Title of article
Revisiting Hume-Rothery’s Rules with artificial neural networks Original Research Article
Author/Authors
Y.M. Zhang، نويسنده , , S. Yang، نويسنده , , J.R.G. Evans، نويسنده ,
Issue Information
دوهفته نامه با شماره پیاپی سال 2008
Pages
12
From page
1094
To page
1105
Abstract
Hume-Rothery’s breadth of knowledge combined with a quest for generality gave him insights into the reasons for solubility in metallic systems that have become known as Hume-Rothery’s Rules. Presented with solubility details from similar sets of constitutional diagrams, can one expect artificial neural networks (ANN), which are blind to the underlying metals physics, to reveal similar or better correlations? The aim is to test whether it is feasible to predict solid solubility limits using ANN with the parameters that Hume-Rothery identified. The results indicate that the correlations expected by Hume-Rothery’s Rules work best for a certain range of copper or silver alloy systems. The ANN can predict a value for solubility, which is a refinement on the original qualitative duties of Hume-Rothery’s Rules. The best combination of input parameters can also be evaluated by ANN.
Keywords
Artificial neural networks , Solubility limit of metals , Binary alloys , Backpropagation networks , Hume-Rothery’s Rules
Journal title
ACTA Materialia
Serial Year
2008
Journal title
ACTA Materialia
Record number
1143485
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