4.7 Article

Machine learning insight into h-BN growth on Pt(111) from atomic states

Journal

APPLIED SURFACE SCIENCE
Volume 621, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.apsusc.2023.156893

Keywords

Machine learning potential; Pt(111); h-BN; Thin film growth; Surface reaction; Precipitation

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The growth of monolayer h-BN on Pt(111) from boron and nitrogen atoms was studied using molecular dynamics with machine-learning potentials trained using first-principles data. A Y-shaped node formed around boron during the growth process, which then transformed into a quadrangular ring and eventually the hexagonal ring structure of h-BN. Pt atoms emerged from the substrate and contributed to the fusion of BN clusters. Increasing the number of deposited nitrogen atoms and cooling the substrate improved the quality of the formed h-BN. This study suggests that high-quality h-BN on Pt(111) forms through a combination of surface-mediated growth and boron precipitation due to cooling.
The growth of monolayer h-BN from boron and nitrogen atoms on Pt(111) is investigated using molecular dynamics combined with machine-learning potentials trained based on first-principles data. An h-BN monolayer is formed by depositing boron and nitrogen atoms at a constant temperature. In the growth process, a Y-shaped node is formed around boron, which then forms a quadrangular ring that transforms into the hexagonal ring comprising the basic unit of h-BN. In these processes, Pt atoms emerge from the substrate and contribute to fusion of the BN clusters. These phenomena appear to be characteristic of h-BN formation on Pt(111). Both increase of the number of deposited nitrogen and cooling of the substrate significantly improve the quality of formed h-BN. This suggests that the formation of high-quality h-BN on Pt(111) is a combination of surface-mediated growth and boron precipitation due to cooling.

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