An Intelligent Advanced Classification Method for Tunnel-Surrounding Rock Mass Based on the Particle Swarm Optimization Least Squares Support Vector Machine
Abstract
:1. Introduction
2. Principle of PSO-LSSVM
2.1. Least Squares Support Vector Machine (LSSVM)
2.2. Principle Swarm Optimization
2.3. Construction of PSO Optimized LSSVM Model
- The majority of the samples obtained from the data are used as learning samples for the PSO-optimized LS-SVM model, and several examples are used as test samples. To avoid the influence of the inconsistent data dimension and to improve the training speed, the training samples are normalized to the interval [0,1].
- The initial settings of the PSO-SVM, including setting the adaptation threshold e, the particle dimension n, the population size m, the iteration number P, the learning factor c1, c2, and the inertia factor ε, randomly gives the initial solution space position Xi0 of the particle and the particle’s initial velocity Vi0.
- The test sample is predicted by the support vector machine model corresponding to each particle vector, and the prediction error of the predictive test sample is used as the individual fitness value to reflect the promotion and prediction abilities of the support vector model.
- The fitness value calculated for each particle is compared with the fitness value of the current individual optimal solution. If Si(x) < pbesti, the current particular optimal solution is replaced by the particle; that is, pbesti = Si(x), and xpbesti = xi.
- The fitness value pbesti of the current individual optimal solution of each particle is compared with the current population optimal value fitness value gbesti. If pbesti < gbesti, the particle is used to replace the original population optimal solution; that is, gbesti = pbesti, and xgbest = xi.
- After the entire group of particles is calculated, it is determined whether the termination condition is satisfied; if it is not satisfied, a new particle group is generated, and the process returns to step (3). If the termination requirement is met, the calculation ends, and the calculation result is given as an output (Figure 2).
3. Case Analysis
3.1. Digital Rig
3.2. Learning Samples and Test Samples
3.3. Model Training
3.4. Dynamic Surrounding-Rock-Mass Classification
3.5. Analysis of Results
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Drilling Parameters | Unit | Range | Meaning |
---|---|---|---|
Torque | kN·m | 0~8 | Torque of the drill bit during rock breaking |
Rotational speed | r·min−1 | 0~72 | Number of revolutions per minute of the drill bit |
Propulsion | kN | 0~60 | Reaction force on the drill pipe |
Striking energy | J | 0~750 | Energy of the percussion drill striking the rock |
Striking times | n·min−1 | 0~2200 | Number of times per minute that the rock is struck |
Water delivery flow | L | 0~240 | Water flow delivered to the drill bit |
Water delivery pressure | MPa | 0~10 | Pressure of water flow delivered to the drill bit |
Discharge capacity | L | 0~240 | Flow rate of water returning from the drill hole |
Drainage pressure | MPa | 0~10 | Flow pressure of water returning from the drill hole |
Serial Number | Speed /(mm/min) | Torque /(kN·m) | Rotating Speed /(min−1) | Propulsion /kN | Strike Energy /J | Number of Strikes /N | Water Delivery Flow /L | Drainage Flow /L | Surrounding Rock Grade |
---|---|---|---|---|---|---|---|---|---|
1 | 0 | 0.94 | 41 | 7.05 | 370 | 1611 | 93 | 90 | 3 |
2 | 31 | 1.56 | 50 | 8.11 | 491 | 1659 | 80 | 79 | 3 |
3 | 46 | 1.44 | 53 | 7.68 | 485 | 1666 | 93 | 91 | 3 |
4 | 26 | 0.96 | 38 | 4.42 | 397 | 1652 | 95 | 92 | 4 |
5 | 24 | 0.85 | 40 | 4.69 | 397 | 1652 | 93 | 90 | 4 |
6 | 59 | 0.67 | 40 | 2.31 | 335 | 1652 | 96 | 92 | 5 |
7 | 49 | 0.77 | 39 | 3.35 | 387 | 1652 | 89 | 85 | 5 |
8 | 53 | 1.52 | 40 | 8.05 | 393 | 1652 | 96 | 93 | 3 |
9 | 65 | 1.47 | 40 | 8.1 | 494 | 1679 | 83 | 80 | 3 |
10 | 57 | 0.88 | 39 | 4.31 | 392 | 1652 | 91 | 87 | 4 |
11 | 41 | 0.81 | 41 | 3.96 | 392 | 1650 | 93 | 90 | 4 |
12 | 30 | 1.71 | 54 | 7.96 | 481 | 1662 | 92 | 89 | 3 |
13 | 27 | 1.54 | 52 | 8.21 | 476 | 1664 | 81 | 85 | 3 |
14 | 33 | 0.92 | 37 | 4.43 | 391 | 1651 | 88 | 83 | 4 |
15 | 52 | 1.01 | 39 | 4.61 | 384 | 1650 | 91 | 89 | 4 |
Serial Number | PSO-LSSVM | Q Method | RMR Method | BQ Method |
---|---|---|---|---|
1 | IV4 (3.98) | IV4 (0.28) | IV4 (33.16) | IV4 (335.33) |
2 | III3 (3.02) | III3 (5.31) | III3 (59.01) | III3 (359.39) |
3 | III3 (3.26) | III3 (4.95) | III3 (58.3) | III3 (360.26) |
4 | IV4 (3.98) | IV4 (0.46) | IV4 (37.76) | IV4 (330.89) |
5 | IV4 (3.98) | IV4 (0.73) | III3 (40.79) | IV4 (333.95) |
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Lu, J.; Guo, W.; Liu, J.; Zhao, R.; Ding, Y.; Shi, S. An Intelligent Advanced Classification Method for Tunnel-Surrounding Rock Mass Based on the Particle Swarm Optimization Least Squares Support Vector Machine. Appl. Sci. 2023, 13, 2068. https://doi.org/10.3390/app13042068
Lu J, Guo W, Liu J, Zhao R, Ding Y, Shi S. An Intelligent Advanced Classification Method for Tunnel-Surrounding Rock Mass Based on the Particle Swarm Optimization Least Squares Support Vector Machine. Applied Sciences. 2023; 13(4):2068. https://doi.org/10.3390/app13042068
Chicago/Turabian StyleLu, Jie, Weidong Guo, Jinpei Liu, Ruijie Zhao, Yueyang Ding, and Shaoshuai Shi. 2023. "An Intelligent Advanced Classification Method for Tunnel-Surrounding Rock Mass Based on the Particle Swarm Optimization Least Squares Support Vector Machine" Applied Sciences 13, no. 4: 2068. https://doi.org/10.3390/app13042068
APA StyleLu, J., Guo, W., Liu, J., Zhao, R., Ding, Y., & Shi, S. (2023). An Intelligent Advanced Classification Method for Tunnel-Surrounding Rock Mass Based on the Particle Swarm Optimization Least Squares Support Vector Machine. Applied Sciences, 13(4), 2068. https://doi.org/10.3390/app13042068