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Forward and backward risk assessment throughout a system life cycle using dynamic Bayesian networks: A case in a petroleum refinery

机译:使用动态贝叶斯网络的系统生命周期前进和向后风险评估:石油炼油厂中的一个案例

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In this paper, risk modeling was conducted based on the defined risk elements of a conceptual risk framework. This model allows for the estimation of a variety of risks, including human error probability, operational risk, financial risk, technological risk, commercial risk, health risk, and social and environmental risks. Bayesian network (BN) structure learning techniques were used to determine the relationships among the model variables. By solving a bi-objective optimization problem applying the genetic algorithm (GA) with the Pareto ranking approach, the network structure was learned. Then, risk modeling was performed for a petroleum refinery focusing on HydroDeSulfurization (HDS) technology throughout its life cycle. To extend the model horizontally and make it possible to evaluate the risk trend throughout the technology life cycle, we developed a dynamic Bayesian network (DBN) with three-time slices. A two-way forward and backward approach was used to analyze the model. The model validation was performed by applying the leave-one-out cross-validation method.
机译:在本文中,基于概念风险框架的定义风险元素进行风险建模。该模型允许估计各种风险,包括人为错误概率,操作风险,财务风险,技术风险,商业风险,健康风险以及社会和环境风险。贝叶斯网络(BN)结构学习技术用于确定模型变量之间的关系。通过解决应用遗传算法(GA)与帕累托排名方法的双目标优化问题,学习了网络结构。然后,在整个生命周期中对聚焦加氢脱硫(HDS)技术的石油炼油厂进行风险建模。为了水平扩展模型并使其可以评估整个技术生命周期的风险趋势,我们开发了一种带有三次切片的动态贝叶斯网络(DBN)。双向前向和后向方法用于分析模型。通过应用休假次交叉验证方法来执行模型验证。

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