Predicting evaporation with optimized artificial neural network using multi-objective salp swarm algorithm

被引:0
作者
Mohammad Ehteram
Fatemeh Panahi
Ali Najah Ahmed
Yuk Feng Huang
Pavitra Kumar
Ahmed Elshafie
机构
[1] Semnan University,Department of Water Engineering and Hydraulic Structures, Faculty of Civil Engineering
[2] University of Kashan,Faculty of Natural Resources and Earth Sciences
[3] Universiti Tenaga Nasional (UNITEN),Institute of Energy Infrastructure (IEI), Department of Civil Engineering, College of Engineering,
[4] Universiti Tunku Abdul Rahman,Department of Civil Engineering, Lee Kong Chian Faculty of Engineering and Science
[5] University of Malaya (UM),Department of Civil Engineering, Faculty of Engineering
[6] United Arab Emirates University,National Water and Energy Center
来源
Environmental Science and Pollution Research | 2022年 / 29卷
关键词
Multi-objective optimization algorithms; Evaporation; MLP; Pareto front;
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学科分类号
摘要
Evaporation is a crucial component to be established in agriculture management and water engineering. Evaporation prediction is thus an essential issue for modeling researchers. In this study, the multilayer perceptron (MLP) was used for predicting daily evaporation. MLP model is as one of the famous ANN models with multilayers for predicting different target variables. A new strategy was used to enhance the accuracy of the MLP model. Three multi-objective algorithms, namely, the multi-objective salp swarm algorithm (MOSSA), the multi-objective crow algorithm (MOCA), and the multi-objective particle swarm optimization (MOPSO), were respectively and separately coupled to the MLP model for determining the model parameters, the best input combination, and the best activation function. In this study, three stations in Malaysia, namely, the Muadzam Shah (MS), the Kuala Terengganu (KT), and the Kuantan (KU), were selected for the prediction of the respective daily evaporation. The spacing (SP) and maximum spread (MS) indices were used to evaluate the quality of generated Pareto front (PF) by the algorithms. The lower SP and higher MS showed better PF for the models. It was observed that the MOSSA had higher MS and lower SP than the other algorithms, at all stations. The root means square error (RMSE), mean absolute error (MAE), percent bias (PBIAS), and Nash Sutcliffe efficiency (NSE) quantifiers were used to compare the ability of the models with each other. The MLP-MOSSA had reduced RMSE compared to the MLP-MOCA, MLP-MOPSO, and MLP models by 18%, 25%, and 35%, respectively, at the MS station. The MAE of the MLP-MOSSA was 2.7%, 4.1%, and 26%, respectively lower than those of the MLP-MOCA, MLP-MOPSO, and MLP models at the KU station. The MLP-MOSSA showed lower MAE than the MLP-MOCA, MLP-MOPSO, and MLP models by 16%, 18%, and 19%, respectively, at the KT station. An uncertainty analysis was performed based on the input and parameter uncertainty. The results indicated that the MLP-MOSSA had the lowest uncertainty among the models. Also, the input uncertainty was lower than the parameter uncertainty. The general results indicated that the MLP-MOSSA had the high efficiency for predicting evaporation.
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页码:10675 / 10701
页数:26
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