Inverse Modeling of Viscoelasticity Materials using Physics Constrained Learning

05/09/2020
by   Kailai Xu, et al.
0

We propose a novel approach to model viscoelasticity materials using neural networks, which capture rate-dependent and nonlinear constitutive relations. However, 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 multi-physics interactions. We show that limited displacement data hold 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 physics constrained learning. The effectiveness of our method is demonstrated through numerous benchmark problems in geomechanics and porous media transport.

READ FULL TEXT
research
11/24/2020

ADCME: Learning Spatially-varying Physical Fields using Deep Neural Networks

ADCME is a novel computational framework to solve inverse problems invol...
research
06/15/2023

Position-Based Nonlinear Gauss-Seidel for Quasistatic Hyperelasticity

Position based dynamics is a powerful technique for simulating a variety...
research
03/03/2022

Adaptive machine learning based surrogate modeling to accelerate PDE-constrained optimization in enhanced oil recovery

In this contribution, we develop an efficient surrogate modeling framewo...
research
09/15/2022

Bi-level Physics-Informed Neural Networks for PDE Constrained Optimization using Broyden's Hypergradients

Deep learning based approaches like Physics-informed neural networks (PI...
research
12/03/2022

Impact of physical model error on State Estimation for neutronics applications

In this paper, we consider the inverse problem of state estimation of nu...
research
05/01/2020

A Dual-Dimer Method for Training Physics-Constrained Neural Networks with Minimax Architecture

Data sparsity is a common issue to train machine learning tools such as ...

Please sign up or login with your details

Forgot password? Click here to reset