Radial Basis Function Modeling of Hourly Streamflow Hydrograph
Publication: Journal of Hydrologic Engineering
Volume 12, Issue 1
Abstract
An artificial neural network is well known as a flexible mathematical tool that has the ability to generalize patterns in imprecise or noisy and ambiguous input and output data sets. The radial basis function (RBF) method is applied to model the relationship between rainfall and runoff for Sungai Bekok Catchment (Johor, Malaysia) and Sungai Ketil catchment (Kedah, Malaysia). The RBF is used to predict the streamflow hydrograph based on storm events. Evaluation on the performance of RBF is demonstrated based on errors (between predicted and actual) and comparison with the results of the Hydrologic Engineering Center hydrologic modeling system model. It is obvious that the RBF method offers an accurate modeling of streamflow hydrograph.
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© 2007 ASCE.
History
Received: Jul 25, 2003
Accepted: Feb 15, 2006
Published online: Jan 1, 2007
Published in print: Jan 2007
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