscale convective systems (MCS). The prevalence for stratiform precipitation in the tropics was a finding of the Tropical Rainfall Measurement Mission (TRMM), e.g., Kummerow et al., (1998), Houze (1989), Schumacher and Houze (2003), Schumacher et al. (2004), and Tao et al. 5 (1998). Properties of MCS have been quantified by dynamical models (e.g., Moncrieff 1992), numerical simulations (e.g., Wu and Moncrieff 1996), observational analysis, e.g., LeMone 1983; Nesbitt et al., 2006; Tung and Yanai, 2002. Houze (2004) reviewed the current knowledge and the substantial advances made in recent decades. Nevertheless, many important large-scale effects of organized convection remain to be quantified, such as the transfer of energy and momentum across scales and their role in atmospheric variability, scale-selection mechanisms; and the parameterization of organized convection for climate models. Further aspects are described in ECMWF, 2003; ECMWF 2005; Moncrieff, 2007. Researchers are addressing organized convection represented explicitly by non-hydrostatic cloudsystem resolving models (CSRM; grid-spacing ~ 1 km) as a more realistic approach than parameterization. This fidelity was demonstrated by the WCRP GEWEX Cloud System Study, (GCSS; Moncrieff et al. 1997, and Randall et al. 2003). The explicit representation of mesoscale convective organization by CSRMs provides insight into the interaction between convective organization and the large-scale circulation. The Satoh et al. (2008) global simulation at 3.5 km grid-spacing, corresponding to a physical resolution of about 20 km (Bryan et al., 2003), heralds the arrival of global CSRMs. That uncertainties generated at the unresolved scales propagate rapidly to the larger scales raises a paradox: we do not yet have the computational capacity to fully resolve convection in global models, and convective parameterizations have not been improved to the level where they reliably replicate convection. In the interim, regional models are a test-bed for future explicit global models. Regional and short-term operational weather prediction models having non-hydrostatic dynamical cores already utilize explicit convection, e.g., the prediction systems of the UK MetOffice and the Environment Canada. Operational global models will require parameterized representations of convection for at least another decade, particularly in relation to the use of ensembles of forecasts. It follows that improved parameterizations of convection and the physical 6 processes related to convection (e.g., planetary boundary layer, turbulence, and cloud-radiation interaction) are an imperative. Interaction between the atmospheric boundary layer and the ocean boundary layer is a key element for both shallow and deep convection. Shallow cumulus convection plays an important part in the diurnal cycle and the transition from stratocumulus to deep convection in the Hadley circulation associated with the ITCZ. Despite notable advances, the representation of coupled atmosphere-ocean processes in models remains less than optimal. Inertial-gravity waves, Kelvin waves, Rossby-gravity waves, and the MJO (e.g., Wheeler and Kiladis 1999) coupled to moist convection modulate weather and climate on regional-to-global scales and time scales of days and beyond, e.g., i) convectively generated inertial-gravity waves affect the life-cycle of cloud clusters, e.g., Straub and Kiladis 2002, Haertel and Kiladis 2004; ii) Rossby-wave packets generated by organized convection interconnect the tropics and extratropics; iii) Rossby waves propagating into the tropics may initiate the MJO, e.g., Kiladis, 1998; Wheeler and Kiladis, 1999; Kiladis and Weickmann, 1992; Ray et al., 2009. Climate models run in the initial-value or NWP mode (e.g., 3-day integrations) is a resourceefficient way to assess and quantify shortcomings associated with the representation of moist physics and its interaction with the global circulation. Errors in numerical weather prediction (NWP) models accorded to moist convection typically emerge within days, as shown by the spatialtemporal of errors in the precipitation distribution. This issue is being examined as part of the Climate Change Prediction Program – ARM Parameterization Testbed (CAPT) of the Program for Climate Model Diagnostics and Intercomparison (PCMDI) conducted at the U.S. Department of Energy (DOE) Livermore National Laboratory, see Boyle et al., 2008. Figure 4 compares the precipitation errors in the composited 3-day integrations (weather bias) with the climate bias. It is clear that climate bias arises in a matter of days; namely, on the weather time scale. 7 Within a few years deterministic global numerical weather prediction (NWP) models will have ~10km grid-spacing, and so should standard climate models within a decade. At ~10-km grid-spacing, however, convective parameterization may assume a hybrid character: convective parameterization and explicit ‘grid-scale’ circulations are simultaneously in action. The grid-scale circulations, a primitive form of convective organization are, nevetheless, superior to the contempory parameterizations which have difficulty in representing the dynamics of convective organization. Moncrieff and Klinker (1997) showed that grid-scale circulations in the ECMWF T213 (grid-spacing about 80 km) represent tropical super-clusters. The organized grid-scale fluxes dominated the parameterized ones. It follows that ~10-km grid-spacing presents both issues and opportunities for convective representation at a level intermediate between the explicit CSRM approach and contemporary parameterization. The organization of precipitating convection is associated with the following important meteorological phenomena: • Madden-Julian Oscillation (MJO) and convectively-coupled equatorial waves are intra-seasonal phenomena (Fig. 5) incompletely represented in global and regional prediction models. Difficulties are attributed to deficiencies in convective parameterizations, e.g., Lin et al., 2006. Advances in our knowledge of morphology, scale-selection and scaleinteraction are anticipated to improve the skill of forecasting tropical weather, monsoon onsets and breaks, and bridge weather and climate aspects. Further information are available in review papers by Lau and Waliser, 2005; Zhang, 2005, and Kiladis et al., 2008. • Tropical cyclones and easterly waves. Tropical cyclones are catastrophic events associated with easterly waves. Progress in this area is crucial for achieving: i) skillful forecasting of high-impact weather; ii) advanced simulation of land-atmosphere-ocean interaction and their impact on mean-state, such as the ITCZ; iii) the role of organized 8 convection in initiating tropical depressions, storms and cyclones, e.g., Thorncroft and Hodges 2001, Hopsch et al. 2007. • Monsoon systems are integrative phenomena that embody a cumulative response to the diurnal cycle, tropical waves, the MJO, and land-atmosphere-ocean interaction. Intraseasonal and sub-seasonal variability strongly affect the monsoon circulations and the distribution and frequency of precipitation on continental/ocean-basin scales. This implies a potential for improving predictive skill on regional-to-global scales. Studies of monsoon systems are focal areas of the Asian Monsoon Years (AMY 2007-2012), which is an observational and modeling effort coordinated by the WCRP. Wang (2008) reviewed the properties of monsoon systems. • Tropical-extratropical interaction. Tropical convection is major element of the two-way exchange of energy between the tropics and extratropics. It has significant effects on forecast skill at sub-seasonal-to-interannual timescales, such as the excitation of Rossby wave trains that emanate from the tropics and, conversely, the excitation of convective flare-ups associated with extratropical Rossby wave trains propagating from the extratropics into the tropics, e.g., Ferranti et al., 1990; Kiladis, 1998. Tropical-extratropical interaction is part of the predictability and dynamical processes component of The Observing-System Research and Predictability Experiment (THORPEX) described in Shapiro and Thorpe, 2004. • Diurnal cycle. Shortcomings in representing the diurnal cycle, a fundamental forced mode of atmospheric variability, demands attention in all classes of prediction models. Both local and long-range effects are involved. Observations and models indicate that processes associated with the diurnal cycle may impact upon longer time scales, e.g., monsoonal 9 precipitation, and the effects of the Indonesian Maritime Continent. The diurnal cycle of convection in the tropics is particularly noticeable in the presence of coasts and elevated terrain, e.g., Yang and Slingo 2001, Tian et al. 2006. 3. The Way Forward: Year of Tropical Convection (YOTC) The Year of Tropical Convection (YOTC) Science Plan was published as a WMO Technical Document compiled by Waliser and Moncrieff (2008) on behalf of the YOTC Science Planning Group. It is available at http://www.wmo.int/pages/about/sec/documents/YOTC-Science-Plan.pdf. The “year” is a nominal timeframe for archiving and integrating the observational and numerical data sets that extends from May 2008 through October 2009. 3.1 Historical background Early efforts to integrate observations and models to address the interaction between convective cloud systems and the synoptic-to-planetary scales were coordinated by the Global Atmospheric Research Programme (GARP) and the Tropical Ocean-Global Atmosphere (TOGA) program. These efforts were implemented as the First GARP Global Experiment (FGGE, 1979); the GARP Atlantic Tropical Experiment (GATE, 1974); the Winter and Summer Monsoon Experiments (MONEX, 1978-79); and the TOGA Coupled Ocean-Atmosphere Response Experiment (TOGA COARE, 1992-93). These regional field campaigns set the stage for advances in understanding tropical convection variability, and its prediction in global models, e.g., Betts, 1974; Greenfield and Krishnamurti, 1979; Johnson and Houze, 1987; Moncrieff and Klinker; 1997; Mapes and Houze 1993; Webster and Lucas 1992; Mapes and Houze 1995; Houze et al., 2000; Chen et al. 1996; Chen and Houze, 1997; Godfrey et al., 1998; Johnson et al.,1999. The regional field-campaigns also addressed the formulation and fidelity of convective parameterizations. A crucial assumption of convective parameterization is that the cumulus and 10 synoptic scales interact across a spectral gap, and that the role of the intermediate scales is a secondary consideration. More than three decades ago, the analysis of the GATE observations revealed that organized convection (e.g., squall systems and cloud clusters) populates the intermediate (meso) scale between the cumulus and the synoptic scales, Houze and Betts, 1981. This conflicts with the scale-separation assumption. The Zipser (1969) analysis of the Line Islands Experiment data showed that mesoscale downdrafts led to the rapid demise of a synoptic-scale tropical disturbance. These added complexities undoubtedly retarded the development of convective parameterization. Progress in multi-scale modeling, observational analysis and theoretical insights motivated the WCRP and WWRP to convene the 2006 Workshop on the Organization and Maintenance of Tropical Convection and the Madden-Julian Oscillation (MJO), with co-sponsorship by the International Centre for Theoretical Physics (ICTP) in Trieste, Italy. The scientific context and proceedings of the Workshop are summarized in Moncrieff et al., 2007. The Workshop reviewed the state-of-knowledge of organized tropical convection, such as: i) the interaction with the regional-to global circulation; ii) the degree and manner convection is influenced by, and feedbacks onto, the large-scale atmospheric circulation; iii) the mechanisms that link the cloud, mesoscale, synoptic and planetary scales, including influences on and from microphysical processes; iv) the two-way interaction between organized tropical convection and the extratropics. In recognition of an emerging new era, the Workshop made the following recommendations: i) develop an internationally coordinated virtual computational-observational laboratory [research resource]; ii) prepare a coordinated observing, modeling, and forecasting activity with emphasis on organized tropical convection and its influence on predictive skill in the western Pacific and Indian Ocean regions. This led to the framework of the YOTC project: the virtual computational- 11 observational research resource illustrated in Fig. 6, which embraces the elements described in sections 4.1 - 4.4 below. 4. The Elements of YOTC The enormous range of scales associated with organized tropical convection, especially the MJO (~ 1 km- to-planetary), poses a formidable observational challenge whose complete measurement requires integrated satellite, in-situ and field-campaign datasets. Note that high-resolution global operational model analyses and forecasts, as well as CSRMs with global or ocean-basin sized computational domains, are ready to be utilized. In other words, the elements of a global-scale virtual field campaign are in place. The YOTC project provides the necessary integration. 4.1 Observational analysis Satellite-based measurements: The deployment of the Earth Observing Systems (EOS) satellites that began in the 1990s provided a new capability to profile the moist atmosphere and cloud systems. The pioneering TRMM (1997) radar and radiometer measurements give rain-rate and vertical structure, and SST measurements in the presence of clouds. The constellation of EOS satellites, the A-train, makes nearly simultaneous measurements of a range of quantities from Terra (launched in 1999), Aqua (in 2002), Aura (in 2004), and CloudSat/Calipso (in 2006). Geostationary satellite measurements of organized tropical convection range from planetary-tosynoptic scales, down to the diurnal cycle in the temporal dimension. Extending back to 1983, the International Satellite Cloud Climatology Project (ISCCP) provides global cloud characterization at 3-hour intervals, e.g., Rossow and Duenas, 2004; Rossow and Schiffer, 1991, 1999; Rossow et al., 2004. Land-based in-situ measurements: The U.S. Department of Energy (DOE) Atmospheric Radiation Measurement (ARM) program implemented surface-based monitoring sites at three sites 12 in the tropical western Pacific, Ackernan and Stokes, 1993. These facilities began collecting data in August 1996 at Manus, Papua New Guinea; in November of 1998 on the island of Nauru; and in April 2002 at Darwin, Australia. The continental-scale radar network of the U.S. National Weather Service in the form of the NextGeneration Weather Radar (NEXRAD), along with the rain-gage network, provides is a comprehensive measure of the spatial-temporal distribution of precipitation and, in particular, propagating organized convection, Carbone et al., 2002. Continental-scale radar networks are in the process of being deployed in China and India. Country-scale networks are already deployed in Taiwan and the U.K. The Coordinated Enhanced Observing Period (CEOP), established in 2001 by WCRP's Global Energy and Water Cycle Experiment (GEWEX), is an international effort focused on measuring, understanding and modeling the water and energy cycles within the climate system. Ocean-based measurements: The TOGA program and the WCRP World Ocean Circulation Experiment (WOCE) program led to extensive ocean-based observing systems. In the Pacific, the Tropical Atmosphere Ocean/Triangle Trans-Ocean Buoy Network (TAO/TRITON) moored array provide subsurface thermal information and surface meteorology information, in some cases including radiation measurements. The Pilot Research Moored Array in the Tropical Atlantic (PIRATA) provides similar capabilities. The Indian Ocean Observing System, presently being deployed, will quantify air-sea coupling and intra-seasonal variability, including monsoons and the MJO. The drifter/float program includes information for the initialization of ocean models and data assimilation. The global drifter program provides surface-state information for prediction models, ground-truth for satellite SST products, and estimates of ocean surface velocity. 13 Field-campaigns play a lead role as previously summarized. In regard to YOTC, the summer and winter THORPEX Pacific Area Regional Campaign (TPARC), provide measurements of opportunity for quantifying and predicting tropical convection and its global interactions. 4.2 Global analysis and forecasts High-resolution operational global prediction systems utilizing data-assimilation provide complete estimates of atmospheric variability. A mainstay of the YOTC project, high-resolution analyses and forecast data will be used extensively, e.g., i) basic weather analysis and diagnostic studies; ii) high-resolution short-range (< 48 hr) prediction experiments utilizing explicit convection; iii) lateral boundary and initial conditions for ultra-high resolution CSRM simulations; iv) meridional boundary conditions for tropical channel models used to quantify the effects of extra-tropical forcing on tropical convection; v) forecast experiments (hind-casts) of selected events occurring during summer and winter phases of the THORPEX Pacific Area Regional Campaign (TPARC). A number of organized field campaigns associated with the Asian Monsoon Years, as well as individual campaigns, provide an unprecedented examination of the monsoon and organized convection aspects. Presently, ECMWF T799 (25 km grid) data are being archived (i.e., complete analyses, 10-day forecasts, and special diagnostics that include diabatic fluxes) and are available via the internet. There are plans to obtain NCEP Global Forecasting System (GFS) forecasts and analysis data, as well as NASA GEOS5 products. The meteorological phenomena summarized at the end of section 2 will be targeted by YOTC researchers. 4.3 Cloud-system resolving models (CSRM) are a key element of the YOTC project, especially models with large computational domains capable of representing meso-to-large scale interactions. The review paper by Tao and Moncrieff (2009) demonstrates the extensive range 14 of application of CSRMs. By coupling mesoscale dynamics to the parameterized small-scale processes (e.g., cloud-microphysics, turbulence, and surface exchange), CSRMs bridge the gap between the cumulus-scale and the synoptic-scale motion assumed by convective parameterization. Developments of multi-scale modeling occurred in conjunction with TOGA COARE (e.g., Wu et al. 1998), TRMM (Tao et al. 1993), and GCSS, Randall et al. 2003. The advancing computer capacity in the late 1990s, two decades after the field campaign, enabled regimes of convective organization in African easterly waves observed in GATE to be simulated using CSRMs. A three-dimensional simulation (Grabowski et al. 1998) confirmed dynamically based relationships between convective organization, vertical shear and convective available potential energy. A two-dimensional global-scale CSRM showed that multi-scale convective organization can evolve from uniform initial conditions, principally as a positive feedback involving convective momentum transport, Grabowski and Moncrieff, 2001. Mesoscale downdrafts and convectively generated inertial-gravity waves are key to the onset, life-cycle and scale of convective organization, e.g., Nicholls et al. 1991; Mapes 1993; Liu and Moncrieff 2004; Tulich et al. 2007. Super-parameterization sidesteps issues of conventional parameterization by placing twodimensional CSRMs in each grid-column of a global circulation model (GCM), an approach referred to as the Multiscale Modeling Framework (MMF). The GCM provides global coverage while the CSRMs simulate scale interaction, convection dynamics, cloud-overlap, cloud-radiation interaction, interaction between convective downdrafts and surface fluxes. The time-dependent two-way interaction between the CSRMs and the parent GCM bridges the aforementioned scalegap. Super-parameterization per se was developed by Grabowski (2001) utilizing an idealized global model, and has since been applied in a full climate model, Khairoutdinov et al., 2005. Figure 7 shows that MMF generates MJO-like large-scale convective organization, whereas contemporary 15 convective parameterization has comparatively little success. The evaluation of MMFs against observations, the treatment of orography in CSRMs, the implications of two-dimensionality, and improved MMFs models are active areas of research, e.g., Tao et al. 2009, Tao and Moncrieff 2009. 4.4 Idealized models reduce complex processes and scale-interactions to first principles. Examples of reductionism include the role of momentum transport in convective organization and multiscale interaction, (Moncrieff 1992; Biello et al., 2007); multi-scale convective organization in the MJO and convectively-coupled tropical waves (Yano et al., 1996; Moncrieff 2004; Khouider and Majda 2007; Majda and Stechmann 2009); stochastic-dynamical models (Shutts, 2004); stochastic convective parameterization (Craig et al. 2005 and Tompkins 2005); and parameterization of convective organization utilizing cellular automata, Berner et al., 2005. 5. Conclusions The representation of tropical convection, its multiscale organization, and scale-interactions are leading impediments to skillful regional-to-global prediction on hourly-to-seasonal time scales and beyond. In response to this challenge, the World Climate Research Programme (WCRP) and the World Weather Research Programme (WWRP) are coordinating the Year of Tropical Convection (YOTC), an integrated computational-observational research resource and a key element of “seamless prediction” described in Brunet et al.; Shapiro et al; Shukla et al., in this issue of BAMS. The emphasis is on multi-scale convective organization, thereby addressing a long-standing uncertainty in global models. The YOTC Implementation Plan, currently being prepared, targets meteorological events at the weather-climate interface that occur during the Year, with emphasis on the MJO and convectively coupled waves; easterly waves and tropical cyclones; tropical- extratropical interaction; the monsoons; and the diurnal cycle. The project will engage with coordinated activities already involved with tropical convection research at the international level, e.g., NCAR’s Prediction Across Scales initiative; NSF’s Center for Multiscale Modeling of 16 Atmospheric Processes (CMMAP); NERC’s Cascade project; Asian Monsoon Years (AMY); Working Group on Numerical Experimentation (WGNE); THORPEX, CLIVAR, and GCSS. It will also engage with focused efforts in academia and research institutions. Acknowledgements: We acknowledge the lasting encouragement for the YOTC project by the WCRP and WWRP and, in particular, for their support of the YOTC Science Planning Group: J. Caughey, R. Elsberry, R. Houze, C. Jakob, R. Johnson, T. Koike, J. Matsumoto, M. Miller, M. Moncrieff (co-chair), J. Petch, W. Rossow, M. Shapiro, I. Szunyogh, C. Thorncroft, Z. Toth, D. Waliser (co-chair), B. Wang, M. Wheeler, and S. Woolnough. 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[Courtesy: Tony Wimmers/Chris Velden, CIMSS, University of Wisconsin at Madison.] NOTE: In the Digital On-Line BAMS Edition, Fig. 1 will be a movie. 27 W LO TF U O Convection JET MJO FIGURE 2: Left, Schematic atmospheric response to large-scale divergent outflow in the northern hemisphere from organized tropical convection at the equator. An anticyclonic pair of vortices (H) straddle the equator, and the downstream Rossby-wave train shifts the storm track southward, leading to diminished storminess to the north. (Adapted by Trenberth et al. 1988, from Hoskins and Karoly, 1981). Right, 7-day-mean (18-24 December 1999) of a MJO tropical convective flare-up and downstream Rossby wave train for the period preceding the 24-26 December 1999 development of the ~100 ms-1 North Atlantic upper-level jet stream associated with the European extratropical cyclone “Lothar” and its destructive wind storm. Upper panel: satellite-derived outgoing long-wave radiation, where blue into purple colour shading denotes radiation from cold cloud tops. The MJO flare-up is centered over Indonesia (red arrow), with an outflow plume extending north-eastward into mid latitudes (white dashed arrow). Lower panel: 250-mb wind velocity; direction, black arrows and speed, colour shaded; light blue, 20 ms-1; red > 90 ms-1. Centroid of the MJO convection (blue circle); ray path of the Rossby wave train (red arrows). [From Shapiro and Thorpe 2004]. 28 Multiscale convective organization: super-cluster Multi-scale dynamics of super-cluster FIGURE 3: Top, a super cluster in an MJO during the TOGA COARE field campaign. A supercluster consists of a family of mesoscale convective systems embedded within tropical waves and displaying strong scale interaction. Bottom, dynamical model of a supercluster consisting of organized convection interlocked with Rossby-gyre dynamics (Moncrieff 2004). 29 PPT Day 3 CAM - CMAP DJF o 30 N Forecast Bias 0o 30o S 0o NCAR 60oE 120oE 180oE 120oW 60oW CAM - CMAP _ DJF 1992 - 3 30o N Climate Bias 0o 30o S 0o 60oE 120oE 180oE 120oW 60oW PPT Day 3 AM 2 - CMAP DJF 30o N Forecast Bias 0o 30o S 0o GFDL 60oE 120oE 180oE 120oW 60oW AM 2 - CMAP_ DJF_1992 - 3 o 30 N 0o Climate Bias 30o S 0o -10.0 60oE -6.0 120oE -3.0 -1.0 180oE 0.0 120oW 1.0 60oW 3.0 6.0 10.0 mm/day FIGURE 4: Comparisions of weather and climate bias in terms of precipitation rate (mm/day) for two modeling systems, GFDL and NCAR. The weather bias is the difference between predicted and observed precipitation rate for composited 3-day forecasts for December, January and February (DJF), 1992-1993. The climate bias is from a single integration of these modeling systems with prescribed SSTs (AMIP mode) for DJF 1992-1993. [Courtesy: Boyle et al., 2008.] 30 Month-Day FIGURE 5: Left, 3-day running mean anomalies of observed outgoing long-wave radiation (OLR) for the latitudinal belt 7.5N-7.5 S from 17 November 2003 through 23 March 2004. Right, weektwo (days 8-14) forecasts of precipitation anomalies using a 1998 version of NCEP's Medium Range Forecast model. The colour bars show units and shading levels. The line contours are time-space filtered observed OLR anomalies and define three different convectively coupled tropical modes (Wheeler and Kiladis, 2000). The blue contours slanting downward from left to right represent the Madden Julian Oscillation, the green contours represent the Kelvin wave and the black contours slanting from right to left represent the equatorial Rossby wave [Courtesy: Klaus Weickmann, NOAA/CDC]. 31 Global Prediction Integrated Observations High‐resolution operational deterministic‐model data sets Satellite, field‐campaign, in‐situ data sets YOTC Year of Tropical Convection Research Attribution studies of global data sets; parameterized, superparameterized, and explicit convection in regional‐to‐global models; theoretical studies FIGURE 6: Framework of the YOTC integrated computational-observational research resource for investigating tropical convection and its interaction with the global circulation, with emphasis on multi-scale convective organization. The YOTC project consists of four integrated elements: i) Global analysis and prediction involving high-resolution operational systems; ii) observational analyses of satellite, field-campaign and in-situ data; iii) multiscale convective organization simulated by cloud-system resolving models; iv) idealized numerical and dynamical models. 32 FIGURE 7: Left, weak MJO activity in the standard version of the Community Atmospheric Model (CAM). Right, strong MJO activity occurs in the version of CAM (SP-CAM) which applies superparamerization. [Courtesy: Khairoutdinov et al. 2005] 33