Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie

With the increase of hazardous materials (Hazmat) demand and transportation, frequent Hazmat road transportation accidents had arisen the widespread concern in the community. Thus, it is necessary to analyze the risk factors’ implications, which would make the safety of Hazmat transportation evolve...

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Main Authors: Xiaoli Ma, Yingying Xing, Jian Lu
Format: Article
Language:English
Published: Wiley 2018-01-01
Series:Journal of Advanced Transportation
Online Access:http://dx.doi.org/10.1155/2018/6248105
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author Xiaoli Ma
Yingying Xing
Jian Lu
author_facet Xiaoli Ma
Yingying Xing
Jian Lu
author_sort Xiaoli Ma
collection DOAJ
description With the increase of hazardous materials (Hazmat) demand and transportation, frequent Hazmat road transportation accidents had arisen the widespread concern in the community. Thus, it is necessary to analyze the risk factors’ implications, which would make the safety of Hazmat transportation evolve from “passive type” to “active type”. In order to explore the influence of risk factors resulting in accidents and predict the occurrence of accidents under the combination of risk factors, 839 accidents that have occurred for the period 2015–2016 were collected and examined. The Bayesian network structure was established by experts’ knowledge using Dempster-Shafer evidence theory. Parameter learning was conducted by the Expectation-Maximization (EM) algorithm in Genie 2.0. The two main results could be likely to obtain the following. (1) The Bayesian network model can explore the most probable factor or combination leading to the accident, which calculated the posterior probability of each risk factor. For example, the importance of three or more vehicles in an accident leading to the severe accident is higher than less vehicles, and in the absence of other evidences, the most probable reasons for “explosion accident” are vehicles carrying flammable liquids, larger quantity Hazmat, vehicle failure, and transporting in autumn. (2) The model can predict the occurrence of accident by setting the influence degrees of specific factor. Such that the probability of rear-end accidents caused by “speeding” is 0.42, and the probability could reach up to 0.97 when the driver is speeding at the low-class roads. Moreover, the complex logical relationship in Hazmat road transportation accidents could be obtained, and the uncertain relation among various risk factors could be expressed. These findings could provide theoretical support for transportation corporations and government department on taking effective measures to reduce the risk of Hazmat road transportation.
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spelling doaj-art-1e8305f329f0413cbc1e0c20edc6b0442025-02-03T06:11:25ZengWileyJournal of Advanced Transportation0197-67292042-31952018-01-01201810.1155/2018/62481056248105Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using GenieXiaoli Ma0Yingying Xing1Jian Lu2The Key Laboratory of Road and Traffic Engineering, Ministry of Education, Tongji University, 4800 Cao’an Road, Shanghai 201804, ChinaThe Key Laboratory of Road and Traffic Engineering, Ministry of Education, Tongji University, 4800 Cao’an Road, Shanghai 201804, ChinaThe Key Laboratory of Road and Traffic Engineering, Ministry of Education, Tongji University, 4800 Cao’an Road, Shanghai 201804, ChinaWith the increase of hazardous materials (Hazmat) demand and transportation, frequent Hazmat road transportation accidents had arisen the widespread concern in the community. Thus, it is necessary to analyze the risk factors’ implications, which would make the safety of Hazmat transportation evolve from “passive type” to “active type”. In order to explore the influence of risk factors resulting in accidents and predict the occurrence of accidents under the combination of risk factors, 839 accidents that have occurred for the period 2015–2016 were collected and examined. The Bayesian network structure was established by experts’ knowledge using Dempster-Shafer evidence theory. Parameter learning was conducted by the Expectation-Maximization (EM) algorithm in Genie 2.0. The two main results could be likely to obtain the following. (1) The Bayesian network model can explore the most probable factor or combination leading to the accident, which calculated the posterior probability of each risk factor. For example, the importance of three or more vehicles in an accident leading to the severe accident is higher than less vehicles, and in the absence of other evidences, the most probable reasons for “explosion accident” are vehicles carrying flammable liquids, larger quantity Hazmat, vehicle failure, and transporting in autumn. (2) The model can predict the occurrence of accident by setting the influence degrees of specific factor. Such that the probability of rear-end accidents caused by “speeding” is 0.42, and the probability could reach up to 0.97 when the driver is speeding at the low-class roads. Moreover, the complex logical relationship in Hazmat road transportation accidents could be obtained, and the uncertain relation among various risk factors could be expressed. These findings could provide theoretical support for transportation corporations and government department on taking effective measures to reduce the risk of Hazmat road transportation.http://dx.doi.org/10.1155/2018/6248105
spellingShingle Xiaoli Ma
Yingying Xing
Jian Lu
Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
Journal of Advanced Transportation
title Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
title_full Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
title_fullStr Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
title_full_unstemmed Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
title_short Causation Analysis of Hazardous Material Road Transportation Accidents by Bayesian Network Using Genie
title_sort causation analysis of hazardous material road transportation accidents by bayesian network using genie
url http://dx.doi.org/10.1155/2018/6248105
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AT yingyingxing causationanalysisofhazardousmaterialroadtransportationaccidentsbybayesiannetworkusinggenie
AT jianlu causationanalysisofhazardousmaterialroadtransportationaccidentsbybayesiannetworkusinggenie