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Learning grain boundary segregation energy spectra in polycrystals
by
Wagih, Malik
, Larsen, Peter M.
, Schuh, Christopher A.
in
119/118
/ 639/301/1023/1026
/ 639/301/1034/1035
/ 639/301/1034/1037
/ 639/301/119/544
/ Alloy development
/ Alloy systems
/ Alloying elements
/ Alloys
/ atomistic models
/ Binary alloys
/ computational methods
/ Energy spectra
/ Enthalpy
/ Grain boundaries
/ Grain Boundary Segregation
/ Humanities and Social Sciences
/ Impact prediction
/ Learning algorithms
/ Machine learning
/ MATERIALS SCIENCE
/ metals and alloys
/ multidisciplinary
/ Polycrystals
/ Science
/ Science (multidisciplinary)
/ surfaces, interfaces and thin films
2020
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Learning grain boundary segregation energy spectra in polycrystals
by
Wagih, Malik
, Larsen, Peter M.
, Schuh, Christopher A.
in
119/118
/ 639/301/1023/1026
/ 639/301/1034/1035
/ 639/301/1034/1037
/ 639/301/119/544
/ Alloy development
/ Alloy systems
/ Alloying elements
/ Alloys
/ atomistic models
/ Binary alloys
/ computational methods
/ Energy spectra
/ Enthalpy
/ Grain boundaries
/ Grain Boundary Segregation
/ Humanities and Social Sciences
/ Impact prediction
/ Learning algorithms
/ Machine learning
/ MATERIALS SCIENCE
/ metals and alloys
/ multidisciplinary
/ Polycrystals
/ Science
/ Science (multidisciplinary)
/ surfaces, interfaces and thin films
2020
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Learning grain boundary segregation energy spectra in polycrystals
by
Wagih, Malik
, Larsen, Peter M.
, Schuh, Christopher A.
in
119/118
/ 639/301/1023/1026
/ 639/301/1034/1035
/ 639/301/1034/1037
/ 639/301/119/544
/ Alloy development
/ Alloy systems
/ Alloying elements
/ Alloys
/ atomistic models
/ Binary alloys
/ computational methods
/ Energy spectra
/ Enthalpy
/ Grain boundaries
/ Grain Boundary Segregation
/ Humanities and Social Sciences
/ Impact prediction
/ Learning algorithms
/ Machine learning
/ MATERIALS SCIENCE
/ metals and alloys
/ multidisciplinary
/ Polycrystals
/ Science
/ Science (multidisciplinary)
/ surfaces, interfaces and thin films
2020
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Learning grain boundary segregation energy spectra in polycrystals
Journal Article
Learning grain boundary segregation energy spectra in polycrystals
2020
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Overview
The segregation of solute atoms at grain boundaries (GBs) can profoundly impact the structural properties of metallic alloys, and induce effects that range from strengthening to embrittlement. And, though known to be anisotropic, there is a limited understanding of the variation of solute segregation tendencies across the full, multidimensional GB space, which is critically important in polycrystals where much of that space is represented. Here we develop a machine learning framework that can accurately predict the segregation tendency—quantified by the segregation enthalpy spectrum—of solute atoms at GB sites in polycrystals, based solely on the undecorated (pre-segregation) local atomic environment of such sites. We proceed to use the learning framework to scan across the alloy space, and build an extensive database of segregation energy spectra for more than 250 metal-based binary alloys. The resulting machine learning models and segregation database are key to unlocking the full potential of GB segregation as an alloy design tool, and enable the design of microstructures that maximize the useful impacts of segregation.
Predicting segregation energies of alloy systems can be challenging even for a single grain boundary. Here the authors propose a machine-learning framework, which maps the local environments on a distribution of segregation energies, to predict segregation energies of alloy elements in polycrystalline materials.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
Subject
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