Exploring effective charge in electromigration using machine learning
Materials Science
2019-07-03 v1 Computational Physics
Abstract
The effective charge of an element is a parameter characterizing the electromgration effect, which can determine the reliability of interconnection in electronic technologies. In this work, machine learning approaches were employed to model the effective charge (z*) as a linear function of physically meaningful elemental properties. Average 5-fold (leave-out-alloy-group) cross-validation yielded root-mean-square-error divided by whole data set standard deviation (RMSE/) values of 0.37 0.01 (0.22 0.18), respectively, and values of 0.86. Extrapolation to z* of totally new alloys showed limited but potentially useful predictive ability. The model was used in predicting z* for technologically relevant host-impurity pairs.
Cite
@article{arxiv.1907.01480,
title = {Exploring effective charge in electromigration using machine learning},
author = {Yu-chen Liu and Benjamin Afflerbach and Ryan Jacobs and Shih-kang Lin and Dane Morgan},
journal= {arXiv preprint arXiv:1907.01480},
year = {2019}
}
Comments
9 pages, 5 figures