Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model

The intensity and depth of China’s coal mining are increasing, and the risk of coal-gas compound dynamic disaster is prominent, which seriously restricts the green, safe, and efficient mining of China’s coal resources. How to accurately predict the risk of disasters is an important basis for disaste...

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Main Authors: Kai Wang, Kangnan Li, Feng Du
Format: Article
Language:English
Published: Wiley 2021-01-01
Series:Geofluids
Online Access:http://dx.doi.org/10.1155/2021/3508806
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author Kai Wang
Kangnan Li
Feng Du
author_facet Kai Wang
Kangnan Li
Feng Du
author_sort Kai Wang
collection DOAJ
description The intensity and depth of China’s coal mining are increasing, and the risk of coal-gas compound dynamic disaster is prominent, which seriously restricts the green, safe, and efficient mining of China’s coal resources. How to accurately predict the risk of disasters is an important basis for disaster prevention and control. In this paper, the Pingdingshan No. 8 coal mine is taken as the research object, and the grey relational analysis (GRA), principal component analysis (PCA), and BP neural network are combined to predict the coal-gas compound dynamic disaster. First, the weights of 13 influencing factors are sorted and screened by grey relational analysis. Next, principal component analysis is carried out on the influencing factors with high weight value to extract common factors. Then, the common factor is used as the input parameter of BP neural network to train the previous data. Finally, the coal-gas compound dynamic disaster prediction model based on GRA-PCA-BP neural network is established. After verification, the model can effectively predict the occurrence of coal-gas compound dynamic disaster. The prediction results are consistent with the actual situation of the coal mine with high accuracy and practicality. This work is of great significance to ensure the safe and efficient production of deep mines.
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institution Kabale University
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series Geofluids
spelling doaj-art-f1e8c5ce4cee48ab83276823a0e81c322025-02-03T06:10:47ZengWileyGeofluids1468-81151468-81232021-01-01202110.1155/2021/35088063508806Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP ModelKai Wang0Kangnan Li1Feng Du2Beijing Key Laboratory for Precise Mining of Intergrown Energy and Resources, China University of Mining and Technology (Beijing), Beijing 100083, ChinaBeijing Key Laboratory for Precise Mining of Intergrown Energy and Resources, China University of Mining and Technology (Beijing), Beijing 100083, ChinaBeijing Key Laboratory for Precise Mining of Intergrown Energy and Resources, China University of Mining and Technology (Beijing), Beijing 100083, ChinaThe intensity and depth of China’s coal mining are increasing, and the risk of coal-gas compound dynamic disaster is prominent, which seriously restricts the green, safe, and efficient mining of China’s coal resources. How to accurately predict the risk of disasters is an important basis for disaster prevention and control. In this paper, the Pingdingshan No. 8 coal mine is taken as the research object, and the grey relational analysis (GRA), principal component analysis (PCA), and BP neural network are combined to predict the coal-gas compound dynamic disaster. First, the weights of 13 influencing factors are sorted and screened by grey relational analysis. Next, principal component analysis is carried out on the influencing factors with high weight value to extract common factors. Then, the common factor is used as the input parameter of BP neural network to train the previous data. Finally, the coal-gas compound dynamic disaster prediction model based on GRA-PCA-BP neural network is established. After verification, the model can effectively predict the occurrence of coal-gas compound dynamic disaster. The prediction results are consistent with the actual situation of the coal mine with high accuracy and practicality. This work is of great significance to ensure the safe and efficient production of deep mines.http://dx.doi.org/10.1155/2021/3508806
spellingShingle Kai Wang
Kangnan Li
Feng Du
Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
Geofluids
title Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
title_full Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
title_fullStr Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
title_full_unstemmed Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
title_short Study on Prediction of Coal-Gas Compound Dynamic Disaster Based on GRA-PCA-BP Model
title_sort study on prediction of coal gas compound dynamic disaster based on gra pca bp model
url http://dx.doi.org/10.1155/2021/3508806
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AT kangnanli studyonpredictionofcoalgascompounddynamicdisasterbasedongrapcabpmodel
AT fengdu studyonpredictionofcoalgascompounddynamicdisasterbasedongrapcabpmodel