Physics-Informed Feature-to-Feature Learning for Design-Space Dimensionality Reduction in Shape Optimisation

Shahroz Khan, A. Serani, M. Diez, P. Kaklis
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引用次数: 9

Abstract

. High-dimensional parametric design problems cause optimisers and physics simulations to suffer from the curse-of-dimensionality, resulting in high computational cost. In this work, to release this computational burden, we adopted a two-step feature-to-feature learning methodology to discover a lower-dimensional latent space, based on the combination of geometry-and physics-informed principal component analysis and the active subspace method. At the first step, statistical dependencies implicit in the design parameters encode important geometric features of the underline shape. During the second step, functional features of designs are extracted in term of previously learned geometric features. Afterwards, both geometric and functional features are augmented together to create a functionally-active subspace, whose basis not only captures the geometric variance of designs but also induces the variability in the designs’ physics. As the new subspace accumulates both the functional and geometric variance, therefore, it can be exploited for efficient design exploration and the construction of improved surrogate models for designs’ physics prediction. The validation and experimental studies presented in this work show the beneficial effects of the current approach in comparison to a conventional single-step feature learning.
形状优化中设计空间降维的物理信息特征到特征学习
. 高维参数化设计问题会导致优化器和物理模拟遭受维数诅咒,从而导致高计算成本。在这项工作中,为了减轻计算负担,我们采用了两步特征到特征学习方法来发现低维潜在空间,该方法基于几何和物理信息主成分分析和主动子空间方法的结合。在第一步,隐含在设计参数中的统计依赖性编码了下划线形状的重要几何特征。在第二步中,根据先前学习的几何特征提取设计的功能特征。然后,将几何特征和功能特征一起增强,形成一个功能活跃的子空间,该子空间的基础不仅捕获了设计的几何变异,而且还诱导了设计的物理变异。由于新的子空间积累了功能方差和几何方差,因此可以利用它进行有效的设计探索和构建改进的代理模型来进行设计的物理预测。本工作中提出的验证和实验研究表明,与传统的单步特征学习相比,当前方法具有有益的效果。
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