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Higher-order analysis of probabilistic long-term loss under nonstationary hazards

机译:在非视野危害下的概率长期损失高阶分析

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摘要

Quantification of hazard-induced losses plays a significant role in risk assessment and management of civil infrastructure subjected to hazards in a life-cycle context. A rational approach to assess long-term loss is of vital importance. The loss assessment associated with stationary hazard models and low-order moments (i.e., expectation and variance) has been widely investigated in previous studies. This paper proposes a novel approach for the higher-order analysis of long-term loss under both stationary and nonstationary hazards. An analytical approach based on the moment generating function is developed to assess the first four statistical moments of long-term loss under different stochastic models (e.g., homogeneous Poisson process, non-homogeneous Poisson process, renewal process). Based on the law of total expectation, the developed approach expands the application scope of the moment generating function to nonstationary models and higher-order moments (i.e., skewness and kurtosis). Furthermore, by employing the convolution technique, the proposed approach effectively addresses the difficulty of assessing higher-order moments in a renewal process. Besides the loss analysis, the mixed Poisson process, a relatively new stochastic model, is introduced to consider uncertainty springing from the stochastic occurrence rate. Two illustrative examples are presented to demonstrate practical implementations of the developed approach. Ultimately, the proposed framework could aid the decision-maker to select the optimal option by incorporating higher-order moments of long-term loss within the decision-making process.
机译:危害损失的量化在风险评估和管理生命周期背景下受灾害的风险评估和管理中发挥着重要作用。评估长期损失的理性方法至关重要。与静止危险模型和低阶时刻相关的损失评估已被广泛调查以前的研究。本文提出了一种新的方法,用于在静止和非间断危害下进行长期损失的高阶分析。基于当机矩产生功能的分析方法是开发的,以评估不同随机模型下的长期损失的前四个统计矩(例如,均匀泊松过程,非均质泊松过程,更新过程)。基于总期望的法律,发达的方法将当机瞬间的应用范围扩大到非间断模型和高阶矩(即偏斜和峰氏矩)。此外,通过采用卷积技术,所提出的方法有效地解决了在更新过程中评估更高阶的时刻的难度。除了损失分析之外,还引入了混合泊松过程,相对新的随机模型,以考虑从随机发生率的不确定性。提出了两个说明性示例以展示所发育方法的实际实现。最终,拟议的框架可以帮助决策者通过在决策过程中包含高阶损失的高阶矩来选择最佳选择。

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