Title of article :
Bayesian Regularization Neural Networks for Prediction of Austenite Formation Temperatures (Ac1 and Ac3) Original Research Article
Author/Authors :
Masoud RAKHSHKHORSHID، نويسنده , , Sayyed-Amin TEIMOURI SENDESI، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
6
From page :
246
To page :
251
Abstract :
A neural network with a feed forward topology and Bayesian regularization training algorithm is used to predict the austenite formation temperatures (Ac1 and Ac3) by considering the percentage of alloying elements in chemical composition of steel. The data base used here involves a large variety of different steel types such as structural steels, stainless steels, rail steels, spring steels, high temperature creep resisting steels and tool steels. Scatter diagrams and mean relative error (MRE) statistical criteria are used to compare the performance of developed neural network with the results of Andrewʹs empirical equations and a feed forward neural network with “gradient descent with momentum” training algorithm. The results showed that Bayesian regularization neural network has the best performance. Also, due to the satisfactory results of the developed neural network, it was used to investigate the effect of the chemical composition on Ac1 and Ac3 temperatures. Results are in accordance with materials science theories.
Keywords :
Bayesian regularization neural network , steel , Ac3 , Chemical composition , AC1
Journal title :
Journal of Iron and Steel Research
Serial Year :
2014
Journal title :
Journal of Iron and Steel Research
Record number :
1239807
Link To Document :
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