Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions
MSc (Statistics) === Department of Statistics === Haulage trucks and cross border traders cross through Beitbridge border post from landlocked countries such as Zimbabwe and Zambia for the sake of trading. Because of global warming, South Africa has lately been experiencing extreme weather pattern...
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ndltd-netd.ac.za-oai-union.ndltd.org-univen-oai-univendspace.univen.ac.za-11602-6762020-05-07T03:17:19Z Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions Kajambeu, Robert Sigauke, Caston Bere, Alphonce Extreme value theory Bayesian approach r-largest order statistics 627.40968257 Floods -- South Africa -- Limpopo Flood control -- South Africa -- Limpopo Flood damage -- South Africa -- Limpopo Bridges -- Flood damage -- South Africa -- Limpopo MSc (Statistics) Department of Statistics Haulage trucks and cross border traders cross through Beitbridge border post from landlocked countries such as Zimbabwe and Zambia for the sake of trading. Because of global warming, South Africa has lately been experiencing extreme weather patterns in the form of very high temperatures and heavy rainfall. Evidently, in 2013 tra c could not cross the Limpopo River because water was owing above the bridge. For planning, its important to predict the likelihood of such events occurring in future. Extreme value models o er one way in which this can be achieved. This study identi es suitable distributions to model the annual maximum heights of Limpopo river at Beitbridge border post. Maximum likelihood method and the Bayesian approach are used for parameter estimation. The r -largest order statistics was also used in this dissertation. For goodness of t, the probability and quantile- quantile plots are used. Finally return levels are calculated from these distributions. The dissertation has revealed that the 100 year return level is 6.759 metres using the maximum likelihood and Bayesian approaches to estimate parameters. Empirical results show that the Fr echet class of distributions ts well the ood heights data at Beitbridge border post. The dissertation contributes positively by informing stakeholders about the socio- economic impacts that are brought by extreme flood heights for Limpopo river at Beitbridge border post 2017-06-08T17:13:53Z 2017-06-08T17:13:53Z 2016 Dissertation http://hdl.handle.net/11602/676 en University of Venda 1 online resource (xx, 86 leaves : color illustrations) |
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Extreme value theory Bayesian approach r-largest order statistics 627.40968257 Floods -- South Africa -- Limpopo Flood control -- South Africa -- Limpopo Flood damage -- South Africa -- Limpopo Bridges -- Flood damage -- South Africa -- Limpopo |
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Extreme value theory Bayesian approach r-largest order statistics 627.40968257 Floods -- South Africa -- Limpopo Flood control -- South Africa -- Limpopo Flood damage -- South Africa -- Limpopo Bridges -- Flood damage -- South Africa -- Limpopo Kajambeu, Robert Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
description |
MSc (Statistics) === Department of Statistics === Haulage trucks and cross border traders cross through Beitbridge border post from
landlocked countries such as Zimbabwe and Zambia for the sake of trading. Because of
global warming, South Africa has lately been experiencing extreme weather patterns
in the form of very high temperatures and heavy rainfall. Evidently, in 2013 tra c
could not cross the Limpopo River because water was
owing above the bridge.
For planning, its important to predict the likelihood of such events occurring in
future. Extreme value models o er one way in which this can be achieved. This study
identi es suitable distributions to model the annual maximum heights of Limpopo
river at Beitbridge border post. Maximum likelihood method and the Bayesian
approach are used for parameter estimation.
The r -largest order statistics was also used in this dissertation. For goodness of
t, the probability and quantile- quantile plots are used. Finally return levels are
calculated from these distributions.
The dissertation has revealed that the 100 year return level is 6.759 metres using
the maximum likelihood and Bayesian approaches to estimate parameters. Empirical
results show that the Fr echet class of distributions ts well the
ood heights data at
Beitbridge border post.
The dissertation contributes positively by informing stakeholders about the socio-
economic impacts that are brought by extreme
flood heights for Limpopo river at Beitbridge border post |
author2 |
Sigauke, Caston |
author_facet |
Sigauke, Caston Kajambeu, Robert |
author |
Kajambeu, Robert |
author_sort |
Kajambeu, Robert |
title |
Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
title_short |
Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
title_full |
Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
title_fullStr |
Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
title_full_unstemmed |
Modelling flood heights of the Limpopo River at Beitbridge Border Post using extreme value distributions |
title_sort |
modelling flood heights of the limpopo river at beitbridge border post using extreme value distributions |
publishDate |
2017 |
url |
http://hdl.handle.net/11602/676 |
work_keys_str_mv |
AT kajambeurobert modellingfloodheightsofthelimpoporiveratbeitbridgeborderpostusingextremevaluedistributions |
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1719314132454342656 |