Recurrent neural network-based multiaxial plasticity model with regularization for physics-informed constraints

Volume: 258, Pages: 106678 - 106678
Published: Jan 1, 2022
Abstract
A recurrent neural network (RNN) based model is developed as a surrogate to predict nonlinear plastic response under multiaxial loading. The RNN-based model is trained and tested on stress versus strain curves generated using a numerical solution based on the classical radial return method. Besides simply learning the basic constitutive relationship, a novel approach is taken to enforce certain physical conditions. Specifically, regularization...
Paper Details
Title
Recurrent neural network-based multiaxial plasticity model with regularization for physics-informed constraints
Published Date
Jan 1, 2022
Volume
258
Pages
106678 - 106678
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