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首页> 外文期刊>International journal of hydrogen energy >Predicting elastic modulus of porous La_(0.6)Sr_(0.4)Co_(0.2)Fe_(0.8)O_(3-δ) cathodes from microstructures via FEM and deep learning
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Predicting elastic modulus of porous La_(0.6)Sr_(0.4)Co_(0.2)Fe_(0.8)O_(3-δ) cathodes from microstructures via FEM and deep learning

机译:通过FEM和深度学习预测从微观结构的多孔LA_(0.6)SR_(0.4)CO_(0.2)FE_(0.2)FE_(0.8)O_(3-Δ)阴极的弹性模量

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摘要

In this work, a deep learning accelerated homogenization framework is developed for prediction of elastic modulus of porous materials directly from their inner microstructures. The finite element method (FEM) and the homogenization theory are used to obtain the macroscopic properties of materials based on their microstructures. Based on a large dataset consisting of various microstructures and corresponding elastic properties via FEM, a deep convolutional neural network (CNN) is trained to capture the nonlinear functional relationship between the microstructure features and their macroscopic elastic properties. The deep learning model is finally well validated against extra new samples with excellent predictive performances. This demonstrates that the CNN deep learning model can be trusted as a surrogate model for the FEM based homogenization method, with the computation time being reduced by several orders of magnitude. The proposed deep learning framework is highly extendable for prediction of various macroscopic properties from microstructures. (c) 2021 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:在这项工作中,开发了一种深入的学习加速均化框架,用于直接从其内部微观结构预测多孔材料的弹性模量。有限元法(FEM)和均质化理论用于基于其微观结构获得材料的宏观性质。基于由通过FEM的各种微结构和相应的弹性特性组成的大型数据集,训练了深度卷积神经网络(CNN)以捕获微结构特征与其宏观弹性特性之间的非线性功能关系。深入学习模型终于恢复了额外的新样本,具有出色的预测性能。这表明CNN深度学习模型可以信任为FEM基均质化方法的代理模型,计算时间减少了几个数量级。所提出的深度学习框架对于从微观结构的各种宏观性质预测的高度延伸。 (c)2021氢能出版物LLC。 elsevier有限公司出版。保留所有权利。

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