Please use this identifier to cite or link to this item: https://hdl.handle.net/1959.11/29936
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dc.contributor.authorLangat, Philipen
dc.contributor.authorKumar, Laliten
dc.contributor.authorKoech, Richarden
dc.date.accessioned2021-01-26T23:41:41Z-
dc.date.available2021-01-26T23:41:41Z-
dc.date.issued2019-04-09-
dc.identifier.citationWater, 11(4), p. 1-24en
dc.identifier.issn2073-4441en
dc.identifier.urihttps://hdl.handle.net/1959.11/29936-
dc.description.abstractHydrological studies are useful in designing, planning, and managing water resources, infrastructure, and ecosystems. Probability distribution models are applied in extreme flood analysis, drought investigations, reservoir volumes studies, and time-series modelling, among other various hydrological studies. However, the selection of the most suitable probability distribution and associated parameter estimation procedure, as a fundamental step in flood frequency analysis, has remained the most difficult task for many researchers and water practitioners. This paper explains the current approaches that are used to identify the probability distribution functions that are best suited for the estimation of maximum, minimum, and mean streamflows. Then, it compares the performance of six probability distributions, and illustrates four fitting tests, evaluation procedures, and selection procedures through using a river basin as a case study. An assemblage of the latest computer statistical packages in an integrated development environment for the R programming language was applied. Maximum likelihood estimation (MLE), goodness-of-fit (GoF) tests-based analysis, and information criteria-based selection procedures were used to identify the most suitable distribution models. The results showed that the gamma (Pearson type 3) and lognormal distribution models were the best-fit functions for maximum streamflows, since they had the lowest Akaike Information Criterion values of 1083 and 1081, and Bayesian Information Criterion (BIC) values corresponding to 1087 and 1086, respectively. The Weibull, GEV, and Gumbel functions were the best-fit functions for the annual minimum flows of the Tana River, while the lognormal and GEV distribution functions the best-fit functions for the annual mean flows of the Tana River. The choices of the selected distribution functions may be used for forecasting hydrologic events and detecting the inherent stochastic characteristics of the hydrologic variables for predictions in the Tana River Basin. This paper also provides a significant contribution to the current understanding of predicting extreme hydrological events for various purposes. It indicates a direction for hydro-meteorological scientists within the current debate surrounding whether to use historical data and trend estimation techniques for predicting future events with issues of non-stationarity and underlying stochastic processes.en
dc.languageenen
dc.publisherMDPI AGen
dc.relation.ispartofWateren
dc.rightsAttribution 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/*
dc.titleIdentification of the Most Suitable Probability Distribution Models for Maximum, Minimum, and Mean Streamflowen
dc.typeJournal Articleen
dc.identifier.doi10.3390/w11040734en
dcterms.accessRightsUNE Greenen
local.contributor.firstnamePhilipen
local.contributor.firstnameLaliten
local.contributor.firstnameRicharden
local.subject.for2008090509 Water Resources Engineeringen
local.subject.seo2008960604 Environmental Management Systemsen
local.profile.schoolSchool of Environmental and Rural Scienceen
local.profile.schoolSchool of Environmental and Rural Scienceen
local.profile.schoolSchool of Environmental and Rural Scienceen
local.profile.emailplangat2@une.edu.auen
local.profile.emaillkumar@une.edu.auen
local.profile.emailrkoech@une.edu.auen
local.output.categoryC1en
local.record.placeauen
local.record.institutionUniversity of New Englanden
local.publisher.placeSwitzerlanden
local.identifier.runningnumber734en
local.format.startpage1en
local.format.endpage24en
local.identifier.scopusid85065040511en
local.peerreviewedYesen
local.identifier.volume11en
local.identifier.issue4en
local.access.fulltextYesen
local.contributor.lastnameLangaten
local.contributor.lastnameKumaren
local.contributor.lastnameKoechen
dc.identifier.staffune-id:plangat2en
dc.identifier.staffune-id:lkumaren
dc.identifier.staffune-id:rkoechen
local.profile.orcid0000-0002-9205-756Xen
local.profile.roleauthoren
local.profile.roleauthoren
local.profile.roleauthoren
local.identifier.unepublicationidune:1959.11/29936en
dc.identifier.academiclevelStudenten
dc.identifier.academiclevelAcademicen
dc.identifier.academiclevelAcademicen
local.title.maintitleIdentification of the Most Suitable Probability Distribution Models for Maximum, Minimum, and Mean Streamflowen
local.output.categorydescriptionC1 Refereed Article in a Scholarly Journalen
local.search.authorLangat, Philipen
local.search.authorKumar, Laliten
local.search.authorKoech, Richarden
local.open.fileurlhttps://rune.une.edu.au/web/retrieve/090e15ba-1c4f-4650-9589-ef07aa6c0203en
local.uneassociationYesen
local.atsiresearchNoen
local.sensitive.culturalNoen
local.identifier.wosid000473105700104en
local.year.published2019en
local.fileurl.openhttps://rune.une.edu.au/web/retrieve/090e15ba-1c4f-4650-9589-ef07aa6c0203en
local.fileurl.openpublishedhttps://rune.une.edu.au/web/retrieve/090e15ba-1c4f-4650-9589-ef07aa6c0203en
local.subject.for2020400513 Water resources engineeringen
local.subject.seo2020189999 Other environmental management not elsewhere classifieden
Appears in Collections:Journal Article
School of Environmental and Rural Science
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