2013
DOI: 10.1016/j.wace.2013.07.003
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A robust estimator for the intensity of the Poisson point process of extreme weather events

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Cited by 9 publications
(4 citation statements)
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“…The p value for this table is 0.0177, which supports the argument that in years with multiple storms, the storms are stronger than in years with only one storm, or, in terms of physical argument, years with conditions favorable for hurricanes in an area are likely to have both more storms and stronger storms than years in which conditions are not favorable. Problems with mixed populations and clustering can be found in GEV methods and have shown that both approaches have to be used with care in such situations (Ashkar and Tatsambon 2007;Dalelane and Deutscländer 2013) and as noted previously are recognized to create problems with GPD methods. Often these populations have recognizable physical bases that can help understand the differences between different populations, for example surges from extratropical storms versus surges from tropical storms and storms making local landfall versus those which make landfall some distance from a site.…”
Section: Storm Intensity and Storm Ratementioning
confidence: 92%
See 1 more Smart Citation
“…The p value for this table is 0.0177, which supports the argument that in years with multiple storms, the storms are stronger than in years with only one storm, or, in terms of physical argument, years with conditions favorable for hurricanes in an area are likely to have both more storms and stronger storms than years in which conditions are not favorable. Problems with mixed populations and clustering can be found in GEV methods and have shown that both approaches have to be used with care in such situations (Ashkar and Tatsambon 2007;Dalelane and Deutscländer 2013) and as noted previously are recognized to create problems with GPD methods. Often these populations have recognizable physical bases that can help understand the differences between different populations, for example surges from extratropical storms versus surges from tropical storms and storms making local landfall versus those which make landfall some distance from a site.…”
Section: Storm Intensity and Storm Ratementioning
confidence: 92%
“…Problems with mixed populations and clustering can be found in GEV methods and have shown that both approaches have to be used with care in such situations (Ashkar and Tatsambon 2007 ; Dalelane and Deutscländer 2013 ) and as noted previously are recognized to create problems with GPD methods. Often these populations have recognizable physical bases that can help understand the differences between different populations, for example surges from extratropical storms versus surges from tropical storms and storms making local landfall versus those which make landfall some distance from a site.…”
Section: Examples Of Natural Structure Directly Affecting Surge Hazar...mentioning
confidence: 97%
“…A more suitable approach is to apply Poisson point process models which allow models to be fit to the point event data directly. Poisson point process models are suitable for modelling the distribution of points in space and time and have been used in a number of settings including modelling disease case data, species distributions [42] and locations of storm peaks [43].…”
Section: Spatial Modellingmentioning
confidence: 99%
“…This study is set in Germany where the topic of heat waves is of urgent relevance, too. The global trend of increased annual average temperatures and more extreme heat waves also applies to Europe and Germany (Dalelane & Deutschländer, 2013; Fischer & Schär, 2010; Jacob et al., 2014), provoking growing numbers of citizens experiencing negative health impacts, thus higher costs for the health system and ultimately an increase in fatalities (Forzieri et al., 2017). In Germany, the years from 2018 to 2020 were the hottest years on record to date (DWD, 2020) and almost 20,000 heat‐related fatalities occurred during these three summers (Winklmayr et al., 2022).…”
Section: Introductionmentioning
confidence: 99%