Department of Decision Sciences, Bocconi University, Milan, Italy.
Bocconi Institute for Data Science and Analytics (BIDSA), Bocconi University, Milan, Italy.
Risk Anal. 2018 Nov;38(11):2459-2477. doi: 10.1111/risa.13125. Epub 2018 Jun 20.
In probabilistic risk assessment, attention is often focused on the expected value of a risk metric. The sensitivity of this expectation to changes in the parameters of the distribution characterizing uncertainty in the inputs becomes of interest. Approaches based on differentiation encounter limitations when (i) distributional parameters are expressed in different units or (ii) the analyst wishes to transfer sensitivity insights from individual parameters to parameter groups, when alternating between different levels of a probabilistic safety assessment model. Moreover, the analyst may also wish to examine the effect of assuming independence among inputs. This work proposes an approach based on the differential importance measure, which solves these issues. Estimation aspects are discussed in detail, in particular the problem of obtaining all sensitivity measures from a single Monte Carlo sample, thus avoiding potentially costly model runs. The approach is illustrated through an analytical example, highlighting how it can be used to assess the impact of removing the independence assumption. An application to the probabilistic risk assessment model of the Advanced Test Reactor large loss of coolant accident sequence concludes the work.
在概率风险评估中,人们通常关注风险度量的期望值。感兴趣的是,描述输入不确定性的分布参数变化对这种期望的敏感性。基于微分的方法在以下两种情况下存在局限性:(i) 分布参数采用不同的单位表示,或 (ii) 分析师希望将单个参数的敏感性洞察转移到参数组,当在概率安全评估模型的不同级别之间切换时。此外,分析师可能还希望检查假设输入之间独立性的影响。这项工作提出了一种基于微分重要性度量的方法,该方法解决了这些问题。详细讨论了估计方面的问题,特别是从单个蒙特卡罗样本中获得所有敏感性度量的问题,从而避免了潜在的昂贵模型运行。该方法通过一个分析示例进行说明,突出了如何使用它来评估消除独立性假设的影响。该方法应用于先进试验堆大型冷却剂损失事故序列的概率风险评估模型,作为本文的结论。