可靠性(半导体)
结构可靠性
可靠性工程
贝叶斯概率
透视图(图形)
计算机科学
工程类
人工智能
物理
功率(物理)
量子力学
概率逻辑
作者
Chao Dang,Marcos A. Valdebenito,Matthias G.R. Faes,Pengfei Wei,Michael Beer
标识
DOI:10.1016/j.strusafe.2022.102259
摘要
Numerical methods play a dominant role in structural reliability analysis, and the goal has long been to produce a failure probability estimate with a desired level of accuracy using a minimum number of performance function evaluations.In the present study, we attempt to offer a Bayesian perspective on the failure probability integral estimation, as opposed to the classical frequentist perspective.For this purpose, a Bayesian Failure Probability Inference (BFPI) framework is first developed, which allows to quantify, propagate and reduce numerical uncertainty behind the failure probability due to discretization error.Especially, the posterior variance of the failure probability is derived in a semi-analytical form, and the Gaussianity of the posterior failure probability distribution is investigated numerically.Then, a Parallel Adaptive-Bayesian Failure Probability Learning (PA-BFPL) method is proposed within the Bayesian framework.In the PA-BFPL method, a variance-amplified importance sampling technique is presented to evaluate the posterior mean and variance of the failure probability, and an adaptive parallel active learning strategy is proposed to identify multiple updating points.Thus, a novel advantage of PA-BFPL is that both prior knowledge and parallel computing can be used to make inference about the failure probability.Four numerical examples are investigated, indicating the potential benefits by advocating a Bayesian approach to failure probability estimation.
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