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One-step look-ahead policy for active learning reliability analysis

机译:主动学习可靠性分析的一步前瞻策略

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Active-learning reliability analysis is essentially a problem of sequential decision making under uncertainty from the Bayesian decision-theoretic perspective. Hence, leveraging on basic principle of the one-step look -ahead policy, a novel learning function named Targeted integrated mean squared error (TIMSE) is proposed to combine polynomial-chaos Kriging and probability density evolution method for structural reliability analysis. The TIMSE makes the following three critical contributions. First, its closed-form formula is tractable, getting rid of cumbersome issues about numerical quadrature or drawing realizations of Gaussian process. Second, the TIMSE accounts for global impacts of adding a new point on any other point. Third, the TIMSE takes into account the horizon of future experimental designs, by virtue of Kriging update formulae. Besides, a hybrid convergence criterion is developed that effectively avoids two categories of premature termination. Two benchmark analytical functions and three numerical examples are investigated, and comparisons are made against several existing reliability methods. Results indicate that the TIMSE outperforms its localized version and other existing learning functions. Moreover, the proposed reliability approach is more computationally advantageous when time-consuming, complex dynamic problems are involved.
机译:从贝叶斯决策理论的角度来看,主动学习可靠性分析本质上是不确定性下的顺序决策问题。因此,该文利用一步到位前瞻策略的基本原理,提出了一种新的学习函数“目标积分均方误差”(TIMSE),将多项式混沌克里金法与概率密度演化方法相结合进行结构可靠性分析。TIMSE做出了以下三项重要贡献。首先,它的闭式公式易于处理,摆脱了关于数值正交或绘制高斯过程实现的繁琐问题。其次,TIMSE考虑了在任何其他点上增加一个新点的全球影响。第三,TIMSE通过克里金更新公式考虑了未来实验设计的视野。此外,还建立了一种混合收敛准则,有效避免了两类过早终止。研究了两个基准分析函数和三个数值算例,并与几种现有的可靠性方法进行了比较。结果表明,TIMSE优于其本地化版本和其他现有学习功能。此外,当涉及耗时、复杂的动态问题时,所提出的可靠性方法在计算上更具优势。

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