Research on constitutive model of aluminum alloy 7075 thermal deformation based on deep neural network

被引:0
作者
Guan Wang
Pei Zhang
Linyuan Kou
Yan Wu
Tianxiang Wen
Xin Shang
Zhiwen Liu
机构
[1] Ningxia University,School of Mechanical Engineering
[2] Ningxia University,Ningxia Key Laboratory of Computer Aided Engineering Technology for Intelligent Equipment
[3] Zoomlion Heavy Industry Science & Technology Co.,School of Mechanical Engineering
[4] Ltd.,undefined
[5] University of South China,undefined
来源
Journal of Mechanical Science and Technology | 2023年 / 37卷
关键词
Constitutive model; Deep neural network; Arrhenius equation; Aluminum alloy 7075; The flow stress;
D O I
暂无
中图分类号
学科分类号
摘要
The hot deformation behavior of the Al-Zn-Mg-Cu alloy was studied by isothermal tensile tests in the temperature range of 200–350 °C and the strain rate range of 0.001–0.1 s−1. A data-driven deep neural network (DNN) constitutive model and a phenomenological Arrhenius constitutive model were developed for the studied alloy model. The parameters of the DNN model were optimized to improve the prediction accuracy of flow stress. The results show that the accuracy of predictions of the DNN model is better than the Arrhenius model for the hot deformation behavior of 7075 aluminum alloy. The average absolute relative error and correlation coefficient of the DNN model is 1.70 % and 0.9996, respectively. The accuracy of the constitutive model of Arrhenius is relatively low for 7075 aluminum alloy in the range 200–350 °C, 0.001–0.1 s−1. The optimal network depth and the number of neurons per layer for the analytically optimized DNN constitutive model are 6 and 28, respectively. In addition, the developed DNN model can be effectively applied in intelligent manufacturing, such as short-process high-efficiency hot stamping and other plastic-forming technologies.
引用
收藏
页码:707 / 717
页数:10
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