Title of article :
Artificial neural network prediction of heat-treatment hardness
and abrasive wear resistance of High-Vanadium High-Speed
Steel (HVHSS)
Author/Authors :
Xu Liujie، نويسنده , , Xing Jiandong، نويسنده , , Wei Shizhong، نويسنده , ,
Peng Tao، نويسنده , , Zhang Yongzhen، نويسنده , , Long Rui، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2007
Abstract :
The hardness and abrasive wear resistance
were measured after High-Vanadium High-Speed
Steel (HVHSS) were quenched at 900 C–1100 C,
and then tempered at 250 C–600 C. Via one-hiddenlayer
and two-hidden-layer Back-Propagation (BP)
neural networks, the non-linear relationships of hardness
(H) and abrasive wear resistance (e) vs. quenching
temperature and tempering temperature (T1, T2) were
established, respectively, on the base of the experimental
data. The results show that the well-trained
two-hidden-layer networks have rather smaller training
errors and much better generalization performance
compared with well-trained one-hidden-layer neural
networks, and can precisely predict hardness and
abrasive wear resistance according to quenching and
tempering temperatures. The prediction values have
sufficiently mined the basic domain knowledge of heat
treatment process of HVHSS. Therefore, a new way of
predicting hardness and wear resistance according to
heat treatment technique was provided by the authors
Journal title :
Journal of Materials Science
Journal title :
Journal of Materials Science