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Titel Classification and flow prediction in a data-scarce watershed of the equatorial Nile region
VerfasserIn J.-M. Kileshye Onema, A. E. Taigbenu, J. Ndiritu
Medientyp Artikel
Sprache Englisch
ISSN 1027-5606
Digitales Dokument URL
Erschienen In: Hydrology and Earth System Sciences ; 16, no. 5 ; Nr. 16, no. 5 (2012-05-15), S.1435-1443
Datensatznummer 250013298
Publikation (Nr.) Volltext-Dokument vorhandencopernicus.org/hess-16-1435-2012.pdf
 
Zusammenfassung
Continuous developments and investigations in flow predictions are of interest in watershed hydrology especially where watercourses are poorly gauged and data are scarce like in most parts of Africa. Thus, this paper reports on two approaches to generate local monthly runoff of the data-scarce Semliki watershed. The Semliki River is part of the upper drainage of the Albert Nile. With an average annual local runoff of 4.622 km3/annum, the Semliki watershed contributes up to 20% of the flows of the White Nile. The watershed was sub-divided in 21 sub-catchments (S3 to S23). Using eight physiographic and meteorological variables, generated from remotely sensed acquired datasets and limited catchment data, monthly runoffs were estimated. One ordination technique, the Principal Component Analysis (PCA), and the tree cluster analysis of the landform attributes were performed to study the data structure and spot physiographic similarities between sub-catchments. The PCA revealed the existence of two major groups of sub-catchments – flat (Group I) and hilly (Group II). Linear and nonlinear regression models were used to predict the long-term monthly mean discharges for the two groups of sub-catchments, and their performance evaluated by the Nash-Sutcliffe Efficiency (NSE), Percent bias (PBIAS) and root mean square error to the standard deviation ratio (RSR). The dimensionless indices used for model evaluation indicate that the non-linear model provides better prediction of the flows than the linear one.
 
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