2020
DOI: 10.3390/ma13010179
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Application of Machine Learning to Predict Grain Boundary Embrittlement in Metals by Combining Bonding-Breaking and Atomic Size Effects

Abstract: The strengthening energy or embrittling potency of an alloying element is a fundamental energetics of the grain boundary (GB) embrittlement that control the mechanical properties of metallic materials. A data-driven machine learning approach has recently been used to develop prediction models to uncover the physical mechanisms and design novel materials with enhanced properties. In this work, to accurately predict and uncover the key features in determining the strengthening energies, three machine learning me… Show more

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Cited by 13 publications
(1 citation statement)
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“…Eventually, while there exist several studies that explore properties of the complex materials having higher-order defects using ML and artificial neural networks [104][105][106][107], to our knowledge these techniques are not yet applied for designing realistic computational models of the materials having various higher-order defects, therefore, are excluded from this review.…”
Section: Modeling 2 Nd Degree Disorder In Materialsmentioning
confidence: 99%
“…Eventually, while there exist several studies that explore properties of the complex materials having higher-order defects using ML and artificial neural networks [104][105][106][107], to our knowledge these techniques are not yet applied for designing realistic computational models of the materials having various higher-order defects, therefore, are excluded from this review.…”
Section: Modeling 2 Nd Degree Disorder In Materialsmentioning
confidence: 99%