Energies (Apr 2022)

Research on Intelligent Comprehensive Evaluation of Coal Seam Impact Risk Based on BP Neural Network Model

  • Kexue Zhang,
  • Junao Zhu,
  • Manchao He,
  • Yaodong Jiang,
  • Chun Zhu,
  • Dong Li,
  • Lei Kang,
  • Jiandong Sun,
  • Zhiheng Chen,
  • Xiaoling Wang,
  • Haijiang Yang,
  • Yongwei Wu,
  • Xingcheng Yan

DOI
https://doi.org/10.3390/en15093292
Journal volume & issue
Vol. 15, no. 9
p. 3292

Abstract

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Coal seam impact risk assessment is the premise of coal mine safety, which can reduce the occurrence of underground impact pressure accidents and directly affect the safety, coal production, economic and social benefits of coal mining enterprises. In order to evaluate the impact risk of coal seams more reasonably and comprehensively, and consider the weights of different influencing factors on the impact risk of coal seams, the neural network model is proposed to evaluate the impact risk of coal seams. Mining depth, impact tendency, geological structure and mining technology are selected as the influencing factors of coal seam impact risk. Each influencing factor contains different evaluation indices, a total of 18. The 18 evaluation indices and the impact risk level are normalized and quantified. The BP neural network model for evaluating coal seam impact risk level is established, and the impact risk of 2-1 coal seams in a mine in Inner Mongolia is comprehensively evaluated and analyzed in this study. The results show that the BP neural network model can represent coal seam impact risk level well. The application of the BP neural network model to evaluate coal seam impact risk level has the characteristics of high precision, fast calculation speed and less artificial calculation, which provides an efficient and convenient method for the evaluation of coal seam impact risk.

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