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Uncertainty Assessment Methodology for Probabilistic Risk Assessment (PRA); Data, Methods, Models, and Inputs

机译:概率风险评估(PRA)的不确定性评估方法;数据,方法,模型和输入

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Uncertainty analysis is a crucial step in process of probabilistic risk assessment (PRA) for better management and decision making purposes. This paper reviews the process of uncertainty analysis and methodologies for characterization of the uncertainties and their treatment in probabilistic risk assessment (PRA). This research is limited to Fault Tree (FT) and Event Tree (ET) methodologies only and deals with all uncertainties in process of PRA level I. A literature review was conducted on the subject to evaluate the state of the art on the topic. Uncertainty taxonomy is reviewed in this research to better address different sources of uncertainty. A hybrid method of maximum Entropy approach supported by Bayesian Updating is proposed to quantify the parameters' uncertainties effectively by using all relative and partially relative data and information. Bayesian approach is utilized for the inference of the parameter uncertainties. Examples from applications are provided for greater clarification of the proposed uncertainty analysis techniques.
机译:为了更好的管理和决策目的,不确定性分析是概率风险评估(PRA)过程中的关键步骤。本文回顾了不确定性分析的过程以及表征不确定性及其在概率风险评估(PRA)中的处理方法的方法。这项研究仅限于故障树(FT)和事件树(ET)方法,并且处理PRA I级过程中的所有不确定性。对该主题进行了文献综述,以评估该主题的最新技术水平。本研究对不确定性分类法进行了综述,以更好地解决不确定性的不同来源。提出了一种贝叶斯更新支持的最大熵混合方法,通过利用所有相对和部分相对的数据和信息来有效地量化参数的不确定性。贝叶斯方法被用于参数不确定性的推断。提供了来自应用程序的示例,以进一步澄清提议的不确定性分析技术。

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