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Application of soft computing models in streamflow forecasting

Adnan, R. M ; Sharif University of Technology | 2019

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  1. Type of Document: Article
  2. DOI: 10.1680/jwama.16.00075
  3. Publisher: ICE Publishing , 2019
  4. Abstract:
  5. The accuracy of five soft computing techniques was assessed for the prediction of monthly streamflow of the Gilgit river basin by a cross-validation method. The five techniques assessed were the feed-forward neural network (FFNN), the radial basis neural network (RBNN), the generalised regression neural network (GRNN), the adaptive neuro fuzzy inference system with grid partition (Anfis-GP) and the adaptive neuro fuzzy inference system with subtractive clustering (Anfis-SC). The interaction between temperature and streamflow was considered in the study. Two statistical indexes, mean square error (MSE) and coefficient of determination (R2), were used to evaluate the performances of the models. In all applications, RBNN and Anfis-SC were found to give more accurate results than the FFNN, GRNN and Anfis-GP models. The effect of periodicity was also examined by adding a periodicity component into the applied models and the results were compared with a statistical model (seasonal autoregressive integrated moving average (Sarima)) to check the prediction accuracy. The results of this comparison showed that periodicity inputs improved the prediction accuracy of the applied models and, in all cases, the soft computing models performed much better than the Sarima model. The periodic RBNN and Anfis-SC models increased the MSE accuracy of Sarima by 25·5-24·7%. © 2017 ICE Publishing: All rights reserved
  6. Keywords:
  7. Floods & floodworks ; Hydrology & water resource ; Mathematical modelling ; Floods ; Forecasting ; Fuzzy neural networks ; Fuzzy systems ; Mathematical models ; Mean square error ; Soft computing ; Stream flow ; Water resources ; Adaptive neuro-fuzzy inference system ; Coefficient of determination ; Cross-validation methods ; Radial basis neural networks ; Regression neural networks ; Seasonal autoregressive integrated moving averages ; Softcomputing techniques ; Subtractive clustering ; Fuzzy inference ; Accuracy assessment ; Artificial neural network ; Flood ; Forecasting method ; Numerical model ; River basin ; Streamflow ; Water resource ; Gilgit River ; Gilgit-Baltistan ; Pakistan
  8. Source: Proceedings of the Institution of Civil Engineers: Water Management ; Volume 172, Issue 3 , 2019 , Pages 123-134 ; 17417589 (ISSN)
  9. URL: https://www.icevirtuallibrary.com/doi/10.1680/jwama.16.00075