A physics-informed deep learning framework for inversion and surrogate modeling in solid mechanics

被引:568
作者
Haghighat, Ehsan [1 ]
Raissi, Maziar [2 ]
Moure, Adrian [3 ]
Gomez, Hector [3 ]
Juanes, Ruben [1 ]
机构
[1] MIT, 77 Massachusetts Ave, Cambridge, MA 02139 USA
[2] Univ Colorado, Boulder, CO 80309 USA
[3] Purdue Univ, W Lafayette, IN 47907 USA
关键词
Artificial neural network; Physics-informed deep learning; Inversion; Transfer learning; Linear elasticity; Elastoplasticity; NEURAL-NETWORKS;
D O I
10.1016/j.cma.2021.113741
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We present the application of a class of deep learning, known as Physics Informed Neural Networks (PINN), to inversion and surrogate modeling in solid mechanics. We explain how to incorporate the momentum balance and constitutive relations into PINN, and explore in detail the application to linear elasticity, and illustrate its extension to nonlinear problems through an example that showcases von Mises elastoplasticity. While common PINN algorithms are based on training one deep neural network (DNN), we propose a multi-network model that results in more accurate representation of the field variables. To validate the model, we test the framework on synthetic data generated from analytical and numerical reference solutions. We study convergence of the PINN model, and show that Isogeometric Analysis (IGA) results in superior accuracy and convergence characteristics compared with classic low-order Finite Element Method (FEM). We also show the applicability of the framework for transfer learning, and find vastly accelerated convergence during network re-training. Finally, we find that honoring the physics leads to improved robustness: when trained only on a few parameters, we find that the PINN model can accurately predict the solution for a wide range of parameters new to the network-thus pointing to an important application of this framework to sensitivity analysis and surrogate modeling. (C) 2021 Elsevier B.V. All rights reserved.
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页数:22
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