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2007-2012 Hadley Centre Climate Programme End of Contract Report June 28, 2013 Paul Halloran and Jason Lowe Contents 1 Introduction 2 1.1 How this document works . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 2 1.2 Background . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 3 1.3 Summary of customer focused outcomes . . . . . . . . . . . . . . . . . . . . . . . . 5 1.4 Executive Scientific Summary . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 7 1.5 A look to the future . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 9 2 2007-2012 MOHCCP achievements 10 2.1 Climate science background . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 10 2.2 Modelling the climate system . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 12 2.3 How and why is the Earth System already responding to climate change? . . . . . . 21 2.4 What climate change is likely to occur in the coming decades, and which changes may cause socioeconomic stress? . . . . . . . . . . . . . . . . . . . . . . . . . . . . 33 2.5 Looking beyond the next couple of decades, what climate change is likely to cause socioeconomic stress? . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 40 2.6 How might the Earth System respond to different pathways of anthropogenic activity over the coming century and how resilient is the system to change? . . . . . . . . . 3 Looking Forward 48 70 4 Annex A: Milestones and Deliverables 107 5 Annex B: Glossary of Acronyms 113 c Crown Copyright 2013 © 1 Chapter 1 Introduction The 2007-2012 Met Office Hadley Centre Climate Programme (MOHCCP) has responded to both the evolving state of climate science and the evolving needs of UK Government for climate science advice. This report aims to summarise the major scientific acheivements during the programme. This report examines how research from the Met Office Hadley Centre, together with national and international partners, has pushed forward our understanding of a number of overarching ques tions. These questions could be framed in a number of different ways, but in the context of this report, we consider them to be: • How and why is the Earth System already responding to climate change? • What climate change is likely to occur in the coming decades? • Looking beyond the next couple of decades, what climate change is likely to cause socioeco nomic stress? • How might the Earth System respond to different pathways of anthropogenic activity over the coming century, and how resilient is the system to change? It is a testament to the quality and breadth of science being undertaken at the Hadley Centre that the MOHCCP can make progress on such significant questions. By highlighting the progress made on these overarching questions, this report places the full spectrum of science occurring at the Met Office Hadley Centre, from underpinning work to directly applied science, in context. Since a significant fraction of the programme has focused on improving climate models there is also a section describing the key model development highlights from the 2007-2012 period. 1.1 How this document works In addition to the narrative describing the progress in answering the overarching questions, this report also provides a comprehensive record of milestones and deliverables supplied to DECC and c Crown Copyright 2013 © 2 Defra during the 2007 to 2012 period (Annex A). For clarity two referencing styles are employed in this report. 2007-2012 MOHCCP funded results are referenced with a number enclosed in squarebrackets, and non 2007-2012 MOHCCP funded results, where necessary, are referenced by author and year, for example, (Author et al., 2006). The square bracketed numbers refer to a concise bibliography at the end of the main document. Top-level summaries of the milestones, deliverables, and relevant scientific papers are supplied in the supplementary materials, and linked to from the bibliography at the end of this document. 1.2 Background The Met Office Hadley Centre (MOHC) was formed in 1990 at the request of the then Prime Minister to act as a focal point for climate science and projections in the United Kingdom, and to establish the nation as a world leader in the field. In the early years the MOHC produced numerous scientific developments to equip the UK to play a major role in international climate negotiations focusing on emission reductions. Working with numerous academic partners the MOHC: • Produced quality controlled observational datasets to monitor climate change • Played a leading role in establishing much of the methodology demonstrating that many recent observed changes were unusual and that some of the observed trends could be shown as having a human derived contribution • Built on earlier work in the Met Office to construct global and regional climate models for projecting and understanding possible future conditions. With the evidence of a changing climate becoming more established in the scientific literature the MOHC realised that this information would be needed to plan adaptation strategies and took on a role to produce the climate projections needed for this by the United Kingdom. The first set of UK Climate Projections were released in 1998, with major updates in 2002 and 2009 providing greater detail and eventually risk based information. The quality of the MOHC outputs have been assessed in numerous ways during the 2007-2012 period. In addition to an annual review by its Science Review Group several other external reviews have taken place. A report by Professor Sir John Lawton1 was commissioned by the Department for Energy and Climate Change (DECC) and completed in October 2009. This concluded that ’UK Government continues to require access to a top-flight climate research capability to deliver the advice and information it needs, and further concludes that this essential capability will be most reliably and effectively delivered by the MOHC’. Sir John Beddington led a further investigation in 2010 examining the Government’s needs for climate science advice services over the next decade, 1 http://www.bis.gov.uk/assets/goscience/docs/s/2009-sir-john-lawton-review-report.pdf c Crown Copyright 2013 © 3 and how these could continue to be met. This report was published in 20102 . The Beddington review stated that ’A key conclusion is to confirm the assessment from Sir John Lawtons 2009 report that the MOHC provides essential and world-leading climate modelling services to Government, and that it is uniquely placed to do so. It represents a critical national capability, with a central role of meeting the Governments requirements for climate evidence and advice’. The reputation of the MOHC is also recognised widely. It was identified as the world leading centre in geoscience research within a survey by Times Higher Education 3 . This is reflected in its journal publication record and citations, and its ability to attract some of the best climate scientists from around the world. The MOHC’s leading role in climate science is also demonstrated by the number of MOHC scientists who contributed to the Intergovernmental Panel on Climate Change (IPCC) process, as authors and reviewers, and by the fact that the MOHC housed the technical support units for Working Group 1, and later Working Group 2, of the IPCC climate change assess ments. Collaboration has always been a key feature of the MOHC approach and during the 2007-2012 period this has increased in importance. The establishment of the Joint Weather and Climate Research Programme with NERC (Natural Environmental Research Council) has enabled faster progress in many areas, with a growing emphasis on sharing the development of new climate and Earth System Models. The MOHC has also played a central role in many large European climate projects, such as the major ENSEMBLES project, which have brought benefits to the DECC and Defra funded climate programme. 2 http://www.bis.gov.uk/assets/goscience/docs/r/10-1290-review-of-climate-science-advice.pdf 3 http://www.timeshighereducation.co.uk/story.asp?storycode=409181 c Crown Copyright 2013 © 4 1.3 Summary of customer focused outcomes The MOHCCP has provided scientific information through many different channels during the 2007 2012 programme. MOHC scientists communicate with other researchers through collaborative projects, contributions to the scientific literature and conferences, and through international efforts such as the IPCC. Additionally, the MOHC has, and continues to, host visiting scientists from around the world. The MOHC provides DECC and Defra with written reports of outputs, short written and oral briefings on key pieces of work, and by providing scientific information to rapidly help answer adhoc questions relating to climate science. Additionally the MOHC has provided a supporting role at numerous workshops and conference events at the request of DECC and Defra, such as the annual Conference of the Parties to the UNFCCC (CoP). Finally, some outputs, such as the 2009 UK Climate Projections (UKCP09), have been made publically available so that experts in other fields can use them to examine impacts on particular sectors. Key outputs from the 2007-2012 programme include: • UK National Climate Capability Approximately three quarters of the funding that the MOHC receives from DECC and Defra is used to deliver the underpinning climate science needed to maintain the UK’s leading capability in climate science. The MOHC Climate Model has been adopted by the UK academic community, resulting in major benefits in delivering climate advice to the UK. These benefits included shared model development, consistency of advice, and the development of services. The Met Offices Unified Model has also being adopted by a number of centres internationally. • IPCC Contribution - As a lead contributor to IPCC assessment reports the MOHC has pro vided global leadership in climate science. Successive IPCC assessment reports have been pivotal in establishing the evidence base to conclude that climate change is a real and pro found threat requiring national and international action to both mitigate against and adapt to inevitable climate change. • Attribution - Pioneering work on attributing observed changes to both anthropogenic and natural changes have revealed the human influence on long-term trends and the changing risks of extreme events as the climate changes, for example increased risk of hot summers and increasing risks of flooding. The pioneering ACE (Attributing Climate Events) group continues to take this forward. • Mitigation Advice - Climate Projections from the MOHC have been central to establishing the emission targets and pathways written into the Climate Change Act and international agree ments. Earth System Model and other simulations have been key in understanding and quan tifying what impacts can be avoided through mitigation measures. The Lawton report (2009) confirmed the significance of the MOHC to the UKs influence in international negotiations’. c Crown Copyright 2013 © 5 • UKCP09 Scenarios These detailed scenarios are a comprehensive set of climate projections that provide an unprecedented level of information about climate change at regional and local scales across the UK. Used by both government and industry, the projections form a consis tent basis on which adaptation decisions and planning are made. The projections also formed the basis for the assessment of future risk in the UK Climate Change Risk Assessment. • Near Term Climate projections - As society becomes increasingly vulnerable to hazardous weather and climate extremes, the demand for information at monthly to decadal timescales is growing rapidly. The development of high resolution climate models has significantly en hanced our ability to understand natural climate variations on these timescales and is already demonstrating significant prediction skill. • Tailored Climate Communications Tools - The 4◦ C map published by the MOHC drew many strands of international research together to provide a persuasive and influential summary of global impacts likely to be experienced if global temperatures increase by four degrees. It was well received internationally and translated into ten languages. Understanding the potential impacts of climate change is essential for informing both adaptation strategies and actions to avoid dangerous levels of climate change. In April 2011, the MOHC was asked by the Secretary of State for Energy and Climate Change to compile scientifically robust and impartial information on the physical impacts of climate change for more than 20 countries to inform negotiations at the 17th Conference of the Parties. A report on the observations, projections and impacts of climate change was prepared for each of those countries. In the 2012-2015 Programme, engaging fact sheets, summarising these findings, are being supplied making information even more accessible to a non-technical audience. c Crown Copyright 2013 © 6 1.4 Executive Scientific Summary We present here a brief description of some of the highest impact and most important scientific achievements for the Met Office Hadley Centre Climate Programme for the period 2007-2012. The work has increasingly involved close collaboration with the academic sector. Observations are needed to monitor changes in climate, to attribute the causes of climate changes, and to validate and constrain climate models. The quantification and presentation of the degree of certainty in observed climate data took a leap forward with the release of the 4th sur face temperature product produced jointly between the Hadley Centre and the Climatic Research Unit (CRU; University of East Anglia), HadCRUT4. This presents the range of certainty as 100 different possible realisations of the temperature record. A further highlight has been the growing consideration of climate records other than temperature, with the MOHC making a significant con tribution to the Bulletin of the American Meteorological Societys State of the Climate report. These show the diversity of planetary change over recent decades. Attribution of observed change is the process of identifying which factors, natural or man-made, have contributed to an observed change in the climate system. Over the 2007 2012 period the MOHC has been pushing these techniques to smaller temporal and spatial scales, extending the range of climate components in which change has been attributed. Key developments focused on starting to examine the change in the probability of extreme events occurring (for exam ple, the 2000 summer floods in Southern England) that might result from humankinds greenhouse gas emissions. Model development has remained a central Met Office Hadley Centre activity with ad vances in three distinct areas. First, increases in High Performance Computing have been ex ploited to set up models with greater spatial detail, capable of explicitly representing more climate processes. Highlights include making significant improvements of how atmospheric blocking is sim ulated over the UK. Second, complexity has been increased so that more physical, chemical and biological processes of the earth system are represented. Many of which have the potential to feed back on the physical climate, and may impact society in other ways such as through food produc tion potential. A major highlight was the development and testing of the HadGEM2-ES earth system model. Finally, a sizeable effort focused on developing the intellectual and computational framework needed to run and evaluate large sets of simulations. The model developments have benefited attribution studies and projection of both nearer-term and longer-term future climate. For nearer-term projections there have been many advances, for example, a better understanding of the role of the stratosphere in propagating changes from the tropics to the latitudes of Europe, the role the subtle changes in the suns output plays in determining European winter climate, and emerging evidence of the role of loss of Arctic sea ice on European climate variability. Focusing on longer-term projections, experimental forecasts of the next decade were begun, showing useful skill in many regions. The UKCP09 probabilistic simulations were c Crown Copyright 2013 © 7 produced to better understand and measure the uncertainty in multidecadal climate projections out to the end of the 21st century. They were an important input to the first national climate risk assessment. Multi-century projections were provided by the HadGEM2-ES earth system model and form an important part of the CMIP5 model assessment, which will inform the IPCC 5th assessment. Over the 2007-2012 period new understanding has emerged on potential thresholds in the large-scale climate system, with significant improvement in the understanding of Arctic sea ice loss, reversibility of the loss of the Greenland ice sheet, and stability of the Atlantic overturning circulation. A key output has been to focus on process understanding and consider how early warning of these changes might be detected. Throughout this period of research a greater focus has been placed on the communication and tailoring of MOHC science to make it more useable by DECC and Defra, and their stakehold ers. The substantial developments in climate science and delivery have placed the MOHC in an ideal position on which to build in the new work plan during the period 2012-2015. c Crown Copyright 2013 © 8 1.5 A look to the future A new DECC and Defra funded climate programme began in 2012 and is scheduled to run until March 2015. It builds on the scientific work of the 2007-2012 programme, providing further un derpinning research and policy focused outputs. In addition to generating improved information for mitigation advice and resilience and adaptation planning, the new programme is also focused on providing information to better understand the capacity for renewable energy supply in the UK. There is an enhanced emphasis on tailoring the advice from the MOHC so it matches even more closely the evolving needs for impartial high quality climate science evidence by Government. c Crown Copyright 2013 © 9 Chapter 2 2007-2012 MOHCCP achievements 2.1 Climate science background This section contains a brief introduction to the climate science behind the MOHCCP, and explana tion of some of the technical ideas and terminology used throughout this document. Contemporary climate change is occurring in response to change in a number of driving factors. It is often useful to group all of these different driving factors under a single name - climate forcings. Climate forcings can be natural (e.g. volcanic emissions or changes in the sun’s output) or man made (e.g. changes from woodland to pasture, or changing atmospheric carbon dioxide (CO2 ) concentrations). Radiative forcing is used to describe a change in the balance of energy radiating (traveling in electromagnetic waves, for example as visible light) downwards towards the Earth’s surface, versus that radiating back out to space - note that of the three ways that heat can travel (radiation, convection and conduction), only radiation can travel through a vacuum, and therefore in space, so the balance of radiation coming into/out-of the planet essentially accounts for all of the energy (heat) entering or leaving the planet. This is called the planet’s energy budget. The dominant anthropogenic (resulting from human activity) climate forcing agent is CO2 . In steady state, (having settled to a stable condition in response to constant forcings), the radiation arriving from the sun and warming the planet, equals that which is emitted by the planet and lost to space - the earth is a radiator, and the hotter it is, the more heat it gives off. The radiation coming in from the sun has a high frequency (ultraviolet), and like the sound produced by an opera singer which shatters a glass, this only resonates with, and therefore is absorbed by, specific things at specific frequencies. Radiation in these higher frequencies is not absorbed by CO2 . The radiation emitted by the earth (and largely lost to space), has a lower frequency, it is infrared rather than visible or ultraviolet radiation. Infrared radiation is absorbed by CO2 , and therefore a component of this is prevented from escaping to space. The effect of trapping more heat is that the planet warms up. A warm object gives off more heat, so eventually if CO2 concentrations are stabilised, the global climate will come to rest at a new, overall warmer, steady state. c Crown Copyright 2013 © 10 The relationship between increasing CO2 concentrations and global warming is approximately logarithmic - if the atmospheric CO2 concentration was doubled, then doubled again, the second doubling would warm the planet by the same amount as the first, despite the magnitude of the second CO2 increase being twice that of the first1 . CO2 is not the only important anthropogenic climate forcing. Methane, nitrous oxide and ozone also act in a similar way to CO2 , absorbing the long-wavelength radiation being emitted by the earth (but at different wavelengths than those absorbed by CO2 ). These non-CO2 greenhouse gasses get broken down relatively quickly (days to decades) in the atmosphere by chemical reactions, so do not build up in the atmosphere in quite the same way as does CO2 . Another very important anthropogenic climate forcing is that coming from aerosols. Aerosols are very small particles in the atmosphere. These tiny particles both directly reflect sunlight, and cause changes in the refection of sunlight by changing the properties of clouds. Like bubbles in a champagne glass, water droplets in the atmosphere form around imperfections (particles) it requires energy to change from one phase to another (liquid to gas or gas to liquid), and an imperfection can reduce the energy required to do this. In a very clean atmosphere, adding aerosols could mean the difference of going from no clouds to having clouds (and would therefore greatly increase the amount of sunlight reflected to space), but in the present atmosphere, aerosols are more likely to cause cloud that already exists to be made up of smaller droplets, which makes them more reflective (brighter to look at), and because the droplets take longer to get to the size of rain drops, those clouds remain in the atmosphere for longer, increasing the total amount of reflected sunlight. The final important anthropogenic climate forcing is changing land-use. For example leaving land as forest, removing that forest to open that land up for pasture or crop growth, or building urban areas. How the land is used is important from a climate perspective because differently used land has different physical properties. It is clear that (for example) ice reflects more light (and therefore does not absorb as much heat) as dark green woodland. Similarly, grassland reflects more light than woodland, and urban areas, less light than grassland. It is not just the proportion of sunlight which is reflected (the albedo of that surface) which is important in how it affects climate. Woodland presents a rougher surface than grassland, and therefore wind experiences more friction passing over woodland than grassland, impacting its behaviour. Similarly, urban areas absorb much less moisture into the soil than do grasslands, and woodlands extract much more moisture from the soil and pass this to the atmosphere through evapotraspiration than do grasslands. All of these process can be important for climate. 1 This relationship occurs because CO is very effective at absorbing the infrared radiation emitted by the Earth. Even 2 at preindustrial CO2 levels, this absorption was 100% efficient over a range of wavelengths of infrared radiation, so as CO2 concentrations continuously increase, more and more of that CO2 is having no effect - more and more wavelengths of infrared radiation are already absorbed with 100% efficiency. With rising CO2 concentrations, an increasingly small proportion of the atmospheric CO2 is absorbing infrared radiation - and therefore causing warming. The second CO2 doubling is less effective at capturing heat than the first. c Crown Copyright 2013 © 11 2.2 Modelling the climate system To explore how the forcings and feedbacks described in the previous section operate to cause cli mate change, we use physically-based climate models. Three levels of complexity of climate models are developed and used within the MOHC; Earth System Models (ESMs), General Circulation Mod els (GCMs), and Simple Climate Models (SCMs) (figure 2.1). We also use output from Integrated Assessment Models (IAMs) (figure 2.1), and are beginning to work directly with the developers and expert users of this type of model. Earth System Models attempt to simulate all of the first order2 processes within the climate system which are believed to be important within centennial timescale climate change. These include chemical and biological processes (which make up - for example - the carbon cycle) as well as the physical climate processes; which are calculated in the underlying General Circulation Model. Earth system models are discussed in detail in section 2.6 with reference to our recent model development work. The GCM is a reduced resolution (explained later) weather model (a high fidelity model of the atmosphere), linked to an ocean model. Although we are just beginning to understand, and be capable of simulating the role of the ocean on weather timescales (typically less than 15 days), the ocean generally changes relatively slowly, and therefore whilst being of limited importance for weather forecasting, plays a critical role in storing and transporting heat (and represented in an ESM, carbon) on climate timescales (years to centuries). Models used to forecast the weather and make projections of the climate work by subdividing the atmosphere and/or ocean into many adjoining boxes, grid boxes (figure 2.2). Within the computer code, the average conditions (e.g. heat or salinity) occurring in that boxed section of the atmosphere or ocean are contained in a list. The model solves the mathematical equations which describe the movement of these quantities between adjacent grid boxes occurring within a certain amount of time (the time-step) - typically from a few minutes to an hour in a current generation climate model. The model can only move through the simulation in small steps, rather than determining what the climate will look like a century down the line in one go, because if too much of any quantity is moved from one box to a neighboring box, the value initially used by the equation working on that neighboring box will no longer be valid. After the equations have been solved for one time-step, the model then records the solution back in the list, then starting from those new conditions, takes another mathematical time-step forwards. The size of the adjoining grid-boxes (or the number of boxes required to surround the whole planet) in the horizontal plane is called the horizontal resolution, and the number of boxes (rather than size, because their vertical dimension varies with height/depth) in a column between the sea surface and sea floor (in the case of the ocean) is called the vertical resolution (or the number of 2 In an area of science as complex as climate modelling, pragmatic decisions have to be made - to simulate every process which may play an interesting, by tiny role, would be impossible. An important part of our job is to distinguish the important processes which we should focus our effort and computing power on, from those which are unimportant with respect to what the models are being used for. The important processes are described as being 1st order (applied rigorously this would mean processes that affect the first significant figure of a relevant numerical outcome), the less important are described as second order. c Crown Copyright 2013 © 12 Earth System Model (ESM) General Circulation Model (GCM) ∂U=∂Q+∂W ac=-2Ω . v PV=n.R.T pDv/Dt=-∆p+pf Aerosols Greenhouse Gases Chemistry Land and Ocean Ecosystems emission policy CO2 Surface Ocean (and biosphere) Heat Economic Model greeh ou desig n o emulate ES ed t Ms Simple Climate Model (SCM) Atmosphere Heat (Treatment of Landuse) e d to un st Energy Systems Model IA M s us M SC e sed to d IA Ms u sign ae se gas rosol em licy ission po ESM projections Integrated Assessment Model (IAM) Socioeconomic Impacts CO2 Deep Ocean Figure 2.1: Schematic explaining the different types of models used in the MOHC, and how they are linked. Earth System Models (ESMs) are the most comprehensive climate modelling tools avail able. At the core of an ESM is a General Circulation model (GCM) which deals with the movement of quantities such as heat or carbon around the atmosphere and ocean. GCMs or ESMs are run following emissions scenarios to produce projections of future climate changed based on our fun damental understanding of physics (and in the case of ESMs our understanding of chemistry and biology). The climate projections are used to fine-tune Simple Climate Models (SCMs), which are based on our understanding of the system, but not necessarily fundamental physics - the schematic representation of an SCM presented here is representative of one of a number of SCM model types. Once shown to be able to replicate results from ESMs and GCMs, the SCM may be incorporated into an Integrated Assessment Model (IAM). IAMs are not developed at the MOHC, but we are increasingly working with experts in this field to help us make use of them. IAMs consider the in teraction of climate with human systems. One of the uses of IAMs is to develop greenhouse gas (and other climate forcings) emissions scenarios. These emissions scenarios are used to drive ESMs and GCMs to examine (more completely than can be done in an SCM) their potential climate impact. Note, less common links which are made within IAMs are represented with dashed lines. c Crown Copyright 2013 © 13 vertical resolution horizontal resolution grid box Figure 2.2: Simplified description of a Global Circulation Model (GCM). GCMs (and therefore ESMs - figure 2.1) split the atmosphere and ocean into many adjacent grid boxes. The number of grid boxes in a horizontal plane defines the horizontal resolution, and the number in a vertical plane defines the vertical resolution. The model works by solving the physical equations describing fluid flow through each of the six faces of the grid box. vertical levels) (figure 2.2). In a climate model, processes like eddies (the swirling flow of water occurring behind an obstacle in a stream, or due to unstable flow in the open ocean - important for the vertical movement of water), or cloud formation, occur on space-scales smaller than the model’s grid-boxes. These processes, along with many others, have to be parameterised. Parameterisa tions are mathematical equations which allow a process to be described simply without having to simulate the underlying physics. For example, we know that evaporation from the ocean is driven by temperature, wind-speed and humidity, so we can describe this in a simple equation (in reality, there are many important processes such as the breaking of waves, turbulence in the air-sea boundary etc., but these are considered to be second order). Parameterisations have to be used in many areas of climate modelling - particularly Earth Sys tem Modelling, where for example, the fundamental physical and chemical processes behind bio logical processes are too complicated to be simulated, and gaps exist in our understanding. Whilst we may be able to parameterise these processes, we may only know the range of values which this parameter might take, rather than the exact value. Real-world experiments might say that a parameter value lies somewhere between (for example) 0.6 and 0.9, so to take this into account we can undertake model studies where we do many different simulations, each using a different number between 0.6 and 0.9. These are called perturbed parameter experiments. Perturbing pa rameters within a simple model is one way of exploring the range of possible climatic responses, the other way is by comparing independently developed models to explore structural uncertainty. Mod els that are developed largely independently from each other (i.e. at different international climate research centres) differ in their structure - the equations used to represent a particular process or set of processes differ between models (rather than them using the same equation, but different values in that equation, as one would if following a perturbed parameter approach). By comparing the results from a set of models like those which have been contributed to the 5th Coupled Model c Crown Copyright 2013 © 14 Intercomparison Project (CMIP5), we can quantify the range of possible answers - the uncertainty arising from these structural differences. Understanding and interpreting the behaviour of General Circulation Models or Earth System Models, or particularly a suite of results from multiple models, can be very difficult. To help with this, and to explore how GCMs and ESMs may behave under certain conditions without having to undertake long simulations under those conditions, we can use simple climate models. Simple climate models come in various forms. One important family of simple models uses simple physical equations to describe the flow of energy and carbon between different reservoirs on the planet (for example the deep ocean, surface ocean, atmosphere and land), rather than using complex physics to actually simulate those energy and carbon transports occurring. This form of simple climate model is described in figure 2.1. Another family of simple climate models calculates the global average climate response by breaking the response into a number of components, each statistically describing the timescale over which a certain important climate process (for example ocean mixing) operates. When the parameters in the simple climate model equations are adjusted to allow them to replicate the changes seen in physics-based models (General Circulation Models or Earth System Models), simple climate models can accurately represent global average quantities, but must only be used to simulate conditions close to those where they have been shown to produce the same result as the physics-based model. It is important to make this distinction between models based on fundamental physical laws, which can (because they are constrained by the same rules as the Earth is) be used to explore conditions not previously experienced, and empirical models (simple climate models), which can only provide meaningful information about conditions similar to those over which they have already been shown to work3 . Simple climate models form the climate module within Integrated Assessment Models (IAMs). Integrated Assessment Models are tools which integrate our understanding from different physi cal and human systems together in one model to allow feedbacks occurring through, for example, climate on society then back on climate, to be explored. These models are used to develop anthro pogenic CO2 emission scenarios which are consistent with various different potential sociological and economic pathways [162]. Integrated Assessment Models are required to give rapid answers to many different questions, and therefore can’t include full Earth System Models to calculate the climate and carbon cycle changes due to computational limitations (Earth System Models take too long to run on present-generation supercomputers to be used in this way). The MOHC is increas ingly working with external experts to make use of Integrated Assessment Models, but does not develop this type of model. 3 For more details about one simple climate model, MAGICC, see http://wiki.magicc.org. c Crown Copyright 2013 © 15 Model development within the Met Office Since its conception, the MOHC has had at its core the Met Office’s Unified Model - the computer code underlying the Met Office weather and climate models. Whist the weather and climate config urations of the Unified Model shared the same framework and advances made within the weather model are generally brought into the climate model (and vice versa), these two configurations were largely developed in parallel. Over the last MOHCCP, it has been increasingly recognised that there are many significant advantages to be gained by bringing the weather and climate model develop ment processes together into a single development cycle: • The use of a common model for weather and climate modelling will allow us to provide con sistent weather/climate advice across all societally relevant timescales • Assessment of model performance across a range of timescales provides a tougher scientific and technical test for new model developments than do isolated tests. • Testing the seasonal forecasts, started from observations, against extreme recent climate events helps identify areas for development of the model which will improve longer-term model projections • Assessment of simulations starting from observed values, and those running freely will high light different positive and negative model characteristics • Understanding the climate model’s behaviour on weather timescales will help us interpret climate events meteorologically, rather than considering the meteorology to simply be noise on top of a time-averaged climate signal • Common weather and climate model development leads to efficiency savings, and allows the MOHC to take maximum advantage of its position within the Met Office • A common and transparent model development process across weather and climate science will maximise the benefit from collaboration with national and international Unified Model part ners working on different timescales This seamless weather and climate model development process has been put into practice with the development of a new family of models based around HadGEM3 (The 3rd MOHC Global Environmental Model). HadGEM3 is the latest climate model being developed within the MOHC, and consists of an ocean-model jointly developed with UK and European partners, and the latest configuration of the Unified Model used within the Met Office’s Weather Science area [157]. The different components of HadGEM3 were coupled together around the start of the last MOHCCP, and marked the first step in response to the decision to move to a two-level model development process. Rather than developing a single new model over each Coupled Model Intercomparison Project (CMIP) cycle, a configuration of the physical climate model was frozen at that stage of the c Crown Copyright 2013 © 16 development cycle, and used as the basis for development of the HadGEM2-ES Earth System Model (to contribute to the 5th CMIP), and in parallel a new physical climate model, HadGEM3, began to be developed. Over the last five years a new system has been formalised to continue developing, validating and releasing updates to this model, the atmospheric component of which is now used in the five-day high resolution weather forecast, the 15-30 day suite of probabilistic forecasts, near-term seasonal and decadal forecasts, regional climate model projections, and will be used for different horizontal resolution global climate projections as well as acting as the basis for the MOHC’s next Earth System Model. The atmospheric model development cycle now occurring across the weather and climate science areas is described in figure 2.3. Over the last five years this process has been sequentially focused in three important directions. First, in the MORPH3 (MOdel for improved Regional Prediction - HadGEM3) project, which took the (at the time) newly constructed, but only lightly validated HadGEM3-ES model [157], validate it, and develop it to provide useful information at a regional level. Within this project, working groups were set up across weather and climate science to examine monsoons, linkages between remote phenomena (e.g. equatorial Pacific temperatures and regional rainfall around the world), ENSO (El Nino Southern Oscillation), clouds, humidity and radiation, the MJO (Madden Julian Oscillation variability in the tropical atmosphere), differences between the modelled and observed background climate state, and regionally poor surface ocean validation. The CAPTIVATE (Climate Processes, Variability And Teleconnections) project continued pro gressing a number of these themes, but focused on providing a model capable of producing high quality near-term climate simulations [111]. Within CAPTIVATE working groups focused on mon soons, tropical cyclones, the blocking of extreme weather by stable weather systems, ENSO and remote weather/climate linkages, the MJO, sea surface temperature offsets from observations, sur face ocean circulation, clouds, radiation and light rain, the interaction of rain and topography, and processes important for African climate. Significant improvements were made to the blocking of ex treme weather by stable weather systems, and the representations of climate links to ENSO [111]. The INTEGRATE (ImproviNg model error, TEleconnections, and predictability Globally and Re gionally Across Timescales) project began in December 2011. This project is focusing on supplying a high fidelity physical climate model to act as the basis for the development of a next-generation joint UK Earth System Model, and developing a model to be used for medium-range weather timescales forecasts (15-30 days) which for the first time will bring together an ocean and atmo sphere model for use on these short timescales. The results from the INTEGRATE project will be delivered throughout the 2012-2015 MOHCCP. The scientific outcomes of the MORPH3, CAPTIVATE and INTEGRATE projects are described in the context of the overarching questions throughout section 2.3 of this report. c Crown Copyright 2013 © 17 Figure 2.3: Continuous development of new model components, processes, parameterisations and code, and continuous model assessment, evaluation and understanding form the basis of the Met Office’s weather and climate modelling capabilities. These two cycles are now brought together on an annual cycle through a formalised model implementation process. At the start of the year this process identifies and incorporates new developments from the model development cycle, im plements these changes into a single version of the atmospheric model, tests this model across a range of timescales and uses, then internally and externally releases a new finalised model version. c Crown Copyright 2013 © 18 Informing model resolution decisions An important benefit arising from bringing together the Met Office’s weather and climate models in a single development framework, has been the ability to consider in a coherent manner the role that lower than ideal model resolution plays in the poor simulation of some climate system components. This benefit builds on and extends many years of work developing a hierarchy of models using a range of horizontal resolutions [290]. The aim of this work has been to answer the question, at what resolution does the simulation of a certain process no longer continue improving, and therefore based on our understanding of which processes we must critically represent within our models to provide advice to different users, what set of model resolutions should we aim for. This work has helped us understand the sources of poor model performance in simulating trop ical Pacific sea surface temperatures [289], tropical variability [289, 23], salt transport into the At lantic, regional coastal cloud amounts [332], topography driven rainfall, tropical cyclones and storms [309], large-scale atmospheric circulation [309], mineral dust emissions from bare soil [353] and ocean-atmosphere interactions [309]. Many of these results are discussed further as this report explores the four overarching questions (sections 2.3, 2.4, 2.5 and 2.6). Models and supercomputing A key bottleneck on model improvement is the availability of supercomputing resources. As dis cussed above, perhaps the most important developments leading to improved climate model fidelity are increasing the horizontal resolution of models and simulating more, and more complex, Earth System processes. These changes can not happen without increasing the demand on supercom puting. For example, to double a climate model’s horizontal resolution typically requires about an 8-fold increase in available supercomputing, and turning a physical climate model into a (current generation) Earth System Model demands approximately a three times increase in resources4 . The 2007-2012 MOHCCP has seen one full, and one mid-life supercomputer upgrade. In 2007 2008 the Met Office installed a new 141 Teraflop (1.41x1014 calculations per second) IBM super computer, moving the Met Office’s supercomputer capacity temporarily into the list of the fastest 100 supercomputers in the world. The mid-life upgrade (to 1.2 Petaflops), occurring in 2012, and taking advantage of additional resources provided by DECC and Defra, moved the Met Office to 43rd on the June 2012 list of the world’s fastest supercomputers. In parallel to these supercom puting upgrades, a sister machine MONSooN (Met Office and Nerc Supercomputing (oo) Nodes) was installed with NERC funding, to help facilitate JWCRP (the Joint Weather and Climate Re search Partnership NERC-Met Office) collaborations. The higher resolution and more complete (with respect to the simulated processes) climate models which can be run with the increased su percomputing resource produce considerably more data than lower resolution and simpler models. The supercomputing upgrades occuring over the 2007-2012 MOHCCP have therefore been ac 4 see section 2.6 c Crown Copyright 2013 © 19 companied by equally important projects to extend the data storage facilities available at the Met Office. In line with the recommendations of Sir John Beddington’s review5 , which ’assessed that a stepchange increase in supercomputing capacity6 ’ was required, but also noted that a ’key need is to extend collaboration with European counterparts’ and that ’Longer term investments in hardware, at peta/exa-scale level7 , will sensibly be made on a wider European basis’, international collaborations on high-resolution modelling, already in place with Japan, have been extended. A new project has recently begun to take advantage of resources at the European PRACE (the Partnership for Ad vanced Computing in Europe) supercomputing facility, which is currently running what many would consider to be a global weather-forecast level model (25km atmospheric horizontal resolution), on climate timescales. This single project will use resources equivalent to the whole of the MOHC’s supercomputing over one year. An even more ambitious project is in negotiation with colleagues at the University of Texas in Austin. If it goes ahead, this study will extend work currently being un dertaken on a new Welsh supercomputing facility, simulating detailed (1.5km horizontal resolution) atmospheric processes over the southern UK to examine rainfall change [204]. 5 http://www.bis.gov.uk/assets/goscience/docs/r/10-1290-review-of-climate-science-advice.pdf 6 864 Teraflops from 2011, rising to 8 Peta (1015 ) in 2016 supercomputers (i.e. 1015 Flops, floating point operations per second) are available now. Supercomputer vendors are currently forecasting that Exa-scale supercomputers (1018 Flops) will be available around 2018). 7 Peta-scale c Crown Copyright 2013 © 20 2.3 How and why is the Earth System already responding to climate change? The compilation of environmental observations from new measurements and archived data-sets serves three main purposes. Firstly, it provides an ever increasing catalogue of evidence which shows that the climate is changing, and can be used to identify sensitive components of the climate system. Secondly, it allows us to validate, calibrate and test our models of the climate system to give us confidence that they can represent the background climate state, the mechanisms driving change, and the characteristics of extreme weather. Thirdly, only through observations can we understand how extreme weather/climate events impact people, and can therefore focus future climate simulations on providing the information necessary to understand the impacts of climate change, as they will continue to be felt by human systems. After the IPCC’s 4th Assessment Report (AR4), and moving beyond the question ‘is climate change real‘, the observational bases for climate science have been focusing understanding and interpretation of observed change at increasingly small spatial and temporal scales. Research has been carefully exploring our levels of confidence in many aspects of observational and mod elling systems, to be able to identify and make sense of trends occurring at continental and sub continental scales. But at the same time understanding individual past extreme events, and identi fying, by quantifying the probability of their contribution, the drivers of those events. The development of new, and refinement of existing observation-based prod ucts Since its conception, the MOHC has been integral to the development of some of the world’s most iconic and heavily used climate data sets, with the paper describing the historical sea surface tem perature product HadISST (Rayner et al., 2003), being the first of two MOHC papers to reach 1000 citations8 (Rayner et al., 2003, Cox et al., 2000). Not only are these products continuously ingesting the latest observations and identifying and digitising historical records [211], but they are rapidly evolving to answer the requirements and questions posed by the public, media, government and scientists. As a result there have been a number of detailed improvements in the data-set construc tion methodology. Despite overwhelming evidence that the heat coming into the Earth system no longer balances the heat going out, and therefore that the total energy (mainly in the form of heat) in the system is increasing [146], the last five years have seen unprecedented scrutiny of some of the most widely used global data-sets, in the wake of the hacking of emails from the University of East Anglia’s Climatic Research Unit. The apparent public distrust in climate data-sets stimulated a huge effort to facilitate the release of data from over 1500 observations sites and the code used to produce our global surface tem 8 A standard measure of the usefulness of a piece of published science is how many other peer-reviewed publications refer to it (cite it). Typically a vey good piece of science may be cited a few tens of times. c Crown Copyright 2013 © 21 Global Average Near-Surface Temperatures 1850- 2011 0.8 Temperature difference (oC) with respect to 1961-1990 0.6 0.4 0.2 0.0 -0.2 -0.4 -0.6 -0.8 1860 1880 1900 1920 1940 1960 1980 2000 Figure 2.4: Annual global average temperatures and 95% confidence ranges on those values from the HadCRUT4 surface temperature product [245]. perature data-sets [275, 244]. Whilst requiring a massive scientific, technical and communications effort [272], this work has highlighted the integrity of Met Office science. As a result there have been a number of detailed improvements in the data-set construction methodology9 . In parallel to playing a leading role in making the process of producing these data-sets more transparent [322], public scrutiny and the ability of the climate modelling community to ask in creasingly detailed questions of observational data-sets, has required that uncertainty ranges be placed on the observational data-sets. The push to quantify measurement and interpolation un certainty has led to work identifying differences between different ocean temperature and salinity profile instruments [132, 235], drifts in surface temperature buoys, techniques to splice together different satellite data sets [100], work to investigate how to robustly combine data from satellites and surface observations (which generally record land/sea-surface and air temperatures respec tively) [207], and correct for the time of measurement [217]. By firstly understanding the sources of inaccuracy in measurements [264, 132, 216]; secondly, explicitly assigning uncertainty ranges to individual measurements in the historic record [209], and finally developing new statistical tech niques to combine these uncertainties and interpolate between measurements [245, 206, 207], a new generation of more robust and more transparent data-sets has been produced [206, 207, 245] (e.g. figure 2.4). 9 These changes and their negligible impact on the global http://www.metoffice.gov.uk/hadobs/crutem3/jan 2010 update.html c Crown Copyright 2013 © 22 temperature record can be seen here Interpreting climate data Whilst surface temperature data-sets have remained vitally important in communicating climate science to the public and interested parties [271, 108, 109], scientifically there is often a fairly a limited amount of information which can be gained from a single data-set. A combined observationmodelling study has shown that over any decade, surface temperatures alone are an inadequate indicator of changes in the total energy (and therefore potential heat) in the climate system [258]. In fact we are only just realising the depths in the ocean to which observations may need to be made to fully budget for the changes in energy (predominantly heat) in the climate system on decadal timescales [258]. The need to be able to explain the natural and anthropogenic drivers of variability, or lack of variability, in surface temperature over decadal timescales was recognised early on during the last MOHCCP, and a study examining variability in models concluded that hiatuses in globally averaged surface temperatures lasting up to around a decade and a half (at present rates of change of an thropogenic forcing) were consistent with the naturally occurring climate variability thought to exist [214]. But we know there are many more components of change than just natural variability, and we know that our observing systems are limited. Explaining the recent hiatus in surface temperature change, and any future short-term particularly rapid or particularly muted changes, will therefore be an important challenge to our observational and modelling systems over the coming years if we are to prove that our near-term modelling tools are ready to inform adaptation to near-term changes in climate. The MOHC has, over the last MOHCCP, developed, and collaborated with developers of, a wide range of data-sets both broadening our understanding of the changes in the climate system, and identifying the potential impacts that climatic events may have on people [47, 54, 75, 73, 240, 105, 212, 213, 263, 265, 3, 326, 6, 233, 232]. The seasonal and annual summaries of the state of the climate, supplied to government and more recently published in the Bulletin of American Meteorological Society (BAMS) [11, 12, 144, 267, 208, 31, 238, 342, 227, 344, 345, 343, 346] have been building up a valuable repository of interpreted climate information across the globe, complementing the data archived by the MOHC’s National Climate Information Centre (NCIC). This work has also contributed to the publication of a syntheses of climate indicators (figure 2.5) [208]. Brought together, the separate climate indicators present a much more complete picture about changing climate than does a single record. This observation-based description is consistent with our basic understanding of how the climate system will respond to anthropogenic activity. There are ongoing challenges to convey this more complicated, but more compelling message to the public, and to make more use of novel data-sets in parallel with traditional data-sets to more-tightly identify correct climate model behaviour. c Crown Copyright 2013 © 23 1.0 Land Surface Air Temperature: 4 Datasets 0.6 Tropospheric Temperature: 7 Datasets 0.4 Anomaly (oC) Anomaly (oC) 0.5 0.0 0.2 0.0 -0.2 -0.4 -0.5 -0.6 20 Sea-surface Temperature: 6 Datasets 0.2 0.0 -0.2 -0.4 Ocean Heat Content (0-700m): 7 Datasets 10 Anomaly (1022J) Anomaly (oC) 0.4 0 -10 -0.6 0.3 Marine Air Temperature: 5 Datasets 0.0 -0.2 -0.4 0.1 0.0 -0.1 -0.2 -0.6 100 1.5 Stratospheric Temperature: 8 Datasets Sea Level: 6 Datasets 1.0 Anomaly (oC) Anomaly (mm) 50 0 -50 -100 0.5 0.0 -0.5 -1.0 -150 -1.5 -200 1850 6 Specific Humidity: 3 Datasets 0.2 0.2 Anomaly (g/kg) Anomaly (oC) 0.4 1900 1950 2000 1940 Northern Hemisphere (March-April) Snow Cover: 2 Datasets 1960 1980 2000 10 September Arctic Sea-Ice Extent: 3 Datasets Extent (106km2) Area (106km2) 4 2 0 -2 8 6 -4 4 -6 1900 1950 2000 Mean Specific Mass Balance (mm w.e.) 1850 0 Glacier Mass Balance: 4 Datasets -200 -400 -600 -800 -1000 1940 1960 1980 2000 Figure 2.5: 11 climate indicies compiled by the MOHC for publication in ’The State of the Climate 2009’ [208]. Ongoing work has recently seen global time-series compilations of up to 32 climate indicators published in the 2011 state of the climate report. Anomalies presented relative to the 1961-1990 average. All values are global averages unless otherwise stated. c Crown Copyright 2013 © 24 Interpreting climate data using models There is a huge amount we can learn about the climate system and its response to external forcings from the observations alone. Statistical relationships between different components of the global climate system can highlight new mechanisms and teleconnections: e.g. the relationships between ENSO variability and European climate [115], or East Pacific sea surface temperatures and the blocking of weather system movement over the Equatorial Pacific [262, 17, 160]. However when these observations are combined with modelling, we can test those relationships and develop new mechanism-based understanding. This has been done for the impact of ENSO [169] and solar vari ability [168] on European winter temperatures, and to identify a potential role for anthropogenic and volcanic aerosol emissions in driving recent observed sea surface temperature variability (previously considered to result from internal variability) [33] (figure 2.6). Even where limited observations are available, we can, for example, use those observations to narrow possible interpretations of the land-surface carbon flux [226], or to try and understand and predict changes in the large-scale ocean circulation in the North Atlantic [237]; in some cases demonstrating how difficult it will be to confirm or deny past changes have occurred given available historical observations [288]. A number of such lines of evidence indicate that the strength of this circulation could have increased since preindustrial times, but also find that this will be hard to verify observationally [269, 225]. At the forefront of climate change is changing Arctic sea-ice extent. The speed with which seaice extent can change, and its importance in the global energy budget10 and regional weather, presents a challenge to those trying to observe the system, but also a challenge to how we do cli mate science. The rate at which sea-ice extent has reduced over recent decades has necessitated a reactive rather than preemptive approach, an approach from which we may need to learn a lot of lessons about how we conduct climate science over the coming decades. New sea-ice observing techniques have allowed estimates of sea-ice extent to include con fidence ranges, critical if we are to be able to understand or forecast change, but we still lack decent measurements of ice-thickness, and therefore the ice volume and the energy required to melt that ice. Whilst analysis of our previous generation physical climate model HadGEM1 (the 1st MOHC Global Environmental Model - which contains the same sea-ice model as 2nd such model HadGEM2) over the last MOHCCP shows that it was one of very few models at the time to be able to replicate the rate of decrease of sea-ice extent [197, 198] (figure 2.7), we have found that the pattern of ice-loss, and therefore potentially the detailed mechanisms of ice-loss, differ from those occurring 10 It is often useful to think about climate change in terms of changes in the earth’s energy budget rather than just changing surface land and ocean temperatures. For example, we know that if we reflect back to space less of the energy coming from the sun (in the form of light) because we have less sea-ice (which is highly reflective compared to open water), more energy must remain in the atmosphere-ocean-land system. Energy exists in various forms - for example heat, chemistry, or electromagnetic radiation (often light), so a change in the total amount of energy in the earth system can only occur through a change in one of these things, typically heat, but possibly (for example) a chemical change from ice to water or expansion of that water. Therefore, without having to measure a change in temperature - which in the Arctic (for example) may be logistically difficult - we know that melting of sea-ice (for example) will cause the climate to change. We know this because we can see the change in light being reflected to space. c Crown Copyright 2013 © 25 (A) ERSST and CMIP3 SSTs 0· 6 0.4 z0 co (C) CMIP3 Aerosol Complexity 0 ·6 1950-75 Trend: ERSST= -0.37+/-o.07 0.4 0.2 0.2 -0.0 -0.0 -0.2 -0.2 -0.4 -0.4 -0.6 ........._ I 0 w ~. f'.. I LO f'.. en Q) 195D-75 Trend: ERSST= -0.37+/-0.07 . lntl'!lrAN = __.__........_........________ 1880 1900 1920 1940 1960 1980 2000 Year 1880 1900 1920 1940 1960 1980 2000 (B) ERSST and HadGEM2ES Atlantic Response 0.6 0.4 .._ 1950-75 Trend: ERSST = -0.37+/-0.07 Model = -0.43+/-0.08 :::J ca.._ 0.2 Q) c. E Q) I-0.2 . 1880 1900 1920 1940 1960 1980 2000 Figure 2.6: Annually averaged North Atlantic Sea Surface Temperature (SST) from observations (black) and HadGEM2-ES (orange). HadGEM2-ES shows remarkable agreement with the observa tions over timescales of only a few decades - unlike the previous generation (CMIP3 - 3rd Coupled Model Intercomparison Project) models (blue and green), although some of these models, those which contained more advanced representation of aerosol (pollution particles) impacts do show some of the observed variability (red) [33]. c Crown Copyright 2013 © 26 Figure 2.7: Total Arctic sea-ice extent averaged throughout September of each year, from each of the available CMIP5 (5th Coupled Model Intercomparison Project) models (gray), including HadGEM2-ES (blue). HadGEM1 (red) and observations (black). in reality [93]. We are therefore beginning to understand how to validate our modelled sea-ice in more detail, and can use this to improve the new sea-ice model being developed in HadGEM3 (the 3rd MOHC Global Environmental Model). Despite recent work to incorporate observed sea-ice data into our near-term climate forecast systems [154], sea-ice loss can not yet be forecast with confidence. It is therefore important that we provide regular updates on the state of the sea-ice [152, 153, 155], look retrospectively at major sea-ice loss events in the context of contemporaneous meteorological/oceanographic observations [341, 198, 154] and explore similar rapid ice-loss events identified within our model simulations [197]. Based on this understanding we can make improved estimates of when summer sea-ice might disappear [151], and make it clear that recent particularly-rapid periods of ice-loss are not inconsistent with natural variability simulated within our models, and therefore that a slowing in the rate of sea-ice loss is still possible [156]. Limited confidence still remains in our short-term and decadal sea-ice outlook [283]. Increasing this confidence will be an important challenge for the 2012-2015 MOHCCP. c Crown Copyright 2013 © 27 1961-90 long-term average maps Mean temperature Daily maximum temp Daily minimum temp Days of air frost Heating Degree Days Cooling Degree Days Total precipitation Days of rain ≥1mm Sea-level pressure Relative humidity Windspeed at 10m x x x x x x x x x x 1971 2000 long-term average maps x x x x x x x x x x x Difference Climate maps change maps Regional decadal change maps Regional linear trends tables x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x x Table 2.1: Variables and climatological information presented in UKCP09 ’The climate of the UK and recent trends’ [107] Observations within the UK Climate Projections As the requirements moved over the last MOHCCP from demonstrating that climate is changing to informing decisions based on climate forecasts and projections, increasingly specific questions are being asked of the observations. This may require new observations to be collated, or previously compiled data sets to be differently interpreted. As part of the UK Climate Impacts Programme (UKCIP), ’The climate of the United Kingdom and recent trends’ report stimulated a push to develop spatially complete maps of many climate variables across the UK to allow validation of models and understanding of how the occurrence and magnitude of specific climate events, such a drought, might change in the future. Monthly and annual climate variables have been reconstructed for the UK back to the early or middle 20th century [171, 107], daily minimum and maximum temperatures have been compiled in response to UKCIP user requests and return periods of droughts, extreme temperature and precipitation events have been characterised. Table 2.1 details the observational data compiled and presented for the 2009 UK Climate Projections report(UKCP09). Validating models By combining the extreme event observations with analysis of the associated meteorological condi tions surrounding these events it has been found that in the UK and Europe the occurrence of many meteorological extremes is primarily driven by large-scale change, rather than local conditions [52]. This increases confidence that if we can recreate the correct background climate state in models, model projections of extreme climate events are likely to be correct. This work is not just focused on the UK, but has been extended to many regions around the world to provide evidence to be presented by the UK Government at the Durban Conference of the Parties (CoP) in 2011 [109] and to understand changes in heat-stress and temperature related mortality [77]. c Crown Copyright 2013 © 28 For many environmental variables which are critical for the validation and improvement of cli mate models, spatially complete ’climate monitoring quality’ data-sets [239] are not available. Oc casionally individual time-series stations can be placed in context by, and help validate models (e.g. figure 2.8), but often only measurements from short observational campaigns (for example ship cruises) are available - these can at best validate the behavior of our models under specific con dition (those experienced during the observational campaign), but are invaluable where we have limited observational constraints on how components of our models should behave e.g. [140]. To take full advantage of measurements of cloud properties coming from satellites, computer code has been incorporated into the latest HadGEM models to output the specific variables that satellites can observe, and does so in a way consistent with the temporal and spatial distribution of satellite obser vations [143, 32] - analysing these results will make up an important component of the 2nd Cloud Feedback Model Intercomparison Project (CFMIP2) which is being co-led by the MOHC. CFMIP2 will also be taking advantage of the fact that Met Office weather and physical climate models now form a hierarchy which is traceable across timescales and resolutions [304]. Representing how cloud will change in the future is key to correctly representing the change in energy coming into and out of the planet. This hierarchy means that models using the same physics and parameterisations but different horizontal spatial resolution can be used to understand cloud problems occurring across weather and climate time scales and therefore the causes of problems can be identified. For example, a systematic cloud issue was identified occurring above the Southern Ocean in all of our models. A new method was developed to link cloud behaviour to conditions where the properties of lowest level of the atmosphere was dominated by high wind-speeds. This was implemented and initially tested in our high resolution regional and global weather models to ensure that spurious results (occurring due to the lower resolution in the climate model) were not obtained, then tested in the model’s climate configuration before being integrated into the latest version of HadGEM3 [5]. There are numerous examples of where observations have been used to validate the models which have been in development during the last MOHCCP. Perhaps the most valuable are those which have been used to constrain the often highly parameterised and complex (and therefore highly uncertain) earth system processes, to improve our representation of processes like carbon cycling. Examples include the validation of aerosol simulations against observed weekly variability arising from patterns of human activity in urban areas, and aerosol concentrations measured during Natural Environment Research Council (NERC)-Met Office aircraft missions [174, 20, 145, 2, 92, 158, 253, 65, 78, 175, 79], the validation of ozone profiles in the atmosphere at individual measurement sites [89], the validation of terrestrial vegetation behaviour against atmospheric CO2 seasonal cycles [61], and the validation of ocean dimethylsulphide emissions against individual ship-based observations [140]. Numerous additional model validation results can be found within papers published by the MOHC over the last five years for example [89, 331, 273, 78, 112, 158]. c Crown Copyright 2013 © 29 Figure 2.8: Surface ocean pH measured at the two longest running ocean time-series stations at Hawaii (a) and Bermuda (b) (black), and simulated at those locations by the HadGEM2-ES model (red). Models and observations agree on the absolute value, trend, and magnitude of the interannual and intra-annual variably. Detecting climate change and identifying its drivers A number of examples have so far been described where observed historical change has been attributed to anthropogenic activity by identifying, understanding and validating the mechanisms in volved. However, given that each of these studies will have required many months, or even years, of a scientist, or group of scientists time, there is also a need to determine whether observed trends and events can be attributed to anthropogenic activity relatively quickly by identifying statistical rela tionships between model and observational changes [7]. These results can be used to test models, and to identify where future impacts might come from. The science of climate detection and attri bution, the identification of a climate change signal, and demonstrating that signal to be a response to a specific component of human activity, has been a key component of climate research for many years. Recently work has begun to attribute individual weather and climate events, identifying to what extent the risk of a particular event can be attributed to a specific component of human activity or to natural variability. This work has been developing rapidly over the last five years. The IPCCs 4th assessment report presented results which attributed most of global mean tem perature change since the mid 20th century to anthropogenic activity from increased greenhouse concentrations [147], but did not characterise the effects of obervational inaccuracies or fully ex plore modelling uncertainties (figure 2.9) [147]. More recent work has shown that the AR4 findings are robust to known model and observational uncertainty [193], has furthered quantified the per centage of specific changes to human activity - for example, it was shown that 80% of the increase in land temperatures since the late 1970s can be attributed to human activity. Improved techniques to compare models and observations more clearly have also been developed [258, 257]. The attribution of changes has also progressed beyond standard climate variables, by utilising new compilations of humidity [347] and ocean oxygen concentrations, we have worked with col leagues to demonstrate a human driven component of the observed changes [252, 348, 298], and c Crown Copyright 2013 © 30 Figure 2.9: Observed global continental-scale temperature time-series are only consistent with climate model results when those model simulations include anthropogenic forcings. At the time of the IPCC’s 4th assessment report (from which this figure comes) [147], human activity has been attributed as the cause of centennial timescale temperature change in all continents other than Antarctica. More recent work by the MOHC has extended this result to all continents. even quantified the likely human contribution to observed changes in growing season length [74]. The statistical attribution of observed changes has also focused on smaller regions [254, 126], with the demonstration that the likelihood of the occurrence of recent warmth in all subcontinental regions other than North America has doubled in response to anthropogenic activity and the understanding of trends in precipitation [325, 361] (figure 2.10). In some areas of the science, models and physical understanding are telling us about things which are likely to be changing, but the required observations are not yet forthcoming. The humidity of the upper troposphere is one area where improved observations will place much tighter restric tions on what we consider to be good model simulations. These measurements will help quantify the strength of the climate feedback associated with the increased capacity of warm air to hold moisture, and the greenhouse properties of that moist air. Methods are being developed within the MOHC to measure upper-tropospheric humidity from satellites [286, 161]. As well as narrowing the spatial-scales over which climate attribution studies are undertaken, the last MOHCCP has played an important role in the narrowing of the time-scales [127] of detection and attribution from decades to individual weather events. Consequently we have begun developing near-real time capabilities which will allow us to determine whether the probability of occurrence of individual weather events has been increased by anthropogenic activity. So far events that have been looked at include abnormally warm seasons in Europe, where the probabilities of occurrence have been shown to have very likely more than doubled or in the case of summer-season temper atures, quadrupled [324, 194], and extreme flooding events in the southern UK, the probability of occurrence of which has been shown to increased [256]. This work was in part stimulated by c Crown Copyright 2013 © 31 Figure 2.10: Advances in the science used to detect climate change, and attribute it to human or natural drivers has progressed over the course of the last MOHCCP. We can now not only say that the observed changes are likely to be caused by human activity, but can also quantify how likely human activity has been the drive. This is being undertaken at smaller and smaller spacial scales [325]. the Pitt Review ’Lessons learned from the 2007 summer floods’ to which the MOHC contributed significantly. A prototype system to quantify the role anthropogenic activity has played in changing the probability of the occurrence of individual extreme events, in near-real time, is being developed using the finalised atmospheric component of the HadGEM3 model [327, 76]. An international working group (ACE - the Attribution of Climate Events group) to look at the use of such systems has been set-up and co-led by the MOHC [321, 323]. Once this system is complete, it will both function as a near-real-time model validation tool, but will also play a key role in highlighting the sorts of weather/climate events that societies and economies will have to increasingly adapt to deal with as climate change progresses. c Crown Copyright 2013 © 32 2.4 What climate change is likely to occur in the coming decades, and which changes may cause socioeconomic stress? Prior to the IPCC’s 4th Assessment Report, climate science had been asking almost exclusively what the planet might look like by the end of the 21st century or in response to idealised changes in forcings (CO2 concentration doubling, or 1% per year CO2 rise) - a time-horizon, or magnitude of forcing, at which there was confidence that the external forcing (be that idealised or anthropogenic) would be significant compared to natural variability in the system and chaotic processes. However, planning within many societal systems occurs on the much shorter timescales - a few decades or less. Improved scientific understanding, computational resources and significant innovation over the last five years has allowed us to tackle the challenges posed by natural variability and chaos on near-term prediction, and begin to fill the gap between weather-forecasting and climate projections [128]. Whilst the range of climate forcing change implied by plausible future socioeconomic scenar ios do not diverge significantly until the 2030’s (figure 2.11), over this interval we will experience large changes in regional climate forcings (e.g. aerosols) and significant changes in global climate forcings (e.g. CO2 ) [120]. Over this time period we will also experience the combined effects of changes within the state of internal variability (e.g. ENSO, NAO11 ) and natural external forcing such as solar cycle changes [192]. Near term climate fluctuations are as large as many years of anthro pogenic change and so it is when these natural factors are superimposed on anthropogenic change that the risk of extreme or even unprecedented climatic events and impacts at local and regional scales is highest. These factors will superimpose to produce considerable climate impacts at local, regional, and perhaps even global scales, which, due to inertia and human and climate systems, are practically unavoidable over the coming decades12 . A perfect model, initialised with perfect observations, would be able to predict the probability of most of these changes occurring [94]. This is what we are working towards. To allow societies to minimise the impact of these inevitable climate changes, we must: understand where and what near-term climate forecasts can skillfully predict; explore past high-impact climate events using models and observations to learn where to target new technical developments; translate modelled change into climate impacts; and understand how to usefully present this information to those who can best make use of it. Decadal forecasting Near-term climate prediction jumped from being a largely empirical statistical exercise, to a mechanisticallygrounded science at the start of the last MOHCCP with the publication of Smith et al. (2007) [317]. 11 ENSO stands for El Nino Southern Oscillation, and NAO for North Atlantic Oscillation. These are two components of variability that appear to occur naturally in the Earth system. 12 Although coordinated global efforts could potentially bring about significant changes in global radiative forcing by rapidly reducing emissions of some short-lived climate pollutants - see http://www.unep.org/ccac/ c Crown Copyright 2013 © 33 British Isles decadal mean temperature Fraction of total variablity (%) y Global decadal mean temperature Internal variability 90 90 Internal variability Scenario-dependant variability Scenario-dependant variability 60 60 30 0 30 Model-derived variability 0 20 40 60 Years from 2000 80 100 0 0 Model-derived variability 20 40 60 Years from 2000 80 100 Figure 2.11: Figure taken from Hawkins and Sutton (2009), which highlights the different contribu tors to variability in the climate system over various time-intervals starting in the year 2000. It can be seen that natural variability within the climate system is a key component of change on short timescales. On multi-decade timescales, limitations to our representation of the climate system within models is the dominant cause for variability in projection. Moving towards the end of the century, socioeconomic choices about climate forcings dominates the spread of plausible climate conditions. This paper showed that by combining observations of external factors and the internal climate state, a model could skillfully predict global and regional temperature changes years before they occurred (figure 2.12). This groundbreaking work has spawned a new field, ’decadal forecasting’, within inter national climate science [137]. Since the first projections were made, considerable effort has gone into using, understanding and developing the forecast system [318, 19, 123, 102, 167, 236, 246, 269, 315]. Our decadal prediction system has been used to develop new climatologies (maps of the aver age climate state) for the present-day and future decades to assist planning decisions [45, 280], but also to identify skill at predicting impacts more tangible to societies and individuals than global or regional temperatures - for example, extreme warmth or lack of rain [278, 349, 313, 135, 133, 314]. Work has focused on how knowledge of the state of the North Atlantic Ocean can provide pre dictability in the regions surrounding this ocean, showing that hurricane formation in the tropical ocean could be predicted a number of years in advance [315]. Rather counterintuitively, the ability of the model to correctly predict changes in the tropical Atlantic is only achievable when observa tions from north of this region were fed into the modelling system [102]. This work gained first prize in the Lloyd’s of London Science of Risk awards, recognising the value of such information to the insurance industry and therefore economic adaptation. The value of different observation types and different observational strategies has been ex plored [102], and more recently possible drivers of such variability have been investigated [33]. In combination with work undertaken to quantify historical changes in extreme climate/weather events [46, 47, 54, 240, 105, 212, 213, 263, 265, 3, 326, 6], and development of our understanding of c Crown Copyright 2013 © 34 Figure 2.12: Forecasts of how the climate is likely to change over decadal timescales must take natural variability in the climate system into account (see figure 2.11) [317]. The black lines show changes in the observed high-latitude North Atlantic temperature, and the coloured lines the decadal forecasts started at different years throughout the period using the observed state of the ocean at that time to inform the model’s starting conditions. what drives extreme events [302, 57, 116, 228, 3, 75, 73], skillful regional prediction of extreme temperature events13 has even been shown to be possible out to a number of years [104, 106]. Seasons to decades Whilst decadal timescale forecasts are the shortest range predictions to be strongly impacted by what we would generally consider to be climate change drivers, the climate-influenced events that will impact people will often be much shorter lived - for example wet/dry or hot/cold seasons or runs of such seasons. It is therefore essential that we are confident that our models can correctly simulate these events on top of the more slowly changing background climate. To gain this confidence is not just a matter of showing that models can recreate the present-day occurrence of these events in a statistical sense, i.e. the number and distribution of these events through time (although this can still be very useful [279, 104, 336, 340, 1]), because it is quite possible to achieve this without necessarily having the correct mechanisms in place. It is also necessary to be able to recreate the specific characteristics of, and understand the mechanisms driving, numerous individual observed extreme events. It is for this reason, amongst others, that a large effort has been exerted over the last MOHCCP to make the decadal and longer time scale physical modelling systems share a common physical model and largely common pa rameterisations14 with the seasonal, medium range (up to 15 days) and short range (up to five 13 Some of the work described here takes the definition of an extreme event to be an event encountered on average only one out of ten times (for an extreme extreme daily rainfall would be the amount of rain experienced on only 10% of days). These are classed as ’moderate extremes’. In other studies, an extreme event will be one occurring much less frequently. 14 To allow a common set of parameterisations to be used across models, all models are now being developed with a common spacing between the vertical levels dividing up the atmosphere. This is important because over short vertical distances atmospheric conditions change much more rapidly than they do over similar distances horizontally, and most parameterisations define how properties behave within a vertical column of atmosphere - across these sharp gradients. c Crown Copyright 2013 © 35 days) forecasting systems. The distinction between the models therefore essentially becomes one of horizontal resolution [215, 84, 14] and therefore model fidelity and computational expense. By moving the decadal climate prediction system from the HadCM3 (the 3rd MOHC Climate Model) to the HadGEM3 model, the ability to predict near term climate change has been increased. This is partly due to the improved representation of processes like aerosol-cloud interactions in the new model, but also because improved physics means that connections between, for example, Atlantic sea surface temperature change and Sahel precipitation are better represented [215]. By sharing a common physical framework, all of our models will benefit from forthcoming advances in the mathematical representation of the dynamics of the atmosphere (the movement of heat, moisture and other quantities between grid-boxes within the climate model). The model dynamics are being improved to take advantage of a new generation computing architecture. This work is being undertaken in collaboration with NCAR (National Centre for Atmospheric Research) and UK partners [296] and funded in part by the Science and Technology Facilities Council. Despite the Met Office’s integrated approach to weather and climate modelling being the envy of many climate centres across the world, our seamless-prediction system is only in its infancy [299]. However, a number of key findings of direct relevance to decadal prediction and adaptation in the European region that can also be used to test and improve the fidelity of our climate models, are already emerging from the use of the seasonal forecast system to examine past events [302, 169, 229, 230, 168, 301, 1]. Whilst to a large degree sharing the same physical model, our seasonal and decadal prediction systems still differ in how they use observations as a starting point for forecasts. Because a model’s equilibrium state (the climate that it simulates after being run for a long time without any changes in greenhouse gas concentrations (or other climate forcings)), differs from the real world’s equilibrium state (perhaps the gulf stream crosses the Atlantic too far north, or too much cloud is simulated in the Arctic), a model simulation started from a state that looked identical to reality would slowly drift back to the model’s preferred equilibrium state. The similarity between the latest generation of models and the real world now means that the rate at which this drift occurs is small enough to be subtracted out and still simulate events recognisable as those occurring in reality. Our sea sonal forecast systems can therefore be used to recreate key observed real-world events, such as the recent run of cold European winters [19, 269] which oppose the long term climate trend and can therefore confuse policy makers, the public and users, but nonetheless show a useful level of predictability. When simulations using our current generation of seasonal-forecast (i.e. observation initialised) models are extended to a few years, the drift becomes problematic, so it is better to begin simulations from the model’s equilibrium state (or at least a state close to this), then change the model’s starting values by an amount equal to the difference between the real-worlds equilibrium state and its value at the moment of interest. The decadal-forecast system is therefore appropri ate for identifying likely patterns and magnitudes of changes in the system rather than predicting specific meteorological events. Because our decadal and longer-timescale models can’t recreate c Crown Copyright 2013 © 36 the specific evolution of individual real-world weather/climate events, it is imperative that we use our seasonal models to do this, and ensure that those components of the seasonal model necessary to successfully simulate these events, are included in our longer time-scale models. Forecasts on all these timescales allow identification of likely patterns and magnitudes of changes in near-term climate and the risk of extremes rather than the exact occurrence of individual events. It is imperative that we use retrospective seasonal predictions to test our climate models against recent extreme events. Ongoing work is examining when it will be possible to initialise the seasonal and decadal systems using a common methodology, and therefore produce truly seamless forecasts from weather to climate time-scales. The early signs are encouraging, and suggest that we may be able to do this in the next few years, after which we will be able to present coherent adaptation advice from days to decades ahead. The combination of recent modelling developments, together with the possibility of future step-changes in supercomputing capacity, mean that such models models truly capable of providing consistent adaptation across timescales - are now within reach. Translating short timescale understanding to long-term model improvement Analysis and modelling of past extreme seasons has led to a number of high profile papers and an increasingly complete picture of the drivers of such events in the European region. These simulations have also allowed us to identify the model requirements necessary to capture these events. Several components of the earth system appear to influence European climate extremes: correct representation of the tropical Pacific [169, 81], proper representation of the stratosphere [116, 230, 229, 168]; unbiased North Atlantic sea surface temperatures (figure 2.13) [290, 300], and the correct representation of sea-ice. Ineson et al. (2011) [168] show that stratospheric warm ing/cooling caused by changes in ultraviolet output from the sun, modifies the high latitude tropo spheric circulation and European winter temperatures. Marshall and Scaife [230] show that the quasi-biennial oscillation (QBO), a slowly varying (years) signal in stratospheric winds, again im pacts European climate. The correct initialisation of the QBO state could help us to correctly predict regional temperature extreme events out to a few years ahead, and is likely to be important if we are to simulate realistic variability and changes in frequency of extremes on longer timescales [59]. More recent work shows that a further important component of European extreme weather is the Atlantic storm track position and intensity, and that this is strongly determined by North Atlantic sea surface temperature patterns. Many CMIP3 and CMIP515 models, including all MOHC models, have been shown to exhibit offsets (when compared with observations) in North Atlantic sea surface temperatures. Recent work demonstrates that by increasing the number of ocean grid-boxed per degree latitude/longitude to 16 (quarter of a degree each), the gulf stream path is better simulated and ocean temperatures are closer to reality which in turn improves the simulation of the storm track. It is quite possible that changes in storm track position in the future will be a first order 15 Note that CMIP3, the 3rd climate Model Intercomparison Project preceded CMIP5 - the name CMIP4 was skipped to bring the project numbers into line with the IPCC’s Assessment Report numbering c Crown Copyright 2013 © 37 control on European climate change [356] over coming decades. Improved understanding about the specific benefits of ocean resolution and stratospheric representation, for example, obtained from seasonal time-scale simulations, will lead to significant improvements in our ability to model change over adaptation and mitigation timescales [270]. This is discussed in the paper ’Climate Change Projections and Stratosphere-Troposphere interactions’ [302], awarded a further prize by Lloyd’s of London for improving our understanding of climate related risks. A number of Met Office and collaborative projects are ongoing which should lead to improved model predictions on near-term adaptation timescales. The adoption of the Met Office’s models by centres in India, Korea and Australia will begin to extend the, so far largely European and African focused, near-term climate work to many regions around the world [71]. Together with colleagues at the European Centre for Medium-range Weather Forecasting (ECMWF), we are investigating the use of multiple models, and the suites of many model simulations with stochastically perturbed physics (different random numbers chosen from plausible ranges put into equations describing un certain processes within the model), to improve probability-based near-term projections. Finally, work is ongoing at the MOHC to combine the approach so far used to explore the lack of certainty in centennial timescale projections, with the idea of starting projections from observations to overcome problems with natural variability [215]. The approach used to explore the impact of uncertain parameter values is similar to that described for representing uncertainties in the climate state, whereby, by varying uncertain values within model equations, the full range of future climate possible within that model design can be simulated - this is the technique used in the MOHC’s QUMP (Quantifying Uncertainty in Model Predictions) project, which will be discussed later. The use of realworld observations to define the starting conditions for a model simulation is the approach described above for seasonal and decadal forecasting. By combining these two methods it is anticipated that forecasts out to the middle of the century would allow adaptation decisions to be made based on likelihoods, but also that that information takes into account the present state of natural variability, and therefore spans, as tightly as possible, the real future change. It is likely that such a system could be used to extend the focus of adaptation tools like the UK Climate Projections (UKCP09) from the long-term to the more user relevant near-term [88, 248]. c Crown Copyright 2013 © 38 a b 60oN 0 oN 90oW 0o E 90oW 0o E Temperature ofset from obs. -9 -3 0 3 9 0.3 Blocking Frequency c observation high resolution low resolution 0.2 0.1 0.0 90oW 45oW 0 oE 45oE Longitude Figure 2.13: Extreme European weather is strongly influenced by high pressure systems which block storms coming in from the Atlantic (e.g. when the UK experiences a sustained period of clear weather). New work has shown that the ability of the model to recreate the observed frequency and spatial distribution of these blocking events is highly dependent on correctly representing the sea surface temperature conditions in the high-latitude North Atlantic. The ability of the model to correctly simulate the sea-surface temperature conditions has also been shown to be highly dependent on the horizontal resolution of the model. Part a shows the sea surface temperature offset from that which is observed in the standard resolution model, and part b the (much reduced) temperature offset in the high-resolution model. The positive impact this has on the number of blocking events is then presented in part c [300]. c Crown Copyright 2013 © 39 2.5 Looking beyond the next couple of decades, what climate change is likely to cause socioeconomic stress? Near-term climate forecasting is still in its infancy, and its real value in providing advice for use by those planning the adaptation response to climate change, is only likely to be realised in the coming years as new supercomputing infrastructure allows higher resolution models start to be run operationally. Moving beyond the next few decades, and beyond the time period where internal variability dominates regional climate projections (figure 2.11), by carefully taking model-derived variability, and different socioeconomic pathways into account, we can provide robust, probabilityand scenario-based advice to inform adaptation. The UK Climate Projections Whilst UKCP09 has used free-running climate simulations, rather than observation-initialised simu lations, and hence the value of its shortest-term projections are likely to be limited by not accounting for the changing phase of internal variability (figure 2.11) [262, 17] (which can only be accounted for within the probabilities presented in the UK Climate Projections) [150], the UK Climate Projec tions has been widely seen as the most cutting edge climate adaptation tool available. UKCP09 provides probabilistic climate data at 25km by 25km space-scales for the UK, across a number of variables selected for their relevance to medium-term climate adaptation [247, 48, 46] (figure 2.14). The original set of environmental variables that were released included summer and winter mini mum/mean/maximum temperatures and precipitations, and mean cloud amount and humidities, but after user feedback and validation of model output, this was extended to also include wind-speed, fog, lightning and snow. To make the 2009 UK Climate Projections robust, two very significant methodological leaps had to be made. Firstly, to consider as full a range of future climates as possible (given the current understanding within climate science), QUMP-type (perturbed parameter) suites of simulations had to be combined in a statistically robust way with the outputs from CMIP3 models, and therefore allow UKCP to sample both model parameter (lack of certainty in the numbers used to solve a problem) and model structure (different ways of solving the problem) limits to our confidence. Secondly, this statistically robust probability-based understanding of the climate had to be mechanistically scaled down to provide information on societally useful space-scales, and take account of local drivers of climate change. Neither of these tasks had been attempted before, but with additional funding from the European framework 7 project ENSEMBLES, an approach was developed and implemented [249, 307, 308] which uses a statistical replica of the HadCM316 model [292, 293] and pattern scaling techniques (methods to turn globally averaged information coming from the simple statistical representation of the climate model, into spatial information) [86] to represent 16 A previous-generation Hadley Centre climate modes computationally ’cheap’ enough to run many times. c Crown Copyright 2013 © 40 UKCP02 Single Projection UKCP09 10% probability level Very likely to be less than UKCP09 50% probability level Central estimate UKCP09 90% probability level Very unlikely to be greater than ✹ ✸ ✷ ✷ ✵ ✴ -70 ❂ Ð ❀ ❁ ❃ -50 Ð ❂ ❁ ❄ -30 ❅ Ð ❃ -10 ❆ Ð ❁ ❄ ✮ ✤ ✬ ✱ ✩ ✥ ✬ 10 ❇ ❉ ❁ ❁ Change in precipitation (%) ✕ ✛ ✜ ✩ ❄ ✳ ✥ ✛ ✥ ✧ ❊ ❁ ✤ ✧ ✥ 30 ❃ ✢ ✬ ✾ ✚ ❁ ❋ 50 ● ❂ ❁ ❃ 70 ❂ ❀ ❁ ✿ Figure 2.14: Summer season, year 2100 precipitation change from UKCP02 (year 2002) and UKCP09. This figure highlights three advances made from UKCP02 to UKCP09. Firstly the careful analysis of probability has allowed projections to be made showing the range of likely changes. Secondly, the use of high-resolution regional modelling has allowed the results to be provided with more detailed spatial coverage. Finally, improved modelling and improved use of information from other models has shifted the results for some variables, so as we see here, the single projection from UKCP02 is more similar to the ’very likely to be less than’ UKCP09 projection than the UKCP09 central estimate [170]. the full range of outcomes that HadCM3 could have potentially produced given an infinite amount of time to run simulations with infinite subtle changes to the uncertain equations. Historical data and data from non-MOHC climate models was then used to adjust the statistical representation of HadCM3’s results and the final probability-based description of possible global model outcomes was downscaled to represent the UK in detail using relationships derived from a set of HadRM3 regional model simulations driven by selected members of the HadCM3 suite of global perturbed parameter experiments. Much of the methodology leading to the downscaling techniques came out of research done as part of the ENSEMBLES project. One major conclusion of the ENSEMBLES project was that outside of regions exhibiting extremely strong local gradients (e.g. mountainous regions) the range of possible outcomes is more efficiently explored by considering different possible global model simulations (which provide the values used at the edges of the regional model), than by running lots of versions of the regional downscaling modelling [200, 97]. Many of the issues relating to the methodology used within UKCP can be found in a special issue of the Royal Society’s journal Philosophical Transactions A edited by the MOHC [86]. The UKCP modelling methodology described above was applied, and validated using many of the newly compiled observations discussed in relation to this report’s first question (section 2.3). c Crown Copyright 2013 © 41 Having confirmed that the projections and their use of probabilities were robust, the reasons for wide probability ranges (where found) were explored, projections were released, and ongoing sci entific backup for the public facing UKCP help-desk provided [247]. As previously mentioned, user feedback led to an expansion of the available variables, but in addition, a further product tailored to users with wide geographical interest was released. A previously unidentified group of users were those who were interested in spatially coherent probabilistic projections. The original UKCP09 methodology presented probabilities on a grid-box by grid-box basis, but users interested in (for example) water resources across whole catchment basins, want to know if probabilities at specific locations were independent from each other or not. It was important for these users to know if probabilities at nearby points would vary together or vary independently from one another, because if they vary independently, over a large enough region they might be expected to at least partially cancel out; if they vary together, one might need to plan for a much larger range of possible outcomes. User feedback was taken on board, and the 11 regional model simulations were scaled to make them consistent with the range of likelihoods obtained for the global climate model analysis, then released as a set of plausible scenarios [305, 306]. The success of UKCP09 stimulated a large body of work extending some of the results and techniques to many regions around the world. To assist with DECC’s contribution to the United Nations Framework Convention on Climate Change (UNFCCC) negotiations in Durban in 2011 (COP17), the MOHC, in collaboration with partners funded through the AVOID project, undertook a large literature assessment and modelling study to understand possible changes in the climate of 23 countries (Argentina, Australia, Bangladesh, Brazil, China, France, Germany, India, Indonesia, Italy, Japan, Kenya, Korea, Mexico, Russia, Saudi Arabia, South Africa, Spain, Turkey, UK, USA. Egypt and Bangladesh). This was done to provide evidence to aid discussions at CoP 17 in Durban [335, 63]. Whilst the full UKCP09 methodology could not be applied to the 23 different countries examined within this project for CoP 17, the ideas learned from UKCP09 were applied using the CMIP3 models in collaboration with the AVOID programme17 [333, 44]. Regional modelling was an important aspect of UKCP09 which could not be achieved on the timescales required for CoP 17, regional modelling has still played a key role in both equipping less developed countries with the tools to plan for climate change and to contribute evidence to the climate negotiation and reporting (CoP and IPCC) process, but also to extend our understanding by working on regional questions with local experts [195]. Whilst the breadth of this task did not allow for a full UKCP-like assessment to be undertaken for each country, the global-model experiments used for UKCP were extended to consider how our lack of certainty about a wider range of climate components than previously considered, would impact results [117]. The simulations undertaken for CoP17 were also the first to consider how our knowl edge of these uncertain model equations impact the results obtained when simulating a climate mitigation scenario [63]. Utilising the framework developed through the AVOID project, partners at 17 see http://www.avoid.uk.net c Crown Copyright 2013 © 42 the Walker institute used the climate model data to drive climate impacts models, examining the potential effect of changing climate on drought, crop yield, flooding and ecosystem change in these countries. Modelling the climate at regional scales Regional modelling, the downscaling of output from global climate models to space-scales where climate really interacts with people [72], is presently, and will be increasingly, important in planning for how to adapt to climate change. Regional models can be run with considerably higher spatial resolution than global models, and therefore the fundamental physics calculating the transports between grid-boxes can simulate small space-scales phenomena (for example local rainfall driven by topography) [255, 210, 294, 30, 359] which can not be simulated given the lower spatial resolution we can afford to use in our global models. Considerable technical developments had to be made to the MOHC’s regional modelling system to allow it to be driven by output from the perturbed physics experiments underpinning the UK Climate Projections [247]. However, the major technical regional modelling task occurring over the last MOHCCP has been the move from the HadCM3-based to HadGEM3-based model system [195, 157], incorporating the new physics, but also new processes (for example the land surface model). The MOHCCP has played an important role in funding a component of this technical develop ment, but the adaption-relevant nature of regional modelling means that significant funding has also been attracted from the United Nations Development Programme (UNDP), the Foreign and Com monwealth Office (FCO) and the Department for International Development (DFID), adding signifi cant value to the work supported by the MOHCCP. To best understand our regional climate projec tions, it is important that the regional climate model and global model are based around the same physics. This way, inconsistencies between the regional model and the conditions specified at its boundaries are reduced, and spurious results minimised. This presents challenges, but also brings great benefits, for example, the regional HadGEM3 model (HadGEM3-RA) is now very similar to the North Atlantic and European model run daily to produce the operational weather forecast [304]. This means that the climate modelling benefits directly from the developments and understanding achieved from continuously running the weather model and validating it against real world events. It also means that the very high resolution weather-forecast model, recently developed to simulate convective rainfall events (rainfall resulting from small pockets of warm rising air, often associated with thunder storms) in the UK, can be used to explore the impact of climate change on these very detailed processes [204]. Ongoing simulations taking output from the high-resolution (60km atmo spheric and 1/4 degree ocean resolution) HadGEM3 model [290], and downscaling this to 12km resolution in the atmosphere-only HadGEM3 regional model, are being used to drive the 1.5km Southern UK region model [199]. These experiments will help us understand changes in detailed processes such as convective rainfall, and help resolve whether the effects of warming, changing c Crown Copyright 2013 © 43 circulation, or changes in rainfall type will dominate future UK precipitation [204, 201, 202, 203, 205]. Note that for this work to be undertaken, the regional model had to be extended to include aerosol processes, allowing it to be driven by the high resolution global simulations [177]. The finalised version of HadGEM3-RA has been shown to validate well against observations, and to perform significantly better than the previous, HadCM3-based regional model [195]. HadGEM3 RA is now being used extensively in the COordinated Regional climate Downscaling Experiment (CORDEX) project, partially led by the MOHC, which is downscaling the CMIP5 model results across all of the worlds continental regions for use in adaptation and impacts studies [195]. Modelling the climate hazards most relevant to society Increasingly over the past five years climate impacts information provided by the MOHC has been going beyond projections of climate variables, to simulating the climate hazards and impacts them selves and assessing the likelihood of these within a risk-based framework. This has included improving understanding, and where possible modelling, of the dominant drivers that affect the cli mate hazards, and assessing the likelihood for these hazards to change under future scenarios of climate and environmental change. The modelling approaches developed have been focused on those most appropriate for the specific hazards and stakeholder requirements. These have included simple statistical models, complex statistical emulators, semi-empirical process models, and com plex process models. A major focus of the model development has been on advancing JULES, the Joint UK Land Environment Simulator [82, 24, 337]. JULES has been developed in close collaboration with UK partners, to improve its utility for modelling impacts. The starting point for JULES was the model originally used to represent the land-surface type (e.g. vegetation, ice or urban materials), and associated physical properties (e.g. evaporation or friction), within Met Office weather and climate models. JULES includes more com plex climate components (e.g. the land carbon cycle) than the original Met Office system, but also, river and groundwater flows, wetlands, land-use change, urban environments and crop growth. Be cause JULES simulates large-scale river-runoff, which is the standard metric used by the climate impacts community to investigate water-stress, it is possible within JULES to use direct outputs from the MOHC’s global and regional models to investigate the impact changes in climate will have on water availability for human activity [241, 134, 335]. Improvements made to the hydrology scheme now allow the build up of a realistic water table rather than the loss of water through the deepest soils, and out of the system. Development of JULES for inclusion in the HadGEM2-ES model [83] has resulted in good agreement between model outputs and river runoff observations (and improved land surface temperatures [331]) at annual timescales, although monthly variability still needs to be improved [112]. Techniques have now been set up to make validation of model output easier and therefore expedite improvements to JULES in HadGEM3 [28]. c Crown Copyright 2013 © 44 The MOHC have investigated the importance of integrating climate impacts models directly into climate models. It has been found that when running the same hydrological model fully integrated into a climate model, and then separately from that climate model but receiving exactly the same precipitation, the integrated and non-integrated approaches simulated considerably different runoff change, in some places even differing between positive and negative changes [29] (figure 2.15). It is likely that the difference between integrated and non-integrated use of the hydrological model is caused by the different treatments of evaporation between the simulations18 . Our understanding of the impacts of climate on river-runoff has been applied to the UK [241] but also, through the partly European funded protect HighNoon, to the Ganges Basin [242]. In the Ganges Basin predicted changes in precipitation and temperature were shown to be unlikely to lead to significant increase in water availability by 2050, but that the increased runoff resulting from snow-melt was likely to occur earlier in year. By incorporating the impacts model (in this case a hydrology scheme) into the climate model, one can ensure that the advice provided is consistent across model outputs (for example changes in humidity and therefore heavy frost occurrence being consistent with water availability - important for planning in sectors like agriculture), but it also means that understanding climate impacts is not a two-step process and can therefore occur more quickly, and with better understanding by those focusing on each area of the strengths and weaknesses in the different model components. Prior to the development of HadGEM2-ES [89], impacts modelling essentially had to be done after the climate model simulations were released. This meant that the scientists involved in the impacts modelling were removed from the development and running of the climate model, which can increase he risk of poor interpretation of the climate data, as well as reducing the opportunities for feedback from the climate impacts community to influence how the climate models are run and developed. Furthermore, the dependency of climate impacts models on the supply of climate data previously caused delays. With JULES running as an integral part of HadGEM2-ES, climate-impacts data are generated contemporaneously and consistently with the climate data. The MOHC is now ahead of the game in impacts modelling, and in an excellent position to direct the work that goes into the impacts chapters of the IPCC’s 5th assessment report. Crops are critically dependent on water availability, and therefore vulnerable to changing climate [69, 63]. Within JULES, climate impacts on crops can be simulated [277, 114]. Furthermore, chang ing irrigation requirements and water resources can be investigated [266]. An investigation into win ter wheat production in the UK (the UK’s most important food crop) using output from the UK Climate Projections (2009) showed that in response to climate change, despite elevated atmospheric CO2 concentrations enhancing growth19 , large decreases on yield could be possible in parts of the UK 18 This difference appeared to arise because in the integrated approach the calculation of evaporation was consistent with, and contributed to the global model’s humidity, but in the non-integrated scheme, no feedback on evaporation could occur through the climate model’s humidity 19 Plant growth occurs through photosynthesis, and photosynthesis requires CO . Where there are plentiful nutrients and 2 water, CO2 can therefore be the factor that limits plant growth, and increases in atmospheric CO2 concentration can remove that limitation and enhance plant growth. c Crown Copyright 2013 © 45 a) Online Hydrological model b) Offline Hydrological model -6x10-6 -3x10-6 0 3x10-6 6x10-6 runoff (kg m-2 s-1) Figure 2.15: Changes in runoff simulated to occur by the end of the century within HadGEM2-ES (a) and using the hydrological model used in HadGEM2-ES, but driven offline using the meteorolog ical output from HadGEM2-ES. Results highlight the importance of incorporating impacts models directly into climate models. [70], indicating that changes in sowing regime, fertiliser use or the consideration of irrigation may be necessary. Whilst this study highlights potentially important issues, there are large uncertainties in climate projections at this fine-scale. The 25x25km space-scale results used within UKCP09 were obtained by identifying relationships between large scale climate variables (e.g. globally averaged temperature) from the global (low resolution) and detailed patterns of variability simulated within the regional (high resolution) models; then calculating likely patterns of change corresponding to the full range of possible global variable time-series obtained from a simplified (statistical) version of the global model. This technique is called pattern scaling, and is used extensively to link results from integrated assessment models, or simple climate models, to the impacts on people - which will occur at a regional scale. Where pattern scaling, rather than regional climate modeling (which is based on physics rather than statistical relationships) is used to downscale or generate regional results relating to complex components of the Earth System (e.g. vegetation), problems have been identified [334]. These problems arise because many components in the earth system do not change in a way directly proportionate to global climate variables - they may have memory, so behave differently in response to, for example, increasing temperature than they do to, for example, decreasing temperature, or their behaviour may depend on the combined effects of different stressors (e.g. temperature and precipitation) at a regional scale. c Crown Copyright 2013 © 46 The complexity of the vegetation response to climate change was highlighted in a study exam ining the impact of elevated CO2 concentrations. It has been recognised for a long time that higher atmospheric CO2 levels allow increased terrestrial vegetation growth, but this study showed that be cause under high CO2 conditions plants need to open their stomata less widely, less transpiration of water from the plants takes place, and water availability is increased [26]. This work suggests that regionally freshwater resources may be less limited than previously assumed under scenarios of future global warming, but also that the change in growth and transpiration can impact climate [101, 39]. Marine climate impacts are becoming an increasingly important issue in which the MOHC is investing significant resources through the 2013-2015 climate programme. One important marine climate impact question which has been addressed through the 2007-2012 MOHCCP is that of future storm surge occurrence and height in the UK. This work followed on from an Environment Agency funded project to examine the likely requirements from the Thames Barrier over the com ing century, extending the analysis to the whole of the UK coastline. It was found that driving a surge model with down-scaled output from a set of HadCM3 climate model simulations, changes in storm surge event magnitude and frequency in the future were driven primarily by relatively gradual changes in regional sea-level, rather than changes in atmospheric storminess; a conclusion backed up by historical observations [287]. However, it should be noted that projections at this scale are interpreting climate models at the very boundary of this skill, and it is possible that the alleviation of systematic biases within future climate model mean that these conclusions are revised. c Crown Copyright 2013 © 47 2.6 How might the Earth System respond to different pathways of anthropogenic activity over the coming century and how resilient is the system to change? Looking beyond the next few decades, many decisions regarding physical infrastructure and the mitigation of climate change must be thought about in a risk-based context. These decisions must account for the likelihood and magnitude of various feedbacks, state-changes and commitments to change within the climate system. Many of the processes through which these non-linear changes in climate might occur fall outside the scope of physical climate models such as those built for the IPCC’s 4th Assessment Report, and can only be considered within Earth System Models - models which, in addition to physical processes, represent the biological and chemical components of the climate system. Much of the progress made with respect to this question has driven, and been made possible by, the development and analysis of the MOHC’s first, and possibly the worlds most sophisticated (Heffernan, Nature 2010) Earth System Model, HadGEM2-ES (the 2nd MOHC Global Environmental Model, with additional Earth System processes). Earth System Modelling: HadGEM2-ES development At the start of the last MOHCCP (2007) the MOHC had available a number of mature tools for modelling the climate, including HadGEM1, a physical climate model the performance of which ranked well against other CMIP320 models, and HadCM3-LC (the 3rd MOHC Climate Model - Low resolution, Carbon cycle), a carbon-cycle capable low resolution climate model which, whilst initially developed in the year 2000, remained at the forefront of climate-carbon-cycle modelling. The last MOHCCP (2007-2012) saw these tools combined and extended to produce a model capable of robustly simulating the key physical climate processes, but also simulating what were considered to be the first order biological and chemical climate-relevant processes, HadGEM2-ES [89]. The development of the MOHC’s first true Earth System model has been achieved by first de veloping the HadGEM2-AO (Atmosphere and Ocean physics only) model from HadGEM1, by: clos ing the water cycle [291]; improving Northern Hemisphere continental temperature offsets through comparison and understanding of the differences between weather and climate simulations [231]; improving tropical sea surface temperature biases and poor variability by modifying mixing in the up per ocean [331]; and improving the HadGEM1 aerosol scheme by updating existing aerosol species and representation of additional species [21, 20]. Secondly, ocean and terrestrial biogeochemical components were updated to improve validation against observations and scientific validity. Finally, an additional component, atmospheric chemistry [243, 251], was added to the model, and the links between model components were made (figure 2.16). 20 Note that CMIP3, the 3rd climate Model Intercomparison Project preceded CMIP5 - the name CMIP4 was skipped to bring the project numbers into line with the IPCC’s Assessment Report numbering c Crown Copyright 2013 © 48 Figure 2.16: The components and interactions within the recently developed HadGEM2-ES Earth System model. UKCA (the UK Community Aerosol), the atmospheric chemistry component of HadGEM2-ES, simulates the temporal and spatial evolution of climatically important trace gases (e.g. methane and tropospheric ozone) and the supply of oxidants (e.g. hydroxyl radical, hydrogen peroxide and ozone) to the model’s sulphate aerosol scheme. To a first order, it is the availability of oxidants that determines whether sulphur dioxide gas becomes particles of sulphate aerosols, and therefore determines the extent to which emissions of anthropogenic aerosol precursor (e.g. sulphur dioxide), impact the climate through the scattering of light and changes to cloud properties [320]. The availability of oxidants depends on changes in emissions of oxidant precursors (e.g. methane and carbon monoxide), the rate of sunlight-mediated oxidant formation, and the consumption of ox idants (through aerosol forming and non-aerosol forming chemical reactions). Many of the oxidant formation and consumption reactions are climate dependent, as are the availability of chemicals involved in these reactions dependent on the climate. It is therefore important to simulate atmo spheric chemistry as a fully interactive component of the climate model to be able to quantify the important role played by aerosols in future climate. This was highlighted by Rae et al. [274] who showed that the oxidant reduction occurring in a business as usual scenario reduced the amount of sulphate in the atmosphere by 3%, comparable in magnitude to the 9% reduction occurring in response to physical effects (e.g. rainfall washing particles out of the atmosphere) on the lifetime of sulphate in the atmosphere. The development of UKCA has been a highly collaborative effort, bringing together colleagues from the Met Office, Cambridge, Leeds and Oxford Universities through NERC funding (NCAS National Centre for Atmospheric Science - and more recently the Joint Weather and Climate Re search Programme between the Met Office and NERC), providing a template for the increasing collaborative approach to model development that as been occurring over the last five years [71]. Collaboration with NERC is continuing to strengthen through (amongst other projects) the develop c Crown Copyright 2013 © 49 ment of a jointly owned UK Earth System Model. Technically, the development of HadGEM2-ES required UKCA to be integrated into the climate model, and working linkages to be made to diverse components of the climate system [251, 90]. Once incorporated into the HadGEM2-ES model [176], the implications of climate on changing tropospheric chemistry, and the impact of changing tropo spheric chemistry on climate, aerosols and air quality were explored [36, 15, 16, 91, 98, 99, 311, 43]. The important role played by aerosols in climate has been appreciated for some time - and HadGEM1 already contained an advanced aerosol scheme. Significant improvements were how ever made to the aerosol representation module into HadGEM2-ES by adding a new pathway for sulphur dioxide oxidation (occurring in water droplets) and by the addition of further aerosol species (mineral dust, fossil-fuel organic carbon, and secondary organic aerosol from biogenic terpene emissions) [20]. The simulation of ozone in the troposphere, the lower part of the atmosphere (rather than the stratosphere where ongoing work examines the recovery ozone hole amongst other processes [243, 329, 56, 124, 125, 58, 59, 60]), is an important part of UKCA. Changing tropospheric ozone concentrations play an important role across timescales from weather to climate [118], impacting human health through air-quality issues [66], food production through damage to plants [311, 4, 90, 164], and the climate due to its greenhouse properties and aerosol impacts [18, 98, 85, 122]. The highly reactive nature of ozone results in rapid, cumulative, plant damage, which not only causes reduced crop yields, but is also likely to be important at the level of global carbon cycling [311]. Plants limit ozone uptake where ozone concentrations are elevated, by partially closing their stomata. A consequence of stomatal closure is that less CO2 is taken up, less photosynthesis can take place, and less anthropogenic carbon is stored in the terrestrial carbon sink. Sitch et al. [311] demonstrated that the climate impact of changing ozone through changing terrestrial carbon uptake was potentially greater than the direct greenhouse effect of ozone (figure 2.17). A further impor tant link between tropospheric chemistry and terrestrial vegetation occurs through methane. The potency of methane as a greenhouse gas, and therefore the large climate impact it has despite being present in the atmosphere in very low concentrations, makes it of particular importance to decisions regarding climate mitigation. The bringing together of models capable of examining ter restrial methane sources and the behaviour of methane in the atmosphere within HadGEM2-ES has facilitated work which has examined climate feedbacks relating to wetland extent and the role that melting permafrost might play in future methane release, and the impact of these processes on air-quality and climate [250, 42, 350, 85, 51, 190, 281, 37, 55] (figure 2.18). A number of the potential feedbacks resulting in methane release have been considered in a large assessment of the current literature [250] (figure 2.19). The terrestrial biogeochemistry scheme TRIFFID (Top-Down Representation of Interactive Fo liage and Flora Including Dynamics) is a component of the land surface scheme JULES (introduced in the previous section). TRIFFID simulates the carbon uptake, storage, and release within the c Crown Copyright 2013 © 50 Figure 2.17: Modelled changes in June-July-August averaged ozone (O3 ) concentrations between the present day and the year 2100 (a-b). The change in Gross Primary Production (GPP), a mea sure of carbon storage, simulated over this interval given a low (c) and high (d) vegetation sensitivity to ozone [311]. c Crown Copyright 2013 © 51 Observations Model 2080-2090 2080-2090 2080-2090 2080-2090 RCP2.6 RCP4.5 RCP6.0 RCP8.5 extent (%) Active Layer Thickness (m) Extent 1900-1910 0-10 10-50 50-90 90-100 0.6 1.2 1.8 0.6 1.2 1.8 0.6 1.2 1.8 0.6 1.2 1.8 0.6 1.2 1.8 Figure 2.18: Observational validation and future projections of permafrost area and active layer thickness (or the depth to which the permafrost thaws) derived from the HadGEM2-ES model [96, 50]. terrestrial biosphere, but also interacts with the physical climate through its control on albedo, land surface roughness (and therefore friction, and winds) and moisture fluxes. In addition to moving TRIFFID from HadCM3-LC to HadGEM2-ES, improvements have been made over the last five years to the way in which the progression of primary production throughout the annual cycle is simulated. This has addressed problems highlighted in the original version of TRIFFID when it was validated against the seasonal cycle of atmospheric CO2 concentrations [61]. Three new soil carbon reser voirs (splitting the original generic reservoir into soil biomass, humus, decompostable (leaf litter) and resistant (twigs, roots etc.) plant material) were also added to the model to more realistically simulate the different timescales of carbon storage [84, 89]. Finally, the temperature dependence of respiration within plant leaves was modified to reflect new understanding about the acclimatisation of plants to higher temperatures [82]. A technique was then developed to allow the slowly evolving carbon reservoirs to be brought into equilibrium in a computationally efficient manner. Limits to our certainty about climate change, stemming from our incomplete understanding of terrestrial carbon cycle processes [163, 166] has been shown to be comparable in magnitude to the lack of certainty coming from the imperfect representation of physical processes such as those that relate to cloud formation [34, 136]. The uncertainty derived from biogeochemical model components (those that consider spatial variability in biological and chemical processes - such as the carbon cy cle) is not surprising, because the processes involved, particularly the biological processes, are often not fully understood. If they are, are almost certainly too complex to simulate from first prin ciples in an Earth System Model. We have therefore attempted to make simulations as realistic as possible by using techniques such as data assimilation21 [93], comparing different terrestrial carbon 21 Data assimilation is a technique for combining model and observational data. The model is run to produce a forecast, which can be compared with observations when and where they exist. Where in space and time observations exist, the forecast is adjusted to minimise the difference between its estimate and the observation, without knocking the model off balance. c Crown Copyright 2013 © 52 Figure 2.19: Summary diagram of the relative sizes and time scales associated with methane sources/feedbacks. Note that the diagram is semiquantitative. BVOCs are biogenic volatile organic compounds [250]. cycle models [312, 226], and mechanistically understanding how and why our models behave as they do [107, 131]. At present, the oceans take up a similar quantity of anthropogenic CO2 to the land carbon cycle. The ocean carbon cycle was represented in HadCM3-LC by the sub-model HadOCC (the MOHC Ocean Carbon Cycle model). HadOCC represented the transfer of atmospheric CO2 to and from the ocean, its chemical storage within the seawater, the flux of carbon from the seawater to phytoplankton through photosynthesis, and carbon flux from phytoplankton back to the seawater in the ocean’s interior, after plankton death or consumption and excretion by zooplankton. Recognition that different phytoplankton species move carbon around the ocean differently, and acknowledgment that low-concentration nutrients, as well as primary nutrients (such as nitrogen) play an important role in the carbon cycle led to the addition of a new phytoplankton species, and the introduction of iron cycling, in the new ocean biogeochemical model, diat-HadOCC [89, 159]. A new link between ocean biogeochemistry and the atmospheric chemistry (and subsequently aerosol formation) was added by including an interactive scheme to simulate the biological production of dimethylsulphide (DMS), an important source of sulphur to the atmosphere [140, 355]. The motivation for including an interactive DMS scheme was that a long-proposed feedback mechanisms (Charlson et al., 1987) suggested that increased temperatures may drive increased phytoplankton production of DMS, which would cause aerosol production, the brightening of clouds, and act as a negative feedback on warming. HadGEM2-ES is the first climate model capable of testing this. Whilst the strength of this feedback mechanism appears to be very weak when c Crown Copyright 2013 © 53 considered globally [354], regionally, it looks like DMS feedbacks could be of some importance. However, the major changes in DMS emission within HadGEM2-ES appear to occur in regions with very stable atmospheric conditions, which prevent the DMS from reaching altitudes where it would interact with cloud, and become climatically important. The next step is to investigate whether there is a physical reason within the model for the co-location of regions of DMS emission change and stable air masses, and if so, whether this result will hold true in the real world [159]. It is also important the differences between DMS production simulated by different CMIP5 models is investigated [190] Pushing forward the MOHC’s supercomputing and IT infrastructure The benefits derived from the complexity of the HadGEM2-ES model comes with a large computa tional cost. Whilst solving the equations relating to the various chemical reactions or component to-component interactions is not trivial. The largest computational cost associated with a climate model is simply solving the equations representing the physics of the ocean and atmosphere, which transports each of the tracers, the quantities such as heat, aerosol species and chemical species (or salinity, nutrient concentrations and dissolved carbon in the ocean) around the model’s atmo sphere and ocean. In a non-Earth-System model, it is only necessary to transport a small number of tracers around the model - for example, only temperature, salinity and three-dimensional veloc ities, are required in an ocean model. The introduction of Earth System processes dramatically increases the number of these tracers, for example the MOHC ocean biogeochemical model (diatHadOCC) requires 13 ocean tracers, and the atmospheric chemistry model (UKCA) requires 24 atmospheric tracers. HadGEM2-ES therefore runs about a factor of three times more slowly than the equivalent climate model (without earth system components) would run, and produces orders of magnitude more data. The provision of HadGEM2-ES results to CMIP5 in time to maximise the MOHC’s input into the IPCC’s 5th Assessment Report was therefore contingent on the successful procurement, installation and transfer of models to a new supercomputer. Furthermore, the archiv ing of data from this model, and supply of data to CMIP5, required a new, larger and considerably faster, data-archive system. As the HadGEM2-ES model was being finalised (2009/2010), a large Met Office wide project installed a new supercomputer, providing the capability to run most of the critical CMIP5 simulations simultaneously, with speeds of around three model years per real-world day. Once the models were all running smoothly, further work by a team of 21 scientists and IT spe cialist had to be undertaken to process and check the 250,000 files which were to be delivered to CMIP5, and make them suitable for submission to the central data repository. Technical develop ments also had to be put in place to transfer the 66 Terrabytes of data to CMIP5 - the success of the management of the HadGEM2-ES development project, the supercomputer installation, and the data processing and delivery projects has been demonstrated by the fact that the MOHC was one c Crown Copyright 2013 © 54 of the first climate centres to deliver any data to CMIP5, and one of the top two centres in terms of the completeness of the range of simulations delivered. The final technical challenge, prior to the scientific analysis of CMIP5 data, was the retrieval of output from other climate centre’s models. Data retrieval from CMIP5 was made possible by the installation of a direct link into the UK’s super-high-speed academic network. So far 250,000 files (22 Terrabytes of data) have been downloaded to the Met Office from the CMIP5 archive, by over 35 different users. The supercomputing and data storage advances described here in the context of the CMIP5 project have been equally, or perhaps in the case of near-term forecasting even more important, for other aspects of the MOHCCP. Contributing to the 5th Coupled Model Intercomparison Project Over centennial timescales, our lack of certainty about feedbacks within the climate system is thought to be the dominant barrier to accurate prediction. The motivation for building the HadGEM2 ES model was therefore that we knew that the Earth System had the capacity to change significantly in a non-linear manner, and that these departures from proportionality between climate forcing and response have in the past been mediated by feedbacks in ’Earth System’ components such as the carbon cycle [234]. Feedbacks can either be negative, and therefore pull the system back towards its original state after a change, or positive, and push the system towards a new state. The MOHC must understand both types of feedback, but it is particularly important the we understand the lat ter if decisions relating to climate mitigation are going to continue to be based on climate model understanding (figure 2.20). CMIP3, the intercomparison project focused on contribution to the IPCC’s 4th Assessment Re port, involved climate modelling centres running up to 12 different experiment types. These ranged from free-running simulations to allow quantification of internal variability simulated by models in a pre-industrial climate, to experiments examining an instantaneous doubling of atmospheric CO2 concentrations to look at the timescales of the climate response. The CMIP5 design specifies 32 different types of key simulation, all of which the MOHC have run, or are currently running in collab oration with external partners as is the case for the CMIP5 palaeoclimate simulations. Many more individual simulations, contributing to a number of the 32 different experiment types, have been sub mitted to CMIP5 [187] - resulting in the supply to CMIP5 of 100 times the volume of data supplied to CMIP3. The increase in the number of types of experiment largely reflects the wider range of processes now being included in models, and therefore the need for more detailed experiments to allow us to understand the contribution many of these different processes make to climate change. The model set up, and the way in which these different experiments were applied within HadGEM2 ES is described in Jones et al. [184]. In addition to contributing one of the most complete (of all the international climate centers) set of experiments to CMIP5, we have undertaken a plethora of addi tional experiments to allow us to quantify specific feedbacks within our models (e.g. fixed aerosol c Crown Copyright 2013 © 55 Figure 2.20: A set of simple experiments have been run to help identify and quantify the feedbacks in HadGEM2-ES. The red line represents the basic HadGEM2-ES global temperature response to an instant quadrupling of atmospheric CO2 concentrations. Despite all of the extra Earth System processes incorporated into the Earth System version of the model, this response is very similar to what is simulated in a version of the model without any Earth System processes (HadGEM2 Atmosphere and Ocean only - AO) (blue). However, when the Earth system model is run without the carbon cycle components experiencing the CO2 change, and the CO2 simply impacting tem perature (black), the model’s climate is considerably less sensitive to CO2 - similarly if the forcing is changed by just changing the energy coming in, but keeping CO2 levels constant (green), the temperature response is lowered. This behaviour occurs because if the terrestrial vegetation only experiences the climate change, its extent in many areas decreases - there is more bare soil. If the vegetation experiences more CO2 as well a a changed climate, more photosynthesis can occur (CO2 fertilisation of the vegetation), and less vegetation disappears. If there is more bare soil, there is more dust being emitted, and dust reflects large amounts of sunlight back to space, cooling the planet [10]. c Crown Copyright 2013 © 56 emission simulations to subdivide attribution of change beyond just anthropogenic forcing) [33]; to contribute to intercomparison projects removed from CMIP5 (e.g. CFC simulations to quantify phys ical ocean changes); and to push beyond the science occurring for CMIP5 (e.g. idealised climate mitigation scenarios to examine Earth System reversibility, or quantify Earth System feedbacks) [38, 10]. Earth System Science Probably the most surprising and controversial result to come out of out 1st generation carbon-cycle capable model, HadCM3-LC, over a decade ago, was that, under a number of different emissions pathways, by the year 2100 a large proportion of the Amazon Rainforest had died. This became known as ’Amazon dieback’. Perhaps even more concerning than this original finding was that the commitment to change may occur long before that change actually happens [191]. Whilst the terrestrial vegetation schemes in HadCM3-LC and HadGEM2-ES are very similar, improvements to the physical model mean that on average HadGEM2-ES represents the temperature and pre cipitation changes better than does HadCM3-LC. It is ultimately changes in these physical climate variables that drives terrestrial vegetation change. It has been shown that the climate change sim ulated by HadCM3-LC would cause significant vegetation loss in other climate centres’ vegetation models [312], so based on our present understanding of terrestrial vegetation, it would appear that the major uncertainty surrounding the future of the Amazon (if we ignore deforestation [360, 276]) is our representation of the temperature and precipitation in the Amazon region [165]. The complexity of the vegetation response to different climate forcings, and therefore the need to move away from simple metrics of climate change (such as radiative forcing) has also been examined [164]. One of the first results to come out of the HadGEM2-ES CMIP5 simulations was that no major Amazon dieback was seen by the year 2100 under any of the scenarios [188, 107] (figure 2.21). As previously discussed, the vegetation response is a complicated interaction between climate pres sures (e.g. temperature and water availability), anthropogenic pressures (e.g. atmospheric CO2 concentrations or deforestation), and the inertia in slowly changing vegetation components. It is therefore not trivial to explain why different models are behaving differently. To explain the differ ences between the HadCM3-LC and HadGEM2-ES future Amazon Rainforest simulations a sta tistical model was developed, which was shown could explain the steady-state (having settled to a no-longer-changing distribution within a stable climate) tropical forest distribution, based on the atmospheric CO2 concentration, temperature and dry-season length [131]. This simple statistical model was then extended and shown to work with HadGEM2-ES. Because this tool replicated the behaviour of the two models, but did so based on changes in three generalised variables (atmo spheric CO2 concentration, temperature and dry-season length), the contribution of each of these variables to the full change could be quantified. It was found that around 40% of the difference in forest dieback between the two models could be accounted for by differences in the change of dry c Crown Copyright 2013 © 57 Figure 2.21: The difference in the proportion of the tropical land surface covered by trees simulated at high CO2 levels, between our last-generation carbon-cycle capable model (HadCM3-LC), and our state-of-the-art Earth System Model (HadGEM2-ES) [107]. season length, more minor contributions then arise from other components of the system [107]. It should however be noted that whilst the dry-season simulation within HadGEM2-ES is more likely to be correct than that simulated in HadCM3-LC, regional precipitation change is notoriously diffi cult to model and validate [165, 328, 172, 202, 218, 219, 297, 319, 295], so the vegetation change simulated by HadCM3-LC should not be ruled out as a plausible future scenario. The MOHC’s scientific analysis of HadGEM2-ES and the other CMIP5 models has only recently started, but a large push was made to ensure that as many key papers as possible were submitted in time for them to be included in the first order draft of the IPCC’s 5th Assessment Report (Au gust 2012). Overview papers from the MOHC have presented: top-level analysis of HadGEM2-ES future scenario simulations [62]; model descriptions, validation and implementation [89, 184, 331]; and an overview of the decadal timescale experiments started from an observation-based state [316]. Papers have been published looking at the fundamental sensitivity of the climate simulated by HadGEM2-ES and other CMIP5 models to anthropogenic activity [9, 10, 196], and high-level carbon-cycle and cloud feedbacks within the models [13, 339]. Detailed feedbacks, such as the re lease of carbon from permafrost [53], the drivers of changed tropical precipitation [67, 221], and the change in uptake of CO2 by the North Atlantic [139] have been explored (figure 2.22). Stratospheretroposphere interactions have been examined [59] and the impact of possible solar and volcanic changes on 21st century climate quantified [192]. The working group of the IPCC’s 5th Assessment Report which examines human relevant cli mate pressures has later deadlines for paper to be submitted than the physical science working group (mentioned above). However many studies looking at the directly human relevant climate changes are underway, and a number of studies, looking, for example, at changing hurricane activ c Crown Copyright 2013 © 58 6 QUMP air-sea CO2 flux (20yr smoothing) observation-constrained flux (20yr smoothing) CO2 flux mol-C m-2 yr-1 4 unsmoothed data range 2 0 Observation based climatology (Takahashi et al., 2009) Observation based reanalysis (Peters et al, 2007) -2 1900 1950 2000 2050 year Figure 2.22: The North Atlantic has been shown in observations to be a highly variable sink for atmospheric CO2 . The results presented here show that many HadCM3C (carbon cycle capable version of HadCM3) simulations suggest that the North Atlantic CO2 sink may decrease consider ably in the future (from which the gray band and lines have been derived). By tuning a box model to the HadCM3C results, limitations to the HadCM3C simulation can be removed, and observa tions can be used to come up with an improved estimate of North Atlantic CO2 uptake (red). The observation-based simulations suggest that the North Atlantic CO2 uptake may start to decrease as soon as the 2030’s, and that the region might even (in the worst case simulations) be a peri odic source of CO2 to the atmosphere [139]. Work is ongoing to incorporate data from the CMIP5 simulations and improve our confidence in the observation-based projections. ity, and the drivers of changing coral growth, have already been submitted for peer-review [53, 103]. More climate hazard/impact work will be completed using the CMIP5 results within the 2012-2015 MOHCCP. It was decided when designing the CMIP5 experiments that atmospheric CO2 concentrations, rather than CO2 emissions, would be specified within models for most simulations [330]. This means that all models experience similar climate forcing (i.e. carbon cycle feedbacks do not cause large changes in atmospheric CO2 concentrations which render models incomparable). This approach has been shown to have only a minimal impact on the marine carbon cycle [138]. The emissions which would have resulted in those atmospheric CO2 concentrations, taking account of the feed backs occurring in different models, can be back-calculated from individual models [222]. It has broadly been found that most of the CMIP5 Earth System models simulate a stronger carbon cycle feedback than that generated by the Integrated Assessment Model used to produce the high-end CMIP5 future scenario [121], and that approximately half of the CMIP5 models require negative emissions (e.g. some form of carbon capture in combination with bio-fuel energy production) to meet the CMIP5 climate mitigation scenario (Representative Concentration Pathway (RCP) 2.622 ) (figure 2.23) [186]. 22 The latest set of IPCC climate forcing scenarios are described by the peak radiative forcing, or year 2100 radiative forcing (see earlier explanation of radiative forcing) in that scenario. So RCP2.6 means that at 2100, that scenario expects the disequilibrium in the planet’s energy balance to be 2.6Wm−2 . c Crown Copyright 2013 © 59 Figure 2.23: The model simulations contributing to the next IPCC Assessment Report have been designed to all use identical CO2 concentration changes through time. Climate centres with Earth System Models (which include carbon cycles) can then back-out the CO2 emissions which would give those CO2 concentrations. Here the CO2 implied emissions are presented as calculated from the HadGEM2-ES simuations. While the development of Earth System Models allows us to explore new processes and feed backs in the climate system, a large and important component of the work over the last five years has been the continued understanding and improved representation of so-called physical feed backs, for example, those occurring through changing water vapor and cloud distributions/amounts, and their interaction with radiation. Indeed, the representation of cloud processes continues to pro vide one of the most challenging aspects of climate modelling, and feedbacks mediated through changes in cloud properties remain the primary source of uncertainty in the response of the latest generation of climate models to a change in specified atmospheric CO2 concentrations [9] (figure 2.24). Moreover, it is important to examine such physical feedbacks within the new Earth System Model context as clouds also play a critical role in, for example, anthropogenic aerosol-induced climate forcing, the hydrological cycle, and the large-scale atmospheric circulation at both global and re gional scales. Uncertainties in cloud and moist processes thus have implications for many other aspects of climate modelling and climate prediction. It is also important to realise that our understanding of the response of clouds to climate forcings continues to evolve. For example, a number of studies now suggest that cloud changes also influ ence climate through short timescale (i.e. days to weeks), non-feedback atmospheric temperature and land surface adjustments [8]. These rapid adjustments, which occur before the global mean surface temperature has had time to change in response to the forcing, can, for example, arise due to the change in atmospheric heating caused by the increased CO2 concentrations. Cloud feed backs are then defined as the cloud changes associated with increases in the global mean surface temperature and which occur on multi-annual to decadal timescales. Correct separation of cloud feedbacks from these rapid adjustments is clearly important when quantifying climate change [338], not least because the adjustments will depend on the nature of the forcing (e.g. greenhouse gas concentration changes, changes in the sun’s output, etc), and will therefore have different implica c Crown Copyright 2013 © 60 tions for climate projections depending on which socioeconomic pathway may be followed. One particularly valuable set of simulations which were conducted by the MOHC outside of the CMIP5 framework were the idealised mitigation simulations [38]. A standard climate simulation used through a number of generations of intercomparison project has been the ’1% CO2 rise’ exper iments. These simulations start at preindustrial CO2 concentrations, then increase the atmospheric CO2 concentration by 1% a year until they reach four times preindustrial atmospheric CO2 concen trations. The 1% CO2 rise experiments are useful because they are essentially simple versions of a business as usual scenario, but also because the continuously increasing rate of change of atmospheric CO2 essentially offsets the fact that at higher CO2 concentrations a given increase in CO2 concentration has a smaller warming effect. Therefore the CO2 rise results in an approximately linear increase in globally averaged temperature with time. The MOHC extended these simulations by decreasing atmospheric CO2 concentrations at 1% a year from the points at which atmospheric CO2 concentrations were at 1 times, 2 times, 3 times and 4 times preindustrial concentrations respectively. This allowed us to look at whether it was possible to reverse changes in the model’s Earth System, and build on a question explored in a previous paper ’How difficult is it to recover from dangerous levels of global warming?’ [224]. This study suggested that in the context of HadGEM2-ES and the very simplified experiments that were run, there were four components of the system which may not recover along the same path as which they originally changed. These components were: low-level clouds, which displayed a small timelag before recovering [38]; global and regional precipitation [68], nutrient availability in the Southern Ocean (figure 2.25), and the strength of the large scale Atlantic ocean circulation (the Atlantic Meridional Circulation - AMOC) [357]. In a related experiment conducted with HadCM3, a lag, but given time to stabalise, no irreversible change is found in Antarctic sea-ice cover [285]. This result may however be complicated by slow changes in ocean heat storage and should be investigated further [284]. HadCM3 CO2 increase then decrease experiments also suggested that the global precipitation change might continue increasing for a number of years after atmospheric CO2 concentrations has begun to decline. This behaviour occurs in response to additional heat (and therefore surface warming) being accumulated in the ocean even after the CO2 had peaked. The heat builds up because the surface ocean is continuously mixed with cooler waters from below, and therefore remains colder than the atmosphere for a few years after the CO2 peak [358, 351]. A number of these issues relating to reversibility of the climate system will be examined within the European project EMBRACE. How resilient is the climate system to change? The idealised mitigation experiments form a small part of the work undertaken over the last five years to assess resilience in the climate system - i.e. how far the system can be pushed before c Crown Copyright 2013 © 61 Figure 2.24: Comparison of the equilibrium climate sensitivity (Eqm) - the change in globally aver aged temperatures resulting from a long simulation with CO2 concentrations doubled with respect to their preindustrial values, and net climate feedback - the same property expressed as a change in the balance of radiation coming into the earth system for a certain change in temperature (top row), adjusted radiative forcing - the change in radiative balance occurring in response to a doubling of at mospheric CO2 concentrations (yellow) or an imposed change in sea surface temperatures (blue), but accounting for the initial adjustment of the system to this through local adjustments (second row), the component of the climate feedback occurring through changing cloud properties (third row) and the feedbacks impacting the long wavelength (largely being lost to space) radiation (blue) and short wavelength (largely coming from the sun) radiation (yellow) which have nothing to do with cloud (bottom row). Results are presented for 11 CMIP5 models. The parameters shown are calculated from experiments in which the atmospheric CO2 concentration in the climate models is instantaneously increased by four times its pre-industrial value; the models are then run for at least 150 years. The black vertical bars represent the range of values for each model which less than 5% of that model’s results are expected to be greater than or less than. Units K or Wm−2 K−1 . c Crown Copyright 2013 © 62 CO2 increasing CO2 decreasing -0.050 -0.025 0.00 0.025 0.050 trend in nutrient concentrations (mmol/m/yr) Figure 2.25: Surface ocean nutrient concentration trends (units of mmol nitrogen m−3 yr−1 ) in the ramping up (top) and ramping down (bottom) phase of the 1% per year CO2 rise then 1% per year CO2 decrease experiments. Values have been multiplied by minus one in the lower globe, so that the two plots would look identical if the system was completely reversible. The red colours in the lower globe show that the nutrient concentrations continue to increase in the Southern Ocean through the ramp up and ramp down phase - i.e. the Southern Ocean biogeochemistry may not quickly return to its previous state after CO2 mitigation. c Crown Copyright 2013 © 63 committing to a change from which the system can not easily recover [281, 350, 130]. Three particular areas which we have looked at in detail are terrestrial vegetation, land-ice and large scale ocean circulation. The possibility of dramatic change in the Amazon Rainforest has already been discussed, but so far only in the context of progressively increased climate change. An important finding has been that large forests actually play a role in sustaining their own climate by cycling water (through uptake from the soil, evapotranspiration, precipitation etc.) further into continental regions than would occur through physical processes alone [185]. A consequence of this is that if the forest is degraded by climate change (or deforestation [360, 276]), the ability of the forest to maintain its own environment can be damaged, both accelerating further forest loss [189], and meaning that the system will not necessarily recover to its original state if the imposed climate change is removed [191]. A similar climate-mediated commitment to move to a new state has been suspected to occur in ice-sheets, because the ice reflects light and elevates the surface - keeping its local climate ’artificially’ cold. A temperature which would have been consistent with the existence of ice while the climate was warming (and ice existed), may therefore be too warm for ice to form as temperatures are decreasing from an elevated value. This process was demonstrated by a long set of experiments undertaken using HadCM3, where the climate model was run for a period, then that climate state passed to an ice sheet model which was run for a time, then that ice-sheet state put back into HadCM3 and the climate run forward (etc.) [282]. These experiments identified multiple different states at which the ice-sheet could be stable, and implied that melting of 10-20% of the ice sheet could already commit us to (at best) recovering to a lower ice volume than exists at present. The final component of the climate system that we have been exploring in terms of resilience is the Meridional Overturning Circulation (the MOC, the large-scale ocean circulation traveling at the surface up the Atlantic, before sinking and traveling south at depth). The MOC plays an impor tant role in transporting heat northwards, helping to keep Europe warmer than it would be if this circulation did not exist. The MOC also plays an important role in controlling the uptake of CO2 in the North Atlantic [139]. The MOC is in a sense self-sustaining, because it relies on the transport of saline waters (which are denser than fresher water) from the evaporative low latitudes up to the high northern latitudes so that when it cools, water is available which is dense enough to sink and this transport occurs as part of the MOC. If this feedback loop were to be broken, it has been proposed that the MOC might switch to an ’off state’. Past climate evidence suggests that the MOC has slowed considerably and rapidly in the Earth’s history [234], exhibiting an ’on’ and ’off’ state and hysteresis (figure 2.26). Previously, models with anything other than highly simplified physics have failed to demonstrate two MOC states. New results obtained in collaboration with NERC partners have shown the exis tence of these two states in a low resolution version of HadCM3, and suggested that for this to be achieved, the balance of salinity flowing into the Atlantic and evaporation from the Atlantic, must be such that a reduced circulation (and associated reduction in water being brought into the Atlantic), c Crown Copyright 2013 © 64 causes the Atlantic to become less saline [142, 310]. The real world appears to be in this state, whereas most climate models appear to be in a more stable MOC regime due to biases in their simulation of South Atlantic salinity. This idea has been explored in a simple box model which, if it can be shown to be robust when tested against a number of climate models, suggests that basic observations of the state of the Atlantic can tell you how close we are to the point at which this commitment threshold is reached [110, 352] (figure 2.26). Whilst these results have so far only been demonstrated in very simple climate models, the improved simulation of South Atlantic salinity simulated in the MOHC’s latest physical climate model HadGEM3 means that we would expect this two-state MOC to exist within this model. Experiments are ongoing to look for the existence of this behaviour in HadGEM3, but the required simulations are very slow to run so it is too early to draw strong conclusions. Whilst it is clearly important to know how close the climate system may be to moving to a changed MOC state, even if this point were unlikely to ever be reached, reversible changes in the MOC would still play an important role in climate change. Work has been undertaken to understand how damped versions of the feedbacks described above may result in multi-decadal variability in the MOC [225], which through the role it could play in determining sea surface temperatures [288], may account for the (or a component of the) observed multi-decadal sea surface temperature variability in the North Atlantic [80, 33]. Recent results even suggest that past change in the MOC might not be limited to cyclic variability, perhaps even exhibiting a long-term (preindustrial to presentday) increase in strength [225]. If this result is found to be robust, it could well have important implications for the future rate of change in the MOC. It is generally accepted that in response to increased high latitude precipitation and melting of land ice, the waters which sink to form the lower part of the Meridional Overturning Circulation will become less saline, and therefore more buoyant resulting in a slowing of the MOC. A robust finding from climate models is that warming of the North Atlantic under increasing greenhouse gases will make the source waters of the MOC less dense, resulting in a weakening of the MOC. Changes in salinity generally act to moderate this weakening, but this effect varies widely between models. Following the Quantification of Uncertainty in Model Predictions (QUMP) approach described in the previous section, the plausible range of rates at which we expect the MOC to slow down over the coming century is being tested [220]. This work is feeding into a larger project being undertaken in collaboration with NERC colleagues to run very large sets (many thousands) of simulations across the internet on volunteering individual’s home PCs to examine further the range of possible future changes in the MOC [119]. Quantifying uncertainty The Quantification of Uncertainty in Model Predictions (QUMP) project has featured in various guises throughout this report, but in addition to contributing to UKCP, future decadal forecasting, and large MOC investigations (amongst many other studies e.g. [141, 149, 87]), extension of the c Crown Copyright 2013 © 65 hysteresis positive feedback simple response forcing response forcing Meridional Overturning Circulation strength (Sv) response Climate Model (GCM) 20 Box Model 10 0 -10 0.4 0.0 0.4 0.8 freshwater forcing (Sv) Figure 2.26: Some components of the climate system are likely to display hysteresis, which means that if they are forced to move to a new state (for example by changing greenhouse gas concen trations), just reversing the greenhouse gas changes may not necessarily return the system to its previous state. This can be visualised by imagining how a ball would travel along a valley. The sim ple response would be for you to push the ball, and it travel smoothly along the bottom of a straight valley - here the ball would be moving away from its starting position at a rate purely dependent on how fast it is pushed. However, a positive feedback could be imagined by visualising pushing the ball down a curved valley - although the ball may being pushed at a constant rate, the valley system forces the ball to move off its straight path, and for a time moves rapidly perpendicular to the direction it started to move in. To visualise hysteresis, one could think about two adjacent valleys, one that slowly finishes geographically soon after the other starts - the ball would be pushed down one valley until that valley gets swallowed up by the adjacent valley, then rolls down into the second valley. If the ball is then pushed in the opposite direction, it would travel up the valley that it is in, rather than rolling up the side of that valley to follow its original path, and would only end back up in the first valley once the second valley was swallowed up by the first [234]. It has been proposed that the Meridional Overturning Circulation (MOC) would follow this behaviour - where the physical landscape and gravity, are substituted for other conditions constraining how the system can change. This MOC behaviour has recently been demonstrated in a GCM for the first time (black dots) [142], and understood by using a box model (red line in lower part of figure) [110, 1]. c Crown Copyright 2013 © 66 scope of the QUMP project over the last five years has resulted in a number of important findings. Prior to the last MOHCCP the QUMP project had been examining how our lack of certainty about how to represent physical processes in the atmosphere contributed to the spread of simulated pos sible future climates. Work was also beginning to examine the contribution to this spread in results coming from our incomplete representation of sulphur-aerosol processes. Over the last MOHCCP, the QUMP project completed its analysis of anthropogenic aerosol uncertainty [95], began to ex amine the consequences of imprecise representation of physical ocean processes [268, 148], and extended the exploration of uncertain parameters to those in the land carbon cycle [166, 34]. Over the last couple of years, all of these ideas have been brought together into a large set of experiments which simultaneously explored the lack of certainty in all of these different components of the sys tem to identify where interactions between different processes might influence our understanding [117]. A number of the important findings which came out of this work have been mentioned elsewhere in this report, but to highlight a few: it was found that our incomplete understanding of land carbon cycle processes contributed as much to our lack of certainty about the end of the century climate as did uncertainty in cloud processes [34]; that given our uncertain understanding of earth system feedbacks, it is possible that the planet could warm to four degrees above preindustrial temperatures by the early 2060’s [27]; and that a doubling of atmospheric CO2 concentrations could lead a to 5 to 45% increase in land experiencing drought conditions globally [49]. Whilst the perturbed parameter approach followed in the QUMP project allows us to explore the range of outcomes simulated by a set of structurally different23 models (e.g. CMIP5), in a more coherent and therefore more tractable way than we could by looking at those structurally different models, some variables show smaller ranges in the QUMP simulations than across structurally different models. This behaviour is seen when examining sea-level rise. Differences in the changing patterns of sea-level rise between the two previous-generation (CMIP2 and CMIP3) models are approximately the same. This difference relates largely to how the ocean circulation changes in different models [260]. However the QUMP experiments simulate a smaller range of different patterns of sea-level rise than is seen in the multimodel studies. Providing mitigation relevant advice Sea-level rise has also been looked at in the context of climate mitigation. Through the European ENSEMBLES project a new climate mitigation emission scenario was developed called ’E1’, with the aim of stabilising global temperatures below two degrees Celsius24 [173]. It was found that achieving this aim would require a 50% reduction in emissions (from 1990’s levels) by 2050, with 23 Models that are developed largely independently from each other (i.e. at different international climate research centres) differ in their structure - for example the equations used to represent a particular process or set of processes differ between models. QUMP models are structurally identical - they use the same equations - but the parameter values in those equations are varied. 24 The E1 scenario is similar to the newer RCP2.6 mitigation scenario used by IPCC. c Crown Copyright 2013 © 67 further emissions reduction (possibly even negative emissions) after 2050. Whilst there is consider able uncertainty about the contribution of land-ice to future sea-level rise [119], there is an important sea-level rise component which results from warming of the ocean. Under the E1 mitigation sce nario temperature-driven sea-level rise would continue long after the atmosphere stopped warming, because it takes a long time for mixing within the ocean to allow the cool deep-ocean waters to experience the warmer surface conditions, and therefore expand. It has however been shown that around 30% of the (temperature driven) sea-level rise occurring in response to a business as usual scenario could be avoided (or even reversed [259]) if emissions were cut further by following the E1 heavy mitigation scenario [261]. The simple climate models used to develop the E1 climate mitigation scenario are based on a small set of equations which broadly describe the processes occurring within more complex Earth System Models, and the real world. The parameters in these simple climate models can be adjusted so that they replicate the global climate behaviour of most individual Earth System Models, but more recently have been extended to represent the lack of cer tainty in these parameters, allowing the range of behaviors simulated across the different available Earth System Models to be captured probabilistically. The simple probabilistic models developed by the MOHC have been used by the Committee on Climate Change to develop mitigation scenarios. The current generation of simple climate models were developed to replicate the behaviour of the CMIP3 and C4 MIP (Coupled Climate Carbon Cycle Model Intercomparison Project) models. A preliminary assessment of the behaviour of the latest generation of Earth System Models suggests that the simple climate modelling tools we currently use within the MOHC may not need updating to allow them to replicate CMIP5 results [129]. This finding potentially reflects the fact that many CMIP5 models are essentially a bringing together of C4 MIP model components with CMIP3 physical models, rather than representing a step-change in our fundamental understanding. The capacity in HadGEM2-ES, and increasingly in developmental versions of HadGEM3, to simulate the behaviour of climatically important non-greenhouse gases and aerosols makes these tools particularly valuable for answering more complex mitigation questions than those which might be answered using a simple climate model. Studies have looked a the role of methane removal within mitigation strategies [36], and the impact of clean air policy to limit black-carbon [35], oxides of nitrogen and volatile organic compounds [43], and other non-Kyoto pollutants [41] as mitigation options. The impacts of climate mitigation on temperature and precipitation [64], ocean acidification [22] and agriculture [266, 113, 25] have also been explored. This information has been delivered to UK Government customers as and when required [223]. Furthermore, the potential to use agricul tural planning as a mitigation tool has been examined, for example by reducing emissions through deforestation. The complexity of climate-vegetation feedbacks mean that the long-term response to (for example) deforestation policy may not be as simple as it initially seems [276]. The Earth System capacity developed within HadGEM2-ES over the last MOHCCP means that we can provide advice about how the Earth System might respond if climate mitigation plans are c Crown Copyright 2013 © 68 unsuccessful or implemented too late, and the application of geoengineering is considered. Whilst it could be argued that geoengineering is implicit within the idealised 1% per year CO2 rise then 1% per year CO2 decrease experiments already discussed [38], a number or more realistic experimental designs have been considered within the Geoengineering Model Intercomparison Project (GeoMIP) [179]. These experiments consider the climate impacts of brightening (making more reflective) marine stratocumulus clouds by spraying sea salt in the regions where these form [178, 182], and the injection of sulphur dioxide into the stratosphere to form aerosols and directly reflect sunlight [179, 180, 181]. Further idealised experiments have been undertaken which reduce the sunlight coming into the planet, without specifying the mechanisms by which this process occurs [303, 183, 10]. Work has also looked at how geoengineering would have to be combined with reduced CO2 emissions to achieve long-term climate stabilisation [40]. In general, where cloud brightening or stratospheric aerosol geoengineering proposals have been examined, it has been found that the global temperature can be prevented from rising, but that regional temperatures, and consequently precipitation patterns (the climate change most likely to impact people), are changed [303, 179]. c Crown Copyright 2013 © 69 Chapter 3 Looking Forward As demonstrated by the breadth and quality of the work highlighted here and published in many of the best scientific journals, ’the Met Office Hadley Centre provides essential and world-leading climate modelling services to Government’, and ’represents a critical national capability, with a cen tral role of meeting the Government’s requirements for climate evidence and advice’ (Professor Sir John Beddington, 2010). Whilst much of the work which has been discussed in this report is now complete, many studies are still ongoing, and will form the basis of what is delivered within the new 2012-2015 MOHCCP. The 2012-2015 work-plan places increasing emphasis on making our science usable within, and relevant to, DECC and Defra’s current requirements. Pushing forward the work undertaken in the 2007-2012 period, a major focus will continue to be placed on provid ing information relevant to setting international climate targets and negotiations on the mitigation of emissions. New work will examine the climate controls on performance of renewable energy, investigate the regional consequences of climate variability, and understand how best to inform fu ture climate risk assessments and national adaptation planning. To aid adaptation planning, the new MOHCCP contract places more emphasis on (i) monitoring of climate for local and regional patterns of change and quantitative estimates of the attribution of extremes to human activity and (ii) regional projections of the biophysical impacts of climate variability and change from near term out to a few decades. c Crown Copyright 2013 © 70 Acknowledgments and Disclaimer We thank the MOHC strategic heads and senior staff for sharing their thoughts on the direction and achievements of the last MOHCCP, to individual scientists for contributing summaries of their publications to the supplementary material, and to everyone who patiently answered my questions, provided figures, or corrected my mistakes. We specifically thank Stephen Belcher, Richard Betts, Mick Carter, Debbie Hemming, Chris Jones, Richard Jones, Carol McSweeney, John Mitchell, Erika Palin, Mark Ringer, Peter Stott, Cath Senior and Richard Wood for providing detailed thoughts on and proof reading sections of the report. While every effort has been made to cite published work appropriately, it has not been possible to read individual papers in any detail. It is therefore inevitable that there will be a small number of incorrectly cited publications, and for that we apologise. c Crown Copyright 2013 © 71 Bibliography [1] [2] Cook P. A. and F.M. 22 authors includes O’Connor. Forest fire plumes over the north atlantic: p-tomcat model simulations with aircraft and satellite measurements from the itop/icartt cam paign. J. Geophys. Res., 112, 2007. S UPPLEMENTARY MATERIALS TABLE A, ITEM 144. [3] Scaife A.A., C.K. Folland, L. Alexander, A. Moberg, and J.R. Knight. European climate ex tremes and the north atlantic oscillation. 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Development , testing and evaluation of the UKCA and JULES models: Re lease of JULES v3.0 with driving datasets for historical and future simulations including the IMOGEN pattern-scaling model 3 Betts, R. et al RCM-scale glacier model implemented in JULES for Himalayas 2010 A13 4 Betts, R. et al. Strategy for implementing impacts into HadGEM3 using JULES 2010 D3.2.1 e 5 Boucher, O. et al. Climate change impacts of non-Kyoto pollutants 2008 M3 6 Boucher, O. et al. Report on impacts on atmospheric chemistry and climate associated with 2009 D3.1 2012 M5, Milestone 31 large atmospheric releases of methane - Literature review on the climate risk associated with large atmospheric releases of methane from clathrates and permafrost. 7 Boucher, O. et al. Report on the role of aerosols, methane, NOx and VOC emission controls for climate mitigation policies 8 Boucher, O. et al. Report on the Climate effects of black carbon 2011 D2.3.6 9 Brookshaw, A. et al. Future global climatology ’atlas’ for ranges 10, 20 and 30 years 2009 P4, Milestone 12 10 Brown, S. et al. Plan for coordination of activities on projections of climate extremes, including 2009 A9 specific recommendations for future deliverables in addition to A4. 11 Brown, S. et al. Projections of extreme characteristics of temperature and precipitation 2011 A4 12 Brown, S. et al. Report on projected changes in extra-tropical storms in transient runs, includ 2011 D3.2.8 2011 D3.3.4b 2009 P7.1, Milestone 14 ing exploring mechanisms responsible for driving changes and their uncertain ties 13 Brown, S. et al. Guidance on current developments for prediction of future regional temper ature and precipitation extremes with current modelling technology including an assessment of possible methodologies for obtaining probabilistic predic tions to extend the advice provided through UKCP09 and inform options for the provision of extremes in UKCPnext 14 Bryden, C. et al. Deliverables listed in proposals for underspend in FY08/09 (delivery and in terim report by March 2009) (Final report by July 2009) 15 Bryden, C. et al. Annual technical report 2009 C5 16 Burke, E. et al. The potential importance of permafrost thawing as a climate feedback through 2011 D2.3.4,a, emissions of CO2 and methane 17 Butchart, N. et al. Influence of the stratosphere on climate projections with HadGEM2 2012 D3.2.2 18 Caesar, J. et al. Regional benefits of mitigation policy for climate impacts 2012 D2.3.11 M18 19 Carroll, F. et al. A comprehensive Met Office Hadley Centre website ongoing C1 20 Carroll, F. et al. A comprehensive Met Office Hadley Centre website ongoing C1 21 Carroll, F. et al. A comprehensive Met Office Hadley Centre website ongoing C1 22 Carroll, F. et al. Annual Technical Report 2009-2010 2010 c Crown Copyright 2013 © 107 D1.2.8 23 Carter, M. et al. Development of a supercomputer strategy 2010 D3.4.2 b 24 Carter, M. et al. Supercomputer Strategy 2010 D2.1.1 ,a, 25 Carter, M. et al. JWCRP/MONSooN application support 2011 D3.4.3 26 Chris F. et al. Annual temperature forecasts 2010 P2 27 Chris, F. et al. Annual temperature forecast for 2009 2009 P2 28 Chris, G. et al. Collaboration Strategy 2007 C2.3, Milestone 3 29 Chris, G. et al. Science and general strategy - Annual April 2008 C2.1, Milestone 8 30 Chris, G. et al. Science and general strategy - Annual April 2009 C2.1, Milestone 8 31 Chris, J. et al. 2009 D7, Milestone 34 32 Chris, J. et al. 2010 Q9.2, Milestone 15 2010 Q9.2, Milestone 15 2012 D7.2, Milestone 34 2010 E5, Milestone 19 Interim deliverable April 2010: Completion of HadGEM2-ES 1% CO2 and his torical simulations for CMIP5/AR5. 33 Chris, J. et al. Full earth system climate projections with HadGEM2-ES following CMIP5 and IPCC recommendations for AR5 - Completion of 2 RCP scenarion runs ro 2100. 34 Chris, J. et al. Assessment of potential and risk of rapid or irreversible ecosystem response to climate change - Final Report 35 Christidis, N. et al. Report on attribution of regional extremes to anthropogenic influence including impacts 36 Christidis, N. et al. AM3-based attribution stystem for estimating attribution risk of extreme events 2011 D3.1.6 a 37 Christidis, N. et al. Report on progress in attribution of regional hanges and extremes including 2011 D2.1.5 assessment and validation of rototype HadGAM3 based attribution modelling system eliverable 38 Collins, B. et al. Release and evaluation of HadGEM2-ES model 2008 Q1, Milestone 6 39 Collins, B. et al. Full earth system climate projections with HadGEM2-ES following CMIP5 and 2009 Q9.1, Milestone 15 2012 M6, Milestone 32 2010 D2.3.5 2009 A3, Milestone 13 IPCC recommendations for AR5 - HadGEM2-ES model and experimental setup frozen 40 Collins, B. et al. Analysis of biogeochemical climate feedbacks and interactions in HadGEM2 ES 41 Collins, B. et al. The Climate impact due to pulse emissions of methane, Nox and VOC in the context of air quality 42 Collins, M. et al. Report surveying issues for consideration in the design of future UK Climate Projections 43 Derrick, R. et al. Report on the impact of climate change on Defence studies 2008 P3 44 Falloon, P. et al. Report on implementing relevant physical and biological processes relevant to 2011 3.2.11d permafrost thawing in the grid-point version of JULES, and on development of hydrological processes including flooding ,D3.2.11d, 45 Fiona, S. et al. A comprehensive Met Office Hadley Centre website will be maintained 2007 C1 46 Fiona, S. et al. A comprehensive Met Office Hadley Centre website 2008 C1 47 Gohar, L. et al. Report on the quantification of the carbon-climate feedback rapid response 2011 D2.3.1,b, tools improved 48 Good, L. et al. Report on development of sample climate information bulletins 2012 D2.1.1 c 49 Good, P. et al. Progress report on traceability of simple models to GCMs 2011 D3.2.6 50 Gordon, C. et al. Science and general strategy 2010 C2.1, Milestone 8 51 Gordon, C. et al. Science and general strategy 2011 C2.1, Milestone 8 52 Gordon, C. et al. Science and general strategy 2012 C2.1, Milestone 8 53 Graham, R. et al Global decadal predictions of multi-year temperature averages up to 10-years 2010 P5, Milestone 17 ahead - Annual 54 Graham, R. et al Global seasonal predictions up to 6-months ahead. 2011 P1 55 Graham, R. et al Annual temperature forecasts 2011 P2 56 Helene, H. et al. Evaluation of HadGEM3-OA 2008 Q2, 57 Hemming, D. et al. Identification of dangerous thresholds in regional climate and other biophysical 2011 D2.4.3 2009 D8 quantities relating to key impacts 58 Hemming, D. et al. Assess climate impacts in a high end (eg., 4 deg warming) simulation. Prelim inary HadCM3-based assessment March 2009 (subject to additional end-FY ICP funding) 59 Hewitt, H. et al. Polar Climate Update 2010 D2.2.4 ,a, 60 Hewitt, H. et al. Polar Climate Update 2010 D3.2.1 61 Hewitt, H. et al. Polar Climate Update 2011 D3.2.16 62 Hewitt, H. et al. Annual update on the state of the Arctic sea ice, and report on improved quan 2011 D2.2.4,a, 2012 D2.2.4,b, tification of local feedback processes controlling keyArctic predictions. To in clude a short appendix detailing the status of theAntarctic Sea Ice. 63 Hewitt, H. et al. Report on the Assessment of Possibility and Impact of Rapid Climate Change in the Arctic 64 Hewitt, H. et al. Assessment of potential for rapid loss of Arctic sea ice - Interim Report 2010 D6.1, Milestone 22 65 Hines, A. et al. Progress report on ocean biogeochemistry development 2011 D3.2.13 66 John, V. et al. Analysis of uppe-tropospheric humidity in sub-tropical descent regions using 2011 D3.1.7 a 2012 D3.2.11,b, 2009 M3.1, Milestone 11 observed and modelled radiances 67 Johnson, C. et al. UKCA merged code implemented and tested ready to form part of version 8.2 of the Unified Model 68 Johnson, C. et al. The first projections with HadGEM2-ES of climate change in 21st century with interactive aerosol and chemistry c Crown Copyright 2013 © 108 69 Johnson, C. et al. Comparison between UKCA-MODE and CLASSIC aerosol schemes in 2010 M3.2, see comment HadGEM3 70 Jones, A. et al. The climate response to high-latitude injection of SO2 into the stratosphere 2010 D2.3.7 71 Jones, A. et al. Assessment of benefits and dis-benefits of proposed solar radiation manage 2011 D2.3.8 2009 M8.1 2010 M8.2 ment geoengineering schemes 72 Jones, A. et al. Report on the climate response to a uniform injection rate of sulphur dioxide into the stratosphere. 73 Jones, A. et al. Report on the sensitivity of stratospheric aerosol forcing as a function of region and height of SO2 injection. 74 Jones, C. et al. Quantification of the carbon-climate feedback in HadGEM2-ES 2011 D2.3.1,a, 75 Jones, C. et al. Completion of 1percent CO2 and RCP carbon-uncoupled simulations and ex 2010 Q9.3, Milestone 15 2012 D2.2.6 2012 D2.3.3 2011 D3.3.1 2011 D3.1.5,b, 2011 A6, Milestone 27 2011 P9 tension of some RCP simulations to 2300 76 Jones, C. et al. Assessment of potential and risk of rapid or irreversible response of major ecosystems to climate change 77 Jones, C. et al. Quantification and reduction of uncertainties on CO2 and non-CO2 biogeo chemical feedbacks, and the effects of interactions with physical feedbacks, in the context of the CMIP5 multi-model and QUMP perturbed-parameter en sembles 78 Jones, C. et al. Delivery of core CMIP5 climate experiments for IPCC AR5: decadal and cen tennial scenarios 79 Jones, G. et al. Development of detection and attribution to a wider range of variables and to regional scales: report on new attribution estimates using new HadGEM2 model simulations and from CMIP5 archive 80 Jones, R. et al New projections of detailed regional climate change over the UK and Europe and other key regions 81 Jones, R. et al Updated regional climate change information system for use by developing countries 82 Jones, R. et al Report on evaluation of HadGEM3-RA against previous model HadRM3P 2011 D3.2.3 83 Keen, A. et al. Assessment of potential for rapid loss of Arctic sea ice - Annual Update 2009 D6 84 Kendon, L. et al. Report evaluating the climate simulation of extreme precipitation over South 2011 D 3.2.4 ern UK in a convection permitting model ,1.5km, and comparison to lower resolution models 85 Kennedy, J. et al. Global and regional climate in 2010 2011 D2.1.1 ,b, 86 Kennedy, J. et al. Indicators of Change for the three month period of October to December 2011. 2012 D2.1.1 ,a 87 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate 2009 E1, May 09 2009 E1, August 09 2009 E1, November 09 2010 E1, February 2010 2010 E1, Annual 2010 E1, May 10 2010 E1, August 10 2010 E1, November 10 events 88 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 89 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 90 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 91 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events. Global and regional climate in 2009 92 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 93 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 94 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 95 Kennedy, J. et al. Indicators of Change 2010 D2.1.1 ,a, 96 Kennedy, J. et al. Indicators of Change 2010 E1 97 Kennedy, J. et al. Indicators of Change 2010 D2.1.1 ,a, 98 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate 2011 E1, February 2011 2011 E1, Annual 2011 E1, May 11 2011 E1, August 11 2011 E1, November 11 2012 E1, February 2012 2012 E1, Annual 2007 E1, May 07 2007 E1, Aug 07 2007 E1, Nov 07 events 99 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events. Global and regional climate in 2010 100 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 101 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 102 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 103 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events 104 Kennedy, J. et al. Monitor climate in near-real time and provide information on unusual climate events. Global and regional climate in 2011 105 Kennedy, J. et al. Monitoring climate in real-time and provide information on unusual climate events 106 Kennedy, J. et al. Monitor climate in near real-time and provide information on unusual climate events 107 Kennedy, J. et al. Monitor climate in near real-time and provide information on unusual climate events c Crown Copyright 2013 © 109 108 Kennedy, J. et al. Annual report on the climate of the UK and Europe 2008 E1, Jan 08 109 Kennedy, J. et al. Monitor climate in near-real-time and provide information on unusual climate 2008 E1, Feb 08 events 110 Kennedy, J. et al. Global and regional climate in 2007 2008 E1 111 Kennedy, J. et al. Monitoring climate in real-time and provide information on unusual climate 2008 E1, May 08 2008 E1, August 08 2008 E1, Nov 08 2009 E1, February 09 events 112 Kennedy, J. et al. Monitoring climate in real-time and provide information on unusual climate events 113 Kennedy, J. et al. Monitoring climate in real-time and provide information on unusual climate events 114 Kennedy, J. et al. Monitoring climate in real-time and provide information on unusual climate events 115 Kennedy, J. et al. 2009 E1, Annual 116 Kettleborough, J. et al. Supporting Software for AR5 Data Use 2011 D3.4.10 117 Knight, J. et al. Developing improved initialised systems for near term climate predictions out 2012 D3.3.5 2012 D2.2.2 ,M17, to a decade ahead, including investigation of a seamless approach for sea sonal to decadal forecasts 118 Lowe, J. et al. Assessment of the risk of rapid sea level rise, including refined estimates of highest credible mean sea level rise and assessment on the potential irre versibility of sea level change 119 Lowe, J. et al. Implementation plans for provision of mitigation advice 2007 M1.5, Milestone 2 120 Lowe, J. et al. Report on climate change projections with MAGICC model using multi-gas 2008 M2, Milestone 5 mitigation profiles, accounting for non linear system behaviour and reduction of non-CO2 species 121 Lowe, J. et al. Ad hoc advice on mitigation options 2009 M1 122 Lowe, J. et al. Report on risk of rapid or irreversible regional sea level rise - FINAL REPORT 2012 D5.2, Milestone 29 123 Martin, G. et al. Progress on quantifying and reducing uncertainty in the large-scale response 2011 D3.2.15 of the water cycle 124 Morice, C. et al. Indicators of Change for the three month period of April to 2011 D2.1.1 ,a, 125 Morice, C. et al. Indicators of Change Feb 2011 2011 D2.1.1 ,a, 126 Morice, C. et al. Indicators of Change May 2011 2011 D2.1.1 ,a, 127 Morice, C. et al. Indicators of Change for the three month period of July to september 2011 2011 D2.1.1 ,a, 128 Morice, C. et al. Development of homogenised surface temperature datasets for climate mon 2011 D3.1.1,b, itoring, attribution of climate variability and trends and for the improvement of climate predictions: create ensembles of HadCRUT4, blending HadSST3 and the latest version,s, of the land temperature record. 129 Murphy, J. et al. Capability report for future Climate Projections 2011 D 3.3.8 130 Murphy, J. et al. Production and delivery of data for the UK Climate Projections (UKCP09) 2009 A2, Milestone 10 131 Murphy, J. et al. Report on options for future UK climate projections, 2010 A8, Milestone 18 SEE Comment 132 N Rayner, N. et al. Improving quality of historical climate data for the sub-surface ocean: report on 2012 D3.1.3,a, biases between surface and sub- surface observations and improved version of ocean database and its objective analysis 133 Nicola, G. et al. Preliminary representation of irrigation in HadRM3 2009 A12 134 O’ Connor, F. et al. Report on impacts on atmospheric chemistry and climate associated with 2010 D3.2 2011 D3.2.12 2009 E4, Q 2011 D3.1.2 a 2011 D3.1.2,b, 2011 D3.1.4a large atmospheric releases of methane - Analysis of the response of atmo spheric chemistry to CH4 pulse emissions. 135 O’Connor, F. et al. Scoping of the HadGEM3-ES project including a selection of suitable Earth System components and interactions 136 Palmer, M. et al. Report on ocean heat content trends and ability for climate models to repro duce observed trends 137 Parker, D. et al. Report on progress towards first version of homogenized Integrated Surface Daily temperature and dew point data for 1973-2008 138 Parker, D. et al. Extreme European heat waves analysed using in situ and satellite data and the Climate of the 20th Century Reanalysis 139 Parker, D. et al. Using the 20th Century Reanalysis and satellite data to detect inhomo geneities and to fill gaps in land surface air temperatures 140 Pete, F. et al. Communications Plan 2007 C2.2, Milestone 1 141 Peter, T. et al. Report on tropospheric trends in temperature and humidity, and their consis 2008 E2 tency with model expectations 142 Pope et al CoP brochure 2010 C4, Milestone 16 143 Pope et al CoP brochure 2011 C4, Milestone 16 144 Pope et al Annual headline report - June 08 2008 C4, June 08 145 Pope et al 2008 C4, Sep 08 146 Pope et al Annual technical report 2008 C5 147 Pope et al Quarterly ,for Defra, and monthly ,for MoD, highlight Reports 2007 C6 148 Pope et al Integrated Climate Programme: Stakeholder engagement and Communica 2008 C2.2, Milestone1 revised tions Strategy 2007-2012 149 Pope et al Ad hoc requests 2008 C3 150 Pope et al Ad hoc requests 2009 C3 151 Pope et al Quarterly ,for Defra, and monthly ,for MoD,highlight reports 2009 C6 152 Pope et al Ad hoc requests ongoing C3 c Crown Copyright 2013 © 110 153 Pope et al Quarterly ,for DECC, Defra, and monthly highlight reports. The Annual Tech- ongoing C6 nical Report will subsume the Jan-Mar quarterly report 154 Pope et al Ad hoc requests ongoing C3 155 Pope et al Quarterly Report ,for DECC, Defra, and monthly highlight reports. The Annual ongoing C6 Technical Report will subsume the Jan-Mar quarterly report 156 Pope et al Ad hoc requests ongoing C3 157 Pope et al Quarterly ,for DECC, Defra, and monthly highlight reports. The Annual Tech- ongoing C6 nical Report will subsume the Jan-Mar quarterly report 158 Pope, V. et al CoP 15 report - ’SCIENCE: Driving our response to climate change’ 2009 C4, Milestone 16 159 Pope, V. et al. Annual Technical report 2010 C5 160 Pope, V. et al. Annual Technical report 2011 C5 161 Rayner, N. et al. Development of homoegised surface temperature data sets for climate moni 2010 D3.1.1 a 2011 E6, Milestone 25 2008 M4 toring 162 Rayner, N. et al. Key global and regional surface temperature analyses, with uncertainties, for IPCC assessment reports 163 Richard, B. et al. Risk assessment of the permanence of Reducing Emissions from Deforesta tion and Degradation (REDD) under climate change in Amazonia 164 Richard, B. et al. Preliminary global scale crop model implemented in JULES 2009 A11 165 Richard, B. et al. Global-scale projections of the impacts of various magnitudes of change in 2012 M7, Milestone 33 climate, atmospheric composition and land use on global water resources, food supply and natural ecosystems 166 Richard, G. et al. Global seasonal predictions up to 6 months ahead 2008 P1 167 Richard, G. et al. Global seasonal predictions up to 6 months ahead 2009 P1 168 Richard, G. et al. Global decadal predictions of multi-year temperature averages up to 10-years 2009 P5, Milestone 17 ahead - Annual 169 Richard, G. et al. Global seasonal predictions up to 6-months ahead. 2010 P1 170 Richard, G. et al. Global decadal predictions of multi-year temperature averages up to 10-years 2011 P5, Milestone 17 ahead - Annual 171 Richard, G. et al. Climate change impacts ’atlas’ for ranges 10, 20 and 30 years, 2012 A7, Milestone 30 172 Richard, G. et al. Annual temperature forecasts 2012 P2 173 Richard, G. et al. Global seasonal predictions up to 6-months ahead. ,RG, ongoing P1 174 Richard, J. et al. Strategy for ’technology / capability’ transfer 2008 A1, Milestone 7 175 Richard, J. et al. Recommendation on downscaling methods, post-processing methods to im 2009 P8 2009 D2 prove regional climate change information for users 176 Richard, W. et al. State of the Art report on the resilience of the climate system. (NOTE: This is an updated Product as it incorporates Product D1) 177 Richard, W. et al. Assessment of potential for rapid loss of Arctic sea ice - Annual Update 2011 D6.3 178 Ridley, J. et al. Report on risk of rapid or irreversible regional sea level rise - INTERIM RE 2010 D5.1 Milestone 29 PORT March 2010 to include rate estimates of glacier contribution, and re versibility in Greenland ice sheet. 179 Ringer, M. et al. Reduction of uncertainty in cloud feedbacks 2011 Q5, Milestone 26 180 Ringer, M. et al. Progress on work to quantify and reduce uncertainty in cloud feedbacks 2012 D3.2.14 181 Roberts, M. et al. Delivery of high resolution HadGEM3-AO 2011 D3.2.1 182 Sanchez, C. et al. HadGEM3 low resolution dynamical limitation and process based traceable 2011 D 3.2.5 solutions. 183 Saunders, R. et al. Strategy for development of climate quality satellite datasets 2009 E3, Milestone 9 184 Scaife A. et al. Final Report of the CAPTIVATE model development project 2011 D3.2.7 185 Scaife A. et al. Predictions out to a decade ahead issued once per year on the web 2011 D3.3.6,b,, including D2.4.5,b, 186 Scaife, A. et al. Evaluation of HadGEM3-AO. 2010 Q7, Milestone 21 187 Senior, C. et al. Strategy for traceable science on a range of space and timescales 2008 Q4 188 Senior, S. et al. Further deliverables for 2008 - 2012 2008 Q3, Milestone 4 189 Sexton, D. et al. UKCP09: Spatially Coherent Scenarios 2010 D2.4.1 ,a, 190 Sexton, D. et al. UKCP09: Spatially Coherent Scenarios 2010 D2.4.1 ,b, 191 Smith, D. et al. Delivery of initialised decadal forecasts extended to beyond 2030 in associa 2010 A10, Milestone 24 2011 D3.3.2 2011 D2.1.4 a tion with IPCC AR5. 192 Smith, D. et al. Methodologies for prediction of climate extremes: assessment of the pre dictability of moderate temperature and precipitation extremes out to a decade ahead 193 Stott, P. et al. Report on latest state of attribution science with early view of attribution sci ence to be reviewed in AR5 of IPCC 194 various authors (1) UK Climate Projections gridded data download facility 2009 P7.2 part 1 195 various authors (2) Potential for high-end climate changes (¿4C) 2009 P7.2 part 2 196 various authors (3) High end climate change (¿4C): Sea level rise 2009 P7.2 part 3 197 various authors (4) Short review of chemical and biological consequences of ocean acidifica 2009 P7.2 part 4 tion 198 various authors (5) Short review on results of acidification modeling study 2009 P7.2 part 5 199 various authors (6) An assessment of pattern scaling for the AVOID Project 2009 P7.2 part 6 200 various authors (7) The application of pattern-scaling to climate impacts: the importance of 2009 P7.2 part 7 model uncertainty 201 various authors Assessment of potential for rapid loss of Arctic sea ice - Final Report 2012 D6.4 202 various authors Quarterly Highlights Report, July to September 2011 2011 D1.2.2 203 various authors Met Office Hadley Centre Annual Highlight Report 2010-2011 2011 D1.2.8 c Crown Copyright 2013 © 111 204 various authors Interim report on assessment of changes in hazardous weather and key bio 2011 D2.4.6 2012 D4 2012 D3.1.1,c, 2010 Q8, Milestone 23 2012 D2.1.2 a physical impacts 205 Vellinga, M. et al. Robust assessment of the risk of rapid or irreversible shutdown of the Atlantic THC 206 Willett, K. et al. Development of homogenised surface datasets: report on new surface humid ity estimates of the globe 207 Williams, K. et al Report on mechanisms or processes that limit the capability of using a sin gle modelling system from 1-day through seasonal/decadal and centennial timescales at a range of resolutions. 208 Wood, R. et al Observations for early warning of changes to vulnerable components of the climate system 209 Wood, R. et al. State of the Art report on the resilience of the climate system 2010 D2, Annual update 210 Wood, R. et al. Assessment of potential for rapid loss of Arctic sea ice - Annual Update 2010 D6.2 211 Wood, R. et al. Progress in understanding dangerous climate change: Annual update on 2010 D2.2.1 ,a, 2010 D2.2.1,a, 2011 Q6, Milestone 28 baseline 2009 report on the resilience of the climate system 212 Wood, R. et al. Progress in understanding dangerous climate change: Annual update on the 2010 report on the resilience of theclimate system 213 Wood, R. et al. Quantify and reduce uncertainty in the large scale response of the hydrological cycle to climate change 214 Wood, R. et al. State of the Art report on the resilience of the climate system 2011 D2, Annual update 215 Wood, R. et al. State of the Art report on the resilience of the climate system. PAPER OR 2011 D2, Papers 2011 D2.2.3 2012 D2.2.5 PAPERS FOR PEER-REVIEW 216 Wood, R. et al. Assessment of the impacts of GHG stabilisation or overshoot on acceleration of the global water cycle 217 Wood, R. et al. Assessment of risk and consequences of rapid or irreversible shutdown of the Atlantic MOC c Crown Copyright 2013 © 112 Chapter 5 Annex B: Glossary of Acronyms MOHC Met Office Hadley Centre MOHCCP Met Office Hadley Centre Climate Programme IPCC Intergovernmental Panel on Climate Change AR3 the 3rd Assessment Report on climate science undertaken by the IPCC AR4 the 4th Assessment Report on climate science undertaken by the IPCC CoP Conference of the Parties - periodic meetings head by the United Nations Framework Convention on Climate Change (UNFCCC) DECC Department of Energy and Climate Change UKCIP United Kingdom Climate Impacts Programme UKCP United Kingdom Climate Projections UKCP09 United Kingdom Climate Projections released in 2009 CO2 Carbon dioxide GCM Global Circulation Model ESM Earth System Model SCM Simple Climate Model IAM Integrated Assessment model HadCM3 3rd Hadley Centre Climate Model HadCM3C 3rd Hadley Centre Climate Model with carbon cycle components HadCM3LC Lowe resolution 3rd Hadley Centre Climate Model with carbon cycle components HadGEM1 1st Hadley Centre General Environmental model HadGEM2 2nd Hadley Centre General Environmental model HadGEM2-ES 2nd Hadley Centre General Environmental model with Earth System Components HadGEM3 3rd Hadley Centre General Environmental model HadGEM3-ES 3rd Hadley Centre General Environmental model with Earth System Components CMIP Coupled Model Intercomparison Project c Crown Copyright 2013 © 113 MORPH3 MOdel for improved Regional Prediction - HadGEM3 project, part of HadGEM3 devel opment CAPTIVATE Climate Processes, Variability and Teleconnections project, part of HadGEM3 devel opment INTEGRATE ImproviNg model error, TEleconnections and predictability Globally and Regionally Across Timescales project, part of HadGEM3 development NCIC National Climate Information Centre ENSO El Nino and the Southern Oscillation - an important component of natural climate vari ability driven from the Equatorial Pacific SST Sea Surface Temperature CFMIP Cloud Feedbacks Model Intercomparison project NERC Natural Environmental Research Council ACE the Attribution of Climate Events group NAO North Atlantic Oscillation - an important component of natural climate variability NCAR National Centre for Climate Research QBO Quasi Biennial Oscillation - an important component of natural climate variability ECMWF European Center for Medium Range Weather Forecasting QUMP Quantifying Uncertainty in Model Predictions - an internal MOHC project ENSEMBLES The name of a European funded project co-lead by the Met Office EMBRACE Earth system Model Bias Reduction and assessing Abrupt climate change, the name of a European funded project co-lead by the Met Office HadGEM3-RA Regional version of the HadGEM3 model UNFCCC United Nations Framework Convention on Climate Change CORDEX COordinated Regional climate Downscaling Experiment JULES Joint UK Land Environment Simulator UKCA the UK Community Aerosol model TRIFFID Top-Down Representation of Interactive Foliage and Flora including Dynamics HadOCC Hadley centre Ocean carbon Cycle Model Diat-HadOCC Hadley centre Ocean carbon Cycle Model including the Diatom phytoplankton group DMS Dimethylsulphide MONSooN Met Office and Nerc Supercomputing (oo) Nodes CFC Chloro Fluoro Carbons RCP Representative Concentration Pathway - the new set of climate forcing scenarios AMOC Atlantic Meridional Overturning Circulation MOC Meridional Overturning Circulation 4 C MIP Coupled Climate Carbon Cycle Model Intercomparison Project PRACE the Partnership for Advanced Supercomputing in Europe c Crown Copyright 2013 © 114 Met Office Tel: 0870 900 0100 FitzRoy Road, Exeter Fax: 0870 900 5050 Devon, EX1 3PB enquiries@metoffice.gov.uk UK www.metoffice.gov.uk Produced with the Met Office LaTeX template v2.0.0