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Partial melting nature of phase-change memory Ge-Sb-Te superlattice uncovered by large-scale machine learning interatomic potential molecular dynamics.

Authors :
Wang, Bai-Qian
Zhao, Tian-Yu
Ding, Huan-Ran
Liu, Yu-Ting
Chen, Nian-Ke
Niu, Meng
Li, Xiao-Dong
Xu, Ming
Sun, Hong-Bo
Zhang, Shengbai
Li, Xian-Bin
Source :
Acta Materialia. Sep2024, Vol. 276, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

[GeTe] m -[Sb 2 Te 3 ] n superlattice (GST-SL) is a promising material candidate to solve the critical problem of high-power consumption for phase-change memory technology. However, the switching mechanism is still under strong debate during the last decade. A key controversial question is that whether melting in GST-SL is possible. In this work, a large-scale machine learning interatomic potential (MLIP) molecular dynamics (MD) simulation with a one-order-of-magnitude larger atom number than that of conventional density functional theory (DFT) MD captures a unique partial melting behavior in GST-SL, where a sparse-nucleation-and-growth governed melting behavior is triggered by the flipping of atoms into van der Waals (vdW) gaps and forming cation-in-vdW-gap (CiV) defect as starting point, and then is slowly developed via propagating liquid-crystalline interfaces. In great contrast, the traditional melting of rock salt (RS)-GST occurs very fast due to instant homogeneous nucleation from high-density intrinsic vacancies distributed randomly in its cubic lattice. Therefore, the melting regions in GST-SL can be spatially localized in form of partial melting and are readily controlled. Moreover, the atomic distribution after melting in GST-SL is more chemical ordering than that in RS-GST. By the large-scale MLIP-MD, the present study provides a critical atomic insight into GST-SL phase-change behaviors that conventional DFT-MDs hardly achieve. This partial-melting nature in GST-SL helps explain the long-term-confused working principle of GST-SL-based phase-change memory, which will accelerate its application in the big-data era. [Display omitted] [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
13596454
Volume :
276
Database :
Academic Search Index
Journal :
Acta Materialia
Publication Type :
Academic Journal
Accession number :
178465079
Full Text :
https://doi.org/10.1016/j.actamat.2024.120123