Embedding an ANN-Based Crystal Plasticity Model into the Finite Element Framework using an ABAQUS User-Material Subroutine

This work presents a practical method for incorporating trained Neural Networks (NNs) into the Finite Element (FE) framework using a user material (UMAT) subroutine. The work exemplifies crystal plasticity, a complex inelastic non-linear path-dependent material response, with a wide range of applications in ABAQUS UMAT. However, this approach can be extended to other material behaviors and FE tools. The use of a UMAT subroutine serves two main purposes: (1) it predicts and updates the stress or other mechanical properties of interest directly from the strain history; (2) it computes the Jacobian matrix either through backpropagation or numerical differentiation, which plays an essential role in the solution convergence. By implementing NNs in a UMAT subroutine, a trained machine learning model can be employed as a data-driven constitutive law within the FEM framework, preserving multiscale information that conventional constitutive laws often neglect or average. The versatility of this method makes it a powerful tool for integrating machine learning into mechanical simulation. While this approach is expected to provide higher accuracy in reproducing realistic material behavior, the reliability of the solution process and the convergence conditions must be paid special attention. The theory of the model is explained in Heider et al. 2020.

Source: [https://arxiv.org/abs/2410.08214]

Data and Resources

Cite this as

He, Yuqing, Heider, Yousef, Markert, Bernd (2024). Dataset: Embedding an ANN-Based Crystal Plasticity Model into the Finite Element Framework using an ABAQUS User-Material Subroutine. https://doi.org/10.25835/6n5uu50y

DOI retrieved: September 25, 2024

Additional Info

Field Value
Imported on November 28, 2024
Last update November 28, 2024
License CC-BY-NC-3.0
Source https://data.uni-hannover.de/dataset/ann_crystal_plasticity_abaqus_umat
Author He, Yuqing
Given Name Yuqing
Family Name He
More Authors
Heider, Yousef
Markert, Bernd
Author Email He, Yuqing
Maintainer Yousef Heider
Source Creation 25 September, 2024, 09:46 AM (UTC+0000)
Source Modified 21 October, 2024, 10:10 AM (UTC+0000)
Machine learning 40
Material modeling 30
Multiscale modeling 30