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Estimating daily streamflow in the Congo Basin using satellite-derived data and a semi-distributed hydrological model
Authors:Yolande A Munzimi  Matthew C Hansen  Kwabena O Asante
Institution:1. Department of Geographical Sciences, University of Maryland, College Park, Maryland, USAyolande@umd.edu;3. Department of Geographical Sciences, University of Maryland, College Park, Maryland, USA;4. Hydrology and Information Management Group, GEI Consultants, Inc, Rancho Cordova, California, USA
Abstract:ABSTRACT

The application of remotely-sensed data for hydrological modeling of the Congo Basin is presented. Satellite-derived data, including TRMM precipitation, are used as inputs to drive the USGS Geospatial Streamflow Model (GeoSFM) to estimate daily river discharge over the basin from 1998 to 2012. Physically-based parameterization was augmented with a spatially-distributed calibration that enables GeoSFM to simulate hydrological processes such as the slowing effect of the Cuvette Centrale. The resulting simulated long-term mean of daily flows and the observed flow at the Kinshasa gauge were comparable (40 631 and 40 638 m3/s respectively), in the 7-year validation period (2004–2010), with no significant bias and a Nash-Sutcliffe model efficiency coefficient of 0.70. Modeled daily flows and aggregated monthly river outflows (compared to historical averages) for additional sites confirm the model reliability in capturing flow timing and seasonality across the basin, but sometimes fails to accurately predict flow magnitude. The results of this model can be useful in research and decision-making contexts and validate the application of satellite-based hydrological models driven for large, data-scarce river systems such as the Congo.
Keywords:Congo River Basin  streamflow  Cuvette Centrale  remote sensing  hydrological model  spatially-distributed calibration
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