具有两级以上保真度的可靠的工程数据代理建模

A. Zaytsev
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引用次数: 5

摘要

代理建模问题通常包括可变保真度数据。大多数方法考虑两个可用的保真度级别的情况,而工程师可以有两个以上的样本按保真度排序的数据。我们考虑高斯过程回归框架,它可以构建具有任意保真度水平的代理模型。当直接实现与数值不稳定性和数值问题作斗争时,我们的方法采用贝叶斯范式,并提供了对代理模型构建问题的数值特性的直接控制。该方法的基准包括各种人工和真实数据问题,重点是翼型和c形压力机的替代建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliable surrogate modeling of engineering data with more than two levels of fidelity
Surrogate modeling problems often include variable fidelity data. Most approaches consider the case of two available levels of fidelity, while engineers can have data with more than two samples sorted by fidelity. We consider Gaussian process regression framework that can construct surrogate models with arbitrary number of fidelity levels. While straightforward implementation struggles from numerical instability and numerical problems, our approach adopts Bayesian paradigm and provides direct control of numerical properties of surrogate model construction problems. Benchmark of the presented approach consists of various artificial and real data problems with the focus on surrogate modeling of an airfoil and a C-shape press.
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