Capture and Prediction of Rainfall-Induced Landslide Warning Signals Using an Attention-Based Temporal Convolutional Neural Network and Entropy Weight Methods
Abstract
:1. Introduction
- We combine an attention mechanism with multiple entropy weight methods and propose an attention-fusion entropy weight method (En-Attn) to capture warning signals based on massive landslide sensor data.
- We propose an attention-based temporal convolutional neural network for landslide warning signals prediction based on massive sensor data.
- We carry out the experimental simulation of rainfall-induced landslides, collect sensor data when landslides occur, analyze the precursory warning characteristics of the data, and use a variety of entropy weight methods to analyze the characteristics of warning signals offline.
- Our model is validated on two datasets obtained from rainfall-induced simulation experiments, and our model has high accuracy compared with similar landslide warning capture and prediction methods.
2. Methods
2.1. Capture Models of Landslide Warning Signal
2.1.1. Entropy Weight Methods
2.1.2. Attention-Fusion Entropy Method
Algorithm 1: Attention-fusion entropy weight method (En-Attn). |
Initialization: M, m, r, d, W Input: the raw data Entropy weight methods For j = 1:M Data normalization using Equation (1). Calculate InformEn using Equation (6). Calculate FuzzyEn using (15)~(20). Calculate PeEn using (21)~(26). Calculate the coefficient of variation using Equation (3). Calculate weights using Equation (4). Obtain the entropy weight scores using Equation (5). End if Output: Attention calculation Output: LHD. |
2.2. Prediction Model of Landslide Warning Signal
Algorithm 2: Attention-based temporal convolutional neural network (ATCN). |
Input: Data normalization using Equation (1). I-Attn calculation: Predictor: T-Attn calculation: Output: Update , and repeat the above steps. |
3. Data Acquisition and Processing
3.1. Landslide Simulation Platform
- The tipping bucket rain gauge is located in the center of the soil-carrying box, with its opening facing upwards for better rain reception.
- The position of the draw-wire displacement sensor is in the front third of the soil-carrying box. It monitors the change in soil displacement as the leading edge of the landslide moves.
- The soil stress gauge is positioned in the front third of the soil-carrying box to monitor the stress changes within the soil at the leading edge of the landslide.
- The location of the soil moisture sensor for monitoring the shallow moisture content is about 30 cm from the surface, and the location of the soil moisture sensor for monitoring the deep moisture content is about 80 cm from the surface.
3.2. Landslide Data Processing
- The amount of rainfall directly affects the moisture content of the shallow soil. Surface water will exist when the surface seepage rate is less than the rainfall.
- The moisture content of deep soil is significantly higher than that of shallow soil due to groundwater action during the initial stage of rainfall. The moisture content in the deeper layers of the soil would gradually increase as surface water gradually infiltrates into the ground as rainfall continues. However, its moisture content does not exceed the shallow moisture content at this stage. The growth rate of the shallow moisture content would gradually decrease, and the size of the deep moisture content would eventually be approximately equal to the shallow moisture content throughout the entire landslide formation process.
- The soil stress also varies as the soil layer’s moisture content varies. The shear strength of the soil is characterized by soil stress. The soil stress increases quickly for a while when there is no significant displacement of the surface, after which the surface gradually becomes significantly displaced during the sliding phase. As the soil’s moisture content rises, the clay in the soil softens and loses some of its slip resistance. It also loses shear strength.
- The soil moisture content tends to become saturated before the landslide body enters the catastrophic slip phase. When the soil stress increases, the landslide body enters the severe sliding stage. When a landslide reaches the severe slip stage, the surface displacement dramatically rises, and erosion-created depressions and gullies start to show up near the body’s front edge.
- After entering the stabilization stage, the surface displacement of the landslide body no longer increases, but due to the effects of rainfall and groundwater, the surface and underground runoff still play a role in triggering the secondary landslide.
4. Experiments and Results
4.1. Landslide Hazard Degree and Results
4.2. Prediction Experiments and Results
5. Discussion and Conclusions
- Exploring deep learning algorithms combined with big landslide data is an extension of deep learning application scenarios. This model uses a simple attention mechanism combined with a temporal convolutional neural network. Although this model is simple, its prediction effect is better than other complex deep learning models.
- Effective landslide hazard capture. In the traditional sense, the capture of rainfall-induced landslide hazards is either directly replaced by the landslide displacement or only a single EWM is used to realize the signals capture. The model uses the attention mechanism to integrate a variety of EWMs, and the obtained landslide warning signals are more reliable.
- Note that our model cannot be adapted for landslide hazard prediction with a small amount of data, as massive data is the basis of our model.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Hyperparameter Experiments of the ATCN
Batch Size | Metric | Size of Sliding Window | |
---|---|---|---|
100-10 | 100-50 | ||
16 | RMSE | 0.01452 | 0.01928 |
MAE | 0.01325 | 0.01723 | |
MAPE (%) | 1.63992 | 1.86792 | |
32 | RMSE | 0.01213 | 0.01989 |
MAE | 0.01069 | 0.01907 | |
MAPE (%) | 1.08400 | 2.37950 | |
64 | RMSE | 0.01614 | 0.01734 |
MAE | 0.01609 | 0.01609 | |
MAPE (%) | 1.11208 | 1.73150 | |
128 | RMSE | 0.00954 | 0.01929 |
MAE | 0.00943 | 0.01606 | |
MAPE (%) | 1.00213 | 0.91316 | |
256 | RMSE | 0.01619 | 0.01892 |
MAE | 0.01825 | 0.01838 | |
MAPE (%) | 2.19243 | 1.99731 |
Filter | Metric | Size of Sliding Window | |
---|---|---|---|
100-10 | 100-50 | ||
4 | RMSE | 0.01674 | 0.01937 |
MAE | 0.01531 | 0.01334 | |
MAPE (%) | 1.64269 | 1.56591 | |
8 | RMSE | 0.01016 | 0.01102 |
MAE | 0.01158 | 0.00934 | |
MAPE (%) | 1.31589 | 1.13547 | |
16 | RMSE | 0.01023 | 0.01803 |
MAE | 0.01709 | 0.00949 | |
MAPE (%) | 1.82595 | 1.86010 | |
32 | RMSE | 0.01953 | 0.01597 |
MAE | 0.01897 | 0.01504 | |
MAPE (%) | 1.07723 | 1.88453 | |
64 | RMSE | 0.11779 | 0.01696 |
MAE | 0.01085 | 0.01360 | |
MAPE (%) | 1.42817 | 1.63355 |
Kernel Size | Metric | Size of Sliding Window | |
---|---|---|---|
100-10 | 100-50 | ||
4 | RMSE | 0.01148 | 0.01582 |
MAE | 0.01810 | 0.01442 | |
MAPE (%) | 1.47336 | 1.54591 | |
8 | RMSE | 0.00984 | 0.01074 |
MAE | 0.09313 | 0.00943 | |
MAPE (%) | 1.39457 | 1.03825 | |
16 | RMSE | 0.00949 | 0.00965 |
MAE | 0.00809 | 0.00807 | |
MAPE (%) | 0.89151 | 0.98417 | |
32 | RMSE | 0.10553 | 0.00963 |
MAE | 0.01805 | 0.00909 | |
MAPE (%) | 1.37068 | 1.08417 | |
64 | RMSE | 0.00959 | 0.10772 |
MAE | 0.01168 | 0.10620 | |
MAPE(%) | 1.21431 | 1.05872 |
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Model | Metric | Size of Sliding Window | |
---|---|---|---|
100-10 | 100-50 | ||
LSTM | RMSE | 0.04973 | 0.05987 |
MAE | 0.03483 | 0.03988 | |
MAPE (%) | 3.45876 | 4.48301 | |
GRU | RMSE | 0.04296 | 0.11422 |
MAE | 0.02916 | 0.10989 | |
MAPE (%) | 3.21155 | 4.70642 | |
ConvLSTM | RMSE | 0.01511 | 0.02480 |
MAE | 0.01162 | 0.02307 | |
MAPE (%) | 1.31189 | 2.70816 | |
DA-RNN | RMSE | 0.02606 | 0.02044 |
MAE | 0.01825 | 0.01590 | |
MAPE (%) | 1.96037 | 1.68211 | |
TCN | RMSE | 0.02009 | 0.03222 |
MAE | 0.01500 | 0.02192 | |
MAPE (%) | 1.68965 | 2.42844 | |
ATCN | RMSE | 0.00892 | 0.01827 |
MAE | 0.00718 | 0.01411 | |
MAPE (%) | 0.82503 | 1.59699 |
Model | Metric | Size of Sliding Window | |
---|---|---|---|
100-10 | 100-50 | ||
LSTM | RMSE | 0.04465 | 0.10245 |
MAE | 0.03571 | 0.09849 | |
MAPE (%) | 3.74129 | 6.12409 | |
GRU | RMSE | 0.03632 | 0.06781 |
MAE | 0.02316 | 0.05799 | |
MAPE (%) | 2.41790 | 4.88399 | |
ConvLSTM | RMSE | 0.02937 | 0.05297 |
MAE | 0.02369 | 0.03579 | |
MAPE (%) | 2.56583 | 3.82107 | |
DA-RNN | RMSE | 0.01633 | 0.02966 |
MAE | 0.01360 | 0.02266 | |
MAPE (%) | 1.44912 | 2.38209 | |
TCN | RMSE | 0.02540 | 0.03209 |
MAE | 0.02059 | 0.02687 | |
MAPE (%) | 2.16727 | 2.84709 | |
ATCN | RMSE | 0.01082 | 0.01899 |
MAE | 0.00950 | 0.01463 | |
MAPE (%) | 1.02798 | 1.54598 |
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Zhang, D.; Wei, K.; Yao, Y.; Yang, J.; Zheng, G.; Li, Q. Capture and Prediction of Rainfall-Induced Landslide Warning Signals Using an Attention-Based Temporal Convolutional Neural Network and Entropy Weight Methods. Sensors 2022, 22, 6240. https://doi.org/10.3390/s22166240
Zhang D, Wei K, Yao Y, Yang J, Zheng G, Li Q. Capture and Prediction of Rainfall-Induced Landslide Warning Signals Using an Attention-Based Temporal Convolutional Neural Network and Entropy Weight Methods. Sensors. 2022; 22(16):6240. https://doi.org/10.3390/s22166240
Chicago/Turabian StyleZhang, Di, Kai Wei, Yi Yao, Jiacheng Yang, Guolong Zheng, and Qing Li. 2022. "Capture and Prediction of Rainfall-Induced Landslide Warning Signals Using an Attention-Based Temporal Convolutional Neural Network and Entropy Weight Methods" Sensors 22, no. 16: 6240. https://doi.org/10.3390/s22166240
APA StyleZhang, D., Wei, K., Yao, Y., Yang, J., Zheng, G., & Li, Q. (2022). Capture and Prediction of Rainfall-Induced Landslide Warning Signals Using an Attention-Based Temporal Convolutional Neural Network and Entropy Weight Methods. Sensors, 22(16), 6240. https://doi.org/10.3390/s22166240