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Economic Vulnerability under Climate Change : With an Agricultural Emphasis Energy Bruce A. McCarl Distinguished Professor of Agricultural Economics Texas A&M University [email protected] http://agecon2.tamu.edu/people/faculty/mccarl-bruce/ Climate Change Adaptation Climate Change Mitigation Climate Change Effects Ramblings from an Ongoing and Never Ending Effort Presented at the Climate Change Class, March 2003 Economic Issues in Climate Change • Assessment of Impact • Externality and Market Failure • Mitigation Policy • Cost Benefit Analysis Economic Issues – Assessment of Impact • Measuring Economic Value • Income Distribution • Inter-generational Equity Basic Setting D S P r i c e Quantity Basic Setting Sc D S P r i c e a b c d f e g CS0 =a+b+d+f PS0 =c+e+g TSW0 =a+b+c+d+e+g CSc =a PSc = b+c TSWc =a+b+c ∆CSc =-b-d-f PSc = b-e-g TSWc =-d-e-f-g Quantity Basic Setting between regions D Sregion1 Sregion2 P r i c e demand region1 Quantity region2 Basic Setting between regions D SCCregion1 P r i c e Sregion1 Sregion2 SCCregion2 demand region1 Quantity region2 Basic Setting between regions No Climate change Sregion2 Sregion1 D P r i c e ED region2 region1 Quantity Basic Setting between regions No Climate change D P r i c e Sregion2 Sregion1 ED P Qs1 Qd Qs2 region2 region1 Quantity Basic Setting between regions No Climate change SCCregion1 D P r i c e Sregion2 Sregion1 SCCregion2 ED Region 1 loses mkt share and produces less P PCC Region 2 gains mkt share and produces more QCC QCCs1 s1 Qs1 region1 Qd QCCd QCCs2 Qs2 region2 Quantity Consumers gain All producers gain (I think) Economic Issues – Cost/Benefit Analysis • Extent of Damages • Uncertainties in Impact Assessment • Assumptions on scope of impact • Economic approach to estimating welfare Would Climate Change Hurt/Benefit? Assessment Methodology - Summary Steps • Identify sectors and physical effects • Determine spatial and time scales • Develop scenario regarding non-climatic factors • Obtain GCM projections • Chose analytical framework (econ theory foundation and models to be used) and adapt or estimate models • Assess physical impact of GCM projections • Make assumptions about unmodeled phenomena • Incorporate physical impact into economic models • Incorporate data on possible adaptations to climate change • Do analysis including sensitivity analysis Scope of Assessment • Identify sectors and physical effects – The question relates to the choice of sector of the economy for impact assessment – agriculture, water, etc. Can this really be treated independently? • Economic and geographic scale – Firm level or sector level assessment, regional or national or international • Time frame – Climate change is a long-term phenomenon that requires analysts to decide the time frame of analysis, which would determine impact assessment results – Dynamic Vs Static Analysis Scenario Development • Non-climatic Scenarios • Climate change Scenarios • Time frame and uncertainty Degree of climate change - RCPs Representative Concentration Pathway Scenarios Representative Concentration Pathway (RCP) scenarios specify watts of climate forcing per square meter and reflect concentrations and corresponding emissions, but are not directly based on socio-economic storylines. Representative Concentration Pathways (RCPs) Scenarios that include time series of emissions and concentrations of the full suite of greenhouse gases and aerosols and chemically active gases, as well as land use/land cover. The word representative signifies that each RCP provides only one of many possible scenarios that would lead to the specific radiative forcing characteristics. Degree of climate change - RCPs Four RCPs were used in AR5 RCP2.6 Radiative forcing (RF) peaks at 3 Watts per square meter by 2010-2020, declining thereafter. RCP4.5 RF is stabilized at 4.5 Wm–2 after 2100 with emissions peak around 2040, then decline. RCP6.0 RF stabilized at 6.0 Wm– 2 after 2100 with emissions peaking around 2080, then decline. RCP8.5 RF reaches greater than 8.5 Wm–2 by 2100 with emissions rising throughout the 21st century. From WGI AR5 Box 1.1 Yet more could happen What could happen What we have seen so far Figure 1: Global temperature change and uncertainty. From Robustness and uncertainties in the new CMIP5 climate model projections Reto Knutti & Jan Sedláček, Nature Climate Change 3, 369–373 (2013) doi:10.1038/nclimate1716, Non Climatic - Socio-Economic Scenarios • Before AR5 we had what was called the SRES scenarios which were based on populations, income, technology • As of AR5 we switched to RCPS which are purely GHG concentration based. But a group has developed shared socioeconomic pathways (SSPS) to accompany them O’Neill, Brian C., et al. "A new scenario framework for climate change research: the concept of shared socioeconomic pathways." Climatic Change 122.3 (2014): 387-400. Riahi, Keywan, et al. "The shared socioeconomic pathways and their energy, land use, and greenhouse gas emissions implications: an overview." Global Environmental Change (2016). Van Vuuren, Detlef P., et al. "A new scenario framework for climate change research: scenario matrix architecture." Climatic Change 122.3 (2014): 373-386. Non Climatic - Socio-Economic Scenarios Socio-economic pathways describe the drivers of how the future might unfold in terms of population growth, governance efficiency, inequality across and within countries, socio-economic developments, institutional factors, technology change, and environmental conditions Fig. 1. Schematic illustration of main steps in developing the SSPs, including the narratives, socioeconomic scenario drivers (basic SSP elements), and SSP baseline and mitigation scenarios. Riahi, Keywan, et al. "The shared socioeconomic pathways and their energy, land use, and greenhouse gas emissions implications: an overview." Global Environmental Change (2016). Non Climatic SocioEconomic Scenarios From O’Neill, Brian C., et al. "A new scenario framework for climate change research: the concept of shared socioeconomic pathways." Climatic Change 122.3 (2014): 387-400. Non Climatic - Socio-Economic Scenarios Matrix from Van Vuuren, Detlef P., et al. "A new scenario framework for climate change research: scenario matrix architecture." Climati c Change 122.3 (2014): 373-386. Not a One to one mapping For a discussion see the special issue on this Nakicenovic, Nebojsa, Robert J. Lempert, and Anthony C. Janetos. "A framework for the development of new socio-economic scenarios for climate change research: introductory essay." Climatic Change 122.3 (2014): 351-361 Non climate scenarios Include at least two scenarios "baseline" or "reference" scenario and "mitigation scenario" Assumptions e.g. economic growth, technology, etc. Figure TS.1: Qualitative directions of SRES scenarios for different indicators Source: CC 2001 mitigation p. 24 at http://www.grida.no/climate/ipcc_tar/wg3/015.htm#24 Obtain GCMs Projections • Data Distribution Center of IPCC maintains GCM projections (http://ipcc-ddc.cru.uea.ac.uk/) • Decide GCM scenarios whose projections you would use (Ref. Guide to GCM Scenarios - DDC) • Visualization pages /Downloadable files • Chose GCMs that have better calibrated base climate for the assessment country/region • Compuate percentage changes in temp. and precipt for a grid and apply to weather stations • Choose more than one GCMs for sensitivity analysis GCM - Geographic Scale • Circa 2001 • HADCM: 3.75 x 2. 5 deg. (96X72 grids) • CGCM: 3.75 x 3.75 deg. (96*48 grids) • GDFL: 7.5 x 4.5 deg. (48*40 grids) • Texas was covered by 4 grids • Today • GCMs depict the climate using a three dimensional grid over the globe (see below), typically having a horizontal resolution of between 250 and 600 km (2.25-5.4 degrees), 10 to 20 vertical layers in the atmosphere and sometimes as many as 30 layers in the oceans. Time scale What is projected Hotter Choose Analytical Framework • Spatial Analogue/current data • Structural Approach Analytical Framework - Spatial Analogue • Ricardian Land Rent Approach • Profit Function Approach • In both cases EconValue = f(controls,climate) What is Spatial Analogue? • Spatial analogues are regions which today have a climate analogous to that anticipated in the study region in the future • Predict future changes • Used to infer how changes in an environmental condition or input will change yields or another measure of interest • Need information from a range of conditions Adams, Richard A. "On the search for the correct economic assessment method." Climatic change 41.3 (1999): 363-370. What is Spatial Analogue? (Example) • What would happen if the climate warmed? – Look at warmer regions to infer how cooler regions would adapt if warmed • Assumption: Farmers in the cooler region will be able to adapt the warmer region practices • Uses statistical/econometric methods – Investigate change in spatial patterns of crop production Adams, Richard A. "On the search for the correct economic assessment method." Climatic change 41.3 (1999): 363-370. Limitations • Farmers in one region may not be willing or able to adapt in the same way that a farmer in a different region can. – Cool to warm climate • Magnitude of CO2 level changes create a new growing environment – If changes larger than what is seen previously, we cannot accurately predict effect – Multiple changes simultaneously can lead to different outcomes for adaptation practices Limitations • Ignores changes in input and output prices that may result from non-climate change – May impact adaptation decisions • Range restriction • Requires a data set containing multiple regions over time – May not be available in developing countries Application : McCarl, Villavicencio and Wu (2008) • Investigates how crop yield and variance effected by climate variables – Examine historical crop yield stationarity variability – Allow both mean and variance to be altered – Evaluate stationarity under climate change projection scenarios • Uses Just-Pope production function – Estimate how changes in climate variables influence the mean and variance of crop yield – 𝑦 = 𝑓 𝑥 + ℎ(𝑥)𝜀 – 𝑓 𝑥 is an average production function – ℎ2(𝑥) accounts for variable dependent heteroskedasticity McCarl, Bruce A., Xavier Villavicencio, and Ximing Wu. "Climate change and future analysis: is stationarity dying?.“ American Journal of Agricultural Economics 90.5 (2008): 1241-1247. Application: McCarl, Villavicencio and Wu (2008) • Used feasible generalized least squares (FGLS) – Years 1960-2007 for each state • Used fixed effects model – Includes state dummies for state specific effects – Includes interactions between climate and region • Changes might not be the same in all regions Application: McCarl, Villavicencio and Wu (2008) • Simulate climate change impacts – Use above estimated parameters – Project average yields and variability using climate projections using climate models and 10% increase in variability – Projections for 2030 • Yield increases vary depending on the region Application: McCarl, Villavicencio and Wu (2008) • Look at stationarity and crop yields – Examine historical crop yield stationarity variability – Allow both mean and variance to be altered – Evaluate stationarity under climate change projection scenarios • Similar to study by Chen and McCarl (2001) – Uses Just-Pope production function • Spatial Analogue: – Utilize the heterogeneity between regions to estimate changes in yields Analytical Framework - Structural App. • Modeling biophysical and physical sensitivity to climate change • Modeling demand/supply sensitivity to unmodeled climate sensitivity • Integrated Assessment Modeling Appraisal Approaches • Physical assessments that only consider changes in physical character (e.g. changes in yield) • Changes in cost as estimated in Chen and McCarl (Land rent, and Profit) • Welfare estimates (market and nonmarket) Selected Assessments Fischer et al. (1996) Mendelsohn, Morrison, and Andronova (2000) U.S. National Assessment (Adams et al.) Assessment - Fischer et al. (1996) • Scope: Global (112 sites from 18 countries) • Sector: Food production • Timeframe: 2030, 2060 • Socio-Econ Scenario: Pop. and Tech (Ag.) • GCMs: GISS, GFDL, and HADCM models • Assess. Meth.: Structural approach (Ag.) • Adaptations: Two levels of adaptation • No major global loss in global production of food • Marked regional differences in impacts Assessment - Mendelsohn, Morrison, and Andronova (2000) • Global (184 countries) • Agriculture, Forestry, and Coastal Areas • Timeframe: 2060 • Socio-Econ Scenario: Pop. and GDP growth • GCMs: Assumed 2 deg. temp. increase • Assess. Meth.: Spatial Analogue • Adaptations: Implicitly imbeded in model results • $0.278 bil. loss, with $215 bil. from ag. • OECD gains $69 bil., while rest of world loses $348 bil. U.S. National Assessment • Scope: National • Sectors: Agri., Forest, Water, Coastal Area, & Health • Timeframe: 2060 • Socio-Econ Scenario: Only climate changed (Ag.) • GCMs: HADCM and CGCM • Assess. Meth.: Structural approach • Adaptations: Planting schedule, tech., market • $0.5 bil. loss, with $12.5 bil. gain • Gains from trade Emerging or Untreated Issues in Assessment • Probability and severity of extreme events • Valuation of non-market impacts (loss of life and bio-diversity) • Distributional issues (weights) • Aggregation and extrapolation from limited geographic studies hides heterogeneity of responses to climate change • How can we alter policy/research innovation investment to achieve a more desirable mix of CC effects Plan of Presentation Discuss weakly coupled modeling system I use Show some results Discuss challenges and needs that arise in use and in biophysical/economic modeling endeavor Broad Targeted areas in invitation Linking spatial scales Dealing with temporal issues Reliably incorporating environ. services Challenges in modeling new landscape types industrial process logistics Simulator Bundle Crop and Env Simulators Livestock Simulators Pest Regressions GREET Runoff Simulators GIS FASOMGHG “System” (and friends/ancestors) Ag Census NRI State Annual Crop Acres FASOMGHG FASOM Transport simulation GCMs Non ag Resource demand IPCC Scenarios GHG Implications Model Regional Crop Mix input use Env. loads Regionalizing Model County Crop Mix & percent loads Water Quality Model Simulator Component Functions Simulator Bundle Crop and Env Simulators Livestock Simulators Pest Regressions GREET Runoff Simulators GIS Crop and Environmental simulators Why – crop yield, input use, env emissions, grass, energy crops What – yield, fert, water, variability, runoff, erosion Components – EPIC, CENTURY, CERES, Blaney-Criddle Example – USNA, Reilly et al Livestock Simulators Transport simulation Non ag Resource demand GCMs IPCC Scenarios Why – performance, feed use, disease spread What – yield – meat, milk, young, land use, feed need, disease spread Components – PHYGROW, DADS, RIFT, AUSPREAD Example – USNA, High Plains Simulator Bundle Crop and Env Simulators Simulator Component Functions Livestock Simulators Pest regressions Pest Regressions GREET Runoff Simulators GIS Why – pest damages and climate What – pest cost increases w climate changes Components – regression from USDA data Example – USNA, Reilly et al, Chen and McCarl GREET Transport simulation Non ag Resource demand GCMs IPCC Scenarios Why – GHG LCA data What – GHGs from input manufacture, fuel use, processing Components – GREET, FASOM GHG acct Example – Adams et al, Murray et al, McCarl, Argonne Simulator Bundle Crop and Env Simulators Livestock Simulators Pest Regressions GREET Runoff Simulators GIS Transport simulation Non ag Resource demand GCMs IPCC Scenarios Simulator Component Functions Runoff simulators Why – water availability under climate/ El Nino What – water changes as climate changes Components – SWAT, USGS, regressions from water data Example – USNA, Reilly et al, Chen, Gillig and McCarl GIS Why – Producer location, crop suitability What – Suitable land, herd location Components – Misc data Example – Ward et al High plains Simulator Bundle Crop and Env Simulators Simulator Component Functions Livestock Simulators Pest Regressions GREET Runoff Simulators GIS Transport simulation Non ag Resource demand GCMs IPCC Scenarios Transport simulators Why – Hauling distance and GHGs What – Cost and hauling distance Components – Algebraic model Example – McCarl, Annals of OR Non Ag Resource demand Why – Water competition, land conversion What – Water demand, Land demand, Water quality demand Components – Regressions, projections Example – Chen, Gillig and McCarl, Adams et al Simulator Bundle Crop and Env Simulators Simulator Component Functions Livestock Simulators GCMs Pest Regressions GREET Runoff Simulators GIS Why – Climate conditions under GHGs What – Temperature, Rainfall, variability Components – IPCC Suite Example – IPCC 2007 IPCC Scenarios Transport simulation Non ag Resource demand GCMs IPCC Scenarios Why – Future of society and emissions What – Population, GHG emissions, Income Components – IPCC SRES Example – IPCC 2007 Output Simulator Component Functions Water quality simulator Why – Water implications of land use What – Chemistry, erosion load Components – SWAT, NWPCAM, Regressions Example – Pattanayak st al, Atwood et al GHG implications simulator Why – GHG implications, Mitigation response What – Net GHG effects Ag Census Components – GHG component of FASOM StateNRI Annual Crop Acreage Example – Murray et al FASOMGHG FASOM GHG Implications Model Regional Crop Mix input use Env loads Regionalizing Model County Crop Mix & percent loads Water Quality Model Economic Component Functions FASOM Why – Land use change, market effects, Welfare What – Acres, exports, prices, mitigation choice, Components – Forest and Ag simulator Example – Adams et al, Murray et al Regionalizing Model Why – Link to localized env models What – Land use by county Components Humus model, multiple objectives Example – Pattanayak et al, Atwood et al FASOM GHG Implications Model Regional Crop Mix input use Env loads Ag Census NRI State Annual Crop Acreage Regionalizing Model County Crop Mix and percent loads Water Quality Model Simulator Component Functions Others Forest simulators Fire simulators Processing plant models Regional Logistics International economics Economy wide models History of McCarl Climate Change Assessments 1987 – Corn Soy, Wheat no adaptation, no irrigation, no CO2 1992 – Corn, Soy, Wheat, no adaptation, irrigation, no CO2 1995 – Corn Soy, Wheat CO2, irrigation calendar adaptation 1999 – Corn, Soy, Wheat, cotton, sorghum, tomato, potato, CO2, irrigation, calendar adaptation, crop mix shift, livestock, grass, input usage, water available 2001 -- Corn, Soy, Wheat, cotton, sorghum, tomato, potato, CO2, irrigation, calendar adaptation, crop mix shift, livestock, grass, input usage, pest, extreme event, forestry Cost continually went down now beneficial. Background - Climate Change Assessment Prior Work on Agriculture EPA several iterations (1986, 1991, 1995) EPRI Study (1999) National Assessment (2000-2001) - Ag only - Forest and Ag At first people thought the sky was falling ! Methodology – Climate Change Assessment Climate Scenarios – GCMs Crop Simulation – regional crop yields (dry and irrigated) regional irrigated crop water use Hydrologic simulation – irrigation water supply, Expert opinion – livestock performance, Range and hay simulation and calculation -livestock pasture usage, animal unit month grazing supply Other studies – international supply and demand Regression – pesticide usage Economics – ASM sector model Percentage Changes in Crop Yield Canadian 2030 2090 Hadley 2030 2090 Cotton Dry Cotton Irr +10% +45% +104% +113% +34% +34% +79% +79% Corn Dry Corn Irr +19% - 1% + 23% - 2% +17% + 0% +34% + 7% Soybean Dry Soybean Irr +16% +16% + 21% + 27% +26% +17% +60% +34% Wheat Dry Wheat Irr -16% - 4% +104% - 6% +21% + 5% +55% +13% Tomato Irr Oranges Irr Hay Dry Hay Irr -10% +32% -10% + 3% - 22% + 99% - 1% + 2% - 4% +40% + 2% +23% - 9% +69% +15% +24% Some Technical Findings - Climate Change Assessment Using crop simulations climate change has been found to alter dryland and irrigated crop yields as well as irrigation water use. Crop sensitivity varies by crop, and location as well as the magnitude of warming, the direction and magnitude of precipitation change. Crops are differentially sensitive. Full range of cropping possibilities needs to be considered when assessing climate change. Early US studies limited to corn, soybeans and wheat, in contrast to later studies which included many more heat tolerant crops. Including cotton, sorghum etc changed sign of total effect. CO2 fertilization effect is important factor. Inclusion significantly raises the estimates of climate effected yields of many crops. It is however controversial. Yield effects vary latitudinally across the world. Yields generally improve in the higher latitudes,. On the other hand there are estimates that there will be net reductions in crop yields in warmer, low latitude areas and semi-arid areas. Some Technical Findings - Climate Change Assessment Yield changes can be reduced or enhanced by adaptations made by producers. Farmers may adapt by changing planting dates, substituting cultivars or crops, changing irrigation practices, and changing land allocations to crop production, pasture, and other uses. Livestock effects can be significant. Adjustments also expected in pasture requirements and range productivity. Irrigation water availability is an issue. There is also a need to develop estimates on how nonagricultural water use might change in the face of climate change. Some technical findings - Climate Change Assessment How do you do it? Zh Max P dh h s.t. Z h Xi dZ h - P X si i 0 i dX i 0 Zh - C Q a Q b Q h k k 0 for all h i k k 0 for all i j k k Yj k - Xi k k Zh , Xi , Q k 0 for all j and for all i, h, k and 2030 U.S. Effects of Climate Change Water Use Irrig Land Dry Land Crop land Crop Price Crop Prod Exports Lvst Price Producer income Cons Surplus Foreign Surp Total Welfare TX Mun Water Use Canadian Hadley - 4% + 7% -11% - 9% -11% + 9% +25% 0% -10% +0.3% +0.8% +0.5 bill$ +2% -16% - 7% - 5% - 6% -15% +11% +26% - 4% - 8% +0.6% +0.5% +5.2 bill$ +3% 2030 Northeast Lakestates Cornbelt Northplains Applachia Southeast Delta South Plains Mountain Pacific Regional Effects Canadian Hadley + 3 +63 +16 - 2 -24 -60 - 6 -24 +30 +26 + 4 +43 +14 +18 -25 -15 +25 - 7 +39 +47 Some Economic Findings - Climate Change Assessment Climate change is not expected to greatly alter global food production or cause a global economic disaster in food production. This occurs because the climatic alteration is less that the range of temperatures now experienced across agriculture. Impacts on regional food supplies in low latitude regions could amount to large changes in productive capacity and significant economic hardship. Climate induced productivity changes act in opposite directions for consumers and producers. Either less is produced and consumers' pay higher prices with producers making more money or more is produced with opposite effect. Climate change influences prices, acreage and market signals. Marketlevel supply increases or decreases induce behavioral responses that mitigate impacts projected by biophysical changes alone. Some Economic Findings - Climate Change Assessment Welfare and productivity estimates were negative in earlier studies but have tended to become less so or beneficial. GCMs now include aerosols, and other improvements yielding milder temperature and precipitation estimates and crop models have enhanced CO2 fertilization effects. Likely shift in comparative advantage of agricultural production regions. Yield changes will be modified by adaptations made by farmers, consumers, government agencies, and other institutions. Welfare effects are sensitive to assumed CO2 fertilization effect. Pests problems may be exacerbated. Climate change is likely to increase yield variability. Extreme Events Timmermann et al suggested climatic change would alter ENSO frequency. Their results imply El Nino and La Nina increase in probability, Neutral decreases. Strength of these events increases probability of event occurrence. El Nino La Nina Neutral From Today To under IPPC - IS92a 0.238 0.250 0.512 0.351 0.310 0.351 with stronger events Chen, C. C., B. A. McCarl, and R.M. Adams, "Economic Implications of Potential Climate Change Induced ENSO Frequency and Strength Shifts", Climatic Change, 49, 147-159, 2001. Extreme Events No ENSO Reaction Current Prob 1458947 New Probabilities 1458533 New Prob and Strength [-414] 1457939 [-1008] No Reaction 1459400 (453) 1459077 (544) [-323] 1458495 (556) [-905] Agriculture loses - $323 - $414 mill under freq shift under freq and strength $905 - $1,008 million Variability goes down Some value of producer ENSO reaction becomes larger but does not offset Losses as big as effects of climate change on the mean Chen, C. C., B. A. McCarl, and R.M. Adams, "Economic Implications of Potential Climate Change Induced ENSO Frequency and Strength Shifts", Climatic Change, 49, 147-159, 2001. Climate Effects on Yield Variability Climate change alters yields and yield variability. Did a statistical analysis of data from 63 regions over 25 years on how changes in temperature and precipitation effect mean and variance. Elasticity of effects on mean: Precipitation Corn Cotton Sorghum Soybeans Wheat -1.4461 -0.0212 0.4802 0.8194 -1.6473 Temperature 0.8923 -3.5800 -2.5633 0.0586 5.0875 McCarl, B.A., X. Villavicencio, and X.M. Wu, "Climate Change and Future Analysis: Is Stationarity Dying", American Journal of Agricultural Economics, Volume 90, Issue 5, 1242-1247, 2008. Climate Effects on Yield Variability Climate Effects on Pests Impacts of rainfall on total pesticide usage cost for corn, cotton, soybeans and wheat are positive. mixed effect of temperature. % Change in Pesticide Cost for a % Change in Climate Precipitation CORN Temperature -0.0292 0.2284 0.3100 0.6607 POTATOES -0.0777 0.2998 SOYBEANS -0.0435 -0.1042 COTTON WHEAT -1.1579 Chen, C.C. and B.A. McCarl, "Pesticide Usage as Influenced by Climate: A Statistical Investigation", Climatic Change, 50, 475-487, 2001. 1.8678 Methodology - Climate Change Assessment Climate change can have regional effects and water effects. Here we look at a regional water scarce economy -- Edwards Aquifer Edwards Kerr Kendall Real Bandera San Antonio Springs Recharge zone of the EA region Kinney Uvalde Medina Climate Scenarios – GCMs Crop Simulation /Blaney Criddle – regional crop yields (dry and irrigated) regional irrigated crop water use Regression – recharge water supply M&I demand shift when hotter (Griffin and Chang) Other studies – national prices (USGCRP National Assessment) Economics – EDSIM sector model Climate Change Edwards Aquifer Slightly neg welfare result in San Antonio region but strong neg on the agricultural sector. Welfare in the nonagricultural sector is only marginally reduced by the climatic change and value of permits rises dramatically. Agricultural water usage declines while nonagricultural water use increases. Environmentally, springflow decreases. Maintaining ecology becomes substantially more expensive. Chen,C. C., D. Gillig and B. A. McCarl, "Effects of Climatic Change on a Water Dependent Regional Economy: A Study of the Texas Edwards Aquifer", Climatic Change, 49, 397-409, 2001. EA Regional Results under Alternative Climate Change Scenarios Climate Scenario HAD2030 HAD2090 CCC2030 CCC2090 Variable Units Base ----------- % change from Base Scenario ---------- Ag Water Use 1000 af 150.05 -0.89 -2.4 -1.35 -4.15 M&I Water Use 1000 af 249.72 0.63 1.54 0.9 2.59 Total Water Use 1000 af 399.77 0.06 0.06 0.06 0.06 Net AG Income 1000 $ 11391 -15.85 -30.34 -29.41 -44.97 Net M&I Surplus 1000 $ 337657 -0.2 -0.58 -0.36 -0.92 Authority Surplus 1000 $ 6644 3.76 12.73 7.07 21.6 Net Total Welfare 1000 $ 355692 -0.64 -1.3 -1.16 -1.93 Comal Flow 1000 af 379.5 -9.95 -20.15 -16.62 -24.15 San Marcos Flow 1000 af 92.8 -5.07 -10.09 -8.3 -12.06 Springflow maintenance under climate change • Pumping level to keep springflows at the BASE decreases 35,000 to 50,000 af under the 2030 scenarios decreases 55,000 to 80,000 af under the 2090 scenarios » Agricultural and M&I water use reduction » Substantial economic costs: an additional cost of $0.5 to $2 million per year » Increase in EA authority surplus or rents to water right holders Effects to Consider Temp Rainfall CO2 SeaLevel ExtremeEvents Plants Crop and forage growth Crop /forage water need X X X X Soils Soil moisture supply Irrigation demand Soil fertility X X X X X X Animals Performance Pasture/Range Carry cap X X X X Irrigation Water Supply Evaporation loss Run-off/general supply Non-AG competition X X X X X X X X X X X X Other Water borne transport Port facilities Pest and diseases Insurance X X X X X X X X X X X X X X X X X X X More References http://agecon.tamu.edu/faculty/mccarl/papers.htm Chen, C.C. and B.A. McCarl, "Pesticide Usage as Influenced by Climate: A Statistical Investigation", Climatic Change, 50, 475-487, 2001. Chen,C. C., D. Gillig and B. A. McCarl, "Effects of Climatic Change on a Water Dependent Regional Economy: A Study of the Texas Edwards Aquifer", Climatic Change, 49, 397-409, 2001. Chen, C. C., B. A. McCarl, and R.M. Adams, "Economic Implications of Potential Climate Change Induced ENSO Frequency and Strength Shifts", Climatic Change, 49, 147-159, 2001. Irland, L. C., D.M. Adams, R.J. Alig, C. J. Betz, C.C. Chen, M. Hutchins, B.A. McCarl, K. Skog and B. L. Sohngen, "Assessing Socioeconomic Impacts of Climate Change on U. S. Forests, Wood-Product Markets and Forest Recreation", BioScience, 51(9) September, 753-764, 2001.