Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents

The chemical industry has made great contributions to the national economy, but frequent chemical plant explosion accidents (CPEAs) have also caused heavy property losses and casualties, as the CPEA is the result of interaction of many related risk factors, leading to uncertainty in the evolution of...

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Main Authors: Yunmeng Lu, Tiantian Wang, Tiezhong Liu
Format: Article
Language:English
Published: MDPI AG 2020-07-01
Series:International Journal of Environmental Research and Public Health
Subjects:
Online Access:https://www.mdpi.com/1660-4601/17/15/5364
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spelling doaj-0d4ab91b80924d469a1e2951d677e8292020-11-25T03:32:37ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012020-07-01175364536410.3390/ijerph17155364Bayesian Network-Based Risk Analysis of Chemical Plant Explosion AccidentsYunmeng Lu0Tiantian Wang1Tiezhong Liu2Beijing Institute of Technology, School of Management and Economics, Beijing 100081, ChinaBeijing Institute of Technology, School of Management and Economics, Beijing 100081, ChinaBeijing Institute of Technology, School of Management and Economics, Beijing 100081, ChinaThe chemical industry has made great contributions to the national economy, but frequent chemical plant explosion accidents (CPEAs) have also caused heavy property losses and casualties, as the CPEA is the result of interaction of many related risk factors, leading to uncertainty in the evolution of the accident. To systematically excavate and analyze the underlying causes of accidents, this paper first integrates emergency elements in the frame of orbit intersection theory and proposes 14 nodes to represent the evolution path of the accident. Then, combined with historical data and expert experience, a Bayesian network (BN) model of CPEAs was established. Through scenario analysis and sensitivity analysis, the interaction between factors and the impact of the factors on accident consequences was evaluated. It is found that the direct factors have the most obvious influence on the accident consequences, and the unsafe conditions contribute more than the unsafe behaviors. Furthermore, considering the factor chain, the management factors, especially safety education and training, are the key link of the accident that affects unsafe behaviors and unsafe conditions. Moreover, effective government emergency response has played a more prominent role in controlling environmental pollution. In addition, the complex network relationship between elements is presented in a sensitivity index matrix, and we extracted three important risk transmission paths from it. The research provides support for enterprises to formulate comprehensive safety production management strategies and control key factors in the risk transmission path to reduce CPEA risks.https://www.mdpi.com/1660-4601/17/15/5364chemical plant explosion accidentsBayesian networkrisk analysissensitivity analysisemergency management
collection DOAJ
language English
format Article
sources DOAJ
author Yunmeng Lu
Tiantian Wang
Tiezhong Liu
spellingShingle Yunmeng Lu
Tiantian Wang
Tiezhong Liu
Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
International Journal of Environmental Research and Public Health
chemical plant explosion accidents
Bayesian network
risk analysis
sensitivity analysis
emergency management
author_facet Yunmeng Lu
Tiantian Wang
Tiezhong Liu
author_sort Yunmeng Lu
title Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
title_short Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
title_full Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
title_fullStr Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
title_full_unstemmed Bayesian Network-Based Risk Analysis of Chemical Plant Explosion Accidents
title_sort bayesian network-based risk analysis of chemical plant explosion accidents
publisher MDPI AG
series International Journal of Environmental Research and Public Health
issn 1661-7827
1660-4601
publishDate 2020-07-01
description The chemical industry has made great contributions to the national economy, but frequent chemical plant explosion accidents (CPEAs) have also caused heavy property losses and casualties, as the CPEA is the result of interaction of many related risk factors, leading to uncertainty in the evolution of the accident. To systematically excavate and analyze the underlying causes of accidents, this paper first integrates emergency elements in the frame of orbit intersection theory and proposes 14 nodes to represent the evolution path of the accident. Then, combined with historical data and expert experience, a Bayesian network (BN) model of CPEAs was established. Through scenario analysis and sensitivity analysis, the interaction between factors and the impact of the factors on accident consequences was evaluated. It is found that the direct factors have the most obvious influence on the accident consequences, and the unsafe conditions contribute more than the unsafe behaviors. Furthermore, considering the factor chain, the management factors, especially safety education and training, are the key link of the accident that affects unsafe behaviors and unsafe conditions. Moreover, effective government emergency response has played a more prominent role in controlling environmental pollution. In addition, the complex network relationship between elements is presented in a sensitivity index matrix, and we extracted three important risk transmission paths from it. The research provides support for enterprises to formulate comprehensive safety production management strategies and control key factors in the risk transmission path to reduce CPEA risks.
topic chemical plant explosion accidents
Bayesian network
risk analysis
sensitivity analysis
emergency management
url https://www.mdpi.com/1660-4601/17/15/5364
work_keys_str_mv AT yunmenglu bayesiannetworkbasedriskanalysisofchemicalplantexplosionaccidents
AT tiantianwang bayesiannetworkbasedriskanalysisofchemicalplantexplosionaccidents
AT tiezhongliu bayesiannetworkbasedriskanalysisofchemicalplantexplosionaccidents
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