A machine learning based deep potential for seeking the low-lying candidates of Al clusters

A Machine-Learning based Deep Potential (DP) model for Al clusters is developed through training with an extended database including ab initio data of both bulk and several clusters in only 6 CPU/h. This DP model has good performance in accurately predicting the low-lying candidates of Al clusters i...

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Veröffentlicht in:The Journal of chemical physics 2020-03, Vol.152 (11), p.114105-114105, Article 114105
Hauptverfasser: Tuo, P., Ye, X. B., Pan, B. C.
Format: Artikel
Sprache:eng
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Zusammenfassung:A Machine-Learning based Deep Potential (DP) model for Al clusters is developed through training with an extended database including ab initio data of both bulk and several clusters in only 6 CPU/h. This DP model has good performance in accurately predicting the low-lying candidates of Al clusters in a broad size range. Based on our developed DP model, the low-lying structures of 101 different sized Al clusters are extensively searched, among which the lowest-energy candidates of 69 sized clusters are updated. Our calculations demonstrate that machine-learning is indeed powerful in generating potentials to describe the interaction of atoms in complex materials.
ISSN:0021-9606
1089-7690
DOI:10.1063/5.0001491