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Bayes theorem-based and copula-based estimation for failure probability function

机译:贝叶斯定理和基于Copula的失效概率函数估计

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摘要

The failure probability function (FPF), aiming to decouple the nested-loop reliability-based design optimization solution into a single-loop optimization problem, has attracted a great deal of interest from designers and researchers. It is defined as a function of failure probability with respect to the design parameter. Among the estimation methods for the FPF, the Bayes theorem based on probability distribution function methods is competitive. It transforms the FPF as the estimation of the conditional joint probability density function (PDF) of design parameters on the failure event and the augmented failure probability. The augmented failure probability can be estimated by Monte Carlo simulation, while for the joint multi-dimensional PDF, the existing estimation methods are unavailable. To alleviate this issue, a novel FPF estimation method is proposed by Bayes theorem and copula. In the proposed method, the FPF is derived as a product of the conditional copula density and the augmented failure probability, in which the vine copula is employed to disassemble the multi-dimensional conditional copula density into several bivariate copula density functions, and they can be completed by the existing PDF estimation methods. In contrast to the existing Bayes theorem-based estimation methods for the FPF, the proposed method interprets the FPF as the dependence function between design parameters and the augmented failure probability in terms of copula, which involuntarily breaks the limitation of the multi-dimensional design parameters. In addition, the adaptive Kriging surrogate model is embedded in the proposed method to improve the efficiency of the proposed method. The presented examples demonstrate the efficiency and accuracy of the proposed method.
机译:故障概率函数(FPF),旨在将基于嵌套环的可靠性的设计优化解决方案解耦为单循环优化问题,吸引了设计师和研究人员的大量兴趣。它被定义为关于设计参数的故障概率的函数。在FPF的估计方法中,基于概率分布函数方法的贝叶斯定理具有竞争力。它将FPF转换为在故障事件上的设计参数的条件联合概率密度函数(PDF)和增强故障概率的估计。可以通过蒙特卡罗模拟估计增强的失效概率,而对于关节多维PDF,现有的估计方法是不可用的。为了缓解这个问题,贝叶斯定理和豆科植物提出了一种新型FPF估计方法。在所提出的方法中,FPF作为条件谱密度的乘积和增强的失效概率,其中使用葡萄拷贝将多维条件拷贝密度拆卸成几种二变共拷贝密度函数,并且它们可以是由现有的PDF估计方法完成。与FPF的现有贝叶斯定理的估计方法相比,所提出的方法将FPF解释为设计参数与Copula方面的增强故障概率之间的依赖性函数,这不由自主地破坏了多维设计参数的限制。此外,自适应Kriging代理模型嵌入提出的方法以提高所提出的方法的效率。所呈现的例子证明了所提出的方法的效率和准确性。

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