Setting Up Stage-Discharge Relations Using ANN
Publication: Journal of Hydrologic Engineering
Volume 5, Issue 4
Abstract
The artificial neural networks (ANNs) that try to mimic the functioning of the human brain are a powerful tool for input-output mapping. The setting up of a stage-discharge relation is an important part of the processing of streamflow data. Three-layer feedforward ANNs have been used to model river-rating curves. The results show that the ANN approach is much superior as compared to the conventional curve-fitting approach. The ANN is also able to model a loop-rating curve (hysteresis effect) very well.
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Received: Mar 12, 1999
Published online: Oct 1, 2000
Published in print: Oct 2000
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