2022
DOI: 10.48550/arxiv.2203.06283
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Prediction of stable Li-Sn compounds: boosting ab initio searches with neural network potentials

Saba Kharabadze,
Aidan Thorn,
Ekaterina A. Koulakova
et al.

Abstract: The Li-Sn binary system has been the focus of extensive research because it features Li-rich alloys with potential applications as battery anodes. Our present re-examination of the binary system with a combination of machine learning and ab initio methods has allowed us to screen a vast configuration space and uncover a number of overlooked thermodynamically stable alloys. At ambient pressure, our evolutionary searches identified a new stable Li3Sn phase with a large BCCbased hR48 structure and a possible high… Show more

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