Enhancing accuracy of extreme learning machine in predicting river flow using improved reptile search algorithm

被引:0
|
作者
Rana Muhammad Adnan
Reham R. Mostafa
Hong-Liang Dai
Salim Heddam
Adil Masood
Ozgur Kisi
机构
[1] Guangzhou University,School of Economics and Statistics
[2] Mansoura University,Information Systems Department, Faculty of Computers and Information Sciences
[3] Wuhan University of Science and Technology,Engineering Research Center for Metallurgical Automation and Measurement Technology of Ministry of Education
[4] University 20 Août 1955 Skikda,Faculty of Science, Agronomy Department
[5] Department of Civil Engineering,Department of Civil Engineering
[6] Jamia Millia Islamia University,Department of Civil Engineering
[7] Lübeck University of Applied Sciences,undefined
[8] Ilia State University,undefined
来源
Stochastic Environmental Research and Risk Assessment | 2023年 / 37卷
关键词
River flow modeling; Extreme leaning machine; Improved reptile search algorithm; Hydroclimatic data;
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学科分类号
摘要
This study searches the feasibility of a new hybrid extreme leaning machine tuned with improved reptile search algorithm (ELM-IRSA), in river flow modeling. The outcomes of the new method were compared with single ELM and hybrid ELM-based methods including ELM with salp swarm algorithm (SSA), ELM with equilibrium optimizer (EO) and ELM with reptile search algorithm (RSA). The methods were evaluated using different lagged inputs of temperature, precipitation and river flow data obtained from Upper Indus Basin located in Pakistan. Models performance evaluation was based on common statistics such as root mean square errors (RMSE), mean absolute errors, determination coefficient and Nash–Sutcliffe Efficiency. The prediction accuracy of single ELM model with respect to RMSE was improved by 2.8%, 7.7%, 15% and 20.7% using SSA, EO, RSA and IRSA metaheuristic algorithms in the test period, respectively. The ELM-IRSA model with lagged temperature and river flow inputs provided the best predictions with the RMSE improvement of 20.7%.
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页码:3063 / 3083
页数:20
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