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Suitability of averaged outputs from multiple rainfall-runoff models for hydrological extremes: a case of River Kafu catchment in East Africa

Suitability of averaged outputs from multiple rainfall-runoff models for hydrological extremes: a case of River Kafu catchment in East Africa

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dc.contributor.author Charles Onyutha
dc.contributor.author C. J. Amollo
dc.contributor.author J. Nyende
dc.contributor.author A. Nakagiri
dc.date.accessioned 2021-01-10T11:55:37Z
dc.date.available 2021-01-10T11:55:37Z
dc.date.issued 2020
dc.identifier.issn 25383604
dc.identifier.issn 25220101
dc.identifier.uri https://combine.alvar.ug/handle/1/49025
dc.description.abstract In this study, seven rainfall-runoff models were applied to model daily River Kafu flows from 1952 to 1981. Among others, models from the rainfall-runoff library of the eWater toolkit were applied. Optimal parameters of each model were obtained based on an automatic calibration strategy. Averaging in terms of simple arithmetic mean, hereinafter taken as the multi-model ensemble (MME), was performed to independently and identically distributed events separately extracted from the outputs of the individual models. How well the MME captured variation and frequency of observed hydrological extremes was assessed. Models performed better for high flows than low flows. Absolute model average biases on quantiles with return periods from 1 to 30 years were over the ranges 5.5–83.6% and 11.6–57.7% for high flows and low flows, respectively. It is envisaged that making model structures flexible and performing calibration with objective functions constrained to extreme events can enhance simultaneous capturing of high flows and low flows. The amount of variance in annual maxima series that could be explained by the multi-model ensemble was 73.4% and ranged from 35.1 to 82.5% for the individual models. This made the multi-model ensemble better than outputs from six of the seven models. For the annual minima flows, the multi-model ensemble yielded the smallest root mean squared error but the third largest coefficient of determination. Notably, the suitability of the multi-model ensemble in capturing the hydrological extremes depends on the selected goodness-of-fit measure, approach for combination of model outputs, number of models considered and length of data used.
dc.publisher Springer Science and Business Media LLC
dc.relation.ispartof International Journal of Energy and Water Resources
dc.title Suitability of averaged outputs from multiple rainfall-runoff models for hydrological extremes: a case of River Kafu catchment in East Africa
dc.type journal article
dc.identifier.doi 10.1007/s42108-020-00075-4
dc.identifier.mag 3030130307
dc.identifier.lens 020-367-370-487-650
dc.identifier.spage 1
dc.identifier.epage 14
dc.subject.lens-fields Statistics
dc.subject.lens-fields Quantile
dc.subject.lens-fields Drainage basin
dc.subject.lens-fields Coefficient of determination
dc.subject.lens-fields Mean squared error
dc.subject.lens-fields Independent and identically distributed random variables
dc.subject.lens-fields Calibration
dc.subject.lens-fields Maxima and minima
dc.subject.lens-fields Mathematics
dc.subject.lens-fields Arithmetic mean


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