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Predicting the stability of ternary intermetallics with density functional theory and machine learning

J. Schmidt, L. Chen, S. Botti, M. Marques

The Journal of Chemical Physics, 148, 241728, (2018)

DOI: 10.1063/1.5020223

Download: BibTEX

We use a combination of machine learning techniques and high-throughput density-functional theory calculations to explore ternary compounds with the AB2C2 composition. We chose the two most common intermetallic prototypes for this composition, namely, the tI10-CeAl2Ga2 and the tP10-FeMo2B2 structures. Our results suggest that there may be ∼10 times more stable compounds in these phases than previously known. These are mostly metallic and non-magnetic. While the use of machine learning reduces the overall calculation cost by around 75%, some limitations of its predictive power still exist, in particular, for compounds involving the second-row of the periodic table or magnetic elements.

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{"type":"article", "name":"j.schmidt20186", "author":"J. Schmidt and L. Chen and S. Botti and M. Marques", "title":"Predicting the stability of ternary intermetallics with density functional theory and machine learning", "journal":"The Journal of Chemical Physics", "volume":"148", "OPTnumber":"24", "OPTmonth":"6", "year":"2018", "OPTpages":"241728", "OPTnote":"", "OPTkey":"density functional theory; crystalline properties; machine learning; ferromagnetic materials; magnetic materials; transition metals; chemical elements; alloys; inorganic compounds; perovskites", "DOI":"10.1063/1.5020223"}
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