Conditional modelling approach to multivariate extreme value distributions: application to extreme rainfall events in South Africa

被引:0
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作者
Legesse Kassa Debusho
Tadele Akeba Diriba
机构
[1] University of South Africa,Department of Statistics
关键词
Conditional dependence modelling; Generalised Pareto distribution; Heffernan and Tawn model; Multivariate extremes; Rainfall extremes;
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学科分类号
摘要
Multivariate extreme value models are used to investigate the combined behaviour of several weather variables. To investigate joint dependence of extreme rainfall events, a multivariate conditional modelling approach was considered to analyse the behaviour of joint extremes of rainfall events at selected weather stations in South Africa. The results showed that the multivariate conditional modelling fitted to daily maximum rainfall events provided apparent benefits in terms of improved precision in the estimation of the marginal parameters of generalised Pareto distribution. The conditional modelling approach provided all forms of dependence using Laplace marginal transformations, for which all weather stations are not extreme equally. Bootstrap sampling was also employed to account for models uncertainty in computing the prediction standard errors, and compared with the prediction obtained from the conditional model fitted to extreme data. The results obtained from predictions reflected both the marginal and the dependence features, and the extremal dependence structure described consistently for extreme daily maximum rainfall events between weather stations. The current study contributes towards understanding the salient features on the extremal dependence of rainfall extremes which are associated with e.g., flash floods and landslides. This knowledge has practical applications in disaster risk preparedness by responsible authorities.
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页码:469 / 501
页数:32
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