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    Development of the Bow-Tie Bayesian Network Model for Assessing Pipeline Failures

    Source: Journal of Pipeline Systems Engineering and Practice:;2025:;Volume ( 016 ):;issue: 003::page 04025040-1
    Author:
    Zhen Zhou
    ,
    Jinrong Wang
    ,
    Leyuan Zhang
    ,
    Taolong Xu
    ,
    Hongye Jiang
    ,
    Ao Zhang
    ,
    Lijie Liu
    ,
    Yi Liao
    DOI: 10.1061/JPSEA2.PSENG-1835
    Publisher: American Society of Civil Engineers
    Abstract: Recently, oil and gas pipeline leaks in mountainous areas have occurred occasionally. A dynamic risk assessment system has been established to better understand and reveal the risk evolution of such accidents to monitor and predict the likelihood of pipeline leakage incidents. Using the bow-tie model, risk factors are identified, and accident consequences for buried aviation fuel pipelines in mountainous areas are analyzed. The GeNIe software is then used to transform the bow-tie model into a Bayesian network to analyze dynamic risks. The node variables in the model are examined before probability and sensitivity analysis, allowing for the identification of the key factors leading to pipeline leakage incidents. The research results indicate that the high-risk basic events, ranked from highest to lowest risk, are untimely handling, uneven ditch bottom, unintentional damage by personnel, mechanical damage during pipeline installation, failure to strictly enforce procedures, illegal construction, and untimely detection. Therefore, to prevent leakage accidents of aviation fuel pipelines in mountainous areas, it is essential to establish an efficient monitoring and response mechanism, leverage advanced technology to monitor pipeline conditions in real time, and ensure early detection and timely resolution of issues. Additionally, enhancing personnel safety awareness, strengthening pipeline quality reviews, and conducting regular inspections and maintenance of line markers (such as mileage piles, corner piles, signposts, and warning signs) are critical. Lastly, strict quality control and construction environment management should be implemented to optimize pipeline installation and maintenance processes, effectively reducing the risks associated with mechanical damage and terrain-related issues. Through comprehensive analysis of mountainous terrain, geological conditions, climatic conditions, and pipeline operation conditions, the risk factors that may lead to the leakage of aviation oil pipelines are identified, including geological disasters, extreme weather, pipeline aging, and third-party construction damage. The risk assessment model is used to quantitatively evaluate the identified risk factors, determine their probability of occurrence and possible consequences, and then categorize the risk levels to provide a basis for formulating preventive measures. Based on the results of the risk assessment, targeted preventive measures are formulated, such as strengthening pipeline inspection and maintenance, optimizing pipeline layout, improving pipeline material and construction quality, and establishing a robust risk monitoring and early warning system.
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      Development of the Bow-Tie Bayesian Network Model for Assessing Pipeline Failures

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    contributor authorZhen Zhou
    contributor authorJinrong Wang
    contributor authorLeyuan Zhang
    contributor authorTaolong Xu
    contributor authorHongye Jiang
    contributor authorAo Zhang
    contributor authorLijie Liu
    contributor authorYi Liao
    date accessioned2025-08-17T23:06:03Z
    date available2025-08-17T23:06:03Z
    date copyright8/1/2025 12:00:00 AM
    date issued2025
    identifier otherJPSEA2.PSENG-1835.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4307904
    description abstractRecently, oil and gas pipeline leaks in mountainous areas have occurred occasionally. A dynamic risk assessment system has been established to better understand and reveal the risk evolution of such accidents to monitor and predict the likelihood of pipeline leakage incidents. Using the bow-tie model, risk factors are identified, and accident consequences for buried aviation fuel pipelines in mountainous areas are analyzed. The GeNIe software is then used to transform the bow-tie model into a Bayesian network to analyze dynamic risks. The node variables in the model are examined before probability and sensitivity analysis, allowing for the identification of the key factors leading to pipeline leakage incidents. The research results indicate that the high-risk basic events, ranked from highest to lowest risk, are untimely handling, uneven ditch bottom, unintentional damage by personnel, mechanical damage during pipeline installation, failure to strictly enforce procedures, illegal construction, and untimely detection. Therefore, to prevent leakage accidents of aviation fuel pipelines in mountainous areas, it is essential to establish an efficient monitoring and response mechanism, leverage advanced technology to monitor pipeline conditions in real time, and ensure early detection and timely resolution of issues. Additionally, enhancing personnel safety awareness, strengthening pipeline quality reviews, and conducting regular inspections and maintenance of line markers (such as mileage piles, corner piles, signposts, and warning signs) are critical. Lastly, strict quality control and construction environment management should be implemented to optimize pipeline installation and maintenance processes, effectively reducing the risks associated with mechanical damage and terrain-related issues. Through comprehensive analysis of mountainous terrain, geological conditions, climatic conditions, and pipeline operation conditions, the risk factors that may lead to the leakage of aviation oil pipelines are identified, including geological disasters, extreme weather, pipeline aging, and third-party construction damage. The risk assessment model is used to quantitatively evaluate the identified risk factors, determine their probability of occurrence and possible consequences, and then categorize the risk levels to provide a basis for formulating preventive measures. Based on the results of the risk assessment, targeted preventive measures are formulated, such as strengthening pipeline inspection and maintenance, optimizing pipeline layout, improving pipeline material and construction quality, and establishing a robust risk monitoring and early warning system.
    publisherAmerican Society of Civil Engineers
    titleDevelopment of the Bow-Tie Bayesian Network Model for Assessing Pipeline Failures
    typeJournal Article
    journal volume16
    journal issue3
    journal titleJournal of Pipeline Systems Engineering and Practice
    identifier doi10.1061/JPSEA2.PSENG-1835
    journal fristpage04025040-1
    journal lastpage04025040-10
    page10
    treeJournal of Pipeline Systems Engineering and Practice:;2025:;Volume ( 016 ):;issue: 003
    contenttypeFulltext
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