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Understand the risks of natural hazards and climate change on property losses. Explore the impacts, uncertainties, and costs of weather-related disasters. Learn about risk assessment models and policy implications.
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Natural Hazard Property Losses & Climate Change John McAneney Risk Frontiers Macquarie University Sydney NSW
Overview • Risk Frontiers • Risk Assessment • Climate Change • North Atlantic Hurricane Windspeed Data • Normalisation of ICA loss database • Property losses from bushfires • Policy implications • Natural Hazard Risk Profiles
Risk Frontiers An independent and local research capacity to help insurers better understand and price natural hazard risks in the Asia-Pacific Region by: • Undertaking research in natural hazards • Undertaking post-event reconnaissance • Developing Probabilistic Catastrophe Loss models • Increasing public awareness of natural perils
Conceptual framework of risk assessment Risk = f (Hazard, Exposure, Vulnerability) Hazard Mean damage ratio (%) Annual Exceedance Probability Mean intensity Vulnerability Loss ($ Million) Risk Exposure
Nicene Creed of Climate Change • Global mean and extreme temperatures are increasing • Heating is due to increasing atmospheric CO2 and other GH gases • Warming is occurring where models suggest it should under increasing CO2 • Sea level is rising • Take greenhouse gases out of the models, earth cooling slightly • If reject increasing GH gases as explanation, need to find some other hypothesis
Uncertainties • GCMs are too complex to be fully understood and the climate system depends upon many ingredients that must be represented either empirically or through ad hoc treatments that differ between models • Arguments over the scale and speed of warming in the future • Models have little to say yet about regional implications • Models can’t resolve phenomena like droughts, floods, storms, cyclones, etc. • Attribution of individual weather events to climate change
Costs of weather-related natural catastrophe losses are increasing: why? 2005:Hurricanes Katrina, Rita, Wilma,USD 65 bn 2004:Hurricanes Charley, Frances, Ivan, Jeanne,USD 29 bn 1992:Hurricane Andrew,USD 22 bn 1999:Storms Lothar/Martin,USD 10 bn USD millions (2005 $) Source: Swiss Re sigma Catastrophe database
Distribution by hazard worldwide of the largest 40 insured losses 1970-2004 (Source: Swiss Re)
Atlantic basin hurricane data – Wind speed Atlantic basin hurricane tracks (Category 1-5) during 1851-2006 Difference of wind speed distributions between the early historical period (1851-1946) and the recent six decades. - Early historical records significantly underestimate the frequency of Category 4-5 winds. - Wind speed distributions over the past two, four and six decades display little systematic changes.
U.S. landfalling segments since 1947 Damage to property and other assets is linked to landfalling events. For the six decades since 1947, there are no sustained upward trends in - Average annual count of landfalling segments (blue curve) - Mean landfalling wind speeds (red curve) This contrasts with the dramatic increases in total economic and insured losses, suggesting the losses must be attributed to factors other than wind speed alone.
Australian Losses - ICA Natural Disaster Event List • Insurance Council of Australia database of insured losses since 1967 • Estimate losses as if events took place in 2006 • Account for changes in • Inflation • Population • Wealth • Building Codes
Original Annual Aggregate Losses (July 1 – June 30) Original annual aggregate insured losses (AUD$ million) for weather-related events in the ICA Disaster List for years beginning 1 July
Methodology • CL06 = Li × Ni,j × Di,k xBtc • CL06 - Normalised (current) dollar loss (year 2006 value) • Li - Original dollar loss (year ‘i’) • Ni,j - Dwelling number factor • Di,k - Dwelling value factor • j - Urban Centre / Locality (UC/L) impacted by the event • k - State or Territory that contains the impacted UC/L • Btc - Building Code adjustment (= 1 for all hazards except tropical cyclones)
Building Code Adjustment • Estimate % of loss due to wind vis-à-vis flood • Proportions of pre- & post-1981 construction then and now • Use Central Pressure at landfall to determine characteristic gust speed for the cyclone • Calculate pre- & post-1981 loss ratios • Adjust normalised loss • Unique adjustment for each event
Attributes • Uses publicly-available information • Based on dwellings rather than population • Number of dwellings ~ Population • Nominal value of new dwellings ~ Inflation & Wealth • Nominal dwelling value excludes land value • Assures reasonable alignment to insured losses • Easy to apply
TC Tracy - 1974 • Original loss = $200M • Dwelling number factor ~ 3 • Nominal dwelling value factor ~13 • (1974: ~$18.5K; 2006: ~ $240K) • All losses attributed to wind or wind-driven rain • Current construction all post-1981 • Building code factor ~ 0.5 • Current loss ~ $3.6 billion • This may be slightly high as building code regulations were introduced in Darwin earlier than 1981
TC Tracy Sydney Hail Brisbane Flood Sydney Flood & Brisbane Hail Sydney Hail Ash Wednesday Fires Normalised Annual Aggregate Losses (July 1 – June 30)
Bushfire loss frequency Time Series Analysis to 2003 A “major” event is defined here as more than 25 homes destroyed within a 7 day period.
Florida Coastal Population 1900 to 1990 Population (Millions) 15 million today! Year
Implications for Insurers • Societal factors predominant drivers of increased natural disaster losses • No need to invoke global climate change for increasing losses – not yet • Expect this to be the case over the next few decades • Insurers need to worried about what might happen in the next twelve months or so
Public Policy Implications • Efforts to reduce society’s vulnerability to current & future extremes • Improved wind standards best example • Bushfire: restrictions based on distance to forest • Flood: limit construction on floodplains • Risk reduction (adaptation) measures in addition to abatement of greenhouse gases
Looking X years ahead • Ability to obtain insurance linked to the actual risk • Premium will be linked to actual risk • distance from bushland? • are you on a floodplain? • distance from the coast?