Research on SSA-LSTM-Based Slope Monitoring and Early Warning Model
Abstract
:1. Introduction
2. Background of the Case
2.1. Research Area
2.2. Monitoring Methods
3. Displacement Prediction Model
3.1. SSA
3.2. LSTM
- (1)
- Forgetting gate: used to determine whether to retain the value of the memory unit through the sigmoid function to determine the input information and the previous moment of information forgotten or retained. Its formula is shown in (4):
- (2)
- Input gates: used to control the addition of new information on the training process to obtain the cell state at that moment. The sigmoid layer in the input gate determines the content of the information update, and the tanh layer generates a new vector of candidate values to be added to the current state. The formulas are shown in (5) and (6):
- (3)
- output gate: the output value determined by the sigmoid function is multiplied with the tanh functions to obtain the final output value. The formula is shown in (8):
3.3. SSA-LSTM
- Reading of monitoring data;
- Data pre-processing, including filtering and normalization of monitoring data;
- Population initialization, including population size, maximum number of iterations, percentage of discoverers and scouts, and optimization parameters of LSTM;
- Execution of SSA algorithm;
- If the algorithm reaches the preset maximum number of iterations or the best fitness is continuously maintained at 10% of the total number of iterations, the algorithm search ends and returns the sparrow location information of the best fitness, which is the best optimization parameter of the LSTM; otherwise, skip to 4;
- The optimization results are used to build the LSTM model and saved.
3.4. Comparison of Predicted Results
4. Building Early Warning Models
4.1. Model Updates
4.2. Early Warning Level Classification
4.3. Early Warning Model Workflow
- Data pre-processing, including noise reduction, normalization, and extraction of the first 300 data;
- Optimize the online migration learning of the initial model using the SSA algorithm to update the weights within the initial model to adapt it to the latest monitoring data using the 300 most recent data monitored;
- Predict the displacement value for the coming day and obtain the warning level of displacement for that day using the improved tangent angle model;
- Transmission of alert levels to the server side for alerting.
5. Discussion
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Monitoring Content | Monitoring Equipment | Monitoring Site | Number of Sensors |
---|---|---|---|
Displacement | Guide wheel type fixed measurement | Landslide body | 4 |
Pore water pressure | Pore water pressure gauge | Landslide body | 6 |
Water-level monitoring | Water level gauge | Landslide body | 2 |
Soil water content | Moisture meter | Landslide body | 8 |
Rainfall monitoring | Rain gauge | Side slope area | 1 |
Type of Error | SSA-LSTM | LSTM |
---|---|---|
MAE | 0.875 | 3.276 |
RMSE | 1.307 | 3.393 |
R2 | 0.965 | 0.766 |
Type of Error | SSA-LSTM | LSTM |
---|---|---|
MAE | 9.063 | 5.997 |
RMSE | 9.439 | 7.563 |
R2 | 0.880 | 0.923 |
Type of Error | SSA-LSTM | LSTM |
---|---|---|
MAE | 1.200 | 1.421 |
RMSE | 1.269 | 1.700 |
R2 | 0.922 | 0.860 |
Type of Error | SSA-LSTM | LSTM |
---|---|---|
MAE | 2.168 | 2.927 |
RMSE | 2.375 | 3.612 |
R2 | 0.978 | 0.949 |
Type of Error | Online Learning | Off-Line Learning | Upgraded |
---|---|---|---|
Average error | 0.935 | 5.057 | 4.122 |
Maximum Error | 5.859 | 12.701 | 6.842 |
Type of Error | Online Learning | Off-Line Learning | Upgraded |
---|---|---|---|
Average error | 2.275 | 10.304 | 8.030 |
Maximum Error | 4.489 | 14.235 | 9.746 |
Type of Error | Online Learning | Off-Line Learning | Upgraded |
---|---|---|---|
Average error | 1.530 | 9.550 | 8.021 |
Maximum Error | 5.838 | 14.522 | 8.683 |
Type of Error | Online Learning | Off-Line Learning | Upgraded |
---|---|---|---|
Average error | 0.765 | 8.063 | 7.298 |
Maximum Error | 1.727 | 9.562 | 7.835 |
Early Warning Thresholds | ||||
---|---|---|---|---|
Early warning level | None | Green alert | Yellow alert | Red alert |
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Yang, S.; Jin, A.; Nie, W.; Liu, C.; Li, Y. Research on SSA-LSTM-Based Slope Monitoring and Early Warning Model. Sustainability 2022, 14, 10246. https://doi.org/10.3390/su141610246
Yang S, Jin A, Nie W, Liu C, Li Y. Research on SSA-LSTM-Based Slope Monitoring and Early Warning Model. Sustainability. 2022; 14(16):10246. https://doi.org/10.3390/su141610246
Chicago/Turabian StyleYang, Shasha, Anjie Jin, Wen Nie, Cong Liu, and Yu Li. 2022. "Research on SSA-LSTM-Based Slope Monitoring and Early Warning Model" Sustainability 14, no. 16: 10246. https://doi.org/10.3390/su141610246
APA StyleYang, S., Jin, A., Nie, W., Liu, C., & Li, Y. (2022). Research on SSA-LSTM-Based Slope Monitoring and Early Warning Model. Sustainability, 14(16), 10246. https://doi.org/10.3390/su141610246