A novel method for lake level prediction: deep echo state network

被引:9
|
作者
Alizamir, Meysam [1 ]
Kisi, Ozgur [2 ]
Kim, Sungwon [3 ]
Heddam, Salim [4 ]
机构
[1] Islamic Azad Univ, Hamedan Branch, Dept Civil Engn, Hamadan, Hamadan, Iran
[2] Ilia State Univ, Fac Nat Sci & Engn, Tbilisi, Georgia
[3] Dongyang Univ, Dept Railrd Construct & Safety Engn, Yeongju 36040, South Korea
[4] Fac Sci, Dept Agron, Hydraul Div, Lab Res Biodivers Interact Ecosyst & Biotechnol, Univ 20 Aout 1955,Route el Hadaik, Skikda, BP, Algeria
关键词
Lake level prediction; Deep echo state network; Extreme learning machine; ANNs; Regression tree; EXTREME LEARNING-MACHINE; SUPPORT VECTOR MACHINE; GLOBAL SOLAR-RADIATION; WATER-LEVEL; FEEDFORWARD NETWORKS; MODE DECOMPOSITION; REGRESSION TREE; NEURAL-NETWORK; FLUCTUATIONS; CLASSIFICATION;
D O I
10.1007/s12517-020-05965-9
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
Accurately prediction of lake level fluctuations is essential for water resources planning and management. In the present study, the potential of a novel method, deep echo state network (Deep ESN), is investigated for monthly lake level prediction and its results are compared with three data-driven methods, artificial neural networks (ANNs), extreme learning machine (ELM), and regression tree (Reg. Tree). The methods are validated using root mean square errors (RMSE), determination coefficient (R-2), and Nash-Sutcliffe efficiency (NSE) criteria. The investigated method (Deep ESN) outperforms the ELM, ANNs, and Reg. Tree by improving accuracies by 61-62-96%, 10-14-84%, and 8-23-80% in prediction 1 month, 2 months, and 3 months ahead lake level fluctuations in terms of RMSE criteria, respectively. Also, accuracy of ELM, ANNs, and Reg. Tree was significantly increased using Deep ESN model by 1.1-1.1-443%, 1.1-1.6-250%, and 1.6-6.5-184% in terms of NSE indicator for different lead-time horizons. Among the ELM, ANNs, and Reg. Tree, the third method provides the worst predictions while the first method performs superior to the second one in all tree time horizons.
引用
收藏
页数:18
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