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Layer-by-layer phase transformation in Ti$_3$O$_5$ revealed by machine learning molecular dynamics simulations

Authors :
Liu, Mingfeng
Wang, Jiantao
Hu, Junwei
Liu, Peitao
Niu, Haiyang
Yan, Xuexi
Li, Jiangxu
Yan, Haile
Yang, Bo
Sun, Yan
Chen, Chunlin
Kresse, Georg
Zuo, Liang
Chen, Xing-Qiu
Source :
Nat Commun 15, 3079 (2024)
Publication Year :
2023

Abstract

Reconstructive phase transitions involving breaking and reconstruction of primary chemical bonds are ubiquitous and important for many technological applications. In contrast to displacive phase transitions, the dynamics of reconstructive phase transitions are usually slow due to the large energy barrier. Nevertheless, the reconstructive phase transformation from $\beta$- to $\lambda$-Ti$_3$O$_5$ exhibits an ultrafast and reversible behavior. Despite extensive studies, the underlying microscopic mechanism remains unclear. Here, we discover a kinetically favorable in-plane nucleated layer-by-layer transformation mechanism through metadynamics and large-scale molecular dynamics simulations. This is enabled by developing an efficient machine learning potential with near first-principles accuracy through an on-the-fly active learning method and an advanced sampling technique. Our results reveal that the $\beta$-$\lambda$ phase transformation initiates with the formation of two-dimensional nuclei in the $ab$-plane and then proceeds layer-by-layer through a multistep barrier-lowering kinetic process via intermediate metastable phases. Our work not only provides important insight into the ultrafast and reversible nature of the $\beta$-$\lambda$ transition, but also presents useful strategies and methods for tackling other complex structural phase transitions.<br />Comment: 26 pages,23 figures (including Supporting Information)

Details

Database :
arXiv
Journal :
Nat Commun 15, 3079 (2024)
Publication Type :
Report
Accession number :
edsarx.2310.05683
Document Type :
Working Paper
Full Text :
https://doi.org/10.1038/s41467-024-47422-1