TOWARDS AUTOMATIC PARAMETER SELECTION FOR MULTI-FIDELITY SURROGATE-BASED OPTIMIZATION

R. Pellegrini, J. Wackers, A. Serani, M. Visonneau, M. Diez
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引用次数: 3

Abstract

. The performance of surrogate-based optimization is highly affected by how the surrogate training set is defined. This is especially true for multi-fidelity surrogate models, where different training sets exist for each fidelity. Adaptive sampling methods have been developed to improve the fitting capabilities of surrogate models, avoiding to define an a priori design of experiments, adding training points only where necessary or most useful (i.e., providing the highest knowledge gain) to the optimization process. Nevertheless, the efficiency of the adaptive sampling is highly affected by its initialization. The paper presents and discusses a novel initialization strategy with a limited training set for adaptive sampling. The proposed strategy aims to reduce the computational cost of evaluating the initial training set. Furthermore, it allows the surrogate model to adapt more freely to the data. In this work, the proposed approach is applied to single- and multi-fidelity stochastic radial basis functions for an analytical test problem and the shape optimization of a NACA hydrofoil. Numerical results show that the results of the surrogate-based optimization are improved, thanks to a more effective and efficient domain space exploration and a significant reduction of high-fidelity evaluations.
基于多保真度代理优化的参数自动选择研究
. 如何定义代理训练集对基于代理的优化性能有很大影响。对于多保真度代理模型尤其如此,其中每个保真度都存在不同的训练集。自适应采样方法的发展是为了提高代理模型的拟合能力,避免定义实验的先验设计,只在必要或最有用的地方添加训练点(即提供最高的知识增益)来优化过程。然而,自适应采样的效率很大程度上受其初始化的影响。本文提出并讨论了一种具有有限训练集的自适应采样初始化策略。该策略旨在减少初始训练集评估的计算成本。此外,它允许代理模型更自由地适应数据。本文将该方法应用于单保真度和多保真度随机径向基函数的分析测试问题和NACA水翼的形状优化。数值计算结果表明,基于代理的优化结果得到了改善,这得益于更有效和高效的领域空间探索,并显著减少了高保真度评估。
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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