A Tailings Dam Long-Term Deformation Prediction Method Based on Empirical Mode Decomposition and LSTM Model Combined with Attention Mechanism
Abstract
:1. Introduction
2. Materials and Methods
2.1. Dam Displacement Prediction Process
- (1)
- Data preprocessing: elimination of outliers and missing value interpolation.
- (2)
- The decomposition and reconstruction of multi-factor time series data through the EMD method.
- (3)
- Determining the input sequence by the lag autocorrelation coefficient method.
- (4)
- Parameter adjustment of lagging LSTM network based on attention mechanism.
- (5)
- Results prediction and accuracy evaluation.
2.1.1. Principle of EMD Method
2.1.2. Lagged Autocorrelation Coefficient
2.1.3. LSTM Network
2.1.4. Attention Mechanism
2.1.5. Prediction Model Structure
2.2. A Tailing Dam Study
2.2.1. Introduction of Background
2.2.2. The Outlier Data Processing
2.2.3. Missing Value Date Processing
2.2.4. Data Normalization
3. Results
3.1. Data Analysis and Processing
3.2. EMD Reorganization of Absolute Deformation of the Tailings Dam
3.2.1. Stationarity Test
3.2.2. Component Identification
3.3. Input Sequence
3.4. Model Parameter Setting
4. Discussion
4.1. Factor Analysis
4.2. Model Application
5. Conclusions
- (1)
- In this study, the EMD-attention-LSTM neural network model is proposed. Compared with the control models, this model achieves higher accuracy in the prediction of tailings dam deformation under the influence of rainfall and phreatic line, and also has good performance in multiple directions. The prediction effect reflects the universality of this model in the prediction of tailings dam deformation. This method is suitable for dam deformation prediction under the influence of rainfall and phreatic line and has engineering significance.
- (2)
- The LSTM model used in this study effectively avoids the problem of gradient disappearance and gradient explosion, while the model considers the lag to better reflect the delayed impact of external factors on the dam deformation in real situations.
- (3)
- Compared with a single LSTM model, the addition of the attention mechanism takes into account the characteristics of the input variables and the long-term dependence of the time series, which improves the prediction accuracy of the dam displacement.
- (4)
- The significance test reveals that atmospheric rainfall and the change of phreatic line in the tailings dam will accelerate the tailings dam deformation process, and the change of phreatic line has a more significant effect on tailings dam deformation.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Original Data | IMF1 | IMF2 | IMF3 | IMF4 | IMF5 | Residual Term | |
---|---|---|---|---|---|---|---|
Test Statistic | 0.900 | −8.065 | −7.577 | −7.348 | −4.637 | −4.225 | −0.641 |
p-value | 0.788 | 0.000 | 0.000 | 0.000 | 0.000 | 0.001 | 0.861 |
Stationarity | N | Y | Y | Y | Y | Y | N |
IMFs and Residual Term | IMF1 | IMF2 | IMF3 | IMF4 | IMF5 | Residual Term |
---|---|---|---|---|---|---|
Pearson Correlation Coefficient | 0.2077 | 0.1264 | 0.1453 | 0.1470 | 0.4599 | 0.9122 |
Day | EMD-Attention-LSTM | EMD-LSTM | EMD-ARIMA | Multiple Regression | LSTM | SVM | |
---|---|---|---|---|---|---|---|
RMSE | 1 | 0.144 | 0.371 | 0.529 | 4.760 | 0.470 | 0.296 |
5 | 0.183 | 0.351 | 0.410 | 4.398 | 0.411 | 0.496 | |
10 | 0.549 | 0.934 | 1.049 | 4.673 | 0.945 | 1.167 | |
15 | 0.553 | 0.835 | 0.992 | 4.675 | 0.907 | 1.129 | |
20 | 0.607 | 0.865 | 1.010 | 4.844 | 0.893 | 1.222 | |
25 | 0.625 | 0.898 | 1.053 | 5.237 | 0.908 | 1.208 | |
30 | 0.729 | 0.955 | 1.120 | 4.937 | 0.970 | 1.285 | |
MAE | 1 | 0.157 | 0.524 | 0.676 | 6.731 | 0.642 | 0.384 |
5 | 0.215 | 0.439 | 0.536 | 6.080 | 0.462 | 0.573 | |
10 | 0.509 | 0.992 | 1.059 | 6.455 | 0.955 | 1.078 | |
15 | 0.555 | 0.906 | 1.035 | 6.455 | 0.950 | 1.145 | |
20 | 0.636 | 0.945 | 1.054 | 6.668 | 0.934 | 1.274 | |
25 | 0.664 | 0.996 | 1.111 | 6.747 | 0.965 | 1.294 | |
30 | 0.770 | 1.068 | 1.207 | 6.801 | 1.063 | 1.394 |
Multiple Regression Model | Unstandardized Coefficient B | Standard Error | t | Significance |
---|---|---|---|---|
Constant | −22.890 | 5.631 | −4.065 | 0.000 |
Phreatic line | 0.524 | 0.263 | 1.991 | 0.047 |
rainfall | −0.392 | 0.152 | −2.588 | 0.010 |
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Zhu, Y.; Gao, Y.; Wang, Z.; Cao, G.; Wang, R.; Lu, S.; Li, W.; Nie, W.; Zhang, Z. A Tailings Dam Long-Term Deformation Prediction Method Based on Empirical Mode Decomposition and LSTM Model Combined with Attention Mechanism. Water 2022, 14, 1229. https://doi.org/10.3390/w14081229
Zhu Y, Gao Y, Wang Z, Cao G, Wang R, Lu S, Li W, Nie W, Zhang Z. A Tailings Dam Long-Term Deformation Prediction Method Based on Empirical Mode Decomposition and LSTM Model Combined with Attention Mechanism. Water. 2022; 14(8):1229. https://doi.org/10.3390/w14081229
Chicago/Turabian StyleZhu, Yang, Yijun Gao, Zhenhao Wang, Guansen Cao, Renjie Wang, Song Lu, Wei Li, Wen Nie, and Zhongrong Zhang. 2022. "A Tailings Dam Long-Term Deformation Prediction Method Based on Empirical Mode Decomposition and LSTM Model Combined with Attention Mechanism" Water 14, no. 8: 1229. https://doi.org/10.3390/w14081229
APA StyleZhu, Y., Gao, Y., Wang, Z., Cao, G., Wang, R., Lu, S., Li, W., Nie, W., & Zhang, Z. (2022). A Tailings Dam Long-Term Deformation Prediction Method Based on Empirical Mode Decomposition and LSTM Model Combined with Attention Mechanism. Water, 14(8), 1229. https://doi.org/10.3390/w14081229