Survey
* Your assessment is very important for improving the work of artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the work of artificial intelligence, which forms the content of this project
Climate Change Impacts Modeling Hideo Harasawa National Institute for Environmental Studies Objective of AIM/Impact Projection of potential impacts of climate change on sensitive sectors. Consideration of linkages among affected sectors. Proposition of effective adaptation measures to cope with climate change. Accounting feedback effects on GHGs concentration and climate system. AIM/Impact in AIM Framework Characteristics of AIM/Impact Area focused: Whole Asia to Global Spatial analysis (Modules run on GIS) Consistency between socio-economic scenario and climate change scenario. Integration of emission (WG3), climate (WG1) and impact and adaptation (WG2) in the institute. Computation framework Original data Climate data GCM results Soil property Land-use Population etc. Data import interface GRASS commands GRASS on UNIX GRASS database Variable spatial resolution Meshed raster data GIS data Climate scenario Input data Output data Output data Climate scenario creator GRASS model commands GRASS Analysis commands UNIX shell program Developed with F77 or C language Visualization Average, etc. Analysis on PC Characteristics of AIM/Impact Area focused: Whole Asia to Global Spatial analysis (Modules run on GIS) Consistency between socio-economic scenario and climate change scenario. Integration of emission (WG3), climate (WG1) and impact and adaptation (WG2) in the institute. Collaboration with climate model Atmosphere Emission model Climate model CCSR/NIES CGCM Ocean Land Surface & AIM Socio-Econ. Emission Scenario (Asian-Pacific Integrated Model) Landuse Socio-Econ. Factors Water Resource Crop Productivity Food Demand And Supply Adaptation Impact model Crop productivity Climate data Temperature Precipitation Radiation Wind Humidity Soil data Chemical characteristics Slope Texture Human Input Changes in the potential productivity of rice Irrigation from 1990 to 2050 under the climatic conditions -500 0 +500 projected using the CCSR/NIES GCM Machinery Fertilizer (kg/ha) Agricultural trade JPN Producer price change (%) Rice Wheat Other grains Other crops Livestock Other agricultural products Manufacture Services Production change (%) Rice Wheat Other grains Other crops Livestock Other agricultural products Manufacture Services Consumer price index (%) Income change per capita (%) Social welfare change (%) Production CHN IDI -0.01 4.91 1.81 -0.01 -0.19 -0.15 0.03 0.03 -1.58 8.47 0.79 -0.28 -0.09 -0.01 -0.12 -0.16 0.001 0.026 0.022 -0.25 -3.97 -1.39 -0.07 -0.24 -0.27 0.31 0.00 0.001 -0.236 -0.219 Crop productivity change0.11 -6.60 Tech. Improve -15.56 0.11 0.09 Labor 0.11 -0.01 Land 0.00 17.96 125.11 1.80 1.90 2.84 0.30 -1.10 -0.93 CAN USA -40.16 -13.10 -43.59 2.76 -1.22 -0.35 0.61 0.69 Demand -0.06 4.76 -1.46 -0.10 -0.59 -0.07 0.03 0.02 -4.93 8.92 -3.36 -0.05 -0.04 0.04 -0.02 -0.02 0.25 0.03 0.04 0.03 0.01 0.017 0.026 0.009 2.03 -3.64 -6.50 -0.03 -0.22 -0.22 0.05 0.01 -0.010 -0.009 0.003 Population Consumer -1.76 105.99 0.23 -7.64 115.07 2.87 preference -1.33 89.41 -4.04 -4.25 -2.27 -4.73 -0.37 -2.62 6.047 -0.617 -4.892 Trade -2.26 0.94 0.69 -1.62 -0.02 0.513 0.833 0.343 Tariff etc. E_U River discharge Surface runoff River routing Precipitation Evaporanspiration Temperature Soil characteristics 1990 Elevation 2100 Annual river discharge in 1990 and 2100 (UIUC climate model) Water demand (withdrawal) Driving force Irrigated area Population Water supply coverage GDP or IVA Spatial distribution Population density Cropland distribution 1990 2050 0.3 3 30 300 (mm/year) Water consumption in India (scenario analysis) 1995 Baseline 2032 Fortress World WATER CONSUMPTION 2032 Policy Reform 700.0000 CONSUMPTION(km^3/year) 600.0000 500.0000 400.0000 300.0000 200.0000 MF FW PR GT 100.0000 0.0000 1990 2000 2010 2020 2030 2040 YEAR Change of water consumption from 1995 to 2032 (Domestic + Agriculture + Industry) 1 m3/ha/year 40 200 1000 5000 Surface runoff as Water supply Field capacity Precipitation Snowfall Vegetation Soil CCCma Evapotranspiration Temperature Wind speed Radiation Humidity NIES Change of surface runoff 表面流出量の変化 (2050s – 1980s)(2050s-1980s) -100 -10 0 10 100 (mm/year) MPI Water scarcity Scarcity index = Withdrawal / Surface runoff 1.2 0.25 1 0.2 0.8 0.15 0.6 0.1 0.4 0.05 0.2 0 2050(1980) 2055(1985) 0 2050(1980) Ganges 2055(1985) Mekong CCC ECHAM4 CCSR/NIES LINK (1980-89) Ten-year average (1980-89) Malaria Reproduction rate of malaria vector Temperature Soil moisture Expansion of the area affected by malaria Forest vegetation IS92c with low low climate sensitivity IS92cscenario scenario with climate sensitivity Forest diminishment Temperature Precipitation Evapotranspiration Max. velocity of forest movement IS92a scenario with medium climate climate sensitivitysensitivity IS92a scenario with medium IS92e scenario with high climate IS92e scenario with high sensitivity climate sensitivity Diminish of forest Diminishment of forest Replacement of forest type with the risk of diminishment From global scale to national scale Increasing attention to national-scale impact studies. – – AIACC (Assessment of the Impact of and Adaptation to Climate Change Project) National Communication Concrete adaptation measures can be evaluated only on an appropriate spatial scale which corresponds the stakeholders. Development of AIM/Impact [Country] Package of models, tools and data for scenario analysis of national-scale climate change impact assessment. Executable on PC-Windows (no need to learn UNIX & GRASS) Bundled datasets for basic assessment. Readily achievement of spatial analysis. Detailed manual documents. Framework of AIM/Impact [Country] GIS dat a t r immed f or n at ion al scale assessmen t Global GIS dat a Inp ut GIS dat a f or impact assessment models GIS tool for input data development (Scenario Creator) GIS tool for trimming away ex-focused area GIS tool for spatial interpolation Socio- economic and GHG emission scenar ios Model par amet er s Penman-PET model Thornthwaite-PET model Potential crop productivity model Surface runoff model River discharge model Water demand model Malarial potential model Holdridge vegetation classification Koeppen vegetation classification Vegetation move possibility model (2) Impact assessment (1) Development of input GIS data for model (3) Analysis of GIS data and outputs GIS tool for subnational aggregation Interface tool for visualizing data on IDRIDI Interface tool for visualizing data on plain spatial data viewer Out p ut GIS dat a of impact assessmen t model PREF.ID 392010100 392020100 392020400 392020200 392020400 392020500 392020300 392040100 392020600 392040300 392030200 392030300 392050200 392040200 392030100 GIS dat a f or sub- n at ion al spat ial ag g r eg at ion NAT JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN JPN REG Hokkaido Tohoku Tohoku Tohoku Tohoku Tohoku Tohoku Hokuriku Tohoku Hokuriku Kanto Kanto Chubu Hokuriku Kanto PREF Hokkaido Aomori Akita Iwate Akita Yamagata Miyagi Niigata Fukushima Ishikawa Tochigi Gumma Nagano Toyama Ibaraki VALUE 12 -10 -5 -5 2 3 -13 -2 8 -6 -7 15 17 12 -1 Potential usage of AIM/Impact[Country] Outside AIM project. – – – Researchers, governmental officers or others who are interested in assessing future national impact of climate change . Interactive user interface and ready-made datasets are provided for instant achievement of scenario analysis. Spatial visualization is achieved with a plain spatial data viewer controlled from AIM/Impact [Country] interface. Inside AIM project. – – – Model is improved by replacing the ready-made parameters and data with the specific and detailed ones collected for each country. Use of IDRISI-GIS is recommended. Source code and the latest databases are shared among the teams for flexible improvement. Future Direction of Impacts Study Global to National, Local Impacts Vulnerability and Adaptation Impacts of Extreme Climate Events Asia Impacts Research Network Global Warming Research Initiative (Council for Science and Technology Policy, Cabinet Office of Japan) IPCC 4th Assessment Report & AIACC Millennium Ecosystem Assessment (MA) APN Network Activity for Capacity Building