DOI:​10.1016/j.cageo.2012.02.007
Corpus ID: 30636693
River suspended sediment estimation by climatic variables implication: Comparative study among soft computing techniques
Ö. Kisi, J. Shiri
Published 2012
Environmental Science, Computer Science
Comput. Geosci.
Estimating sediment volume carried by a river is an important issue in water resources engineering. This paper compares the accuracy of three different soft computing methods, Artificial Neural… Expand
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Soft computing
Adaptive neuro fuzzy inference system
Gene expression programming
Gradient descent
Levenberg–Marquardt algorithm
Conjugate gradient method
Discharger
Neuro-fuzzy
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568 Citations
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