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Structural changes during glass formation extracted by computational homology with machine learning

Materials Science

Structural changes during glass formation extracted by computational homology with machine learning

A. Hirata, T. Wada, et al.

Discover how Akihiko Hirata, Tomohide Wada, Ippei Obayashi, and Yasuaki Hiraoka utilized computational persistent homology and machine learning to unveil critical insights into the glass formation process of metallic glasses. Their findings reveal a transformative shift in atomic structures during cooling, paving the way for a deeper understanding of glass states.

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~3 min • Beginner • English
Abstract
The structural origin of the slow dynamics in glass formation remains to be understood owing to the subtle structural differences between the liquid and glass states. Even from simulations, where the positions of all atoms are deterministic, it is difficult to extract significant structural components for glass formation. In this study, we have extracted significant local atomic structures from a large number of metallic glass models with different cooling rates by utilising a computational persistent homology method combined with linear machine learning techniques. A drastic change in the extended range atomic structure consisting of 3–9 prism-type atomic clusters, rather than a change in individual atomic clusters, was found during the glass formation. The present method would be helpful towards understanding the hierarchical features of the unique static structure of the glass states.
Publisher
Communications Materials
Published On
Dec 04, 2020
Authors
Akihiko Hirata, Tomohide Wada, Ippei Obayashi, Yasuaki Hiraoka
Tags
metallic glass
computational persistent homology
machine learning
atomic structure
glass formation
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