Operator learning for homogenizing hyperelastic materials, without PDE data

IF 1.9 4区 工程技术 Q3 MECHANICS Mechanics Research Communications Pub Date : 2024-05-06 DOI:10.1016/j.mechrescom.2024.104281
Hao Zhang, Johann Guilleminot
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Abstract

In this work, we address operator learning for stochastic homogenization in nonlinear elasticity. A Fourier neural operator is employed to learn the map between the input field describing the material at fine scale and the deformation map. We propose a variationally-consistent loss function that does not involve solution field data. The methodology is tested on materials described either by piecewise constant fields at microscale, or by random fields at mesoscale. High prediction accuracy is obtained for both the solution field and the homogenized response. We show, in particular, that the accuracy achieved with the proposed strategy is comparable to that obtained with the conventional data-driven training method.

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在没有 PDE 数据的情况下,对超弹性材料进行均质化的算子学习
在这项工作中,我们解决了非线性弹性随机均质化的算子学习问题。我们采用傅立叶神经算子来学习描述材料细尺度的输入场与变形图之间的映射。我们提出了一种不涉及解场数据的变异一致性损失函数。我们对微观尺度上由片断常数场或中观尺度上由随机场描述的材料进行了测试。对于解场和均质化响应都获得了很高的预测精度。我们特别表明,采用所提出的策略所获得的精度与采用传统的数据驱动训练方法所获得的精度相当。
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来源期刊
CiteScore
4.10
自引率
4.20%
发文量
114
审稿时长
9 months
期刊介绍: Mechanics Research Communications publishes, as rapidly as possible, peer-reviewed manuscripts of high standards but restricted length. It aims to provide: • a fast means of communication • an exchange of ideas among workers in mechanics • an effective method of bringing new results quickly to the public • an informal vehicle for the discussion • of ideas that may still be in the formative stages The field of Mechanics will be understood to encompass the behavior of continua, fluids, solids, particles and their mixtures. Submissions must contain a strong, novel contribution to the field of mechanics, and ideally should be focused on current issues in the field involving theoretical, experimental and/or applied research, preferably within the broad expertise encompassed by the Board of Associate Editors. Deviations from these areas should be discussed in advance with the Editor-in-Chief.
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