Authors
Balew A Mekonnen, Alireza Nazemi, Kerry A Mazurek, Amin Elshorbagy, Gordon Putz
Publication date
2015/9/2
Journal
Hydrological sciences journal
Volume
60
Issue
9
Pages
1473-1489
Publisher
Taylor & Francis
Description
Much of the prairie region in North America is characterized by relatively flat terrain with many depressions on the landscape. The hydrological response (runoff) is a combination of the conventional runoff from the contributing areas and the occasional overflow from the non-contributing areas (depressions). In this study, we promote the use of a hybrid modelling structure to predict runoff generation from prairie landscapes. More specifically, the Soil and Water Assessment Tool (SWAT) is fused with artificial neural networks (ANNs), so that SWAT and the ANN module deal with the contributing and non-contributing areas, respectively. A detailed experimental study is performed to select the best set of inputs, training algorithms and hidden neurons. The results obtained in this study suggest that the fusion of process-based and data-driven models can provide improved modelling capabilities for representing the highly …
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