2020
DOI: 10.48550/arxiv.2008.07786
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Training machine-learning potentials for crystal structure prediction using disordered structures

Changho Hong,
Jeong Min Choi,
Wonseok Jeong
et al.

Abstract: Prediction of the stable crystal structure for multinary (ternary or higher) compounds demands fast and accurate evaluation of free energies in exploring the vast configurational space. The machine-learning potential such as the neural network potential (NNP) is poised to meet this requirement but a dearth of information on the crystal structure poses a challenge in choosing training sets. Herein we propose constructing the training set from density-functional-theory (DFT) based dynamical trajectories of liqui… Show more

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