Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis

Pipeline failures can have catastrophic consequences, posing significant environmental and safety risks. In order to address the pipeline failure issues, a diagnostic Bayesian Network (BN) model was applied for the study of the Root Cause Analysis (RCA). The study aimed to identify the factors respo...

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Published in:International Journal of Sustainable Construction Engineering and Technology
Main Author: Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
Format: Article
Language:English
Published: Penerbit UTHM 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217842109&doi=10.30880%2fijscet.2024.15.03.030&partnerID=40&md5=f540bef388bcf7deed19563c134de74b
id 2-s2.0-85217842109
spelling 2-s2.0-85217842109
Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
2024
International Journal of Sustainable Construction Engineering and Technology
15
3 Special Issue
10.30880/ijscet.2024.15.03.030
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217842109&doi=10.30880%2fijscet.2024.15.03.030&partnerID=40&md5=f540bef388bcf7deed19563c134de74b
Pipeline failures can have catastrophic consequences, posing significant environmental and safety risks. In order to address the pipeline failure issues, a diagnostic Bayesian Network (BN) model was applied for the study of the Root Cause Analysis (RCA). The study aimed to identify the factors responsible for pipeline failures and offer a predictive tool for risk assessment. This study used the Bayesian Network (BN) model using existing Fault Tree Analysis (FTA) data from a past case study on pipeline failures. Translating the potential failure modes and the identified causes using Fault Tree Analysis (FTA) creates the Bayesian Network (BN) model. The results and discussions showed the BN model's accuracy and effectiveness in predicting pipeline failures. Sensitivity analysis highlighted critical factors with substantial influence on system reliability. The model's validation against FTA ensured its reliability in representing dependencies and relationships in the system. The sensitivity analysis revealed that the model categorized the pipe defects into commissioning and material defects, the primary causes of a pipeline to be ruptured. By incorporating a wide range of factors and failure mechanisms, the model offers a comprehensive approach to assessing the risk of pipeline failure incidents. This BN model offers a practical tool for conducting Root Cause Analysis and making informed decisions to improve pipeline system safety. © 2024, Penerbit UTHM. All rights reserved.
Penerbit UTHM
21803242
English
Article

author Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
spellingShingle Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
author_facet Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
author_sort Mohamed O.; Hisyam M.N.; Muhamad N.S.; Ismail M.I.; Syamsunur D.; Azrief M.; Xi Enna C.
title Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
title_short Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
title_full Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
title_fullStr Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
title_full_unstemmed Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
title_sort Pipeline Failure Analysis: Bayesian Network Approach from Fault Tree Analysis
publishDate 2024
container_title International Journal of Sustainable Construction Engineering and Technology
container_volume 15
container_issue 3 Special Issue
doi_str_mv 10.30880/ijscet.2024.15.03.030
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85217842109&doi=10.30880%2fijscet.2024.15.03.030&partnerID=40&md5=f540bef388bcf7deed19563c134de74b
description Pipeline failures can have catastrophic consequences, posing significant environmental and safety risks. In order to address the pipeline failure issues, a diagnostic Bayesian Network (BN) model was applied for the study of the Root Cause Analysis (RCA). The study aimed to identify the factors responsible for pipeline failures and offer a predictive tool for risk assessment. This study used the Bayesian Network (BN) model using existing Fault Tree Analysis (FTA) data from a past case study on pipeline failures. Translating the potential failure modes and the identified causes using Fault Tree Analysis (FTA) creates the Bayesian Network (BN) model. The results and discussions showed the BN model's accuracy and effectiveness in predicting pipeline failures. Sensitivity analysis highlighted critical factors with substantial influence on system reliability. The model's validation against FTA ensured its reliability in representing dependencies and relationships in the system. The sensitivity analysis revealed that the model categorized the pipe defects into commissioning and material defects, the primary causes of a pipeline to be ruptured. By incorporating a wide range of factors and failure mechanisms, the model offers a comprehensive approach to assessing the risk of pipeline failure incidents. This BN model offers a practical tool for conducting Root Cause Analysis and making informed decisions to improve pipeline system safety. © 2024, Penerbit UTHM. All rights reserved.
publisher Penerbit UTHM
issn 21803242
language English
format Article
accesstype
record_format scopus
collection Scopus
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