基于大数据的燃气安全风险管理研究

Y. Wan-jun, Wang Jian, Zhao Huai-lin
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引用次数: 2

摘要

为了解决煤矿企业在瓦斯安全管理方面的不足,根据大数据理论,提出了一种安全管理分析方法。首先,运用行为安全理论对气体危害原因进行分类。然后使用HDFS存储行为观察者发现的不安全行为和不安全物理状态,最后使用基于mapreduce的并行FP-growth算法找出日常操作中重复的、危险的不安全行为,形成基于hadoop的气体行为安全管理模型。实验结果表明,该模型对煤矿企业有针对性地实施瓦斯安全管理具有一定的实用参考价值。通过对不安全行为和物理状态的发现,可以发现安全管理中的不足,有助于企业完善安全管理体系。因此,对提高煤矿企业安全生产文化,减少瓦斯事故的发生具有一定的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Risk Management of Gas Safety based on Big Data
In order to solve the shortcomings of coal mine enterprises in gas safety management, according to the big data theory, a safety management analysis method is proposed. First, the behavioral safety theory is used to classify the causes of gas hazards. Then use the HDFS to storage the unsafe behavior and unsafe physical state that found by behavior observers, and finally use the MapReduce-based parallel FP-growth algorithm to find out the repeated and dangerous unsafe behaviors in daily operations, and form a Hadoop-based gas behavior security management model. The experimental results show that the model has certain practical reference value for the targeted implementation of gas safety management in coal mine enterprises. Through the unsafe behavior and physical state found, the shortcomings in safety management will be discover, it will help enterprises improve the safety management system. So it has certain prospects for improving the safety production culture of coal mine enterprises and reducing the occurrence of gas accidents.
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