In reliability analysis, methods used to estimate failure probability are often limited by the costs associated with model evaluations. Many of these methods, such as multifidelity importance sampling (MFIS), rely upon a computationally efficient, surrogate model like a Gaussian process (GP) to quickly generate predictions. The quality of the GP fit, particularly in the vicinity of the failure region(s), is instrumental in supplying accurately predicted failures for such strategies. We introduce an entropy-based GP adaptive design that, when paired with MFIS, provides more accurate failure probability estimates and with higher confidence. We show that our greedy data acquisition strategy better identifies multiple failure regions compared to existing contour-finding schemes. We then extend the method to batch selection, without sacrificing accuracy. Illustrative examples are provided on benchmark data as well as an application to an impact damage simulator for National Aeronautics and Space Administration (NASA) spacesuits.
翻译:在可靠性分析中,用于估计失灵概率的方法往往受到模型评估相关成本的限制,其中许多方法,例如多性重要性抽样(MFIS),依靠像高山进程(GP)那样的计算效率高的替代模型迅速作出预测。适合的GP质量,特别是在失灵区域附近,有助于为这种战略提供准确预测的失灵情况。我们引入了基于英特罗比的GP适应性设计,该设计与MFIS配对,提供更准确的失灵概率估计,并具有更高的信心。我们表明,我们贪婪的数据获取战略比现有的等同探测计划更好地识别多重失灵区域。我们随后将这一方法推广到批量选择,同时不牺牲准确性。提供了基准数据以及国家航空和航天局(美国航天局)太空服的影响模拟器应用实例。