Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
1562976 | Computational Materials Science | 2010 | 6 Pages |
Abstract
A computer model based on radial base function artificial neural network (RBFANN) was designed for the simulation and prediction of undercooled liquid region ÎTx of glass forming alloys. The model was trained using data from the published literature as well as own experimental data. The performance of RBFANN model is examined by the predicted and simulated results of the influence of kinds of alloys and elements, large and minor change of element content on the reduced glass transition temperature, and composition dependence of ÎTx for La-Al-Ni ternary alloy system. The results show that the RBFANN model is reliable and adequately. Moreover, a group of new Zr-Al-Ni-Cu bulk metallic glasses is designed by RBFANN model. Their predicted ÎTxs are in agreement with the corresponding experimental values.
Keywords
Related Topics
Physical Sciences and Engineering
Engineering
Computational Mechanics
Authors
An-hui Cai, Xiang Xiong, Yong Liu, Wei-ke An, Jing-ying Tan, Yun Luo,