4.7 Article

Data-driven approach for dynamic homogenization using meta learning

Journal

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.cma.2022.115672

Keywords

Machine learning; Periodic structures; Reduced-order models; Nonlinear problems; Dynamic problems

Funding

  1. NASA University Leadership Initiative [80NSSC21M0113]

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This study proposes a method that utilizes machine learning techniques to develop a surrogate model and homogenize heterogeneous structures, aiming to improve computational efficiency and simplify analysis. The approach, which expands the operational frequency spectrum and improves prediction resolution, is not limited to specific material types or heterogeneities.
Studying wave propagation in heterogeneous structures can become computationally expensive because they rely on detailed finite element models to ensure accuracy. This problem is exacerbated if short wavelengths need to be captured, which leads to the need for a very fine discretization of the temporal domain. In this work, we propose a method for predicting the dynamic response of large arbitrary heterogeneous structures that leverages state-of-the-art machine learning techniques to develop a surrogate model for a unit cell and effectively homogenize it. Such a surrogate model represents the global behavior of the unit cell while preserving the local information and/or the effect of heterogeneities on the global behavior. To generate our model, we propose a training scheme inspired from meta-learning that expands the operational frequency spectrum and improves the prediction resolution of the unit cell.The proposed approach is not limited to only a particular type of material of heterogeneity in the unit cell, as demonstrated through linear as well as hyperelastic unit cells with and without holes. We also illustrate how to implement a surrogate unit cell in large arbitrary structures to study wave propagation phenomena. We present our method's ability by comparing its results with those obtained via high-fidelity finite element simulations. Our findings indicate that using surrogate unit cells can dramatically boost the computational efficiency and simplicity to analyze large structures, thus enabling their applications in areas such as band structure optimization and acoustic wave management, to name a few.(c) 2022 Elsevier B.V. All rights reserved.

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