Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
9803921 | Journal of Alloys and Compounds | 2005 | 6 Pages |
Abstract
In this investigation, a neural network model was used to predict mechanical properties of dual phase (DP) steels and sensivity analysis was performed to investigate the importance of the effects of pre-strain, deformation temperature, volume fraction and morphology of martensite on room temperature mechanical behavior of these steels. In order to train the neural network, dual-phase (DP) steels with different morphology and volume fractions of martensite were deformed between 2 and 8%, at high temperature range of 150-450 °C. The results of this investigation show that there is a good agreement between experimental and predicted values and the well-trained neural network has a great potential in mechanical behavior modeling of DP steels.
Related Topics
Physical Sciences and Engineering
Materials Science
Metals and Alloys
Authors
A. Bahrami, S.H. Mousavi Anijdan, A. Ekrami,