Study on Prevention System Construction of Coal Mine Gas Accident
DOI:
https://doi.org/10.54097/agcva131Keywords:
Gas Accident; Theoretical Analysis; Causation Model; Prevention System; Safety Evaluation.Abstract
The occurrence of coal mine gas accident seriously affects the coal mine safety production. It has important practical significance and value to carry out the study of gas accident prevention. Based on the analysis of the characteristics and causal theories of coal mine gas accidents, a coal mine gas accident causation model was studied and constructed. A coal mine gas accident prevention system was proposed, which focuses on four aspects: safety policy guidelines and current situation analysis, coal mine gas safety evaluation, formulation and implementation of preventive measures, and inspection and feedback of measure effectiveness. The research ideas and conclusions can provide reference and guidance for the prevention and control of coal mine gas accidents in China to a certain extent.
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