Neural network modeling for the prediction of texture evolution of hot deformed aluminum alloys

被引:0
作者
P. Barat
P. J. Withers
机构
[1] Variable Energy Cyclotron Centre 1/AF,
[2] Materials Science Centre University of Manchester and UMIST,undefined
来源
Journal of Materials Engineering and Performance | 2003年 / 12卷
关键词
aluminum alloy; Gaussian process model; neural network; plane strain compression; rolling;
D O I
暂无
中图分类号
学科分类号
摘要
Commercial aluminum rolling mills operate under very restricted thermomechanical conditions determined from experience and plant trials. In this paper we report results for four-stand tandem mill rolling simulations within and beyond the thermomechanical conditions typical of a rolling mill by plane strain compression (PSC) testing to assess the effect of deformed conditions on the texture of the hot deformed aluminum strip after annealing. A neural network modeling study was then initiated to find a predictive relationship between the observed texture and the thermomechanical parameters of strain, strain rate, and temperature. The model suggested that temperature is the prime variable that influences texture. Such models can be used to evaluate optimal strategies for the control of process parameters of a four-stand tandem mill.
引用
收藏
页码:623 / 628
页数:5
相关论文
共 26 条
  • [1] Ricks R.A.(1999)Recrystallization Kinetics of Al—Mg Alloys AA 5056 and AA 5083 After Hot Deformation Philos. Trans. R. Soc. London 357 1513-29
  • [2] Raghunathan N.(1986)Modeling Recrystallization After Hot Deformation of Aluminum Mater. Sci. Technol. 2 938-45
  • [3] Zaidi M.A.(1996)A Mathematical Model to Predict the Mechanical Properties of Hot Rolled C-Mn and Microalloyed Steels Acta. Mater. 44 4463-73
  • [4] Sheppard T.(1992)A Model for Static Recrystallization After Hot Deformation ISIJ Int. 32 1329-38
  • [5] Vatne H.E.(1975)The Influence of Transient Deformation Conditions on Recrystallization During Thermomechanical Processing of an Al-1% Mg Alloy Acta Metall. 23 481-88
  • [6] Furu T.(1999)Impact Toughness of C-Mn Steel Arc Welds—Bayesian Neural Network Analysis Acta Mater. 47 2377-89
  • [7] Orsund R.(1995)Prediction of Damage Evolution in Forged Aluminum Metal Matrix Composites Using a Neural Network Approach Mater. Sci. Technol. 11 1046-51
  • [8] Nes E.(1998)Bayesian Interpolation J. Mater. Proc. Technol. 80–81 507-12
  • [9] Hodgson P.D.(1992)Probable Networks and Plausible Predictions-a Review of Practical Bayesian Methods for Supervised Neural Networks Neural Comput. 4 415-47
  • [10] Gibbs R.K.(1995)undefined Network: Computat. Neural Syst. 6 469-505