Landslide Displacement Prediction Based on Variational Mode Decomposition and GA–Elman Model
Abstract
:1. Introduction
- (1)
- The empirical prediction model. This kind of method uses strict derivation methods, such as mathematics and physics, to analyze a large number of landslide monitoring data and experimental data; this is combined with the transformation of relevant formulas to predict the occurrence of landslide displacement. Focusing on the intrinsic causes of landslide displacement, various parameters of landslides are expressed numerically and according to relevant mathematical formulas. Representative models include the Saito model (1965), the HOCK method (1977), and the Crosta and Agliardi model (2012). However, the scope of application of the model is greatly limited by the lack of understanding of the nature of landslides; moreover, the prediction accuracy of the model is not high.
- (2)
- The statistical prediction model. This method uses the theoretical knowledge derived from modern mathematics to design a landslide prediction model. In contrast to the empirical prediction period, which focuses on the mathematical expression of the landslide’s own mechanisms [17], this method includes an investigation and statistical analysis of the geological environment surrounding the landslide, as well as the external factors. At the same time, the prediction accuracy and application scope of the model are also significantly improved at this stage. The rapid development of the statistical prediction model is attributed to the emergence and widespread application of modern mathematical theories, such as mathematical statistics, gray system theory, and probability theory. In recent years, many new theories and methods have been formed. For example, Xu et al. (2011) introduced the GM (1,1) model of gray system theory into the field of landslide displacement [18]. In addition, there are gray vector angle models, models based on landslide slope changes [19,20], etc. Most of these models are linear models, which show better results in predicting the displacement of landslides affected by a single factor, but have poor predictive effects for landslides with complex causes and many influencing factors.
- (3)
- The nonlinear prediction model. With the development and widespread application of system science and nonlinear science, scholars have realized that landslides are an open and complex system. To predict a landslide, qualitative discrimination and quantitative prediction must be combined to study the basic problems that lead to a landslide. Qualitative discrimination refers to the combination of precursor features, such as those exhibited prior to the evolution of the landslide, and the surrounding geological environment [21] Quantitative prediction refers to the quantitative analysis of the observed landslide displacement information data. During this period, BP and Elman neural network models were widely used [22,23,24,25,26]. The extreme learning machine model and the decision tree model have also been gradually introduced and applied to the field of landslide prediction [5,27,28].
- (4)
- The comprehensive prediction model. When using a single nonlinear model to predict landslides, the application range and prediction accuracy of the model are sometimes limited [9]. In recent years, the comprehensive use of multiple models has become a new trend in the development of landslide prediction models. For instance, Miao et al. proposed a landslide displacement prediction model based on GA–SVR [29], while Zhang et al. studied the WCA–ELM model, which is applicable to step-type landslides [30]. Methods for the decomposition of displacement data include empirical mode decomposition [31,32], ensemble empirical mode decomposition [33,34,35], and variational mode decomposition [36,37]. Although these methods can completely decompose the data and effectively improve prediction accuracy, the physical meaning of each component cannot be clarified due to the large number of components acquired (generally more than five); as such, they cannot effectively reflect the relationship between each displacement component and the influencing factors [38]. The Elman neural network has good dynamic characteristics and global stability, and it has been widely used to analyze and process nonlinear and dynamic complex data. Chen et al. (2017) verified the feasibility of using the Elman neural network model in landslide monitoring and prediction [39]. Taking into account the nonlinear characteristics of landslide displacement monitoring data, they proposed an improved recurrent neural network based on Elman, and they proved the accuracy of the Elman neural network in short-term predictions. In addition, the research shows that a genetic algorithm (GA) can effectively improve the training speed and accuracy of the neural network by optimizing Elman’s connection weight and threshold.
2. Theory and Method
2.1. Variational Mode Decomposition
2.2. Elman Neural Network
2.3. GA–Elman Model
2.4. Displacement Prediction Process
- (1)
- Preprocess the monitoring data. The displacement, rainfall, and reservoir level data observed at the monitoring points are preprocessed, and the types of influencing factors are identified.
- (2)
- Decompose the data. VMD is used to decompose the displacement data into three subseries of trend, periodic, and random terms, and to decompose the influence factor data into two subseries of periodic and random terms.
- (3)
- Consolidate the datasets. The decomposed data are integrated into corresponding datasets according to the decomposition; then, the training set, test set, and validation set are divided up.
- (4)
- Train the GA–Elman model and compare the prediction results. The training set is substituted into the GA–Elman model separately to train the model parameters, and then the test set is substituted into the model to determine the optimal training combination.
- (5)
- Determine the optimal prediction model for cumulative displacement. The optimal prediction model for cumulative displacement is obtained by accumulating the optimal training combinations from the trend dataset, the periodic dataset, and the random dataset.
- (6)
- Verify the feasibility of the optimal prediction model. Substitute the validation set data into the optimal prediction model and verify the feasibility of the model combined with the operation results of each evaluation index.
3. Research Area
3.1. General State of the Engineering Geology of the Shuizhuyuan Landslide
3.2. Landslide Monitoring Data Preprocessing
4. Application Research and Method Comparison
4.1. Monitoring Data Processing
4.1.1. Decomposition of Landslide Displacement Data
4.1.2. Selection and Decomposition of Influencing Factors
4.1.3. Relational Analysis of Displacement Components and Influencing Factor Components
4.2. Prediction of Trend Displacement
4.3. Prediction of Periodic Displacement
4.4. Prediction of Random Displacement
4.5. Prediction of Cumulative Displacement
4.6. Feasibility Verification of the Prediction Model
4.7. Model Comparison
5. Discussion and Conclusions
- (1)
- In this paper, VMD was used to achieve the effective decomposition of landslide displacements, solving the modal mixing problem of traditional empirical modal decomposition. The Elman neural network was optimized using GA, which effectively solved the problem posed by the difficulty of determining the weights, thresholds, and neurons of the Elman neural network; moreover, it effectively improved the model’s prediction accuracy.
- (2)
- This study accounted for the internal and external factors that influence landslide deformation, such as past cumulative displacement, precipitation, and the reservoir water level. The changes in monitoring data were analyzed in detail, in conjunction with previous research, and four influencing factors were ultimately identified. The gray correlation among these four influencing factors and the displacement of the fluctuating term was greater than 0.5, indicating that the influencing factors were selected effectively.
- (3)
- The prediction results showed that the model had high prediction accuracy and prediction capabilities with the effective acquisition of early monitoring data of landslides. This study, therefore, provides a new basis for predictions in the study of similar landslides.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Model Number | Training Set Data Volume | Time Included in the Training Data | |||
---|---|---|---|---|---|
1–20 Weeks | 21–40 Weeks | 41–60 Weeks | 61–80 Weeks | ||
Model 1 | 20 | √ | |||
Model 2 | 40 | √ | √ | ||
Model 3 | 60 | √ | √ | √ | |
Model 4 | 80 | √ | √ | √ | √ |
Model Number | Component Type | Influencing Factors | |||
---|---|---|---|---|---|
P1 | P2 | P3 | P4 | ||
Model 1 | Periodic component | 0.5769 | 0.5751 | 0.5747 | 0.5734 |
Random component | 0.5663 | 0.5693 | 0.5690 | 0.5685 | |
Model 2 | Periodic component | 0.8505 | 0.8509 | 0.8507 | 0.5349 |
Random component | 0.9759 | 0.5920 | 0.9762 | 0.9764 | |
Model 3 | Periodic component | 0.6532 | 0.6559 | 0.6544 | 0.6703 |
Random component | 0.8916 | 0.6057 | 0.9194 | 0.9139 | |
Model 4 | Periodic component | 0.6293 | 0.6300 | 0.6297 | 0.6357 |
Random component | 0.8234 | 0.8957 | 0.9099 | 0.6676 |
Model Number | Evaluation Index | |||
---|---|---|---|---|
MAPE (%) | MSE | RMSE | R2 | |
Model 1 | 0.3000 | 1.0276 | 0.6998 | 0.6462 |
Model 2 | 0.0600 | 0.0361 | 0.0217 | 0.9876 |
Model 3 | 0.2000 | 0.2279 | 0.4529 | 0.9215 |
Model 4 | 0.5400 | 2.0526 | 1.2501 | 0.2933 |
Model Number | Evaluation Index | |||
---|---|---|---|---|
MAPE (%) | MSE | RMSE | R2 | |
Model 1 | 1.5661 | 0.0001 | 0.0097 | 0.9994 |
Model 2 | 10.5000 | 0.0066 | 0.0811 | 0.9611 |
Model 3 | 7.9905 | 0.0039 | 0.0628 | 0.9766 |
Model 4 | 23.3792 | 0.0327 | 0.1808 | 0.8067 |
Model Number | Evaluation Index | |||
---|---|---|---|---|
MAPE (%) | MSE | RMSE | R2 | |
Model 1 | 32.96 | 0.0049 | 0.0699 | 0.8326 |
Model 2 | 112.88 | 0.0031 | 0.0560 | 0.8926 |
Model 3 | 33.87 | 0.0057 | 0.0758 | 0.8028 |
Model 4 | 13.73 | 0.0007 | 0.0261 | 0.9765 |
Model Number | Evaluation Index | |||
---|---|---|---|---|
MAPE (%) | MSE | RMSE | R2 | |
Model 1 | 0.2763 | 0.9469 | 0.6396 | 0.7261 |
Model 2 | 0.1883 | 0.0377 | 0.0469 | 0.9891 |
Model 3 | 0.2565 | 0.3728 | 0.5914 | 0.8922 |
Model 4 | 0.6082 | 2.4631 | 1.4048 | 0.2875 |
Combined model | 0.1685 | 0.0371 | 0.0384 | 0.9893 |
Model Name | Evaluation Index | |||
---|---|---|---|---|
MAPE (%) | MSE | RMSE | R2 | |
Elman | 372.55 | 98.6357 | 9.3709 | 0.3633 |
GA–Elman | 153.04 | 23.1281 | 3.8904 | 0.8507 |
VMD–GA–Elman (Combined model) | 0.3493 | 1.1635 | 0.9001 | 0.9895 |
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Share and Cite
Guo, W.; Meng, Q.; Wang, X.; Zhang, Z.; Yang, K.; Wang, C. Landslide Displacement Prediction Based on Variational Mode Decomposition and GA–Elman Model. Appl. Sci. 2023, 13, 450. https://doi.org/10.3390/app13010450
Guo W, Meng Q, Wang X, Zhang Z, Yang K, Wang C. Landslide Displacement Prediction Based on Variational Mode Decomposition and GA–Elman Model. Applied Sciences. 2023; 13(1):450. https://doi.org/10.3390/app13010450
Chicago/Turabian StyleGuo, Wei, Qingjia Meng, Xi Wang, Zhitao Zhang, Kai Yang, and Chenhui Wang. 2023. "Landslide Displacement Prediction Based on Variational Mode Decomposition and GA–Elman Model" Applied Sciences 13, no. 1: 450. https://doi.org/10.3390/app13010450
APA StyleGuo, W., Meng, Q., Wang, X., Zhang, Z., Yang, K., & Wang, C. (2023). Landslide Displacement Prediction Based on Variational Mode Decomposition and GA–Elman Model. Applied Sciences, 13(1), 450. https://doi.org/10.3390/app13010450