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Analysis of multi-risk to human life at county level in  the Yangtze River Delta Baoyin LIU, Wei XU Beijing Normal University   baoyin@ires. cn Funded by the Project in the National Science & Technology Pillar Program (2008BAK50B07)
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
1. Introduction  Global natural catastrophes 1980 – 2008 Overall and insured losses with trend Munich Re, 2009
[object Object],[object Object],[object Object],[object Object],Disaster risks
Flood Earthquake Typhoon Other hazards Based on single-hazard risk  assessment, put different types of  hazards into a system for  comprehensive evaluation.   Establish the Multi-risk insurance system  Enhancing the risk awareness of local government
Multi-risk assessment It required a lot very detailed data which were hard to collect; It calculated the multi-risk by aggregating all single-hazard risk with equal weight, the results were not so reliable. TEMRAP(The European Multi-Hazard Risk Assessment Project)  There is no attention to exposed elements and vulnerability. DDRM It required a lot very detailed data which were hard to collect. JRC It calculated mortality and economic losses in grid cell; It calculated the multi-risk by aggregating all single-hazard risk with equal weight, the results were not so reliable. World Bank Methodology -Natural Disaster Hotspots The analysis is limited by availability and quality of historical data on the incidence of hazards; It considers only a limited number of hazards. FEMA It calculated the multi-risk by aggregate all single-hazard risk with equal weight; It suits for a small-scale analysis due to the data collection; It took probability of spatial impact and probability of seasonal occurrence into account University  of  Bonn It calculated the multi-hazard index by aggregate all hazards with equal weight. Calculation of the Total Place Vulnerability Index in the State of South Carolina   It required a lot very detailed data which were hard to collect; The analysis is limited by issues of scale Munich Re – Natural Hazard Index  for Mega Cities It used Delphi method to determine the weight and required a lot very detailed data which were hard to collect  ESPON 2006 Assessment model Remarks Approaches
Yangtze River Delta Area: 99,600 sq. km Population: 85 million  18.7% of GDP, 22% of financial revenue, and 18.4% of export trade (as of 2004) Main hazards: floods, typhoon, earthquake
2.Multi-risk assessment to human life at county level in the Yangtze River Delta 2.1 The multi-risk assessment method Typhoon Flood Earthquake Gender ratio Age structure Traffic condition Telecommunication Medical condition Population density Multi-hazard Vulnerability Exposure Multi -risk to  human  life
[object Object],Evaluation Indicators for Multi-hazard   Seismic intensity (Generation 4) Earthquake  Flow times (1949-2000) Flood  Influence times (1949-2000) Typhoon  Evaluation Indicator  Hazard
Weight of evaluation system for  Multi-hazard 0.0033 55 Earthquake  0.4141 5659 Flood  0.5826 7049 Typhoon  Weight( w a ) decided by  t he  average historical annual percent of death Death toll Hazards
Multi-hazard Index(1949-2000)  Higher Area:   south-eastern  Affected frequently by Typhoon:   Taizhou**, Zhoushan, Ningbo Affected frequently by Flood: Shanghai, Hangzhou, Suzhou.
Evaluation Indicators for Vulnerability   2.3 Vulnerability analysis   Per medical institution coverage area  No. of hospital beds per 10,000 persons No. of doctors per 10,000 persons  Medical  condition  No. of mobile phone per capita No. of internet per capita Telecom- munication  Road length (km) per square kilometer Road length (km) per 10,000 persons  Traffic condition  Over 15 but under 65  Age structure Ratio of male to female  Gender  Indicator   Factor
The weight ( w i ) of each indicators are calculated through the entropy method 0.4182   0.0615  0.0420  0.8658 0.9803 0.9865 Per medical institution coverage area  No. of hospital beds per 10,000 persons No. of doctors per 10,000 persons  Medical  condition  0.0977  0.2525   0.9687 0.9190 No. of mobile phone per capita No. of internet per capita Telecom- munication  0.0700  0.0576  0.9775 0.9815 Road length (km) per square kilometer Road length (km) per 10,000 persons  Traffic condition  0.0002  0.99994 Over 15 but under 65  Age structure 0.0003  0.99991 Ratio of male to female  Gender  Weight( w i )   Entropy ( e j )   Indicator  Factor
Human Life Vulnerability  Index Higher Area:   northern and southern  Locate far away from the metropolitans,  with low traffic network, telecommunication cover rate, and poor medical condition.
2.4 Exposure analysis The population density of 140 county-level city are taken into normalization to get the exposure index. Human Life Exposure  Index Higher Area:   north-eastern   Highest Area: Shanghai
2.5 Multi-hazard risk analysis H V E
Multi-hazard risk index of  Human Life Higher Area:   northeast southern  Shanghai Lower Area:   northwest
3. Conclusions and discussions ,[object Object],[object Object],[object Object]
Next steps ,[object Object],[object Object],[object Object]
Thank You!

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Analysis of multi-hazard risk to human life at County Level in the Yangtze River Delta of China

  • 1. Analysis of multi-risk to human life at county level in the Yangtze River Delta Baoyin LIU, Wei XU Beijing Normal University baoyin@ires. cn Funded by the Project in the National Science & Technology Pillar Program (2008BAK50B07)
  • 2.
  • 3. 1. Introduction Global natural catastrophes 1980 – 2008 Overall and insured losses with trend Munich Re, 2009
  • 4.
  • 5. Flood Earthquake Typhoon Other hazards Based on single-hazard risk assessment, put different types of hazards into a system for comprehensive evaluation. Establish the Multi-risk insurance system Enhancing the risk awareness of local government
  • 6. Multi-risk assessment It required a lot very detailed data which were hard to collect; It calculated the multi-risk by aggregating all single-hazard risk with equal weight, the results were not so reliable. TEMRAP(The European Multi-Hazard Risk Assessment Project) There is no attention to exposed elements and vulnerability. DDRM It required a lot very detailed data which were hard to collect. JRC It calculated mortality and economic losses in grid cell; It calculated the multi-risk by aggregating all single-hazard risk with equal weight, the results were not so reliable. World Bank Methodology -Natural Disaster Hotspots The analysis is limited by availability and quality of historical data on the incidence of hazards; It considers only a limited number of hazards. FEMA It calculated the multi-risk by aggregate all single-hazard risk with equal weight; It suits for a small-scale analysis due to the data collection; It took probability of spatial impact and probability of seasonal occurrence into account University of Bonn It calculated the multi-hazard index by aggregate all hazards with equal weight. Calculation of the Total Place Vulnerability Index in the State of South Carolina It required a lot very detailed data which were hard to collect; The analysis is limited by issues of scale Munich Re – Natural Hazard Index for Mega Cities It used Delphi method to determine the weight and required a lot very detailed data which were hard to collect ESPON 2006 Assessment model Remarks Approaches
  • 7. Yangtze River Delta Area: 99,600 sq. km Population: 85 million 18.7% of GDP, 22% of financial revenue, and 18.4% of export trade (as of 2004) Main hazards: floods, typhoon, earthquake
  • 8. 2.Multi-risk assessment to human life at county level in the Yangtze River Delta 2.1 The multi-risk assessment method Typhoon Flood Earthquake Gender ratio Age structure Traffic condition Telecommunication Medical condition Population density Multi-hazard Vulnerability Exposure Multi -risk to human life
  • 9.
  • 10. Weight of evaluation system for Multi-hazard 0.0033 55 Earthquake 0.4141 5659 Flood 0.5826 7049 Typhoon Weight( w a ) decided by t he average historical annual percent of death Death toll Hazards
  • 11. Multi-hazard Index(1949-2000) Higher Area: south-eastern Affected frequently by Typhoon: Taizhou**, Zhoushan, Ningbo Affected frequently by Flood: Shanghai, Hangzhou, Suzhou.
  • 12. Evaluation Indicators for Vulnerability 2.3 Vulnerability analysis Per medical institution coverage area No. of hospital beds per 10,000 persons No. of doctors per 10,000 persons Medical condition No. of mobile phone per capita No. of internet per capita Telecom- munication Road length (km) per square kilometer Road length (km) per 10,000 persons Traffic condition Over 15 but under 65 Age structure Ratio of male to female Gender Indicator Factor
  • 13. The weight ( w i ) of each indicators are calculated through the entropy method 0.4182 0.0615 0.0420 0.8658 0.9803 0.9865 Per medical institution coverage area No. of hospital beds per 10,000 persons No. of doctors per 10,000 persons Medical condition 0.0977 0.2525 0.9687 0.9190 No. of mobile phone per capita No. of internet per capita Telecom- munication 0.0700 0.0576 0.9775 0.9815 Road length (km) per square kilometer Road length (km) per 10,000 persons Traffic condition 0.0002 0.99994 Over 15 but under 65 Age structure 0.0003 0.99991 Ratio of male to female Gender Weight( w i ) Entropy ( e j ) Indicator Factor
  • 14. Human Life Vulnerability Index Higher Area: northern and southern Locate far away from the metropolitans, with low traffic network, telecommunication cover rate, and poor medical condition.
  • 15. 2.4 Exposure analysis The population density of 140 county-level city are taken into normalization to get the exposure index. Human Life Exposure Index Higher Area: north-eastern Highest Area: Shanghai
  • 16. 2.5 Multi-hazard risk analysis H V E
  • 17. Multi-hazard risk index of Human Life Higher Area: northeast southern Shanghai Lower Area: northwest
  • 18.
  • 19.