TY - JOUR
T1 - Modeling constitutive relationship of Ti-555211 alloy by artificial neural network during high-temperature deformation
AU - An, Zhen
AU - Li, Jinshan
AU - Feng, Yong
AU - Liu, Xianghong
AU - Du, Yuxuan
AU - Ma, Fanjiao
AU - Wang, Zhe
N1 - Publisher Copyright:
Copyright © 2015, Northwest Institute for Nonferrous Metal Research. Published by Elsevier BV. All rights reserved.
PY - 2015/1/1
Y1 - 2015/1/1
N2 - Using experimental data gained from hot compression tests in the temperature range of 750~950 ℃ and strain rate range of 0.001~1 s-1, the constitutive relationship of Ti-555211 titanium alloy was investigated based on the back propagation artificial neural network constitutive model (ANN model). The capability of the model was measured by the average absolute relative error (AARE), and correlation coefficient (R). The simulated values were compared with experimental values. The results show that the R and AARE for the ANN model are 0.99938 and 1.60%, respectively, indicating that the hot deformation behavior of Ti-555211 titanium alloy can be predicted by the ANN model efficiently and accurately. Furthermore, the back propagation artificial neural network model is a more efficient quantitative way to predict the deformation behavior of the Ti-555211 titanium alloy compared to the mathematical equation. The results show that the peak stress of the alloy decreases with increasing of temperature and decreasing of strain rate, and the phenomenon of discontinuous yielding is more obvious with the increase of deformation temperature and strain rate. The flow curve characteristics under different deformation parameters show obvious differences.
AB - Using experimental data gained from hot compression tests in the temperature range of 750~950 ℃ and strain rate range of 0.001~1 s-1, the constitutive relationship of Ti-555211 titanium alloy was investigated based on the back propagation artificial neural network constitutive model (ANN model). The capability of the model was measured by the average absolute relative error (AARE), and correlation coefficient (R). The simulated values were compared with experimental values. The results show that the R and AARE for the ANN model are 0.99938 and 1.60%, respectively, indicating that the hot deformation behavior of Ti-555211 titanium alloy can be predicted by the ANN model efficiently and accurately. Furthermore, the back propagation artificial neural network model is a more efficient quantitative way to predict the deformation behavior of the Ti-555211 titanium alloy compared to the mathematical equation. The results show that the peak stress of the alloy decreases with increasing of temperature and decreasing of strain rate, and the phenomenon of discontinuous yielding is more obvious with the increase of deformation temperature and strain rate. The flow curve characteristics under different deformation parameters show obvious differences.
KW - Artificial neural network
KW - Constitutive relationship
KW - Ti-555211 titanium alloy
UR - http://www.scopus.com/inward/record.url?scp=84922610602&partnerID=8YFLogxK
M3 - 文章
AN - SCOPUS:84922610602
SN - 1002-185X
VL - 44
SP - 62
EP - 66
JO - Xiyou Jinshu Cailiao Yu Gongcheng/Rare Metal Materials and Engineering
JF - Xiyou Jinshu Cailiao Yu Gongcheng/Rare Metal Materials and Engineering
IS - 1
ER -