Derivation of heterogeneous material laws via data-driven principal component expansions

被引:1
|
作者
Hang Yang
Xu Guo
Shan Tang
Wing Kam Liu
机构
[1] Dalian University of Technology,State Key Laboratory of Structural Analysis for Industrial Equipment, Department of Engineering Mechanics
[2] Dalian University of Technology,International Research Center for Computational Mechanics
[3] Northwestern University,Department of Mechanical Engineering
来源
Computational Mechanics | 2019年 / 64卷
关键词
Computational data-driven; Artificial neural network; 3D objective material laws; Principal strain and stress space; Engineering structure with microstructure;
D O I
暂无
中图分类号
学科分类号
摘要
A new data-driven method that generalizes experimentally measured and/or computational generated data sets under different loading paths to build three dimensional nonlinear elastic material law with objectivity under arbitrary loadings using neural networks is proposed. The proposed approach is first demonstrated by exploiting the concept of representative volume element (RVE) in the principal strain and stress spaces to numerically generate the data. A computational data-training algorithm on the generalization of these principal space data to three dimensional objective isotropic material laws subjected to arbitrary deformation is given. To validate these data-driven derived material laws, large deformation and buckling analysis of nonlinear elastic solids with reference material models and engineering structure with microstructure are performed. Numerical experiments show that only seven sets of data under different stress loading paths on RVEs are required to reach reasonable accuracy. The requirements for constitutive law such as objectivity are preserved approximately. The consistent tangent modulus is also derived. The proposed approach also shows a great potential to obtain the material law between different scales in the multiscale analysis by pure data.
引用
收藏
页码:365 / 379
页数:14
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