利用贝叶斯网络对伊斯法罕炼油厂进行随机风险评估

Meysam Saeedi
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引用次数: 0

摘要

炼油厂是为下游产业提供能源和原材料的工业中心之一。为了实现可持续发展目标,在经济和环境目标之间建立适当的平衡一直是社会管理者和决策者关注的焦点。贝叶斯网络模型已成为炼油厂风险评估和不确定性管理领域的有力工具。本研究的重点是从社会和生态角度确定不同单位的优先次序,以促进伊斯法罕炼油厂废料处理决策过程符合可持续发展目标。本研究的方法是借助贝叶斯网络进行风险评估。为此,首先对流程的物料流进行分析,以确定风险,然后设计影响图和贝叶斯网络结构。在完成条件概率表后,对风险因素进行了优先排序。根据风险评估结果,燃料装置被列为最重要的风险因素,而管道和工厂空气及仪表空气系统被确定为最环保的装置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stochastic Risk Assessment with Bayesian Networks in Esfahan Refinery
Refineries are among the industrial centers that supply the energy and raw materials to downstream industries. To achieve sustainable development goals, creating appropriate balance between economic and environmental goals has always been the focus of managers and policy makers in the societies. Bayesian Network model has become a robust tool in the field of risk assessment and uncertainty management in refineries. The focus of this research is to prioritizing different units from the point of view of social and ecological aspects for facilitating the decision-making process in the context of waste material treatment in Esfahan refinery in line with the sustainable development goals. The methodology of this research is based on risk assessment with the aid of Bayesian Networks. To this end, first material flow analysis of the processes procured risk identification, subsequently influence diagram and Bayesian Network structure were designed. After completing conditional probability tables, risk factors were prioritized. According to the risk assessment results, Fuel unit was classified as the most significant risk factor, whereas Pipelines and Plant air & instrument air system were identified as the most environmentally friendly units.
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