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UNCERTAINTY QUANTIFICATION IN TIME-DEPENDENT RELIABILITY ANALYSIS

机译:时间依赖性可靠性分析中的不确定性量化

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摘要

One of the essential steps in time-dependent reliability analysis is the characterization of stochastic load processes and system random variables based on experimental or historical data. Limited data results in uncertainty in the modeling of random variables and stochastic loadings. The uncertainty in random variable and stochastic load models later causes uncertainty in the results of reliability analysis. An uncertainty quantification framework is developed in this paper for time-dependent reliability analysis. The effects of two kinds of uncertainty sources, namely data uncertainty and model uncertainty on the results of time-dependent reliability analysis are investigated. The Bayesian approach is employed to model the epistemic uncertainty sources in random variables and stochastic processes. A straightforward formulation of uncertainty quantification in time-dependent reliability analysis results in a double-loop implementation, which is computationally expensive. Therefore, this paper builds a surrogate model for the conditional reliability index in terms of variables with imprecise parameters. Since the conditional reliability index is independent of the epistemic uncertainty, the surrogate model is applicable for any realizations of the epistemic uncertainty. Based on the surrogate model, the uncertainty in time-dependent reliability analysis is quantified without evaluating the original limit-state function, which increases the efficiency of uncertainty quantification. The effectiveness of the proposed method is demonstrated using a mathematical example and an engineering application example.
机译:基于时间的可靠性分析中的基本步骤之一是根据实验或历史数据表征随机载荷过程和系统随机变量。有限的数据导致随机变量和随机负荷建模的不确定性。随机变量和随机负荷模型中的不确定性随后会导致可靠性分析结果中的不确定性。本文建立了不确定性量化框架,用于时间相关的可靠性分析。研究了两种不确定性来源,即数据不确定性和模型不确定性对时变可靠性分析结果的影响。采用贝叶斯方法对随机变量和随机过程中的认知不确定性源进行建模。在与时间有关的可靠性分析中,不确定性量化的简单表示法导致了双循环实施,这在计算上是昂贵的。因此,本文针对参数不精确的变量建立了条件可靠性指标的替代模型。由于条件可靠性指标与认知不确定性无关,因此替代模型适用于认知不确定性的任何实现。基于代理模型,无需评估原始极限状态函数即可对时间依赖性可靠性分析中的不确定性进行量化,从而提高了不确定性量化的效率。通过一个数学实例和一个工程应用实例证明了该方法的有效性。

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