基于贝叶斯网络的油气管道风险分析中人为因素的引入

F. A. Alaw, N. Sulaiman, Henry Tan
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引用次数: 1

摘要

全球每天消耗数十亿桶石油和天然气,这些石油和天然气主要通过管道运输和分配。由于结合了良好的设计、材料和操作实践,这些管道是安全可靠的碳氢化合物运输系统。然而,如果管道发生故障,将会对环境和公共安全造成严重的不利影响,并造成严重的经济损失,这是最令人沮丧的问题之一。本研究的目的是利用贝叶斯网络(BN)方法构建管道人为因素失效的因果关系框架。确定了与腐蚀有关的管道故障的潜在人为因素,并将其分为维护、监控和操作错误三类。通过对贝叶斯网络进行预测和诊断分析,发现引起系统故障的偶然环节,并对控制措施进行预测,以降低人为错误率。结果表明,当系统运行超出其设计极限时,操作误差显示出显着的影响。总之,通过提供需要控制的重要人为错误的信息,贝叶斯网络似乎是建立有效的油气管道人为错误管理模型的解决方案。因此,这个框架可以帮助决策者决定在管道的风险管理过程中何时何地采取预防或减轻措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
INCORPORATION OF HUMAN FACTORS IN RISK ANALYSIS OF OIL AND GAS PIPELINE USING BAYESIAN NETWORK
Billions of barrels of oil and gas are consumed around the world daily and these oil and gas are being mainly transported and distributed through pipelines. The pipelines are demonstrably safe and are reliable systems to transport hydrocarbons, owing to the combination of good design, materials, and operating practices. However, if the pipeline fail, it is one of the most frustrating issues as its significant adverse would impact environment and public safety as well as severe economic loss. The objective of this study is to construct a cause and effect relationship framework of pipeline failure due to human factor using Bayesian Network (BN) approach. The potential human factors of the pipeline failure linked to corrosion were identified and categorized into three categories that are maintenance, monitoring, and operational errors. The predictive and diagnosis analyses of the Bayesian Network were performed to find the casual links which cause the failure in the system and make a prediction of the control measures to reduce the rate of the human mistakes. Results revealed that operational error showed a significant effect when the system operates beyond the limits of its design. In conclusion, Bayesian Networks appear to be a solution to build an effective oil and gas pipeline human error management model by providing information about the important human error that needs to be controlled. Thus, this framework may assist the decision maker to decide when and where to take preventive or mitigate measures in the risk management process of a pipeline.
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