Learning viscoelasticity models from indirect data using deep neural networks

被引:44
作者
Xu, Kailai [1 ]
Tartakovsky, Alexandre M. [3 ]
Burghardt, Jeff [3 ]
Darve, Eric [1 ,2 ]
机构
[1] Stanford Univ, Inst Computat & Math Engn, Stanford, CA 94305 USA
[2] Stanford Univ, Mech Engn, Stanford, CA 94305 USA
[3] Pacific Northwest Natl Lab, 902 Battelle Blvd, Richland, WA 99354 USA
关键词
Neural networks; Deep learning; Geomechanics and multi-phase flow; Viscoelasticity; INVERSE PROBLEMS; IDENTIFICATION; ALGORITHM;
D O I
10.1016/j.cma.2021.114124
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We propose a novel approach to model viscoelasticity materials, where rate-dependent and non-linear constitutive relationships are approximated with deep neural networks. We assume that inputs and outputs of the neural networks are not directly observable, and therefore common training techniques with input-output pairs for the neural networks are inapplicable. To that end, we develop a novel computational approach to both calibrate parametric and learn neural-network-based constitutive relations of viscoelasticity materials from indirect displacement data in the context of multiple-physics systems. We show that limited displacement data holds sufficient information to quantify the viscoelasticity behavior. We formulate the inverse computation - modeling viscoelasticity properties from observed displacement data - as a PDE-constrained optimization problem and minimize the error functional using a gradient-based optimization method. The gradients are computed by a combination of automatic differentiation and implicit function differentiation rules. The effectiveness of our method is demonstrated through numerous benchmark problems in geomechanics and porous media transport. (C) 2021 Elsevier B.V. All rights reserved.
引用
收藏
页数:35
相关论文
共 59 条
[21]   Identity Mappings in Deep Residual Networks [J].
He, Kaiming ;
Zhang, Xiangyu ;
Ren, Shaoqing ;
Sun, Jian .
COMPUTER VISION - ECCV 2016, PT IV, 2016, 9908 :630-645
[22]   Physics-informed neural networks for multiphysics data assimilation with application to subsurface transport [J].
He, QiZhi ;
Barajas-Solano, David ;
Tartakovsky, Guzel ;
Tartakovsky, Alexandre M. .
ADVANCES IN WATER RESOURCES, 2020, 141
[23]  
Hogan R. J., 2017, ADEPT 2 0 COMBINED A
[24]   Learning constitutive relations from indirect observations using deep neural networks [J].
Huang, Daniel Z. ;
Xu, Kailai ;
Farhat, Charbel ;
Darve, Eric .
JOURNAL OF COMPUTATIONAL PHYSICS, 2020, 416
[25]  
Janno J, 1997, MATH METHOD APPL SCI, V20, P291, DOI 10.1002/(SICI)1099-1476(19970310)20:4<291::AID-MMA860>3.0.CO
[26]  
2-W
[27]   Experimental and Numerical Sensitivity Assessment of Viscoelasticity for Polymer Composite Materials [J].
Javidan, Mohammad Mahdi ;
Kim, Jinkoo .
SCIENTIFIC REPORTS, 2020, 10 (01)
[28]  
Kim J, 2005, LECT NOTES COMPUT SC, V3750, P599
[29]  
Klambauer G, 2017, ADV NEUR IN, V30
[30]   Splitting schemes for poroelasticity and thermoelasticity problems [J].
Kolesov, A. E. ;
Vabishchevich, P. N. ;
Vasilyeva, M. V. .
COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2014, 67 (12) :2185-2198