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Using random forest for the risk assessment of coal-floor water inrush in Panjiayao Coal Mine, northern China

机译:北方攀景亚煤矿煤层水涌出的随机林

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摘要

Coal-floor water-inrush incidents account for a large proportion of coal mine disasters in northern China, and accurate risk assessment is crucial for safe coal production. A novel and promising assessment model for water inrush is proposed based on random forest (RF), which is a powerful intelligent machine-learning algorithm. RF has considerable advantages, including high classification accuracy and the capability to evaluate the importance of variables; in particularly, it is robust in dealing with the complicated and non-linear problems inherent in risk assessment. In this study, the proposed model is applied to Panjiayao Coal Mine, northern China. Eight factors were selected as evaluation indices according to systematic analysis of the geological conditions and a field survey of the study area. Risk assessment maps were generated based on RF, and the probabilistic neural network (PNN) model was also used for risk assessment as a comparison. The results demonstrate that the two methods are consistent in the risk assessment of water inrush at the mine, and RF shows a better performance compared to PNN with an overall accuracy higher by 6.67%. It is concluded that RF is more practicable to assess the water-inrush risk than PNN. The presented method will be helpful in avoiding water inrush and also can be extended to various engineering applications.
机译:煤层水侵入事件占中国北方煤矿灾害的大部分,准确的风险评估对于安全煤炭生产至关重要。基于随机森林(RF)的新型和有前途的水涌评估模型,是一种强大的智能机器学习算法。 RF具有相当大的优点,包括高分类准确性和评估变量重要性的能力;特别是,在处理风险评估中固有的复杂和非线性问题是强大的。在本研究中,拟议的模型适用于中国北方潘家瑶煤矿。根据地质条件的系统分析和研究区的实地调查,选择了八种因素作为评估指标。基于RF生成风险评估图,概率神经网络(PNN)模型也用于风险评估作为比较。结果表明,这两种方法在矿井水中涌入的风险评估中是一致的,并且RF与PNN相比,率更好地具有6.67%的PNN。得出结论,RF比PNN评估水侵入风险更为实用。提出的方法将有助于避免浪涌,也可以扩展到各种工程应用。

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