LS-DYNA Machine Learning-based Multiscale Method for Nonlinear Modeling
of Short Fiber-Reinforced Composites
- URL: http://arxiv.org/abs/2301.02738v1
- Date: Fri, 6 Jan 2023 22:33:19 GMT
- Title: LS-DYNA Machine Learning-based Multiscale Method for Nonlinear Modeling
of Short Fiber-Reinforced Composites
- Authors: Haoyan Wei, C. T. Wu, Wei Hu, Tung-Huan Su, Hitoshi Oura, Masato
Nishi, Tadashi Naito, Stan Chung, Leo Shen
- Abstract summary: Short-fiber-reinforced composites (SFRC) are high-performance engineering materials for lightweight structural applications in the automotive and electronics industries.
We present a machine learning-based multiscale method by integrating injection molding-induced microstructures, material homogenization, and Deep Material Network (DMN) for structural analysis of SFRC.
- Score: 7.891561501854125
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Short-fiber-reinforced composites (SFRC) are high-performance engineering
materials for lightweight structural applications in the automotive and
electronics industries. Typically, SFRC structures are manufactured by
injection molding, which induces heterogeneous microstructures, and the
resulting nonlinear anisotropic behaviors are challenging to predict by
conventional micromechanical analyses. In this work, we present a machine
learning-based multiscale method by integrating injection molding-induced
microstructures, material homogenization, and Deep Material Network (DMN) in
the finite element simulation software LS-DYNA for structural analysis of SFRC.
DMN is a physics-embedded machine learning model that learns the microscale
material morphologies hidden in representative volume elements of composites
through offline training. By coupling DMN with finite elements, we have
developed a highly accurate and efficient data-driven approach, which predicts
nonlinear behaviors of composite materials and structures at a computational
speed orders-of-magnitude faster than the high-fidelity direct numerical
simulation. To model industrial-scale SFRC products, transfer learning is
utilized to generate a unified DMN database, which effectively captures the
effects of injection molding-induced fiber orientations and volume fractions on
the overall composite properties. Numerical examples are presented to
demonstrate the promising performance of this LS-DYNA machine learning-based
multiscale method for SFRC modeling.
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