Prediction of Surface Subsidence in Mining Areas Based on Ascending-Descending Orbits Small Baseline Subset InSAR and Neural Network Optimization Models
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Datasets
2.2.1. Sentinel-1A Synthetic Aperture Radar Data
2.2.2. Digital Elevation Model (DEM)
2.2.3. POD Precise Orbit Ephemerides
2.2.4. Generic Atmospheric Correction Online Service (GACOS) Data
2.2.5. Rainfall Data
2.3. Principles of Small Baseline Subset InSAR Technology
2.4. Principles of Two-Dimensional Deformation Decomposition
2.5. Principle of Prediction Models
2.5.1. Back Propagation Neural Network
2.5.2. BPNN Optimized by Genetic Algorithm
- (1)
- Construct the BPNN model, determine the number of nodes in each layer, and normalize the input data.
- (2)
- Set the main parameters of the GA optimization algorithm, including the maximum number of generations (G), crossover probability (), mutation probability (), and population size ().
- (3)
- Calculate the fitness of each individual and use selection, crossover, and mutation principles to optimize the initial weights and thresholds of the BPNN.
- (4)
- Ensure that the initial weights and threshold indicators of the BPNN model are optimal, then perform gradient descent to search the solution space for these parameters and update the weights and thresholds.
- (5)
- If the accuracy condition is met, output the optimal solution; otherwise, proceed to the next iteration until the optimal solution is found.
2.5.3. BPNN Optimized by Artificial Bee Colony Algorithm
- (1)
- Construct the BPNN model, determine the number of nodes in each layer, and normalize the input data.
- (2)
- Set the parameters of the ABC algorithm, including population size (N), maximum number of iterations (M), upper bound (xj) and lower bound (yj) of the search space, and the dimension of the solution (D).
- (3)
- Set the initial weights and thresholds of the BPNN according to the solution dimension (D). Define the position of the i-th employed bee’s random search solution as , and search for new solutions in its vicinity and record the positions.
- (4)
- Calculate the fitness value () of the solution and use the roulette wheel algorithm to compute the probability () of each solution being selected, choosing the optimal solution.
- (5)
- Onlooker bees use a greedy algorithm to update the position of the previously best solution. If no better solution is found in the vicinity, increment the record count for that solution.
- (6)
- Save the optimal solution and determine whether to discard a solution based on the number of times it has been recorded. If a solution is discarded, the scout bees randomly generate a new solution using Equation (5).
- (7)
- If the number of times a solution is recorded is greater than or equal to the maximum number of iterations, output the optimal solution. Otherwise, proceed to the next iteration until the optimal solution is found.
2.6. Evaluation Metrics
- (1)
- MAE:
- (2)
- RMSE:
3. Results
3.1. Data Processing
3.2. Distribution Characteristics of Subsidence in Mining Areas
3.3. Two-Dimensional Decomposition of Surface Deformation
3.4. Analysis of Subsidence Prediction Results
4. Discussion
4.1. The Impact of Rainfall on Subsidence
4.2. The Current Limitations of Study
4.2.1. Potential Biases in Interferometric Synthetic Aperture Radar Monitoring Experiments
4.2.2. Limitations of the Predictive Model and Directions for Future Research
5. Conclusions
- (1)
- The SBAS-InSAR monitoring results indicate that continuous subsidence has occurred in the study area since May 2020. By May 2023, six distinct deformation zones had been identified, all forming subsidence funnels. The ascending orbit results show that the D subsidence zone has the highest annual subsidence rate, approximately 68 mm/year, with a cumulative subsidence of about 211 mm. The descending orbit results indicate that the C subsidence zone has the highest annual subsidence rate, approximately 53 mm/year, with a maximum cumulative subsidence of around 155 mm. According to the vertical deformation results for the mining area, the D zone also exhibits the highest vertical deformation value, reaching 190 mm. The maximum vertical subsidence values in other areas range from 107 mm to 151 mm. The east–west deformation results for the mining area show that the D zone has the most severe east–west deformation compared to other subsidence zones, with the maximum westward deformation being 74 mm and the maximum eastward deformation being 102 mm. In other areas, the maximum westward deformation ranges from 49 mm to 62 mm, and the maximum eastward deformation ranges from 50 mm to 105 mm. Therefore, it is evident that both the vertical and east–west deformation values in the D subsidence zone are higher than those in other areas. Special attention should be paid to the stability of the surface in this zone during subsequent mining activities to prevent potential disasters.
- (2)
- Based on the vertical cumulative subsidence values, neural network prediction models were used to forecast outcomes. It was found that the traditional BPNN model had maximum MAE and RMSE values of 6.41 mm and 7.58 mm, respectively. In contrast, the GA-BP model and ABC-BP model showed superior MAE and RMSE values. Specifically, the GA-BP model improved MAE values by 28% to 68% and RMSE values by 25% to 67% over the BPNN model. Similarly, the ABC-BP model increased MAE values by 32% to 63% and RMSE values by 28% to 60% over the BPNN model. Across all eight points evaluated, the GA-BP model averaged an MAE of 2.67 mm and an RMSE of 2.93 mm, while the ABC-BP model averaged an MAE of 2.32 mm and an RMSE of 2.79 mm, slightly outperforming the GA-BP model. These results indicate that the optimized BPNN prediction models are highly applicable for forecasting mining-induced subsidence, particularly when compared with decomposed vertical subsidence data, demonstrating their accuracy and suitability for use in mining subsidence prediction.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Number | Date | Number | Date | Number | Date | Number | Date |
---|---|---|---|---|---|---|---|
1 | 20 May 2020 | 13 | 16 March 2021 | 25 | 29 December 2021 | 37 | 13 October 2022 |
2 | 13 June 2020 | 14 | 9 April 2021 | 26 | 22 January 2022 | 38 | 6 November 2022 |
3 | 7 July 2020 | 15 | 3 May 2021 | 27 | 15 February 2022 | 39 | 30 November 2022 |
4 | 12 August 2020 | 16 | 27 May 2021 | 28 | 11 March 2022 | 40 | 24 December 2022 |
5 | 5 September 2020 | 17 | 20 June 2021 | 29 | 4 April 2022 | 41 | 17 January 2023 |
6 | 29 September 2020 | 18 | 14 July 2021 | 30 | 28 April 2022 | 42 | 10 February 2023 |
7 | 23 October 2020 | 19 | 7 August 2021 | 31 | 22 May 2022 | 43 | 6 March 2023 |
8 | 16 November 2020 | 20 | 31 August 2021 | 32 | 15 June 2022 | 44 | 30 March 2023 |
9 | 10 December 2020 | 21 | 24 September 2021 | 33 | 9 July 2022 | 45 | 23 April 2023 |
10 | 3 January 2021 | 22 | 18 October 2021 | 34 | 2 August 2022 | 46 | 17 May 2023 |
11 | 27 January 2021 | 23 | 11 November 2021 | 35 | 26 August 2022 | ||
12 | 20 February 2021 | 24 | 5 December 2021 | 36 | 19 September 2022 |
Number | Date | Number | Date | Number | Date | Number | Date |
---|---|---|---|---|---|---|---|
1 | 10 May 2020 | 13 | 22 February 2021 | 25 | 19 December 2021 | 37 | 8 November 2022 |
2 | 3 June 2020 | 14 | 18 March 2021 | 26 | 24 January 2022 | 38 | 2 December 2022 |
3 | 27 June 2020 | 15 | 11 April 2021 | 27 | 17 February 2022 | 39 | 7 January 2023 |
4 | 21 July 2020 | 16 | 5 May 2021 | 28 | 25 March 2022 | 40 | 31 January 2023 |
5 | 14 August 2020 | 17 | 10 June 2021 | 29 | 18 April 2022 | 41 | 24 February 2023 |
6 | 7 September 2020 | 18 | 4 July 2021 | 30 | 12 May 2022 | 42 | 20 March 2023 |
7 | 1 October 2020 | 19 | 28 July 2021 | 31 | 5 June 2022 | 43 | 13 April 2023 |
8 | 25 October 2020 | 20 | 21 August 2021 | 32 | 29 June 2022 | 44 | 7 May 2023 |
9 | 18 November 2020 | 21 | 14 September 2021 | 33 | 23 July 2022 | 45 | 31 May 2023 |
10 | 12 December 2020 | 22 | 8 October 2021 | 34 | 16 August 2022 | ||
11 | 5 January 2021 | 23 | 1 November 2021 | 35 | 9 September 2022 | ||
12 | 29 January 2021 | 24 | 25 November 2021 | 36 | 3 October 2022 |
Parameters | Value |
---|---|
Epochs | 300 |
MES Goal | 1 × 10−6 |
Learning Rate | 0.1 |
Minimum Performance Gradient | 1 × 10−7 |
Maximum Validation Failures | 6 |
Display Frequency | 25 |
Number of Input Neurons | 5 |
Number of Sigmoid Hidden Layer Neurons | 5 |
Number of Output Neurons | 1 |
Input-to-Hidden Layer Activation Function | tansig |
Hidden-to-Output Layer Activation Function | purelin |
Learning Function | trainlm |
Parameters | Value |
---|---|
Population Sizes | 50 |
Generations | 200 |
Mutation Rate | 0.1 |
Crossover Rate | 0.8 |
Selection Function Parameters | 0.09 |
Parameters | Value |
---|---|
Population Sizes | 30 |
Maximum Iterations | 100 |
Neighborhood Search Parameter | [−1, 1] |
Limit Parameter | 5 |
Point | BPNN | GA-BP | ABC-BP | |||
---|---|---|---|---|---|---|
MAE/mm | RMSE/mm | MAE/mm | RMSE/mm | MAE/mm | RMSE/mm | |
P1 | 4.07 | 4.40 | 2.93 | 3.16 | 1.57 | 1.77 |
P2 | 4.25 | 4.58 | 2.99 | 3.45 | 2.88 | 3.30 |
P3 | 4.31 | 4.61 | 2.23 | 2.37 | 1.61 | 1.89 |
P4 | 6.41 | 7.58 | 2.04 | 2.50 | 2.50 | 3.13 |
P5 | 6.36 | 7.14 | 2.88 | 3.20 | 2.36 | 3.09 |
P6 | 4.61 | 5.05 | 3.10 | 3.40 | 2.57 | 2.92 |
P7 | 5.88 | 6.76 | 2.84 | 2.53 | 2.92 | 3.64 |
P8 | 4.90 | 5.86 | 2.34 | 2.82 | 2.12 | 2.55 |
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Share and Cite
Chang, K.; Zhao, Z.; Zhou, D.; Tian, Z.; Wang, C. Prediction of Surface Subsidence in Mining Areas Based on Ascending-Descending Orbits Small Baseline Subset InSAR and Neural Network Optimization Models. Sensors 2024, 24, 4770. https://doi.org/10.3390/s24154770
Chang K, Zhao Z, Zhou D, Tian Z, Wang C. Prediction of Surface Subsidence in Mining Areas Based on Ascending-Descending Orbits Small Baseline Subset InSAR and Neural Network Optimization Models. Sensors. 2024; 24(15):4770. https://doi.org/10.3390/s24154770
Chicago/Turabian StyleChang, Kangtai, Zhifang Zhao, Dingyi Zhou, Zhuyu Tian, and Chang Wang. 2024. "Prediction of Surface Subsidence in Mining Areas Based on Ascending-Descending Orbits Small Baseline Subset InSAR and Neural Network Optimization Models" Sensors 24, no. 15: 4770. https://doi.org/10.3390/s24154770
APA StyleChang, K., Zhao, Z., Zhou, D., Tian, Z., & Wang, C. (2024). Prediction of Surface Subsidence in Mining Areas Based on Ascending-Descending Orbits Small Baseline Subset InSAR and Neural Network Optimization Models. Sensors, 24(15), 4770. https://doi.org/10.3390/s24154770