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Modelling average maximum daily temperature using r largest order statistics: An application to South African data

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dc.contributor.author Nemukula, M. M.
dc.contributor.author Sigauke, Caston
dc.date.accessioned 2022-11-09T08:28:54Z
dc.date.available 2022-11-09T08:28:54Z
dc.date.issued 2018-05-02
dc.identifier.citation Nemukula, M.M. & Sigauke, C., 2018, ‘Modelling average maximum daily temperature using r largest order statistics: An application to South African data’, Jàmbá: Journal of Disaster Risk Studies 10(1), a467. https://doi.org/ 10.4102/jamba.v10i1.467.<http://hdl.handle.net/11602/2336>. en_ZA
dc.identifier.other https://doi.org/ 10.4102/jamba.v10i1.467.
dc.identifier.uri http://hdl.handle.net/11602/2336
dc.description.abstract Natural hazards (events that may cause actual disasters) are established in the literature as major causes of various massive and destructive problems worldwide. The occurrences of earthquakes, floods and heat waves affect millions of people through several impacts. These include cases of hospitalisation, loss of lives and economic challenges. The focus of this study was on the risk reduction of the disasters that occur because of extremely high temperatures and heat waves. Modelling average maximum daily temperature (AMDT) guards against the disaster risk and may also help countries towards preparing for extreme heat. This study discusses the use of the r largest order statistics approach of extreme value theory towards modelling AMDT over the period of 11 years, that is, 2000–2010. A generalised extreme value distribution for r largest order statistics is fitted to the annual maxima. This is performed in an effort to study the behaviour of the r largest order statistics. The method of maximum likelihood is used in estimating the target parameters and the frequency of occurrences of the hottest days is assessed. The study presents a case study of South Africa in which the data for the non-winter season (September–April of each year) are used. The meteorological data used are the AMDT that are collected by the South African Weather Service and provided by Eskom. The estimation of the shape parameter reveals evidence of a Weibull class as an appropriate distribution for modelling AMDT in South Africa. The extreme quantiles for specified return periods are estimated using the quantile function and the best model is chosen through the use of the deviance statistic with the support of the graphical diagnostic tools. The Entropy Difference Test (EDT) is used as a specification test for diagnosing the fit of the models to the data. en_ZA
dc.description.sponsorship The authors are grateful to the National Research Foundation of South Africa for funding this research, Eskom for providing the data, the University of Limpopo for its resources and the numerous people for their helpful comments on this article en_ZA
dc.publisher OASIS en_ZA
dc.title Modelling average maximum daily temperature using r largest order statistics: An application to South African data en_ZA


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