Application of an Automated Top Coal Caving Control System: The Case of Wangjialing Coal Mine
Abstract
:1. Introduction
2. Key Technologies for the Automated Top Coal Caving Control System
2.1. Detection of Top Coal Thickness and Positioning Technology for the Pre-Caving Stage
2.1.1. Detection of Top Coal Thickness Based on Ground-Penetrating Radar Technology
2.1.2. Inertial Navigation Positioning Technology for the Shearer
2.2. Coal Gangue Identification and Support Mechanism Action Monitoring Technology for the Intra-Caving Stage
2.2.1. Vibration Sensor-Based Coal Gangue Identification Technology
2.2.2. Precise Monitoring Technology for Support Tail Beam and Insert Plate Travel
2.3. Real-Time Monitoring of the Top Coal Caving Amount for the Post-Caving Stage
3. Connotation of the Automated Top Coal Caving Control System
3.1. Self-Perception Function
- Self-perception of the top coal thickness based on radar detection before top coal caving;
- Self-perception of the distance between the shearer and support based on inertial navigation before top coal caving;
- Self-perception of the posture of the tail beam and insert plate during top coal caving utilizing magnetostrictive sensors;
- Self-perception of the falling gangue during coal caving through vibration sensors for gangue identification;
- Self-perception of the drawing quantity after coal caving using infrared scanning.
3.2. Self-Learning Function
3.3. Self-Decision-Making Function
3.4. Self-Execution Function
4. Application Effects of the Automated Top Coal Caving Control System
4.1. Engineering Background
4.2. Application of the Top Coal Thickness Detection Technology
4.3. Application of Shearer Inertial Navigation Positioning Technology
4.4. Application of Coal Gangue Identification Technology
4.5. Application of Tail Beam and Insert Plate Attitude Monitoring Technology
4.5.1. Accuracy Test of the Tail Beam Inclination Sensor
4.5.2. Accuracy Test of Insert Plate Stroke Sensor
5. Conclusions
- Integrating ground-penetrating radar, automated electrohydraulic control, vibration signal coal gangue identification, and infrared scanning distance measurement technologies on a computer platform facilitated the development of an automated top coal caving control system with self-perception, self-learning, self-decision-making, and self-execution capabilities.
- The automated top coal caving control system was tested on-site at the 12309 working face of Wangjialing Coal Mine, encompassing four key technologies: ground-penetrating radar-based top coal thickness detection, inertial navigation-based shearer positioning, tail beam vibration-based identification of coal and gangue, and magnetostrictive sensor-based monitoring of the tail beam and insert plate attitude.
- In the automated top coal caving control system of Wangjialing Coal Mine, the average error of top coal thickness detection was 2%, the maximum error in the shearer inertial navigation test was 0.01°, the maximum error of the hydraulic support tail beam inclination angle was 0.4°, and the maximum error of the insert plate extension was 13 mm. Overall, these technologies successfully meet the requirements for automated coal caving control when implemented in field conditions.
- The successful implementation of the automated coal caving control system presented in this article offers a solution for intelligently upgrading LTCC mining faces, providing valuable practical experience for promoting sustainable development within the coal mining industry.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Name | Thickness (m) | Lithology |
---|---|---|
Main roof | 4.2 | Fine sandstone |
Immediate roof | 5.4 | Silt stone |
Top coal | 3.5 | Coal |
Bottom coal | 3.0 |
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Huo, Y.; Zhao, D.; Zhu, D.; Wang, Z. Application of an Automated Top Coal Caving Control System: The Case of Wangjialing Coal Mine. Sustainability 2024, 16, 4261. https://doi.org/10.3390/su16104261
Huo Y, Zhao D, Zhu D, Wang Z. Application of an Automated Top Coal Caving Control System: The Case of Wangjialing Coal Mine. Sustainability. 2024; 16(10):4261. https://doi.org/10.3390/su16104261
Chicago/Turabian StyleHuo, Yuming, Dangwei Zhao, Defu Zhu, and Zhonglun Wang. 2024. "Application of an Automated Top Coal Caving Control System: The Case of Wangjialing Coal Mine" Sustainability 16, no. 10: 4261. https://doi.org/10.3390/su16104261
APA StyleHuo, Y., Zhao, D., Zhu, D., & Wang, Z. (2024). Application of an Automated Top Coal Caving Control System: The Case of Wangjialing Coal Mine. Sustainability, 16(10), 4261. https://doi.org/10.3390/su16104261