Conjunction of a newly proposed emotional ANN (EANN) and wavelet transform for suspended sediment load modeling

Author:

Sharghi Elnaz1,Nourani Vahid12,Najafi Hessam1,Gokcekus Huseyin2

Affiliation:

1. Dept. of Water Resources Engineering, Faculty of Civil Engineering, University of Tabriz, P.O. Box: 51666, Tabriz, Iran

2. Faculty of Civil and Environmental Engineering, Near East University, Lefkosa, TRNC, Cyprus

Abstract

Abstract Suspended sediment load (SSL) time series have three principal inherent components (autoregressive trend, seasonality and stochastic terms) and the overall performance of an SSL modeling tool is associated with the correct estimation of these components. In this study, novel developments of artificial neural network (ANN) models, emotional ANN (EANN) and hybrid wavelet-EANN (WEANN), are employed to estimate the daily and monthly SSL of two rivers (Upper Rio Grande and Lighvanchai) with different hydro-geomorphological conditions. The overall results obtained via autoregressive models, the ANN and EANN, specify the supremacy of EANN (with a few hormonal parameters) against ANN due to the EANN better training the model versus extreme conditions. Also, the obtained results exhibit that the WEANN model could improve the SSL modeling up to 42% and 14% for daily modeling and up to 141% and 87% for monthly modeling in the Upper Rio Grande and Lighvanchai Rivers, respectively.

Publisher

IWA Publishing

Subject

Water Science and Technology

Reference19 articles.

1. Toward multi-day-ahead forecasting of suspended sediment concentration using ensemble models;Alizadeh;Environmental Science and Pollution Research,2017

2. The comparison of artificial intelligence models for the estimation of daily suspended sediment load: a case study on Telar and Kasilian Rivers in Iran;Water Science and Technology: Water Supply,2018

3. Influence of dams on sediment continuity: a study case of a natural metallic contamination;Science of the Total Environment,2016

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