Estimating the probability of failure for complex real-world systems using high-fidelity computational models is often prohibitively expensive, especially when the probability is small. Exploiting low-fidelity models can make this process more feasible, but merging information from multiple low-fidelity and high-fidelity models poses several challenges. This paper presents a robust multi-fidelity surrogate modeling strategy in which the multi-fidelity surrogate is assembled using an active learning strategy using an on-the-fly model adequacy assessment set within a subset simulation framework for efficient reliability analysis. The multi-fidelity surrogate is assembled by first applying a Gaussian process correction to each low-fidelity model and assigning a model probability based on the model's local predictive accuracy and cost. Three strategies are proposed to fuse these individual surrogates into an overall surrogate model based on model averaging and deterministic/stochastic model selection. The strategies also dictate which model evaluations are necessary. No assumptions are made about the relationships between low-fidelity models, while the high-fidelity model is assumed to be the most accurate and most computationally expensive model. Through two analytical and two numerical case studies, including a case study evaluating the failure probability of Tristructural isotropic-coated (TRISO) nuclear fuels, the algorithm is shown to be highly accurate while drastically reducing the number of high-fidelity model calls (and hence computational cost).
翻译:使用高贞洁计算模型估计复杂的现实世界系统失灵概率往往费用高得令人望而却步,特别是在概率小的情况下。 开发低贞洁模型可以使这一过程更加可行,但将多种低贞洁和高贞洁模型的信息合并起来会构成若干挑战。本文件提出一个强有力的多贞洁替代模型战略,其中利用一个主动学习战略,利用一个即时模型评估,在高效可靠性分析的子集模拟框架内,对多种贞洁模型进行充分性评估,从而将多贞洁替代模型的失灵概率定得过高。 多贞洁替代模型的组装首先对每一种低贞洁模型进行高雅流程修正,并根据模型的当地预测准确性和成本来分配一个模型概率。 提出三项战略,将这些个体代孕替代模型整合成一个基于平均和确定性模型/模型选择的总体代孕模型模型模型。 对于低贞洁模型模型模型分析模型和高效可靠性分析模型之间的关系,没有做出任何假设,而高贞洁性模型的精确性模型和最精确性估算性成本和高的精确性成本计算,同时进行高额的三极级分析模型研究。