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Published in: Hydrogeology Journal 7/2018

13-04-2018 | Paper

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

Authors: Dekang Zhao, Qiang Wu, Fangpeng Cui, Hua Xu, Yifan Zeng, Yufei Cao, Yuanze Du

Published in: Hydrogeology Journal | Issue 7/2018

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Abstract

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.

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Metadata
Title
Using random forest for the risk assessment of coal-floor water inrush in Panjiayao Coal Mine, northern China
Authors
Dekang Zhao
Qiang Wu
Fangpeng Cui
Hua Xu
Yifan Zeng
Yufei Cao
Yuanze Du
Publication date
13-04-2018
Publisher
Springer Berlin Heidelberg
Published in
Hydrogeology Journal / Issue 7/2018
Print ISSN: 1431-2174
Electronic ISSN: 1435-0157
DOI
https://doi.org/10.1007/s10040-018-1767-5

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