Iran-Water Resources Research

Iran-Water Resources Research

Discharge Prediction by Comparing Artificial Neural Network With Fuzzy Inference System (Case study: Zayandeh rud River)

Document Type : Original Article

Authors
1 Ph.D. Candidate, Water Structures., Chamran University, Ahvaz, Iran
2 M.Sc. Water Structures., Mazandaran University, Iran
Abstract
The Fuzzy Sets theory and the Artificial Neural Network are among the latest methods in Water Resources Engineering for systems dealing with complexity or ambiguity and lack enough data. The main advantage of these techniques over traditional methods is that they can investigate the effects of the available parameters on the process in a short time and with no need to cause complex mathematical equations. In this study time series of monthly discharge, temperature, and rainfall are used in the Artificial Neutral Network and  Fuzzy Inference System context in order to forecast the flow discharge for the upcoming months. Results of this research showed that the FIS gives better estimation than the ANN.
Keywords

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Volume 7, Issue 2
Summer 2011
Pages 92-97

  • Receive Date 09 September 2009
  • Accept Date 08 December 2010