On the clustering of winter storm loss events over Germany

During the last decades, several windstorm series hit Europe leading to large aggregated losses. Such storm series are examples of serial clustering of extreme cyclones, presenting a considerable risk for the insurance industry. Clustering of events and return periods of storm series for Germany are...

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Main Authors: M. K. Karremann, J. G. Pinto, P. J. von Bomhard, M. Klawa
Format: Article
Language:English
Published: Copernicus Publications 2014-08-01
Series:Natural Hazards and Earth System Sciences
Online Access:http://www.nat-hazards-earth-syst-sci.net/14/2041/2014/nhess-14-2041-2014.pdf
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spelling doaj-0fa4202b4ad94b7887a1c33ea572a4cb2020-11-25T00:11:25ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812014-08-011482041205210.5194/nhess-14-2041-2014On the clustering of winter storm loss events over GermanyM. K. Karremann0J. G. Pinto1P. J. von Bomhard2M. Klawa3Institute for Geophysics and Meteorology, University of Cologne, Cologne, GermanyInstitute for Geophysics and Meteorology, University of Cologne, Cologne, GermanyInstitute for Geophysics and Meteorology, University of Cologne, Cologne, GermanyDeutscheRück AG, Düsseldorf, GermanyDuring the last decades, several windstorm series hit Europe leading to large aggregated losses. Such storm series are examples of serial clustering of extreme cyclones, presenting a considerable risk for the insurance industry. Clustering of events and return periods of storm series for Germany are quantified based on potential losses using empirical models. Two reanalysis data sets and observations from German weather stations are considered for 30 winters. Histograms of events exceeding selected return levels (1-, 2- and 5-year) are derived. Return periods of historical storm series are estimated based on the Poisson and the negative binomial distributions. Over 4000 years of general circulation model (GCM) simulations forced with current climate conditions are analysed to provide a better assessment of historical return periods. Estimations differ between distributions, for example 40 to 65 years for the 1990 series. For such less frequent series, estimates obtained with the Poisson distribution clearly deviate from empirical data. The negative binomial distribution provides better estimates, even though a sensitivity to return level and data set is identified. The consideration of GCM data permits a strong reduction of uncertainties. The present results support the importance of considering explicitly clustering of losses for an adequate risk assessment for economical applications.http://www.nat-hazards-earth-syst-sci.net/14/2041/2014/nhess-14-2041-2014.pdf
collection DOAJ
language English
format Article
sources DOAJ
author M. K. Karremann
J. G. Pinto
P. J. von Bomhard
M. Klawa
spellingShingle M. K. Karremann
J. G. Pinto
P. J. von Bomhard
M. Klawa
On the clustering of winter storm loss events over Germany
Natural Hazards and Earth System Sciences
author_facet M. K. Karremann
J. G. Pinto
P. J. von Bomhard
M. Klawa
author_sort M. K. Karremann
title On the clustering of winter storm loss events over Germany
title_short On the clustering of winter storm loss events over Germany
title_full On the clustering of winter storm loss events over Germany
title_fullStr On the clustering of winter storm loss events over Germany
title_full_unstemmed On the clustering of winter storm loss events over Germany
title_sort on the clustering of winter storm loss events over germany
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2014-08-01
description During the last decades, several windstorm series hit Europe leading to large aggregated losses. Such storm series are examples of serial clustering of extreme cyclones, presenting a considerable risk for the insurance industry. Clustering of events and return periods of storm series for Germany are quantified based on potential losses using empirical models. Two reanalysis data sets and observations from German weather stations are considered for 30 winters. Histograms of events exceeding selected return levels (1-, 2- and 5-year) are derived. Return periods of historical storm series are estimated based on the Poisson and the negative binomial distributions. Over 4000 years of general circulation model (GCM) simulations forced with current climate conditions are analysed to provide a better assessment of historical return periods. Estimations differ between distributions, for example 40 to 65 years for the 1990 series. For such less frequent series, estimates obtained with the Poisson distribution clearly deviate from empirical data. The negative binomial distribution provides better estimates, even though a sensitivity to return level and data set is identified. The consideration of GCM data permits a strong reduction of uncertainties. The present results support the importance of considering explicitly clustering of losses for an adequate risk assessment for economical applications.
url http://www.nat-hazards-earth-syst-sci.net/14/2041/2014/nhess-14-2041-2014.pdf
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