Comprehensive study on identification of water inrush sources from deep mining roadway

被引:0
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作者
Yang Chen
Liansheng Tang
Shuyun Zhu
机构
[1] Sun Yat-sen University,School of Earth Sciences and Engineering
[2] Guangdong Provincial Key Lab of Geodynamics and Geohazards,School of Resources and Geosciences, Institute of Mine Water Hazards Prevention and Controlling Technology, School of Resources and Geosciences
[3] China University of Mining and Technology,undefined
关键词
Water inrush sources; Correlation analysis; Factor analysis; Probability discrimination;
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中图分类号
学科分类号
摘要
To accurately identify the location of the water inrush sources, correlation analysis and factor analysis were used to discuss the similarity of hydrochemical control mechanism of different aquifers and inrush water. On this basis, Fisher and BP neural network are used to judge the probability of inrush water. Finally, it is verified by hydrological observation holes. According to the water sources mixing model, the water inrush sources of 11601 working face were mainly No. 13 stratum Carboniferous limestone water with a small amount of No. 10 stratum Carboniferous limestone water, and the mixing ratio is 11:1. Combining the results of water inrush source identification, water yield mutation, geophysical exploration results, and underground drilling, it is speculated that there are two faults in this working face. The normal fault stops at the top of No. 13 stratum Carboniferous limestone aquifer, and the reverse fault develops to No. 13 stratum Carboniferous limestone aquifer. This research is of great significance for the identification of mine water sources and guidance for the prevention and control of water inrush.
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页码:19608 / 19623
页数:15
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