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Understanding and Applying the Science Anthony Chen Climate Studies Group Mona University of the West Indies The Science • Weather, Climate, Climate Variability and Climate Change – What can we predict? • How do we predict ?– Models – Model Limitations • Dealing with uncertainties in climate change – Dealing with uncertainty in causes of climate change – Dealing with limitations in models – Dealing with climate change scenarios • Sources of information – Predictions of climate variability – Scenarios of climate change Weather and Climate • Weather – day by day occurrence • Climate – average over season or longer Climate Variability – regular, irregular, long term Climate Change - trendy Temperature changes since the industrial revolution~ 1750 Trend – Climate Change What can we predict? • Weather can be predicted but not beyond 10 days: – Butterfly Effect (small changes in initial conditions can cause large changes farafield) • Climate Variability can be predicted • Not climate change prediction but climate change scenarios Rainfall Amount Weather Observed Precipitation vs Predicted Precipitation 14 Observed 12 Predicted 10 8 mm Obs Precip Pred Precip 6 4 2 0 1 2 3 4 5 6 Day Days 7 8 9 10 11 Climate Observed Precip vs Predicted Precip 14 12 10 Obs Precip Pred Precip Avg Obs Avg Predict mm 8 6 4 2 Days 39 37 35 33 31 29 27 25 23 21 19 17 15 13 11 9 7 5 3 1 0 Why is short term climate (climate variability) predictable? • Regularity of behaviour of energy input – Sun • Slow variation of conditions influencing climate over the season – – – – Sea surface temperature Land vegetation Soil Moisture Ice cover The Science • Weather, Climate, Climate Variability and Climate Change – What can we predict? • How do we predict ?– Models – Model Limitations • Dealing with uncertainties in climate change – Dealing with uncertainty in causes climate change – Dealing with limitations in models – Dealing with climate change scenarios • Sources of information – Predictions of climate variability – Scenarios of climate change Models • Dynamic – General Circulation Models (GCM) • Atmosphere-Ocean Coupled GCM (AOGCM) – Regional Models (RCM) • Statistical Models Science Used in Dynamic Models • Meteorology – – – – – Application of Physics to the Atmosphere Equations of motion Thermodynamics Radiation Etc. • Climate Change Science – Application of all sciences to the land, sea and atmosphere – Chemistry of the atmosphere – Atmosphere – Land interaction • Effect of Forests, trees, soil moisture on the atmosphere – Atmosphere – Ocean interaction • Winds • Fluid Dynamics • Thermodynamics Equations and Processes in Dynamic Computer Models Solves for/calculates and steps forward in time • Equations of motion • First law of thermodynamics • Physics of water vapor and clouds •Chemical processes in atmosphere • Land - atmosphere interactions Biological processes • Land - ocean interactions General Circulation Model Process • Equations of motion, First Law of Thermodynamics, etc., can be solved by numerical analysis • Solved for grid boxes around the globe – 300 to 500 km x 300 to 500 km • Solved at various height levels • Average value for various parameters (pressure, wind, humidity) solved for each box, each height level Parameterization • Some processes are not solved by equations, but are governed by the values of designated parameters • Calculation over a grid box gives an average for the grid box – Some processes are too small to be resolved • Representation of clouds is a particular problem – Average condition over a grid box may not be convective (necessary condition for cloud formation), but in reality some clouds form since part of the box may be convective. – One solution is to relate cloud formation to the humidity in the atmosphere (parameterization) – Leads to uncertainty in rainfall amounts Large Grids Required for GCMs • Vary from model to model • Capacity of computer would be overloaded if smaller grids were calculated over the globe – Exception is a Japanese 20 x 20 km GCM Regional Climate Models (RCM) • Dynamic climate models run over smaller region with smaller grids – 50 x 50 km or 25 x 25 km, for example • Uses the GCM as boundary conditions to drive the model • Give more details • Process of getting fine details is called downscaling GCM, RCM Downscaled and Observed Precip over England GCM RCM RCM Observations Statistical Models • Determine statistical relationships between: – what we want to predict or forecast • e.g. temperature and rainfall – large scale atmospheric parameters • e.g., pressure, winds, humidity • Can be used to downscale values of temperature and rainfall at a station in terms of values of large scale parameters obtained from GCMs Uncertainty, especially Precipitation, in Dynamic Models • Cannot replicate exactly all processes • Cannot simulate climate at every point – Grid boxes • Butterfly Effect – Initial conditions • Structure of models differ Uncertainty in Statistical Models • Uncertainty that the regression equations remain the same in the future climate. – However no surprizes are expected since the major driving forces are well understood, even if we cannot completely model them • Climate depends on too many changes in parameters, not all captured by regression equations • Butterfly effect The Science • Weather, Climate, Climate Variability and Climate Change – What can we predict? • How do we predict ?– Models – Model Limitations – Dealing with limitations • Dealing with uncertainties in climate change – Dealing with uncertainty in causes climate change – Dealing with limitations in models – Dealing with climate change scenarios • Sources of information – Predictions of climate variability – Scenarios of climate change How does climate change occur? I. Natural variations in solar radiation affect temperature changes How does climate change occur? II. Cooling • Natural blocking of the sun’s radiation – volcanic ash – Aerosols (dust) • Man made aerosols blocking out the sun’s radiation How does climate change occur? III. Natural greenhouse gases (CO2, water vapour, etc) in the atmosphere traps heat If there were no natural atmospheric greenhouse effect the temperature of the earth would be 30º C colder. IV. Since the industrial Revolution, Man-made Green House Gases have been added: • CO2 from fossil fuel power plants • N2O for automobile exhaust Water Vapour from airplane exhaust (very effective greenhouse gas) Methane, before and since Chlorofluro-carbons CFC’s How does climate change occur? V. Land use changes affect temperature and hydrological cycle Founded 1988 by the World Meteorological Organization (WMO) and the United Nations Environment Programme (UNEP) Working Group I assesses the scientific aspects of climate change. Working Group II assesses impacts, vulnerability and adaptation Working Group III assesses options for mitigating climate change. Fourth Assessment (AR4) 2007 Attribution: Comparisons of climate models and observations of global mean temperature Agree only when both natural and anthropogenic forcing are included IPCC 3rd assessment Attributing climate change regionally, 4th Assessment, to anthropogenic and natural causes Black line – observation 1900-2000 Red – all forcing (natural and man made) Blue – natural forcing Similarly for the rest of the world Bands give the range of model values IPCC Statement • From new estimates of the combined anthropogenic forcing due to greenhouse gases, aerosols and land surface changes, it is extremely likely (> 95% probability) that human activities have exerted a substantial net warming influence on climate since 1750. Dealing with limitations in the models • Use average of as many models as possible • Use different initial conditions with same model – Ensemble mean • Use different models with same initial conditions – 21 models used for IPCC 4th assessment – Get mean • Use other supporting material Need supporting evidence to complement model results – Strong Physical basis or explanation • Is there a physical basis for temperature increase – Science of Global Warming is sound • Is there a physical basis for precipitation increase or decrease – Agreement of as many of the following • Observed historical trends in climate • General Circulation Models of Climate • Downscaling of global models – Regional climate models (dynamic) – Statistical downscaling Expressing Uncertainties • Probability statement, e.g., in terms of probability distribution functions • Statistical distributions, more easily undestood • Likelihood statements – Very likely (> 90% probability) – Likely (> 66% probability) – Extremely likely (> 95% probability) Table 11.1, Chapter 11, IPCC Working Group 1, 4th Assessment: Changes (2080s vs. 1980s) in Caribbean temperature and precipitation from a set of 21 global models for the A1B scenario. (All regions of world given) Methodology used for 4th IPCC Assessment Averaged Average of GCM results, not downscaled Outputs from several GCMs Output from one GCM Regional Model based on one GCM SDSM Output from one GCM RCM Downscaled Scenario SDSM Downscaled Scenario based on one GCM What we would like to see for 5th Assessment Averaged Downscale scenario based on several RCM’s RCM Outputs using several GCM’s Averaged SDSM outputs using several GCMs Downscale scenario based on several SDSMs Climate Change Scenarios • Besides inherent uncertainties in models there are uncertainties in the changes in the main driving forces changing climate • Not possible to accurately predict the changes in the main driving forces in climate change • Instead use scenarios of plausible futures – Special Report Emission Scenario (SRES) Special Report on Emission Scenarios (SRES) schematic and storyline summary Some SRES Scenarios for 5th Assessment % Change in emission relative to 1990 IPCC emission scenarios +50% Developing countries 0% (1990) -50% World as a whole Developed countries 2020 2050 Which scenarios to use? • It is up to you – Justify use • A1B is in-between high and low emission and is used by IPCC for illustration • Always quote emissison scenario used Final Word on Modelling & Scenarios • Recall the state of the art – Exact Predictions not possible • What is important in using GCMs – The sign of the change (increasing or decreasing) – The agreement among models and scenarios about increasing or decreasing trends • Use supporting evidence if possible – Observations – RCMs – Statistical downscaling • Use statistical distribution (mean, median, min, max, 25%, 50% and 75% quartile) if multi-model values are available • Use a range of scenarios if necessary, or use a scenario between high and low, e.g., A1B More Information • Your Regional Climate Centres – May be able to give downscaled results (RCM or Statistical) • Your National Communication to UNFCCC • Climate Variability – International Research Institute for Climate and Society (http://portal.iri.columbia.edu) • Climate forecast • El Nino forecast • Climate Change – IPCC Working Group 1 Report • Climate Change 2007, Chapter 11, Regional Projections (http://www.ipcc.ch/about/workinggroup1.htm) • GCM results mainly – Climate Research Unit, CRU (www.cru.uea.ac.uk/ ) Another Climate Change Scenario Tool: MAGICC/SCENGEN www.cgd.ucar.edu/cas/wigley/magicc/ Greenhouse gas emissions MAGICC Global mean temperature change SCENGEN Regional Scenarios of Climate Change GCM patterns Climatologies Applications - Need to know: • Impacts of Climate Change based on scenario – Example of Jamaica • Vulnerability to Climate Change – Example of Jamaica • Adaptation to Climate Change – Example of Jamaica • UNDP VRA • Tools for vulnerability and adaptation assessment • More information Scenarios Available • • • • • Temperature Precipitation Evapotranspiration Run-off Soil moisture Best Estimates based on RCM, SDSM and GCMs – Jamaica’s 2nd National Communication Temperature 2050s 2080s 1.05 degree C 2.45 degrees C Changes from 1961-1990 average, based on Average of A2 and B2 scenarios 2050s 2080s % change from average of 19611990 values Precipitation: Region 1 Region 2 Region 3 0 -10 -10 -30 -30 -20 No estimate No estimate -40 -20 Region 5 Region 6 -10 -10 -40 -30 Region 7 -10 -30 Region 4: Portland St. Thomas 5 1 6 7 2 3 4 Wet and Dry Spells • Wet day %: The percentage of days that exceed a wet-day threshold limit of 0.3 mm • Mean wet spell length: The average length of continuous wet-days with amounts greater than or equal to the wet-day threshold • Mean dry spell length: The average length of continuous dry-days with amounts less than the wet-day threshold • Obtained from SDSM – Wet day % and Mean wet spell length decreases – Mean dry spell length increases 2050s 2080s Wet-day% -24 -44 Wet spell length -7 -10 Dry spell length 32 80 Wet-day% -2 -7 Wet spell length -3 -6 Dry spell length 1 4 % changes: Region 5: Region 3: Best Estimate other parameters • By the end of the century sea levels are also expected to rise by 0.23 to 0.47 metres under an A1B scenario, but the models exclude future rapid dynamical changes in ice flow. – A recent study suggests that the rate of rise may actually double (Science Daily, Feb. 12, 2008). • Evaporation is also projected to increase by approximately 0.3 mm/day over the sea. As noted before, the changes over land may be less. • One model has projected more intense hurricanes in the Atlantic. Impacts on Jamaica • • • • • • • • Sea level rise Spread of diseases like dengue Bleaching and death of coral reefs Possible more intense hurricanes Water resource shortfall Agricultural drought Reduction in Tourist arrival Depletion of coastal resources – Death, Migration of fishes to cooler waters • Endangered human settlement • Possible extinction of some species in biodiversity Danger of sea level rise Dengue • Previous epidemiology research showed dengue transmission linked to higher temperatures – 2ºC rise leads to 3-fold increase in transmission • Under average of A2 and B2 scenario temperature in Jamaica will rise 2.45ºC – Expect 3-fold increase in transmission Applications • Impacts of Climate Change based on scenario – Example of Jamaica • Vulnerability to Climate Change – Example of Jamaica • Adaptation to Climate Change – Example of Jamaica • UNDP VRA • Tools for vulnerability and adaptation assessment • More information Vulnerability to Dengue Some Vulnerability Indicators for Health Based on indicators identified in the literature: • Immunity • Knowledge of symptoms and vectors of disease. • Use of protective measures. • Measures of resilience and stress – education, employment, income, female household headship, room densities, coping strategies, integration into the community. • Source of water, water storage. • Distance from the nearest health facility Characteristics of the Most and Least vulnerable groups Characteristics Group 5 (%) Group 1 (%) 1.Female Household headship 94 40 2.Unskilled 88 13 3.Primary education or none. 77 7 4.Minimum wage or less 57 0 5.Not Coping 88 0 6.Water storage in drum 88 20 7. Clinic distance 64 13 8. No protection 88 53 9.No knowledge of dengue transmission 94 7 10. No social integration 53 47 11. No knowledge of dengue symptoms 88 13 12. No personal acceptance for dengue control 77 7 Community with highest proportion Johns Hall -53% Granville/Pitfour – 73% Applications • Impacts of Climate Change based on scenario – Example of Jamaica • Vulnerability to Climate Change – Example of Jamaica • Adaptation to Climate Change – Example of Jamaica • UNDP VRA • Tools for vulnerability and adaptation assessment • More information Adaptation Strategies Matrix For Dengue Table 3. Adaptation Strategies Matrix (Continued) Measures Cost Effectiveness Social Acceptability Friendly for Environment Neighbor Effects Technical Challenges and SocioEconomic Change Score Long Term 1. Surveillance for vector or larval/pupal control and environmental sanitation H M M M L L 16 2. Community education and involvement M H H H H M 26 3. Chemical control H M M L M L 16 4. Biological control H H M H M M 20 5. Adult Control - Physical-mesh windows - Personal protection M M H M H M H M H M H H 24 16 6. Use of physical control-lowcost secure drums H H M H H H 20 7. Granting security of tenure to squatters H H H M H H 20 8. Early warning system M H H H H H 24 Columns 2 through 7 indicate assessment criteria. Column 8 gives a composite score based on the ranking in columns 2–7. Assessments are on the basis of high, medium, and low. In compiling the composite score, High is given a score of 5, medium a score of 3 and low a score of 1, except for columns 2 and 7, where the scoring allocation is reversed. The maximum possible score is 30. Expert Judgment • Expert judgment is an approach for soliciting informed opinions from individuals with particular expertise. • This approach is used to obtain a rapid assessment of the state of knowledge about a particular aspect of climate change. • It is frequently used in a panel format, aggregating opinions to cover a broad range of issues regarding a topic. • Expert judgment is frequently used to produce position papers on issues requiring policy responses and is integral to most other decision-making tools. • This approach is most useful either in conjunction with a full research study or when there is insufficient time to undertake a full study. Applications • Impacts of Climate Change based on scenario – Example of Jamaica • Vulnerability to Climate Change – Example of Jamaica • Adaptation to Climate Change – Example of Jamaica • UNDP VRA • Tools for vulnerability and adaptation assessment • More information UNDP Vulnerability Reduction Assessment (VRA) • Use Expert Judgement here • Local experts know what the community needs to know – Effects of flood and drought, storm surge, increased temperatures, etc • Get climate change scenarios from sources above – Be aware of the limitations How does the VRA Work? •The VRA is composed of four indicators, based on the UNDP Adaptation Policy Framework approach. •These four indicators become four questions – tailored to the community and posed in community meetings before, during and after project implementation. •VRA meetings yield quantitative and qualitative data: • Useful in aggregating and assessing programmatic impact • Useful in guiding project design and management • Useful in capturing lessons learned 67 The VRA in theory APF Step VRA Indicator VRA Question In these examples, we consider the case of a community facing increasing drought risks Assessing current vulnerability 1. Vulnerability of livelihood/welfare to existing climate change and/or climate variability. Example: What happens when there is drought? How does this affect you and your community? Assessing future climate risks 2. Vulnerability of livelihood/welfare to developing climate change risks. Example: What would happen if drought was twice as frequent? How would this affect you and your community? Formulating an adaptation strategy 3. Magnitude of barriers (institutional, policy, technological, financial, etc) barriers to adaptation. Example: What stands in the way of adapting to increasing drought? What means do you or your community have to manage events occurring more frequently? Continuing the adaptation process 4. Ability and willingness of the community to sustain the project intervention Example: Rate your confidence that the (project activity) will continue after the project period. 68 Applications • Impacts of Climate Change based on scenario – Example of Jamaica • Vulnerability to Climate Change – Example of Jamaica • Adaptation to Climate Change – Example of Jamaica • UNDP VRA • Tools for vulnerability and adaptation assessment • More information Vulnerability Methods Compendium on methods and tools to evaluate impacts of, and vulnerability and adaptation to, climate change (Final, 1/2/2005) http://ncsp.undp.org/report_detail.cfm?Projectid=151 Livelihood Sensitivity Exercise • Livelihood sensitivity mapping exercise is a means of integrating existing knowledge of climate vulnerability with livelihood analysis. • It commonly involves stakeholder participation. • The exercise involves developing a matrix with three blocks of rows — beginning with ecosystem services (e.g., soil moisture), then livelihood activities (such as crop production) and finally a synthesis based on livelihoods themselves. • Climatic stresses (e.g., drought) are listed as columns. • Users then fill in the cells — rating the sensitivity of ecosystem services, activities and livelihoods to a range of hazards and stresses. • Drought Soil Moisture Negative Crop Production Negative Livelihoods affected Farmer Shop Keeper House holder Flood Temperature Increases Vulnerability Indices • Vulnerability is defined by the IPCC as the combination of sensitivity to climatic variations, the probability of adverse climate change, and adaptive capacity. • For each of these components of vulnerability, formal indices can be constructed and combined. – c/o dengue vulnerability exercise Adaptation Methods Adaptation Decision Matrix (ADM) • Multicriteria assessment techniques to evaluate the relative effectiveness and costs of adaptation options. • Users are asked to specify criteria that will be used to evaluate options and weight the criteria. • Users are asked to give a score (e.g., 0 to 5) on how well each criterion is met under a particular scenario for each option. • The scoring can be based on detailed analysis or expert judgment. • Scores can be multiplied by weights and summed up to estimate which options best meet the criteria. • Detailed research and analysis or expert judgement are needed to provide a basis for the evaluation; otherwise the scoring may be mainly subjective. • c/o dengue adaptation exercise More Information • Regional/National Centres for Risk Reduction • Country’s National Communication to UNFCCC • National adaptation programmes of action (NAPAs) submitted to UNFCCC • IPCC Working Group 2 (http://www.ipcc.ch/about/workinggroup2.htm)