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Identification of Mine Water Inrush Source Based on PCA-BP Neural Network

Identification of Mine Water Inrush Source Based on PCA-BP Neural Network
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摘要 It is of great significance to analyze the chemical indexes of mine water and develop a rapid identification system of water source, which can quickly and accurately distinguish the causes of water inrush and identify the source of water inrush, so as to reduce casualties and economic losses and prevent and control water inrush disasters. Taking Ca<sup>2+</sup>, Mg<sup>2+</sup>, Na<sup>+</sup> + K<sup>+</sup>, , , Cl<sup>-</sup>, pH value and TDS as discriminant indexes, the principal component analysis method was used to reduce the dimension of data, and the identification model of mine water inrush source based on PCA-BP neural network was established. 96 sets of data of different aquifers in Panxie mining area were selected for prediction analysis, and 20 sets of randomly selected data were tested, with an accuracy rate of 95%. The model can effectively reduce data redundancy, has a high recognition rate, and can accurately and quickly identify the water source of mine water inrush. It is of great significance to analyze the chemical indexes of mine water and develop a rapid identification system of water source, which can quickly and accurately distinguish the causes of water inrush and identify the source of water inrush, so as to reduce casualties and economic losses and prevent and control water inrush disasters. Taking Ca<sup>2+</sup>, Mg<sup>2+</sup>, Na<sup>+</sup> + K<sup>+</sup>, , , Cl<sup>-</sup>, pH value and TDS as discriminant indexes, the principal component analysis method was used to reduce the dimension of data, and the identification model of mine water inrush source based on PCA-BP neural network was established. 96 sets of data of different aquifers in Panxie mining area were selected for prediction analysis, and 20 sets of randomly selected data were tested, with an accuracy rate of 95%. The model can effectively reduce data redundancy, has a high recognition rate, and can accurately and quickly identify the water source of mine water inrush.
作者 Mingcheng Ning Haifeng Lu Mingcheng Ning;Haifeng Lu(School of Earth and Environment, Anhui University of Science & Technology, Huainan, China)
出处 《International Journal of Geosciences》 2023年第8期710-718,共9页 地球科学国际期刊(英文)
关键词 Mine Water Inrush Analysis of Hydrochemical Characteristics Principal Component Analysis (PCA) Back Propagation Neural Networks Water Source Identification Mine Water Inrush Analysis of Hydrochemical Characteristics Principal Component Analysis (PCA) Back Propagation Neural Networks Water Source Identification
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