Calculation of Crystallographic Texture of BCC Steels During Cold Rolling

被引:11
作者
Das, Arpan [1 ]
机构
[1] Bhabha Atom Res Ctr, Mat Grp, Mech Met Div, Dept Atom Energy, Mumbai 400085, Maharashtra, India
关键词
alpha fibre; Bayesian neural network; cold rolling; crystallographic texture; feed-forward neural network; steels; NEURAL-NETWORK ANALYSIS; LOW-CARBON STEEL; GRAIN-BOUNDARY CEMENTITE; NICKEL-BASE SUPERALLOYS; LOW-ALLOY STEELS; C-MN STEEL; STAINLESS-STEELS; TRANSFORMATION TEXTURES; RECRYSTALLIZATION TEXTURES; THERMOMECHANICAL CYCLES;
D O I
10.1007/s11665-017-2695-6
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
BCC alloys commonly tend to develop strong fibre textures and often represent as isointensity diagrams in phi (1) sections or by fibre diagrams. Alpha fibre in bcc steels is generally characterised by aOE (c) 110 > crystallographic axis parallel to the rolling direction. The objective of present research is to correlate carbon content, carbide dispersion, rolling reduction, Euler angles (I center dot) (when phi (1) = 0A degrees and phi (2) = 45A degrees along alpha fibre) and the resulting alpha fibre texture orientation intensity. In the present research, Bayesian neural computation has been employed to correlate these and compare with the existing feed-forward neural network model comprehensively. Excellent match to the measured texture data within the bounding box of texture training data set has been already predicted through the feed-forward neural network model by other researchers. Feed-forward neural network prediction outside the bounds of training texture data showed deviations from the expected values. Currently, Bayesian computation has been similarly applied to confirm that the predictions are reasonable in the context of basic metallurgical principles, and matched better outside the bounds of training texture data set than the reported feed-forward neural network. Bayesian computation puts error bars on predicted values and allows significance of each individual parameters to be estimated. Additionally, it is also possible by Bayesian computation to estimate the isolated influence of particular variable such as carbon concentration, which exactly cannot in practice be varied independently. This shows the ability of the Bayesian neural network to examine the new phenomenon in situations where the data cannot be accessed through experiments.
引用
收藏
页码:2708 / 2720
页数:13
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