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Impact assessment of climate change on water-related disasters for building up an adaptation strategy Yasuto TACHIKAWA Hydrology and Water Resources Research Lab. Dept. of Civil & Earth Resources Engineering, Kyoto University Flood and Inundation Disaster in the Kinu River by Typhoon 18 on September 10, 2015 2 After Construction Ministry of Japan Flood and inundation simulation under a changing climate 1. Probabilistic evaluation of magnitude and frequency on flood and inundation under a changing climate; and 2. Physical prediction of a probable largest-class flood and inundation under a changing climate. 3 Climate Change Research Projection of extreme events and water resources Latest high-resolution General Circulation Models, and Regional Climate Models. Evaluation and reduction of prediction uncertainty Ensemble projection, Typhoon course ensemble prediction, Dynamical downscaling, Statistical downscaling, Bias correction. Adaptation GCM/RCM Modeler Climate Projection Impact Assessment 4 4 SOUSEI 創生 Program (2012-2017) Imminent global climate change (AORI, U Tokyo) Climate variability and change Integrated prediction system Stabilization target setting (JAMSTEC) Risk Information (MRI-JMA) Long-term projection Probabilistic climate projection Large-scale variations Producing a standard climate scenario GCM modeler Impact assessments (DPRI, Kyoto U, U Tokyo, Tohoku U) Natural Disaster Water Resources Ecosystem Water resources engineering 5 Climate Change Research Program Climate Change Projection (Metrological Research Institute, Japan, Univ. of Tokyo) Probabilistic climate projection Impact Assessments (DPRI and Dept. of Eng. at Kyoto Univ., Univ. of Tokyo, Tohoku Univ., ICHARM, etc.) Natural Disaster Water Resources Producing a standard climate scenario Climate change projection PI: Dr. Takayabu (MRI, JMA) Ecosystem Impact assessment PI: Prof. Nakakita (DPRI, Kyoto Univ.) 6 6 Future climate projection data using General Circulation Model developed by MRI, Japan Present climate experiment: 1979-2004 Near future climate experiment: 2015-2039 Future climate experiment: 2075-2099 7 MRI GCM simulation 20km spatial resolution, hourly Precipitation (mm/h) Sea Level Pressure (hPa) 8 GCM rainfall projection for the end of 21st century Precipitation (mm/hr) Provided by Dr. Oku at DPRI, Kyoto University 9 Large number of GCM ensembles by MRI, JMA Different SST settings YS 20km AGCM by MRI 60km AGCM by MRI Cluster 3 Cluster 2 AS Cluster 1 Ensemble mean Present climate 2.6 4.5 6.0 8.5 60km AGCM by ME RCP Scenario KF Different cumulus convection parameterization PPE Flood and inundation simulation under a changing climate Probabilistic evaluation of magnitude and frequency on flood and inundation under a changing climate; and Worst case scenario simulation on flood and inundation under a changing climate. Future extreme event projection on flood and inundation Probabilistic evaluation of magnitude and frequency on flood and inundation under a changing climate 12 Method of Analysis 20km resolution GCM output 1km resolution distributed hydrologic model for all Japanese catchments for 75 years runoff simulations Examine the changes of flood risks, drought risks, and the change of water resources. 13 Hydrologic Flow Modeling A flow direction map with 1 km spatial resolution is developed. Then, runoff is routed according to the flow direction map using one dimensional kinematic 14 wave flow model . River flow simulation 15 Runoff projections using MRI-3.1S Present climate experiment 1979-2003 Near future climate experiment 2015-2039 Future climate experiment 2075-2099 Ishikari River Hokkaido region Mogami River Northern Japan Abukuma River Northern Japan 16 Change of mean of annual maximum hourly discharge Flood Risk Far future climate experiment /Current climate experiment Near future climate experiment /Current climate experiment 17 Change of standard deviation of annual maximum hourly discharge Flood Risk Future climate experiment /Current climate experiment Near future climate experiment /Current climate experiment 18 Change of flood risk? Distribution of annual maximum daily rainfall 19 Change of the 100-year annual maximum hourly discharge Future climate /Current climate Quintiles of river discharge with 100-year return period estimated using GEV distribution. 20 Unsteady frequency analysis T-year hydrologic variable year Annual maximum daily rainfall at Osase, Japan(1939 - 2012) Characteristics of population will change with time. 21 Unsteady hydrologic frequency analysis model Unsteady GEV distribution (Coles, 2001) Estimate parameters using the method of likelihood. ξis constant. 22 Unsteady Gumbel distribution Unsteady SQRT-ET distribution Unsteady Lognormal distribution 23 Akaike Information Criteria, AIC 竹内情報量規準が小さいほど良いモデル 最大化すべき目的関数: 目的関数の漸近不偏推定量: 特に 赤池情報量規準が小さいほど良いモデル が成り立つ場合には となるから となる. これは赤池情報量規準に他ならない. 24 Comparison of 100-year annual maximum daily rainfall at 1962 and 2012 Annual maximum daily rainfall at Osase, Japan(1939 - 2012) 25 Comparison of 100-year annual maximum daily rainfall at 1993 and 2089 using MRI GCM 26 Future extreme event projection on flood and inundation Physically prediction of a probable largest-class flood and inundation under a changing climate 27 Design flood discharge for dam reservoir construction Maximum discharge which flows through spillway Kuzuryu Dam in Japan 28 Design flood discharge for dam reservoir construction Maximum discharge which flows through spillway Kuzuryu Dam in Japan 29 Design flood discharge for dam reservoir construction Maximum discharge which flows through spillway Kuzuryu Dam in Japan 30 Maximum runoff height (m3/sec/km2) Design flood discharge for dam reservoir construction Kanto region Experimental equation for probable maximum flood Technical Report of PWRI Japan, no. 1247, 1976 土木研究所資料 第1247号,1976 Catchment Area (km2) 31 Maximum discharge estimation Current climate experiment (1979-2004) Maximum runoff height (m3/sec/km2) Experimental equation for probable maximum flood Catchment Area (km2) Kanto region Experimental equation for probable maximum flood Maximum discharge estimation Near future climate experiment (2015-2039) Catchment Area (km2) Maximum runoff height (m3/sec/km2) Maximum runoff height (m3/sec/km2) GCM Maximum flood discharge at Kanto region Experimental equation for probable maximum flood Maximum discharge estimation Far future climate experiment (2075-2099) Catchment Area (km2) 32 How water-related disasters will change if typhoon takes different tracks? hPa (Ishikawa et al. 2013) 33 Virtual shifting of typhoon’s initial position- for making a worst scenario NHM-5km Virtual Shifting of typhoons initial position by keeping potential vorticity same (a vorgas method) AGCM20 Dynamic downscale by RCM Worst case impact assessment on • Land: extreme wind and rainfall • Ocean: storm surge and wave height Ishikawa et al (2009) 34 Virtual Shifting of typhoon’s initial position for the historical typhoon case (Isewan Typhoon, 1959) Control run pseudo-global warming experiment Oku et al., 2013 35 Historical flood at Yodo River (Hirakata) Discharge at Hirakata Plan Record Rainfall(mm) Design flood Design flood with flood control works Improved target 1位 2位 3位 Discharge(m3/s) 261mm/24h Remarks 17500 12000 222 10700 If no inundation, 12800 1953年9月25日 台風13号 249 7800 Seta weir was closed. 1956年9月21日 台風15号 176 5025 1958年8月27日 台風17号 171 3990 1959年8月14日 前線、台風7号 272 6800 1959年9月27日 伊勢湾台風、15号 215 7970 1960年8月30日 台風16号 179 3775 1960年6月 前線 1961年10月28日 前線 251 7206 Seta weir was closed. 1965年9月17日 台風24号 203 6868 Seta weir was closed. 1972年9月17日 台風20号 200 5228 Seta weir was closed. 1982年8月2日 台風10号 231 6271 2013年台風18号 台風18号 269 9500 Seta weir was closed. If no inundation, 10100 Seta weir was closed. Seta weir was closed. Seta weir was closed. 36 Flood and inundation simulations under the largest-class typhoons Various scenarios of the largest-class typhoons under a changing climate Flood and inundation simulations The worst case impact assessment 37 Rainfall-Runoff Model rainfall evapotranspiration Water flow from each slope seepage 38 Study Aarea 39 Rainfall-runoff model for historical simulation (Isewan Typhoon in 1959) Kameoka detention area Seta weir Hirakata Ueno detention area 40 Maximum discharge analysis depending on typhoon tracks Typhoon tracks Maximum peal discharge at Hirakata for each typhoon track 41 Simulated discharge hydrographs at Hirakata (7,281km2) for the typhoon track which caused the maximum discharge without dam reservoirs Design flood Control run Pseudo global warming simulation 42 Rainfall-runoff model including main reservoir flood controls and inundation (Present situation) Hiyoshi Dam Seta weir Kameoka detention area Hirakata Ueno detention area Takayama Dam Amagase Dam Hinachi Dam Shorenji Dam Nunome Dam Murou Dam 43 Simulated discharge hydrographs at Hirakata (7,281km2) for the typhoon track which caused the maximum discharge under a pseudo global warming condition Design flood without dams with dams 44 Flood by Typhoon 18, 2013 45 After MLIT Comparison of 2013 flood simulation by Typhoon 18 and 1959 Isewan Typhoon with a pseud global warming condition at Hirakata 2013 Typhoon 18 flood simulation 1959 Isewan Typhoon flood simulation with a PGW condition 46 Wide-area inundation simulation model Rainfall Dyke broken, overflow over flow Sea Main river Flood water level and discharge Urban river Tokyo See water level Nagoya Osaka Kiso River, Shonai River, Ise Bay Tone River, Edo River, Arakawa River, Tokyo Bay Yodo River, Neyagawa River, Osaka Bay 47 Wide-area inundation simulation model Osaka area Water depth distributuion after 6 hours 48 Evaluation of economic damage by flood Rainfall-runoff model Inundation simulation Inundation model Estimation of inundation damage from spatial distribution of maximum water depth 49 Exceedance probability of hazard Estimation of risk curve (relation between hazard occurrence frequency and damage) 0.3 frequency of occurrence (medium damage) Low frequency of occurrence (heavy damage) 0 Estimated economic damage 50 Research topics of flood and inundation simulation under a changing climate Probabilistic evaluation of magnitude and frequency on flood and inundation to evaluate a current design level and future planning of structural measures for water-related disasters; Physically prediction of a probable largest-class flood and inundation to cope with water-related disasters exceeding a design level, and Economical risk analysis of water-related disasters to seek best combination of structural and non-structural measures to cope with large-scale disasters. 51 Future water resources projection in the Southeast Asian Region 52 Research Methodology Input data Present climate experiment: 1979-2008 Near future experiment: 2015-2044 Future climate experiment: 2075-2104 20 km resolution future climate simulation data, MRI-AGCM3.2S made by Morological Research Institute, Japan. River flow routing model for estimating river flow discharge using the future climate data such as rainfall, evaporation and so on. Analyzing the changes river flow discharge for the assessment of water resources, flood risks and drought risks. 53 Topography Data (Hydrological data and maps based on SHuttle Elevation Derivatives at multiple scale) http://hydrosheds.cr.usgs.gov/index.php Elevation (m) using USGS HydroSHEDS 54 109.5o E 34.0o N Study Area Salween River basin Irrawaddy River basin Red River basin Mekong River basin Chao Phraya River basin 91.0o E 5.0o N 55 Study area, data and hydrological model • Topographic data: _ Topographic information used in the study was generated from processing the scale-free global streamflow network dataset with a spatial resolution of 5 arc minutes. • GCMs data: _ MRI-AGCM3.2S (20-km resolution) _ MRI-AGCM3.2H (60-km resolution) _ MIROC5 (140-km resolution) • Hydrological model: _ Flow routing model with kinematic wave flow approximation, 1K-FRM 56 River Flow Simulation 57 Projection of river discharge River discharge in the Indochina peninsula region was projected by feeding 3-hourly runoff generation data from MRI-AGCM3.2S dataset into flow routing model 1K-FRM. Future changes in river discharge in the region were examined by comparing simulated discharge in the near future climate experiment (2015-2044) and future climate experiment (2075-2104) with the one in the present climate experiment (19792008). 58 Future changes and uncertainties in river discharge projected using different ensemble experiments Dataset MRIAGCM3.2S Resolution 20km Cumulus Convection Scheme Sea Surface Temperature Run name Present Climate Observation YS_20 Future Climate CMIP MME YS_CMIP_20 Present Climate Observation YS_60 Future Climate CMIP MME YS_CMIP_60 Present Climate Observation KF CMIP MME KF_CMIP Cluster 1 KF_C1 Cluster 2 KF_C2 Cluster 3 KF_C3 Present Climate Observation MIROC5_P Future Climate CMIP MIROC5_F Yoshimura Yoshimura MRIAGCM3.2H 60km Kain-Fritsch Future Climate MIROC5 150km Chikira * Observation: Observational data by Hadley Center of Met Office, United Kingdom * CMIP MME: Coupled Model Intercomparison Project Multi-Model Ensemble 59 Future changes in river discharge projected using different ensemble experiments Ratio of mean of annual maximum daily discharge in the future climate to the one in the present climate YS_CMIP_20 YS_CMIP_60 KF_CMIP KF_C2 KF_C3 MIROC5 KF_C1 60 Future changes in river discharge projected using different ensemble experiments Ratio of annual mean discharge in the future climate to the one in the present climate YS_CMIP_20 YS_CMIP_60 KF_CMIP KF_C2 KF_C3 MIROC5 KF_C1 61 Future changes in river discharge projected using different ensemble experiments Ratio of annual minimum daily discharge in the future climate to the one in the present climate YS_CMIP_20 YS_CMIP_60 KF_CMIP KF_C2 KF_C3 MIROC5 KF_C1 62 Statistical analysis of river discharge changes The statistical significance of river discharge changes in the Indochina Peninsula region was assessed by comparing means of projected river discharge data in the near future climate and the future climate with those in the present climate. The test for statistical significance of river discharge changes is chosen based on the distribution of projected river discharge data. Shapiro-Wilk W test was applied for data normality test. The parametric Welch correction t-test was applied for the river discharge data which have a normal distribution. The non-parametric Mann-Whitney U test was performed to test for statistical significance of non-normal distribution river discharge data. 63 Testing for the difference between mean of annual maximum daily discharge in the future and present climate at the 5% significance level YS_CMIP_20 YS_CMIP_60 KF_CMIP KF_C2 KF_C3 MIROC5 KF_C1 64 Testing for the difference between annual mean discharge in the future and present climate at the 5% significance level YS_CMIP_20 YS_CMIP_60 KF_CMIP KF_C2 KF_C3 MIROC5 KF_C1 65 Testing for the difference between mean of annual minimum daily discharge in the future and present climate at the 5% significance level MRI_YS_CMIP_20 MRI_YS_CMIP_60 MRI_KF_CMIP MRI_KF_C2 MRI_KF_C3 MIROC5 MRI_KF_C1 66 Findings There are discrepancies on the ratio of river discharge change and area of statistically significant increase or decrease among simulations using different GCMs datasets. A clear change of river discharge was detected and found statistically significant in the Irrawaddy River basin, especially the annual maximum daily discharge in the future climate. In the central part of Vietnam, a decreasing trend of annual minimum daily discharge in the future climate was found statistically significant from simulations using MRI-AGCM3.2S and MRI-AGCM3.2H datasets. However, the simulation using MIROC5 dataset displayed an opposite trend. This opposition also occurs at the Chao Phraya River basin and middle part of the Mekong River basin. For future further work, more GCMs data will be used to evaluate the uncertainty in climate projection and to investigate the factors contributed to the simulation biases of river discharge. 67 Climate Change Research Probabilistic evaluation of magnitude and frequency on water-related disasters; Physically prediction of a probable largest-class water-related disasters, Economical risk analysis of waterAdaptation related disasters to seek best combination of structural and nonstructural measures. GCM/RCM Modeler Climate Projection Research Impact Assessment 6868 Thank you for your attention 69