Dynamic safety assessment of natural gas stations using Bayesian network

Dynamic cause-consequence analysis of the regulator system failure using BN. [Display omitted] •A dynamic and comprehensive QRA (DCQRA) framework is proposed for safety assessment of CGSs.•Bow-tie diagram and Bayesian network are employed for accident scenario modeling.•Critical basic events and min...

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Veröffentlicht in:Journal of hazardous materials 2017-01, Vol.321, p.830-840
Hauptverfasser: Zarei, Esmaeil, Azadeh, Ali, Khakzad, Nima, Aliabadi, Mostafa Mirzaei, Mohammadfam, Iraj
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container_end_page 840
container_issue
container_start_page 830
container_title Journal of hazardous materials
container_volume 321
creator Zarei, Esmaeil
Azadeh, Ali
Khakzad, Nima
Aliabadi, Mostafa Mirzaei
Mohammadfam, Iraj
description Dynamic cause-consequence analysis of the regulator system failure using BN. [Display omitted] •A dynamic and comprehensive QRA (DCQRA) framework is proposed for safety assessment of CGSs.•Bow-tie diagram and Bayesian network are employed for accident scenario modeling.•Critical basic events and minimal cut sets are identified using probability updating. Pipelines are one of the most popular and effective ways of transporting hazardous materials, especially natural gas. However, the rapid development of gas pipelines and stations in urban areas has introduced a serious threat to public safety and assets. Although different methods have been developed for risk analysis of gas transportation systems, a comprehensive methodology for risk analysis is still lacking, especially in natural gas stations. The present work is aimed at developing a dynamic and comprehensive quantitative risk analysis (DCQRA) approach for accident scenario and risk modeling of natural gas stations. In this approach, a FMEA is used for hazard analysis while a Bow-tie diagram and Bayesian network are employed to model the worst-case accident scenario and to assess the risks. The results have indicated that the failure of the regulator system was the worst-case accident scenario with the human error as the most contributing factor. Thus, in risk management plan of natural gas stations, priority should be given to the most probable root events and main contribution factors, which have identified in the present study, in order to reduce the occurrence probability of the accident scenarios and thus alleviate the risks.
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subjects Accident analysis
Accidents
Bayesian network
Bow-tie approach
City gate station
Dynamic risk analysis
FMEA
Gas pipelines
Hazardous materials
Natural gas
Risk
Risk analysis
Stations
title Dynamic safety assessment of natural gas stations using Bayesian network
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