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Predicting safety hazards and safety behavior of underground coal mines

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Most coal mine accidents are attributed to the miner's unsafe behavior. Regulating the safety attitude and thus enhancing miners' safety behavior are significant for accident prevention. Capturing the interrelations between… Click to show full abstract

Most coal mine accidents are attributed to the miner's unsafe behavior. Regulating the safety attitude and thus enhancing miners' safety behavior are significant for accident prevention. Capturing the interrelations between risks is important to understand and promote coal mining safety thoroughly. Therefore, this paper proposes the intelligent accident predictive framework (IAPF) for monitoring and analyzing the safety hazards and safety behavior of underground coal mines. The most significant variables involved in occupational accidents and their association rules have been identified. These rules are composed of numerous predictor variables that cause accidents, describing their characteristics and environment. The accident model path analysis demonstrates that adverse effects, risk-taking behaviors predict and job dissatisfaction an increased number of injuries in mines. The IAPF model gives an outcome as an indicative risk score linked with the identified accident-prone situation, based upon which an appropriate mitigation plan can be established. The results show the most typical instant causes and the percentage of accidents with a basis in every connotation rule. The experimental results of IAPF show the highest prediction ratio of 97.5%, safety rate of 96.3%, security rate of 95.4%, and lowest accident rate of 22.6%, energy consumption ratio of 28.6%, carbon management ratio of 25.3% and hazard risk ratio of 20.2% compared to other methods.

Keywords: safety; hazards safety; safety hazards; coal; safety behavior

Journal Title: Soft Computing
Year Published: 2021

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