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Discovering the building blocks of atomic systems using machine learning: application to grain boundaries

Authors :
Gábor Csányi
Eric R. Homer
Gus L. W. Hart
Conrad W. Rosenbrock
Apollo - University of Cambridge Repository
Source :
npj Computational Materials, Vol 3, Iss 1, Pp 1-7 (2017)
Publication Year :
2017
Publisher :
Springer Science and Business Media LLC, 2017.

Abstract

Machine learning has proven to be a valuable tool to approximate functions in high-dimensional spaces. Unfortunately, analysis of these models to extract the relevant physics is never as easy as applying machine learning to a large data set in the first place. Here we present a description of atomic systems that generates machine learning representations with a direct path to physical interpretation. As an example, we demonstrate its usefulness as a universal descriptor of grain boundary systems. Grain boundaries in crystalline materials are a quintessential example of a complex, high-dimensional system with broad impact on many physical properties including strength, ductility, corrosion resistance, crack resistance, and conductivity. In addition to modeling such properties, the method also provides insight into the physical “building blocks” that influence them. This opens the way to discover the underlying physics behind behaviors by understanding which building blocks map to particular properties. Once the structures are understood, they can then be optimized for desirable behaviors.

Details

ISSN :
20573960
Volume :
3
Database :
OpenAIRE
Journal :
npj Computational Materials
Accession number :
edsair.doi.dedup.....34f54c0bef37e04c84722ccfa552f352
Full Text :
https://doi.org/10.1038/s41524-017-0027-x