各向异性
材料科学
人工神经网络
本构方程
可塑性
子程序
产量(工程)
压力(语言学)
金属薄板
屈服面
拉深
结构工程
有限元法
人工智能
计算机科学
复合材料
工程类
光学
哲学
物理
操作系统
语言学
作者
Piemaan Fazily,Jeong Whan Yoon
标识
DOI:10.1016/j.ijplas.2023.103642
摘要
This study proposes a machine learning-based constitutive model for anisotropic plasticity in sheet metals. A fully connected deep neural network (DNN) is constructed to learn the stress integration procedure under the plane stress condition. The DNN utilizes the labeled training data for feature learning, and the respective dataset is generated numerically based on the Euler-backward method for the whole loading domains with one element simulation. The DNN is trained sufficiently to learn all the incremental loading paths of the input-output stress pair by using advanced anisotropic yield functions. Its performance with anisotropy is evaluated for the predictions of r-values and normalized yield stress ratios along 0–90 ° to the rolling direction. In addition, the trained DNN is then incorporated in user material subroutine UMAT in ABAQUS/Implicit. Thereafter, the DNN-based anisotropic constitutive model is tested with a cup drawing simulation to evaluate earing profile. The obtained earing profile is compatible with the one from the trained anisotropic yield function.
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