Machine-learned potentials for eucryptite: A systematic comparison

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作者
Jörg-Rüdiger Hill
Wolfgang Mannstadt
机构
[1] Materials Design SARL,
[2] SCHOTT AG,undefined
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Machine-learned potential; Eucryptite; Thermal expansion; Ionic conductivity; Molecular dynamics;
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页码:5188 / 5197
页数:9
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