论文标题

基于方差的敏感性分析蒙特卡洛和高斯工艺的重要性采样可靠性评估

Variance based sensitivity analysis for Monte Carlo and importance sampling reliability assessment with Gaussian processes

论文作者

Menz, Morgane, Dubreuil, Sylvain, Morio, Jérôme, Gogu, Christian, Bartoli, Nathalie, Chiron, Marie

论文摘要

在涉及复杂数值模型的工程问题上运行可靠性分析可能非常昂贵,需要先进的仿真方法来降低总体数字成本。基于高斯流程的可靠性分析的主动学习方法已成为降低此计算成本的有希望的方法。这些方法的学习阶段包括构建性能函数的高斯过程替代模型,并使用高斯过程的不确定性结构来富于迭代的替代模型。为此,必须定义学习标准。然后,通常通过对最终替代模型评估的人群的分类来获得失败概率的估计。因此,故障概率的估计器具有与替代模型近似和基于抽样的集成技术相关的两个不同的不确定性来源。在本文中,我们提出了一种方法来量化失败估计器对两个不确定性来源的敏感性的方法。该分析还使能够控制与故障概率估计相关的整个误差,从而提供了估计的准确性标准。因此,一种积极的学习方法集成了该分析,以减少错误的主要源源并在全局变异性足够低时停止。该方法是针对基于蒙特卡洛的方法以及基于重要性抽样的方法提出的,旨在提高稀有事件概率的估计。然后在几个示例中评估拟议策略的性能。

Running a reliability analysis on engineering problems involving complex numerical models can be computationally very expensive, requiring advanced simulation methods to reduce the overall numerical cost. Gaussian process based active learning methods for reliability analysis have emerged as a promising way for reducing this computational cost. The learning phase of these methods consists in building a Gaussian process surrogate model of the performance function and using the uncertainty structure of the Gaussian process to enrich iteratively this surrogate model. For that purpose a learning criterion has to be defined. Then, the estimation of the probability of failure is typically obtained by a classification of a population evaluated on the final surrogate model. Hence, the estimator of the probability of failure holds two different uncertainty sources related to the surrogate model approximation and to the sampling based integration technique. In this paper, we propose a methodology to quantify the sensitivity of the probability of failure estimator to both uncertainty sources. This analysis also enables to control the whole error associated to the failure probability estimate and thus provides an accuracy criterion on the estimation. Thus, an active learning approach integrating this analysis to reduce the main source of error and stopping when the global variability is sufficiently low is introduced. The approach is proposed for both a Monte Carlo based method as well as an importance sampling based method, seeking to improve the estimation of rare event probabilities. Performance of the proposed strategy is then assessed on several examples.

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