A survey on multi-fidelity surrogates for simulators with functional outputs: unified framework and benchmark

Lucas Brunel, Mathieu Balesdent, Loïc Brevault, Rodolphe Le Riche, Bruno Sudret
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Abstract

Multi-fidelity surrogate models combining dimensionality reduction and an intermediate surrogate in the reduced space allow a cost-effective emulation of simulators with functional outputs. The surrogate is an input-output mapping learned from a limited number of simulator evaluations. This computational efficiency makes surrogates commonly used for many-query tasks. Diverse methods for building them have been proposed in the literature, but they have only been partially compared. This paper introduces a unified framework encompassing the different surrogate families, followed by a methodological comparison and the exposition of practical considerations. More than a dozen of existing multi-fidelity surrogates have been implemented under the unified framework and evaluated on a set of benchmark problems. Based on the results, guidelines and recommendations are proposed regarding multi-fidelity surrogates with functional outputs. Our study shows that most multi-fidelity surrogates outperform their tested single-fidelity counterparts under the considered settings. But no particular surrogate is performing better on every test case. Therefore, the selection of a surrogate should consider the specific properties of the emulated functions, in particular the correlation between the low- and high-fidelity simulators, the size of the training set, the local nonlinear variations in the residual fields, and the size of the training datasets.
具有功能输出的模拟器多保真度替代物调查:统一框架和基准
多保真度代用模型结合了降维技术和降维空间中的中间代用技术,可以经济有效地模拟具有功能输出的模拟器。代用模型是从数量有限的模拟器评估中学习的输入输出映射。这种计算效率使得代模常用于多查询任务。文献中提出了多种构建代理的方法,但这些方法只进行了部分比较。本文介绍了一个包含不同代理系列的统一框架,随后进行了方法比较并阐述了实际考虑因素。在统一框架下实现了十多种现有的多保真度代用算法,并在一组基准问题上进行了评估。根据评估结果,我们提出了关于具有功能输出的多保真度代理的指导原则和建议。我们的研究表明,在所考虑的设置下,大多数多保真度替代方案的性能都优于经过测试的单保真度替代方案。但是,没有任何一种代理程序在每个测试用例中都表现得更好。因此,在选择代理时应考虑仿真函数的具体属性,特别是低保真和高保真模拟器之间的相关性、训练集的大小、残差场的局部非线性变化以及训练数据集的大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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