计算机科学
可靠性(半导体)
马尔科夫蒙特卡洛
贝叶斯概率
贝叶斯优化
数学优化
算法
趋同(经济学)
马尔可夫链
集合(抽象数据类型)
全局优化
蒙特卡罗方法
重要性抽样
机器学习
数学
人工智能
统计
功率(物理)
物理
量子力学
经济
程序设计语言
经济增长
作者
Jingwen Song,Yifan Cui,Pengfei Wei,Marcos A. Valdebenito,Weihong Zhang
标识
DOI:10.1016/j.ress.2023.109613
摘要
Estimating the design points with high accuracy is a historical and key issue for many reliability analysis and reliability-based design optimization methods. Indeed, it is still a challenge especially when the limit state functions (LSFs) show highly nonlinear behaviors, and/or the reliability index is large, and/or the gradients of LSF are not available. To fill the above gap, two acquisition functions incorporating both the objective function and constraints are devised, and based on which, a Constrained Bayesian Optimization (ConBayOpt) method is firstly developed for actively learning the design points with high accuracy and global convergence. Further, an improved algorithm, called Constrained Bayesian Subset Optimization (ConBaySubOpt) is devised for adaptively learning the design points far away from the origin of the standard normal space. Similar to subset simulation, the ConBaySubOpt algorithm automatically produces a set of intermediate failure surfaces and feasible regions for approaching the true design point, but does not require Markov Chain Monte Carlo simulation for conditional sampling. The efficiency, accuracy and wide applicability of the proposed methods are demonstrated with two test examples and three engineering examples.
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