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Uncertainty quantification in dynamic system risk assessment: a new approach with randomness and fuzzy theory

机译:动态系统风险评估中的不确定性量化:一种具有随机性和模糊理论的新方法

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摘要

Quantifying uncertainty during risk analysis has become an important part of effective decision-making and health risk assessment. However, most risk assessment studies struggle with uncertainty analysis and yet uncertainty with respect to model parameter values is of primary importance. Capturing uncertainty in risk assessment is vital in order to perform a sound risk analysis. In this paper, an approach to uncertainty analysis based on the fuzzy set theory and the Monte Carlo simulation is proposed. The question then arises as to how these two modes of representation of uncertainty can be combined for the purpose of estimating risk. The proposed method is applied to a propylene oxide polymerisation reactor. It takes into account both stochastic and epistemic uncertainties in the risk calculation. This study explores areas where random and fuzzy logic models may be applied to improve risk assessment in industrial plants with a dynamic system (change over time). It discusses the methodology and the process involved when using random and fuzzy logic systems for risk management.
机译:在风险分析过程中量化不确定性已成为有效决策和健康风险评估的重要组成部分。然而,大多数风险评估研究都在不确定性分析中挣扎,然而模型参数值的不确定性至关重要。为了进行合理的风险分析,捕获风险评估中的不确定性至关重要。本文提出了一种基于模糊集理论和蒙特卡洛模拟的不确定性分析方法。于是就产生了一个问题,即如何将不确定性的这两种表示方式组合在一起以估计风险。所提出的方法被应用于环氧丙烷聚合反应器。在风险计算中,它考虑了随机和认知方面的不确定性。这项研究探索了可以应用随机和模糊逻辑模型来改善具有动态系统(随时间变化)的工厂的风险评估的领域。它讨论了将随机和模糊逻辑系统用于风险管理时的方法论和过程。

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