A Hybrid Coal Flow-Centric Predictive Model for Mining–Transportation Coordination Based on an LSTM–Transformer
Abstract
1. Introduction
- This paper breaks through the limitations of traditional single-device and static analysis. A dynamic coupling model of coal shearer and conveyor is systematically constructed from three dimensions: time, space, and several characteristics to reflect the collaborative constraint relationships among underground pieces of equipment;
- This paper takes the coal flow as the link and deeply integrates equipment status prediction with the production process flow. The predictive model not only reflects the operational rules of the equipment itself, but also embodies the overall collaborative logic of the production system, enhancing the interpretability of the model;
- This paper combines the local temporal feature extraction capability of LSTM with the global dependency capture mechanism of Transformers. This effectively addresses the issues of long-term dependencies and short-term fluctuations present in the operational data of fully mechanized mining equipment, improving the predictive model’s adaptability to complex working conditions.
2. Related Work
3. Comprehensive Fully Mechanized Mining System Supporting Coordination and Model Construction
3.1. Supporting Equipment for Fully Mechanized Mining Systems
3.2. Development of a Mathematical Model for “Mining–Transportation” Coordination
4. LSTM–Transformer Model Construction
4.1. LSTM
4.2. Transformer
4.3. LSTM–Transformer
4.4. Hyperparameter Configuration and Automated Optimization Strategies
5. Case Study Validation Analysis
5.1. Data Preparation and Preprocessing
5.2. Algorithm Validation
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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| Hyperparameters | Hyperparameter Values |
|---|---|
| LSTM hidden layer dimension | 64, 128 |
| LSTM hidden layer depth | 4 |
| Transformer hidden layer dimension | 64, 128 |
| Transformer layer depth | 1,2 |
| Batch size | 32, 64 |
| Number of attention heads | 2, 4 |
| Learning rate | 0.0005, 0.001 |
| Dropout rate | 0.2, 0.3 |
| Parameter Name | Symbol | Unit |
|---|---|---|
| Shearer traction speed | m/min | |
| Shearer left/right traction motor temperature | °C | |
| Shearer left/right traction motor current | A | |
| Conveyor motor stator temperature | °C | |
| Conveyor motor power | P | kw |
| Event Time | P | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| 2024/10/16 4:32 | 3.76 | 48 | 17 | 43 | 17 | 81 | 91 | 87 | 252 |
| 2024/10/16 4:33 | 8.67 | 48 | 17 | 43 | 17 | 78 | 89 | 91 | 249 |
| 2024/10/16 4:34 | 1.99 | 48 | 17 | 43 | 17 | 78 | 93 | 83 | 249 |
| 2024/10/16 4:35 | 8.37 | 50 | 33 | 43 | 17 | 78 | 93 | 83 | 249 |
| 2024/10/16 4:36 | 8.7 | 50 | 33 | 43 | 17 | 79 | 92 | 91 | 259 |
| …… | …… | …… | …… | …… | …… | …… | …… | …… | …… |
| 2024/10/26 0:12 | 7.53 | 41 | 19 | 38 | 19 | 78 | 86 | 88 | 198 |
| 2024/10/26 0:13 | 7.1 | 41 | 19 | 38 | 19 | 74 | 86 | 85 | 168 |
| 2024/10/26 0:14 | 6.05 | 45 | 17 | 43 | 17 | 67 | 86 | 87 | 188 |
| 2024/10/26 0:15 | 6.78 | 45 | 17 | 43 | 17 | 67 | 86 | 87 | 188 |
| 2024/10/26 0:16 | 7.09 | 46 | 17 | 43 | 17 | 78 | 88 | 87 | 211 |
| 2024/10/26 0:17 | 8.59 | 46 | 17 | 43 | 17 | 76 | 84 | 83 | 222 |
| …… | …… | …… | …… | …… | …… | …… | …… | …… | …… |
| 2024/12/30 22:40 | 8.58 | 47 | 17 | 43 | 17 | 78 | 88 | 86 | 162 |
| 2024/12/30 22:41 | 8.7 | 47 | 17 | 43 | 17 | 78 | 88 | 86 | 162 |
| 2024/12/30 22:42 | 8.65 | 47 | 17 | 43 | 17 | 74 | 90 | 91 | 194 |
| 2024/12/30 22:43 | 9.2 | 47 | 31 | 43 | 17 | 74 | 90 | 91 | 194 |
| 2024/12/30 22:44 | 8.74 | 48 | 17 | 43 | 33 | 74 | 90 | 91 | 194 |
| 2024/12/30 22:45 | 8.39 | 48 | 17 | 45 | 17 | 74 | 85 | 91 | 210 |
| Model | MSE | MAE | R2 |
|---|---|---|---|
| LSTM–Transformer | 0.041495 | 0.121947 | 0.996029 |
| LSTM | 0.076799 | 0.231481 | 0.992651 |
| Transformer | 0.124296 | 0.277841 | 0.987980 |
| GRU | 0.072053 | 0.22195 | 0.993105 |
| MLR | 0.055107 | 0.154152 | 0.994727 |
| CNN–LSTM | 0.053738 | 0.158107 | 0.994858 |
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Share and Cite
Wu, Y.; Li, G.; He, L.; Zhao, J.; Zhang, R.; Cao, X. A Hybrid Coal Flow-Centric Predictive Model for Mining–Transportation Coordination Based on an LSTM–Transformer. Mathematics 2026, 14, 634. https://doi.org/10.3390/math14040634
Wu Y, Li G, He L, Zhao J, Zhang R, Cao X. A Hybrid Coal Flow-Centric Predictive Model for Mining–Transportation Coordination Based on an LSTM–Transformer. Mathematics. 2026; 14(4):634. https://doi.org/10.3390/math14040634
Chicago/Turabian StyleWu, Yue, Guoping Li, Longlong He, Jiangbin Zhao, Ruiyuan Zhang, and Xiangang Cao. 2026. "A Hybrid Coal Flow-Centric Predictive Model for Mining–Transportation Coordination Based on an LSTM–Transformer" Mathematics 14, no. 4: 634. https://doi.org/10.3390/math14040634
APA StyleWu, Y., Li, G., He, L., Zhao, J., Zhang, R., & Cao, X. (2026). A Hybrid Coal Flow-Centric Predictive Model for Mining–Transportation Coordination Based on an LSTM–Transformer. Mathematics, 14(4), 634. https://doi.org/10.3390/math14040634

