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A method for risk-informed safety significance categorization using the analytic hierarchy process and bayesian belief networks

机译:基于层次分析和贝叶斯信念网络的风险信息安全重要性分类方法

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A risk-informed safety significance categorization (RISSC) is to categorize structures, systems, or components (SSCs) of a nuclear power plant (NPP) into two or more groups, according to their safety significance using both probabilistic and deterministic insights. In the conventional methods for the RISSC, the SSCs are quantitatively categorized according to their importance measures for the initial categorization. The final decisions (categorizations) of SSCs, however, are qualitatively made by an expert panel through discussions and adjustments of opinions by using the probabilistic insights compiled in the initial categorization process and combining the probabilistic insights with the deterministic insights. Therefore, owing to the qualitative and linear decision-making process, the conventional methods have the demerits as follows: (1) they are very costly in terms of time and labor, (2) it is not easy to reach the final decision, when the opinions of the experts are in conflict and (3) they have an overlapping process due to the linear paradigm (the categorization is performed twice―first, by the engineers who propose the method, and second, by the expert panel). In this work, a method for RISSC using the analytic hierarchy process (AHP) and bayesian belief networks (BBN) is proposed to overcome the demerits of the conventional methods and to effectively arrive at a final decision (or categorization). By using the AHP and BBN, the expert panel takes part in the early stage of the categorization (that is, the quantification process) and the safety significance based on both probabilistic and deterministic insights is quantified. According to that safety significance, SSCs are quantitatively categorized into three categories such as high safety significant category (Hi), potentially safety significant category (Po), or low safety significant category (Lo). The proposed method was applied to the components such as CC-V073, CV-V530, and SI-V644 in Ulchin Unit 3 NPP in South Korea. The expert panel consisted of two probabilistic safety assessments (PSA) experts and one system design expert. Before categorizing the components, the design basis functions, simplified P and IDs, and the Fussell-Vesely (FV) importance and the Risk Achievement Worth (RAW) of the PSA were prepared for the experts' evaluations. By using this method, we could categorize the components quantitatively on the basis of experts' knowledge and experience in an early stage.
机译:风险知情的安全重要性分类(RISSC)是使用概率和确定性见解,根据核安全(NPP)的结构,系统或组件(SSC)的安全意义,将其分为两个或多个组。在用于RISSC的常规方法中,将SSC根据其对初始分类的重要性度量进行定量分类。但是,SSC的最终决定(分类)是由专家小组定性地通过讨论和调整意见而定性的,方法是使用在初始分类过程中汇编的概率见解并将概率见解与确定性见解相结合。因此,由于定性和线性决策过程,传统方法具有以下缺点:(1)它们在时间和劳力方面非常昂贵,(2)何时做出最终决策并不容易。专家的意见是矛盾的,(3)由于线性范式,他们有一个重叠的过程(分类进行了两次,第一次是由提出该方法的工程师,第二次是由专家小组进行)。在这项工作中,提出了一种使用层次分析法(AHP)和贝叶斯信念网络(BBN)的RISSC方法,以克服传统方法的缺点,并有效地得出最终决策(或分类)。通过使用AHP和BBN,专家组可以参与分类的早期阶段(即量化过程),并且可以基于概率和确定性见解对安全重要性进行量化。根据该安全意义,SSC被定量地分为三类,例如高安全重要类别(Hi),潜在安全重要类别(Po)或低安全重要类别(Lo)。该方法已应用于韩国Ulchin Unit 3 NPP中的CC-V073,CV-V530和SI-V644等组件。专家小组由两名概率安全评估(PSA)专家和一名系统设计专家组成。在对组件进行分类之前,准备了PSA的设计基础函数,简化的P和ID以及Fussell-Vesely(FV)重要性和风险实现价值(RAW)以供专家评估。通过使用这种方法,我们可以在早期阶段根据专家的知识和经验对组件进行定量分类。

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