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The quantification of low-probability-high-consequences events: part I. A generic multi-risk approach

机译:低概率高后果事件的量化:第一部分。通用的多风险方法

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摘要

Dynamic risk processes, which involve interactions at the hazard and risk levels, have yet to be clearly understood and properly integrated into probabilistic risk assessment. While much attention has been given to this aspect lately, most studies remain limited to a small number of site-specific multi-risk scenarios. We present a generic probabilistic framework based on the sequential Monte Carlo Method to implement coinciding events and triggered chains of events (using a variant of a Markov chain), as well as time-variant vulnerability and exposure. We consider generic perils based on analogies with real ones, natural and man-made. Each simulated time series corresponds to one risk scenario, and the analysis of multiple time series allows for the probabilistic assessment of losses and for the recognition of more or less probable risk paths, including extremes or low-probability-high-consequences chains of events. We find that extreme events can be captured by adding more knowledge on potential interaction processes using in a brick-by-brick approach. We introduce the concept of risk migration matrix to evaluate how multi-risk participates to the emergence of extremes, and we show that risk migration (i.e., clustering of losses) and risk amplification (i.e., loss amplification at higher losses) are the two main causes for their occurrence
机译:动态风险过程涉及在危害和风险水平上的相互作用,尚待清楚地理解并适当地纳入概率风险评估中。尽管最近对此方面给予了很大的关注,但大多数研究仍局限于少数特定于站点的多风险方案。我们提出了一种基于顺序蒙特卡洛方法的通用概率框架,以实现同时发生的事件和触发的事件链(使用马尔可夫链的变体)以及时变漏洞和暴露。我们考虑基于与真实,自然和人为的类比的通用风险。每个模拟的时间序列都对应一个风险场景,对多个时间序列的分析可以对损失进行概率评估,并可以识别或多或少的可能风险路径,包括极端事件或低概率高后果事件链。我们发现,可以通过逐个砖块的方法添加有关潜在交互过程的更多知识来捕获极端事件。我们引入风险迁移矩阵的概念来评估多风险如何参与极端事件的出现,并且我们表明风险迁移(即损失的聚类)和风险放大(即较高损失下的损失放大)是两个主要方面发生原因

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