MINE SAFETY MANAGEMENT AND CONTROL COUNTERMEASURES ON THE BASIS OF RISK ASSESSMENT
Volume 3, Issue 1, Pp 29-35, 2025
DOI: https://doi.org/10.61784/wms3054
Author(s)
ShiYu He*, YuMin Li
Affiliation(s)
College of Safety Science and Engineering, Liaoning Technical University, Fuxin 125100, Liaoning, China.
Corresponding Author
ShiYu He
ABSTRACT
Based on modern intelligent concepts, smart mines deeply integrate technologies such as the Internet of Things (IoT), big data, artificial intelligence (AI), robotics, intelligent equipment, and 5G into modern coal development and utilization, creating an intelligent system with comprehensive perception, real-time connectivity, autonomous learning, dynamic prediction, and collaborative control. The intelligentization of mine production safety has become a core technological support for the high-quality development of the industry. This paper addresses the technological needs of smart mines, utilizes digital twin technology to achieve interconnectivity and intelligent application of mine management, and improves the overall effectiveness of the safety management system, risk assessment and control, accident analysis and prevention, and other fields. Based on digital twin and 5G technology, the company puts forward the concept of “prevention-oriented” safety management and formulates systematic solutions to effectively reduce the incidence of accidents. Combining Monte Carlo simulation, gray correlation analysis, GIS and remote sensing technology and other methods, it builds an innovative intelligent mine risk management system and proposes key technical paths to achieve high-quality development, including information network architecture, safety production control mode, intelligent decision-making and situational analysis mode. At the same time, the important role of management and personnel subsystems in mine safety risk management is emphasized to improve productivity and safety. Finally, the article puts forward countermeasure suggestions to promote the high-quality development of smart mines, the mining industry is moving towards the direction of intelligence and wisdom, and gradually realize the less manned or unmanned production mode, laying a solid foundation for the future development of smart mines.
KEYWORDS
Intelligent mine; Internet of things; Digital twin; Safety management system; Risk assessment and control; Accident analysis and prevention
CITE THIS PAPER
ShiYu He, YuMin Li. Mine safety management and control countermeasures on the basis of risk assessment. World Journal of Management Science. 2025, 3(1): 29-35. DOI: https://doi.org/10.61784/wms3054.
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