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Main Authors: Mishra, Avanish, Suresh, Sumit A., Fensin, Saryu J., Mathew, Nithin, Kober, Edward M.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.00204
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author Mishra, Avanish
Suresh, Sumit A.
Fensin, Saryu J.
Mathew, Nithin
Kober, Edward M.
author_facet Mishra, Avanish
Suresh, Sumit A.
Fensin, Saryu J.
Mathew, Nithin
Kober, Edward M.
contents Grain boundaries (GBs) govern critical properties of polycrystals. Although significant advancements have been made in characterizing minimum energy GBs, real GBs are seldom found in such states, making it challenging to establish structure-property relationships. This diversity of atomic arrangements in metastable states motivates using data-driven methods to establish these relationships. In this study, we utilize a vast atomistic database (~5000) of minimum energy and metastable states of symmetric tilt copper GBs, combined with physically-motivated local atomic environment (LAE) descriptors (Strain Functional Descriptors, SFDs) to predict GB properties. Our regression models exhibit robust predictive capabilities using only 19 descriptors, generalizing to atomic environments in nanocrystals. A significant highlight of our work is integration of an unsupervised method with SFDs to elucidate LAEs at GBs and their role in determining properties. Our research underscores the role of a physics-based representation of LAEs and efficacy of data-driven methods in establishing GB structure-property relationships.
format Preprint
id arxiv_https___arxiv_org_abs_2406_00204
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning from metastable grain boundaries
Mishra, Avanish
Suresh, Sumit A.
Fensin, Saryu J.
Mathew, Nithin
Kober, Edward M.
Materials Science
Grain boundaries (GBs) govern critical properties of polycrystals. Although significant advancements have been made in characterizing minimum energy GBs, real GBs are seldom found in such states, making it challenging to establish structure-property relationships. This diversity of atomic arrangements in metastable states motivates using data-driven methods to establish these relationships. In this study, we utilize a vast atomistic database (~5000) of minimum energy and metastable states of symmetric tilt copper GBs, combined with physically-motivated local atomic environment (LAE) descriptors (Strain Functional Descriptors, SFDs) to predict GB properties. Our regression models exhibit robust predictive capabilities using only 19 descriptors, generalizing to atomic environments in nanocrystals. A significant highlight of our work is integration of an unsupervised method with SFDs to elucidate LAEs at GBs and their role in determining properties. Our research underscores the role of a physics-based representation of LAEs and efficacy of data-driven methods in establishing GB structure-property relationships.
title Learning from metastable grain boundaries
topic Materials Science
url https://arxiv.org/abs/2406.00204