Physically recurrent neural networks for path-dependent heterogeneous materials: embedding constitutive models in a data-driven surrogate

09/15/2022
by   M. A. Maia, et al.
0

Driven by the need to accelerate numerical simulations, the use of machine learning techniques is rapidly growing in the field of computational solid mechanics. Their application is especially advantageous in concurrent multiscale finite element analysis (FE^2) due to the exceedingly high computational costs often associated with it and the high number of similar micromechanical analyses involved. To tackle the issue, using surrogate models to approximate the microscopic behavior and accelerate the simulations is a promising and increasingly popular strategy. However, several challenges related to their data-driven nature compromise the reliability of surrogate models in material modeling. The alternative explored in this work is to reintroduce some of the physics-based knowledge of classical constitutive modeling into a neural network by employing the actual material models used in the full-order micromodel to introduce non-linearity. Thus, path-dependency arises naturally since every material model in the layer keeps track of its own internal variables. For the numerical examples, a composite Representative Volume Element with elastic fibers and elasto-plastic matrix material is used as the microscopic model. The network is tested in a series of challenging scenarios and its performance is compared to that of a state-of-the-art Recurrent Neural Network (RNN). A remarkable outcome of the novel framework is the ability to naturally predict unloading/reloading behavior without ever seeing it during training, a stark contrast with popular but data-hungry models such as RNNs. Finally, the proposed network is applied to FE^2 examples to assess its robustness for application in nonlinear finite element analysis.

READ FULL TEXT
research
12/04/2022

Deep Learning for Multiscale Damage Analysis via Physics-Informed Recurrent Neural Network

Direct numerical simulation of hierarchical materials via homogenization...
research
05/01/2022

Thermodynamically Consistent Machine-Learned Internal State Variable Approach for Data-Driven Modeling of Path-Dependent Materials

Characterization and modeling of path-dependent behaviors of complex mat...
research
01/31/2023

Machine learning of evolving physics-based material models for multiscale solid mechanics

In this work we present a hybrid physics-based and data-driven learning ...
research
01/07/2020

A machine learning based plasticity model using proper orthogonal decomposition

Data-driven material models have many advantages over classical numerica...
research
07/12/2020

A computationally tractable framework for nonlinear dynamic multiscale modeling of membrane fabric

A general-purpose computational homogenization framework is proposed for...
research
07/03/2022

FE^ANN - An efficient data-driven multiscale approach based on physics-constrained neural networks and automated data mining

Herein, we present a new data-driven multiscale framework called FE^ANN ...
research
04/26/2022

A physics-informed deep neural network for surrogate modeling in classical elasto-plasticity

In this work, we present a deep neural network architecture that can eff...

Please sign up or login with your details

Forgot password? Click here to reset