LSTM-Based Deformation Prediction Model of the Embankment Dam of the Danjiangkou Hydropower Station
Abstract
:1. Introduction
2. Theory of Deformation Prediction for Earth Rock Dam
3. Prediction Model of the Earth Rock Dam Deformation Based on LSTM
3.1. LSTM Model
3.2. Bidirectional LSTM Model
3.3. Modeling Steps
4. Deformation Prediction of the Earth Rock Dam of the Danjiangkou Hydropower Station
5. Conclusions and Outlook
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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RMSE | MAE | MSE | |
---|---|---|---|
PLSR | 0.56456 | 0.42978 | 0.31873 |
Training set of LSTM | 0.52767 | 0.39556 | 0.27844 |
Test set of LSTM | 0.47561 | 0.35264 | 0.22621 |
Total of LSTM | 0.51768 | 0.38698 | 0.26799 |
Training set of bidirectional LSTM | 0.54676 | 0.41253 | 0.29895 |
Test set of bidirectional LSTM | 0.45400 | 0.34418 | 0.20612 |
Total of bidirectional LSTM | 0.52951 | 0.39886 | 0.28038 |
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Wang, S.; Yang, B.; Chen, H.; Fang, W.; Yu, T. LSTM-Based Deformation Prediction Model of the Embankment Dam of the Danjiangkou Hydropower Station. Water 2022, 14, 2464. https://doi.org/10.3390/w14162464
Wang S, Yang B, Chen H, Fang W, Yu T. LSTM-Based Deformation Prediction Model of the Embankment Dam of the Danjiangkou Hydropower Station. Water. 2022; 14(16):2464. https://doi.org/10.3390/w14162464
Chicago/Turabian StyleWang, Shuming, Bing Yang, Huimin Chen, Weihua Fang, and Tiantang Yu. 2022. "LSTM-Based Deformation Prediction Model of the Embankment Dam of the Danjiangkou Hydropower Station" Water 14, no. 16: 2464. https://doi.org/10.3390/w14162464
APA StyleWang, S., Yang, B., Chen, H., Fang, W., & Yu, T. (2022). LSTM-Based Deformation Prediction Model of the Embankment Dam of the Danjiangkou Hydropower Station. Water, 14(16), 2464. https://doi.org/10.3390/w14162464