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SURROGATE BASED METHOD FOR EVALUATION OF FAILURE PROBABILITY UNDER MULTIPLE CONSTRAINTS

机译:评估多约束下基于概率的失效概率的方法

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摘要

In this paper we study the problem of computing failure probability subject to multiple constraints. In particular, we consider the case of surrogate models, also known as response surfaces, for the available constraints. An important feature is that the surrogates are not required to have high accuracy. An efficient numerical algorithm based on Monte Carlo sampling is presented, where a large portion of the samples is evaluated using the surrogates and only a small portion using the underlying stochastic system. By doing so, the proposed algorithm can be much more efficient than the brute force Monte Carlo sampling and also achieve high accuracy even when the surrogates are not highly accurate. The consideration of multiple constraints is a notable extension of the earlier studies, which mostly considered failure probability defined by a single constraint. Here we establish rigorous convergence analysis of the algorithm for multiple constraints and demonstrate its efficiency via several numerical examples.
机译:在本文中,我们研究了在多个约束条件下计算故障概率的问题。特别是,对于可用约束,我们考虑替代模型(也称为响应面)的情况。一个重要的特征是不需要代理人具有高精度。提出了一种基于蒙特卡洛采样的有效数值算法,其中很大一部分样本使用代理进行评估,而只有一小部分使用底层随机系统进行评估。通过这样做,所提出的算法可以比蛮力蒙特卡洛采样有效得多,并且即使当替代品不是高度精确时,也可以实现高精度。多约束的考虑是对早期研究的显着扩展,这些研究大多考虑了由单个约束定义的失效概率。在这里,我们建立了针对多个约束的算法的严格收敛分析,并通过几个数值示例证明了其效率。

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