Performance evaluation of CFSR, MERRA-2 and TRMM3B42 data sets in simulating river discharge of data-scarce tropical catchments: a case study of Manafwa, Uganda

Author:

Nakkazi Maria Theresa12ORCID,Sempewo Jotham Ivan1,Tumutungire Martin Dahlin1,Byakatonda Jimmy3

Affiliation:

1. Civil and Environmental Engineering Department, Makerere University, P O Box 7062, Kampala, Uganda

2. Department of Civil Engineering, KU Leuven, Kasteelpark Arenberg 40, Bus 2448, Leuven 3001, Belgium

3. Department of Biosystems Engineering, Gulu University, P.O.Box 166, Gulu, Uganda

Abstract

Abstract Data scarcity has been a huge problem in modelling catchments especially in the tropical region. Satellite data and different statistical methods are being used to improve the quality of conventional meteorological data. However, their potential needs to be further investigated. This paper evaluates the performance of three datasets in simulating discharge of River Manafwa, Uganda. Two reanalysis datasets were selected for studying both rainfall and temperature, whereas a satellite algorithm was selected for studying rainfall alone. MERRA-2 data and CFSR were chosen as the reanalysis datasets whereas TRMM3B42 data were used as the satellite product in this study. The SWAT model was used to evaluate the performance of these datasets. The model performance indicators indicated that, at daily time steps, all the three datasets produced values of Nash -Sutcliffe Efficiency (NSE<0.4), coefficient of determination (R2<0.4) and Percent Bias +25%. Despite a general underperformance compared to MERRA-2, CFSR performed better than TRMM. On applying generated bias corrections for precipitation and temperature climate data, overall results showed that the bias-corrected data outperformed the original data. We conclude that, in the absence of gauged hydro-meteorological data, bias-corrected MERRA-2, CFSR and TRMM data could be used for simulating river discharge in data-scarce areas.

Publisher

IWA Publishing

Subject

Management, Monitoring, Policy and Law,Atmospheric Science,Water Science and Technology,Global and Planetary Change

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3. Daniel R. , ToddM., CharlotteM., ArthurT. & ZacharyM. E.2014Using the Climate Forecast System Reanalysis as Weather Input Data for Watershed Models. https://doi.org/10-1002/hyp.10073. Wiley Online Library.

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