Particle swarm optimization feedforward neural network for modeling runoff
The rainfall-runoff relationship is one of the most complex hydrological phenomena. In recent years, hydrologists have successfully applied backpropagation neural network as a tool to model various nonlinear hydrological processes because of its ability to generalize patterns in imprecise or noisy a...
Main Authors: | Kuok, K. K., Harun, Sobri, Shamsuddin, Siti Mariyam |
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Format: | Article |
Published: |
IJENS Publishers
2010
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Subjects: |
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