地下水科学与工程:英文版 · 2019年第4期354-359,共6页

Height prediction of water flowing fractured zones basedon BP artificial neural network

作者:YANG Liu,WEN Xue-ru,WU Xiao-li,PEI Li-xin,YUE Chen,LIU Bing,GUO Si-jia

摘要:Factures caused by deformation and destruction of bedrocks over coal seams can easily lead to water flooding(inrush)in mines,a threat to safety production.Fractures with high hydraulic conductivity are good watercourses as well as passages for inrush in mines and tunnels.An accurate height prediction of water flowing fractured zones is a key issue in today's mine water prevention and control.The theory of leveraging BP artificial neural network in height prediction of water flowing fractured zones is analysed and applied in Qianjiaying Mine as an example in this paper.Per the comparison with traditional calculation results,the BP artificial neural network better reflects the geological conditions of the research mine areas and produces more objective,accurate and reasonable results,which can be applied to predict the height of water flowing fractured zones.

发文机构:China University of Mining&Technology(Beijing) Institute of Hydrogeology and Environmental Geology Beijing Geological and Mineral Exploration and Development Corporation

关键词:HEIGHTofwaterflowingfracturedZONEBPartificialNEUTRALnetworkCOMPARATIVEanalysis

分类号: P64[天文地球—地质矿产勘探][天文地球—地质学]

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