Neural-network acceleration of projection-based model-order-reduction
for finite plasticity: Application to RVEs
- URL: http://arxiv.org/abs/2109.07747v1
- Date: Thu, 16 Sep 2021 06:45:22 GMT
- Title: Neural-network acceleration of projection-based model-order-reduction
for finite plasticity: Application to RVEs
- Authors: S. Vijayaraghavan, L. Wu, L. Noels, S. P. A. Bordas, S. Natarajan, L.
A. A. Beex
- Abstract summary: A neural network is developed to accelerate a projection-based model-order-reduction of an RVE.
The online simulations are equation-free, meaning that no system of equations needs to be solved iteratively.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Compared to conventional projection-based model-order-reduction, its
neural-network acceleration has the advantage that the online simulations are
equation-free, meaning that no system of equations needs to be solved
iteratively. Consequently, no stiffness matrix needs to be constructed and the
stress update needs to be computed only once per increment. In this
contribution, a recurrent neural network is developed to accelerate a
projection-based model-order-reduction of the elastoplastic mechanical
behaviour of an RVE. In contrast to a neural network that merely emulates the
relation between the macroscopic deformation (path) and the macroscopic stress,
the neural network acceleration of projection-based model-order-reduction
preserves all microstructural information, at the price of computing this
information once per increment.
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