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Research Articles

A hybrid method for forecasting river-suspended sediments in Iran

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Pages 453-460 | Received 08 Nov 2016, Accepted 29 Mar 2017, Published online: 20 Apr 2017
 

ABSTRACT

Estimation of sediment mass carried by rivers is an important issue in Hydrological Sciences. The main purpose of this research was to find an appropriate method to compute sediment discharge. Some machine-learning approaches have been used to forecast river-suspended sediments, correctly. One of the most effective and traditional approaches for forecasting events is to use artificial neural networks (ANNs). So, we are going to improve the performance of ANNs in estimation of suspended sediments, upon a data of Baba Aman basin in Iran. We first apply a typical neural network and obtain the root-mean-square-error of and the correlation coefficient of . Then, to improve the prediction ability of ANNs, we hybridize this method with cuckoo optimization algorithm (COA). Combination of ANNs with COA causes reduction in root-mean-square-error to , increasing in correlation coefficient to and also proposing a better model.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work was supported by Iranian National Science Foundation: [Grant Number 95004084].

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