Quantifying and Understanding the Aggregate Risk of Natural Hazards

Statistical models are necessary to quantify and understand the risk from natural hazards. A statistical framework is developed here to investigate the e ect of dependence between the frequency and intensity of natural hazards on the aggregate risk. The aggregate risk of a natural hazard is de ned a...

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Bibliographic Details
Main Author: Hunter, Alasdair
Other Authors: Stephenson, David B.
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: University of Exeter 2014
Subjects:
Online Access:http://hdl.handle.net/10871/15719
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spelling ftunivexeter:oai:ore.exeter.ac.uk:10871/15719 2023-05-15T17:30:10+02:00 Quantifying and Understanding the Aggregate Risk of Natural Hazards Hunter, Alasdair Stephenson, David B. 2014 http://hdl.handle.net/10871/15719 en eng University of Exeter CEMPS http://hdl.handle.net/10871/15719 aggregate risk natural hazards european windstorms clustering Thesis or dissertation PhD in Mathematics Doctoral PhD 2014 ftunivexeter 2022-11-20T21:30:52Z Statistical models are necessary to quantify and understand the risk from natural hazards. A statistical framework is developed here to investigate the e ect of dependence between the frequency and intensity of natural hazards on the aggregate risk. The aggregate risk of a natural hazard is de ned as the sum of the intensities for all events within a season. This framework is applied to a database of extra tropical cyclone tracks from the NCEP-NCAR reanalysis for the October to March extended winters between 1950 and 2003. Large positive correlation is found between cyclone counts and the local mean vorticity over the exit regions of the North Atlantic and North Paci c storm tracks. The aggregate risk is shown to be sensitive to this dependence, especially over Scandinavia. Falsely assuming independence between the frequency and intensity results in large biases in the variance of the aggregate risk. Possible causes for the dependence are investigated by regressing winter cyclone counts and local mean vorticity on teleconnection indices with Poisson and linear models. The indices for the Scandinavian pattern, North Atlantic Oscillation and East Atlantic Pattern are able to account for most of the observed positive correlation over the North Atlantic. The sensitivity of extremes of the aggregate risk distribution to the inclusion of clustering, with and without frequency intensity dependence, is investigated using Cantelli bounds and a copula simulation approach. The inclusion of dependence is shown to be necessary to model the clustering of extreme events. The implication of these ndings for the insurance sector is investigated using the loss component of a catastrophe model. A mixture model approach provides a simple and e ective way to incorporate frequency-intensity dependence into the loss model. Including levels of correlation and overdispersion comparable to that observed in the reanalysis data results in an average increase of over 30% in the 200 year return level for the aggregate loss. NERC Willis Re Doctoral or Postdoctoral Thesis North Atlantic North Atlantic oscillation University of Exeter: Open Research Exeter (ORE) Willis ENVELOPE(159.450,159.450,-79.367,-79.367)
institution Open Polar
collection University of Exeter: Open Research Exeter (ORE)
op_collection_id ftunivexeter
language English
topic aggregate risk natural hazards european windstorms clustering
spellingShingle aggregate risk natural hazards european windstorms clustering
Hunter, Alasdair
Quantifying and Understanding the Aggregate Risk of Natural Hazards
topic_facet aggregate risk natural hazards european windstorms clustering
description Statistical models are necessary to quantify and understand the risk from natural hazards. A statistical framework is developed here to investigate the e ect of dependence between the frequency and intensity of natural hazards on the aggregate risk. The aggregate risk of a natural hazard is de ned as the sum of the intensities for all events within a season. This framework is applied to a database of extra tropical cyclone tracks from the NCEP-NCAR reanalysis for the October to March extended winters between 1950 and 2003. Large positive correlation is found between cyclone counts and the local mean vorticity over the exit regions of the North Atlantic and North Paci c storm tracks. The aggregate risk is shown to be sensitive to this dependence, especially over Scandinavia. Falsely assuming independence between the frequency and intensity results in large biases in the variance of the aggregate risk. Possible causes for the dependence are investigated by regressing winter cyclone counts and local mean vorticity on teleconnection indices with Poisson and linear models. The indices for the Scandinavian pattern, North Atlantic Oscillation and East Atlantic Pattern are able to account for most of the observed positive correlation over the North Atlantic. The sensitivity of extremes of the aggregate risk distribution to the inclusion of clustering, with and without frequency intensity dependence, is investigated using Cantelli bounds and a copula simulation approach. The inclusion of dependence is shown to be necessary to model the clustering of extreme events. The implication of these ndings for the insurance sector is investigated using the loss component of a catastrophe model. A mixture model approach provides a simple and e ective way to incorporate frequency-intensity dependence into the loss model. Including levels of correlation and overdispersion comparable to that observed in the reanalysis data results in an average increase of over 30% in the 200 year return level for the aggregate loss. NERC Willis Re
author2 Stephenson, David B.
format Doctoral or Postdoctoral Thesis
author Hunter, Alasdair
author_facet Hunter, Alasdair
author_sort Hunter, Alasdair
title Quantifying and Understanding the Aggregate Risk of Natural Hazards
title_short Quantifying and Understanding the Aggregate Risk of Natural Hazards
title_full Quantifying and Understanding the Aggregate Risk of Natural Hazards
title_fullStr Quantifying and Understanding the Aggregate Risk of Natural Hazards
title_full_unstemmed Quantifying and Understanding the Aggregate Risk of Natural Hazards
title_sort quantifying and understanding the aggregate risk of natural hazards
publisher University of Exeter
publishDate 2014
url http://hdl.handle.net/10871/15719
long_lat ENVELOPE(159.450,159.450,-79.367,-79.367)
geographic Willis
geographic_facet Willis
genre North Atlantic
North Atlantic oscillation
genre_facet North Atlantic
North Atlantic oscillation
op_relation http://hdl.handle.net/10871/15719
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