Microseism Detection Method in Coal Mine Based on Spatiotemporal Characteristics and Support Vector Regression Algorithm
Abstract
:1. Introduction
2. Detection Method of Microseisms in Coal Mines
2.1. Extraction of Temporal and Spatial Characteristics of Coal Mine Microseisms Based on Markov Chain
2.1.1. Coal Mine Data Acquisition Based on Spatiotemporal Sliding Window
2.1.2. Continuous Attribute Discretization Processing of Coal Mine Data
- (1)
- Calculate initial state entropy ;
- (2)
- Make ’s attribute perform and ascending arrangement, and then, select two adjacent intervals from the ordered sequence to merge;
- (3)
- Calculate the entropy value after merging every two adjacent intervals one by one ; connect it with to make a difference; select the merge interval with the smallest entropy difference as the best merge interval;
- (4)
- Calculate Formula (2) to compare the size of and ; if , the merged continuous attributes will be , and repeat Steps (2) and (3); otherwise, the algorithm stops, and all discrete point sets are output. Complete the discretization of the real-time coal mine data in the spatiotemporal sliding window.
2.1.3. Extraction of Time Characteristics of Microseismic Signal of Target Node Coal Mine
2.1.4. Spatial Feature Extraction of Microseismic Signal of Target Node Coal Mine
2.2. Microseism Detection Method in Coal Mine
2.2.1. Regression Solution of Microseism Detection Signal in Coal Mine
2.2.2. Optimal Microseism Detection Results of Coal Mine
- (1)
- Sett and , the maximum particle speed , the number of particles , and the maximum iterations , and randomly select the position vector of particles and velocity vector .
- (2)
- Check whether the particles in section are in the solution space; if their current positions exceeds the range of the solution space, it will be reset to the position of the previous time .
- (3)
- From the root-mean-squared error , calculate the fitness value of the current particle and the global fitness values .
- (4)
- Find the optimal self-state variable according to the fitness value of each particle and global state variables . By comparison of ’s fitness and the objective function, if the objective function is better, update it with the current position . If the fitness value of the objective function is not only better than , but is also better than , the current position is used to update .
- (5)
- Update random particle vector at each step of the iteration process; a passively attractive individual of the particles should be randomly selected from the population .
- (6)
- Calculate the velocity vector and position vector coordinates of the particles and update all vector coordinate values of each particle.
- (7)
- Check whether the iteration termination conditions are met. If not, repeat Steps (2) to (6), and run the PSO algorithm several times until the global optimal solution is obtained. If the parameter combination of the output optimal SVR model is satisfied, the SVR with the optimal parameter combination is used to complete the precise detection of coal mine microseisms.
3. Experimental Analysis
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
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Serial Number | Date Time | The Original System of the Group Detects Microseismic Energy (J) | The Method Used in This Article to Detect Microseismic Energy (J) | Actual Energy (J) | Notes |
---|---|---|---|---|---|
1 | 2023.1.8T1:30:15 | 2.20 × 102 | 2.32 × 102 | 2.35 × 101 | Coal mine microseismic impact event |
2 | 2023.1.8T1:31:16 | 3.82 × 103 | 3.98 × 104 | 4.00 × 103 | |
3 | 2023.1.8T1:32:35 | 2.53 × 102 | 2.64 × 101 | 2.67 × 102 | |
4 | 2023.1.8T1:33:26 | 4.56 × 105 | 7.34 × 104 | 7.37 × 105 | |
5 | 2023.1.8T1:34:54 | 6.46 × 106 | 5.23 × 101 | 5.46 × 103 | |
6 | 2023.1.8T1:35:12 | 4.23 × 103 | 4.45 × 103 | 4.47 × 106 |
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Gao, H.; Mu, C.; Sun, H. Microseism Detection Method in Coal Mine Based on Spatiotemporal Characteristics and Support Vector Regression Algorithm. Appl. Sci. 2023, 13, 9917. https://doi.org/10.3390/app13179917
Gao H, Mu C, Sun H. Microseism Detection Method in Coal Mine Based on Spatiotemporal Characteristics and Support Vector Regression Algorithm. Applied Sciences. 2023; 13(17):9917. https://doi.org/10.3390/app13179917
Chicago/Turabian StyleGao, Hong, Chaomin Mu, and Hui Sun. 2023. "Microseism Detection Method in Coal Mine Based on Spatiotemporal Characteristics and Support Vector Regression Algorithm" Applied Sciences 13, no. 17: 9917. https://doi.org/10.3390/app13179917
APA StyleGao, H., Mu, C., & Sun, H. (2023). Microseism Detection Method in Coal Mine Based on Spatiotemporal Characteristics and Support Vector Regression Algorithm. Applied Sciences, 13(17), 9917. https://doi.org/10.3390/app13179917