Title of article :
Microstructural prediction through artificial neural network (ANN) for development of transformation induced plasticity (TRIP) aided steel
Author/Authors :
Bhattacharyya، نويسنده , , Tanmay and Brat Singh، نويسنده , , Shiv and Sikdar (Dey)، نويسنده , , Swati and Bhattacharyya، نويسنده , , Sandip and Bleck، نويسنده , , Wolfgang and Bhattacharjee، نويسنده , , Debashish، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
10
From page :
148
To page :
157
Abstract :
The prediction of the amount of retained austenite as a function of chemical composition and heat treatment is important for achieving the desired properties in TRIP (Transformation Induced Plasticity) aided steel. In the present work, three experimental steels (CMnSiAlP, CMnSiAlNb and CMnSiNb) made in vacuum induction furnace were suitably heat treated in hot dip processing simulator (HDPS) to produce multiphase TRIP microstructure. The process parameters were determined with the aid of multilayered perception (MLP) based artificial neural network (ANN) models in combination with the results of the study of the transformation behaviour. Amount of retained austenite in microstructure measured by optical microscopy and X-ray diffraction technique had shown a good agreement with that predicted through the afore mentioned model. All three alloys were found to have an excellent strength–ductility balance and significantly good strain hardening exponent (n) value. Among the three grades, CMnSiAlNb grade was observed to have a better combination of properties in terms of high strength and ductility.
Keywords :
Artificial neural network , retained austenite , isothermal bainitic transformation , Chemical composition , Transformation induced plasticity , intercritical annealing
Journal title :
MATERIALS SCIENCE & ENGINEERING: A
Serial Year :
2013
Journal title :
MATERIALS SCIENCE & ENGINEERING: A
Record number :
2172517
Link To Document :
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