Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning
Abstract The elementary excitations in metallic glasses (MGs), i.e., β processes that involve hopping between nearby sub-basins, underlie many unusual properties of the amorphous alloys. A high-efficacy prediction of the propensity for those activated processes from solely the atomic positions, howe...
Main Authors: | , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Nature Publishing Group
2020-12-01
|
Series: | npj Computational Materials |
Online Access: | https://doi.org/10.1038/s41524-020-00467-4 |
id |
doaj-607c7977330949b6958952bb11789513 |
---|---|
record_format |
Article |
spelling |
doaj-607c7977330949b6958952bb117895132020-12-20T12:13:58ZengNature Publishing Groupnpj Computational Materials2057-39602020-12-016111210.1038/s41524-020-00467-4Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learningQi Wang0Jun Ding1Longfei Zhang2Evgeny Podryabinkin3Alexander Shapeev4Evan Ma5Department of Materials Science and Engineering, Johns Hopkins UniversityCenter for Advancing Materials Performance from the Nanoscale (CAMP-Nano), State Key Laboratory for Mechanical Behavior of Materials, Xi’an Jiaotong UniversityDepartment of Computer Science, Johns Hopkins UniversityCenter for Energy Science and Technology, Skolkovo Institute of Science and TechnologyCenter for Energy Science and Technology, Skolkovo Institute of Science and TechnologyDepartment of Materials Science and Engineering, Johns Hopkins UniversityAbstract The elementary excitations in metallic glasses (MGs), i.e., β processes that involve hopping between nearby sub-basins, underlie many unusual properties of the amorphous alloys. A high-efficacy prediction of the propensity for those activated processes from solely the atomic positions, however, has remained a daunting challenge. Recently, employing well-designed site environment descriptors and machine learning (ML), notable progress has been made in predicting the propensity for stress-activated β processes (i.e., shear transformations) from the static structure. However, the complex tensorial stress field and direction-dependent activation could induce non-trivial noises in the data, limiting the accuracy of the structure-property mapping learned. Here, we focus on the thermally activated elementary excitations and generate high-quality data in several Cu-Zr MGs, allowing quantitative mapping of the potential energy landscape. After fingerprinting the atomic environment with short- and medium-range interstice distribution, ML can identify the atoms with strong resistance or high compliance to thermal activation, at a high accuracy over ML models for stress-driven activation events. Interestingly, a quantitative “between-task” transferring test reveals that our learnt model can also generalize to predict the propensity of shear transformation. Our dataset is potentially useful for benchmarking future ML models on structure-property relationships in MGs.https://doi.org/10.1038/s41524-020-00467-4 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Qi Wang Jun Ding Longfei Zhang Evgeny Podryabinkin Alexander Shapeev Evan Ma |
spellingShingle |
Qi Wang Jun Ding Longfei Zhang Evgeny Podryabinkin Alexander Shapeev Evan Ma Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning npj Computational Materials |
author_facet |
Qi Wang Jun Ding Longfei Zhang Evgeny Podryabinkin Alexander Shapeev Evan Ma |
author_sort |
Qi Wang |
title |
Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
title_short |
Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
title_full |
Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
title_fullStr |
Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
title_full_unstemmed |
Predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
title_sort |
predicting the propensity for thermally activated β events in metallic glasses via interpretable machine learning |
publisher |
Nature Publishing Group |
series |
npj Computational Materials |
issn |
2057-3960 |
publishDate |
2020-12-01 |
description |
Abstract The elementary excitations in metallic glasses (MGs), i.e., β processes that involve hopping between nearby sub-basins, underlie many unusual properties of the amorphous alloys. A high-efficacy prediction of the propensity for those activated processes from solely the atomic positions, however, has remained a daunting challenge. Recently, employing well-designed site environment descriptors and machine learning (ML), notable progress has been made in predicting the propensity for stress-activated β processes (i.e., shear transformations) from the static structure. However, the complex tensorial stress field and direction-dependent activation could induce non-trivial noises in the data, limiting the accuracy of the structure-property mapping learned. Here, we focus on the thermally activated elementary excitations and generate high-quality data in several Cu-Zr MGs, allowing quantitative mapping of the potential energy landscape. After fingerprinting the atomic environment with short- and medium-range interstice distribution, ML can identify the atoms with strong resistance or high compliance to thermal activation, at a high accuracy over ML models for stress-driven activation events. Interestingly, a quantitative “between-task” transferring test reveals that our learnt model can also generalize to predict the propensity of shear transformation. Our dataset is potentially useful for benchmarking future ML models on structure-property relationships in MGs. |
url |
https://doi.org/10.1038/s41524-020-00467-4 |
work_keys_str_mv |
AT qiwang predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning AT junding predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning AT longfeizhang predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning AT evgenypodryabinkin predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning AT alexandershapeev predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning AT evanma predictingthepropensityforthermallyactivatedbeventsinmetallicglassesviainterpretablemachinelearning |
_version_ |
1724376935654490112 |