Private & Confidential MS Frontier Re Modeling Research Pte. Ltd. Catastrophic Risk – A Flood Perspective Kunal Jadhav 12 April 2012.

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Presentation transcript:

Private & Confidential MS Frontier Re Modeling Research Pte. Ltd. Catastrophic Risk – A Flood Perspective Kunal Jadhav 12 April 2012

Private & Confidential 2 Overview of natural disasters Flood risk assessment methodology Uncertainty in flood modeling Flood Profile – Asia & Pakistan Summary Agenda

Private & Confidential 3 Overview of natural disaster Annual Average Damage ($US billion): Source:"EM-DAT: The OFDA/CRED International Disaster Database, Universite catholique de Louvain, Brussels, Belgium“

Private & Confidential 4 Economic Losses due to Flood – Asia

Private & Confidential 5 Why are the numbers are bigger now? Economy Insurance Penetration (source Population

Private & Confidential 6 AIREQECATRMSRisk Frontiers Country Tropical Cyclone Earthquake Tropical Cyclone Earthquake Typhoon rainfall – flooding Tropical Cyclone Earthquake Riverine Flood Hail China  Guam  Hong Kong*  India  Indonesia  Japan  Macau*  Malaysia  Pakistan  Philippines  Saipan**  Singapore  South Korea  Taiwan  Thailand  Australia  New Zealand  * Included in China EQ ** Included in Guam EQ What is available?

Private & Confidential 7 Flood risk assessment methodology Inundation Model Hydrological Hydraulic Inundation Model Hydrological Hydraulic Calibration Reconstruction of Historical Events Calibration Reconstruction of Historical Events Satellite Flood Images Stochastic Events Flood Extent and Depth GIS Input DEM River Cross-sections Roughness GIS Input DEM River Cross-sections Roughness Exposures at Risk Building attributed Policy Information Exposures at Risk Building attributed Policy Information Flood Risk Assessment Vulnerability Financial Model Probabilistic Risk Model Rainfall/Runoff based

Private & Confidential 8 Hydrology

Private & Confidential 9 Stochastic Module The stochastic event module generates stochastic events from the characteristics of historical events using simulation techniques. Duration Intensity Spatial pattern Initial loss Return Period Rainfall in mm

Private & Confidential 10 Hazard Module – Hydrologic modeling Input for hydrological model Digital Elevation model – Ground surface elevation data River Network Soil Map Land-use Rainfall Observed flow data

Private & Confidential 11 Hazard Module – Hydraulic modeling Input for hydraulic model River cross section Flow hydrograph Surface roughness Satellite imagery

Private & Confidential 12 Vulnerability Module The vulnerability is the expected degree of loss, which can be expressed as a damage ratio. magnitude of the hazard (e.g. flood depth, flow velocity) & the characteristics (attributes) of the asset (e.g. structural strength of a building) Flood Depth Mean Damage Ratio Physical Characteristics Construction Type 1 Construction Type 2 Construction Type 3

Private & Confidential 13 Exposure Module Exposure data development LOB Residential Commercial Industrial Agricultural etc. Structural details Construction type and material Wall and flooring material etc Age and height etc. Location Data Resolution Source: India : Census of India 2001

Private & Confidential 14 Loss Module Source : Loss = MDR * Replacement cost

Private & Confidential 15 Source : RMSI, 2009 Flood Hazard Map

Private & Confidential 16 Modeling Uncertainties Hazard Exposure Vulnerability Variation depends on mean damage ratio Residential Wood Frame

Private & Confidential 17 Other challenges in flood modeling Data Meteorological and hydrological data - availability and gaps Large amount of data – heavy to process Resolution of data – Model Input Data Exposure data - resolution Loss data for historical events

Private & Confidential 18 - Building Attributes Construction Occupancy Building Height Year Built. etc - Exact Location Address Information Other challenges in flood modeling

Private & Confidential 19 Flood Profile - Asia ¹: In billions US$

Private & Confidential 20 Flood Profile - Asia

Private & Confidential 21 Flood Profile - Pakistan

Private & Confidential 22 Asia’s potential for large catastrophe losses is increasing due to – growing population – economic growth – increasing insurance penetration Summary Currently no standalone Flood Model available in Asia Flood models are the most complex models – large amounts of high resolution datasets are needed Data quality : Garbage in – garbage out

Private & Confidential 23

Private & Confidential 24 Types of Floods TypeCauseAreas AffectedLoss Agents Damage - Frequency and Severity Loss Prevention Storm Surge High level of water due to wind set-up, high waves -Coastal areas -Areas near big lakes -Wave force -Salt water -Low frequency -Very high losses -Early warning -Dykes -Evacuation River Flooding Intense and/or persistent rain for longer period Areas near river -Prolonged impact of water -Water contamination -Low frequency -High loss potential -Early Warning -Structural flood control -Temporary protection of property -Putting movable objects somewhere else Evacuation Flash Flood Intense rainfall; mostly locally Practically anywhere -Mechanical impact of fast flowing water -Large amount of sediments -High frequency Relatively minor losses -Adequate drainage

Private & Confidential 25 Hydrology – Rainfall Runoff relationship in different conditions Flow (Discharge) Time Natural Surfaces Densely Urban Surfaces

Private & Confidential 26 Exposure Data Resolution Other challenges in flood modeling