Simulation of the crystallization process of Ge2Sb2Te5 nanoconfined in superlattice geometries for phase change memories

Abstract

Phase change materials are the most promising candidates for the realization of artificial synapses for neuromorphic computing. Different resistance levels corresponding to analogic values of the synapsis conductance can be achieved by modulating the size of an amorphous region embedded in its crystalline matrix. Recently, it has been proposed that a superlattice made of alternating layers of the phase change compound Sb2Te3 and of the TiTe2 confining material allows for a better control of multiple intermediate resistance states and for a lower drift with time of the electrical resistance of the amorphous phase. In this work, we consider the substitution of Sb2Te3 with the Ge2Sb2Te5 prototypical phase change compound that should feature better data retention. By exploiting molecular dynamics simulations with a machine learning interatomic potential, we have investigated the crystallization kinetics of Ge2Sb2Te5 nanoconfined in geometries mimicking Ge2Sb2Te5/TiTe2 superlattices. It turns out that nanoconfinement induces a slight reduction in the crystal growth velocities with respect to the bulk, but also an enhancement of the nucleation rate due to heterogeneous nucleation. The results support the idea of investigating Ge2Sb2Te5/TiTe2 superlattices for applications in neuromorphic devices with improved data retention. The effect on the crystallization kinetics of the addition of van der Waals interaction to the interatomic potential is also discussed.

Graphical abstract: Simulation of the crystallization process of Ge2Sb2Te5 nanoconfined in superlattice geometries for phase change memories

Supplementary files

Article information

Article type
Paper
Submitted
20 Jan 2025
Accepted
25 Apr 2025
First published
20 May 2025
This article is Open Access
Creative Commons BY license

Nanoscale, 2025, Advance Article

Simulation of the crystallization process of Ge2Sb2Te5 nanoconfined in superlattice geometries for phase change memories

D. Acharya, O. Abou El Kheir, S. Marcorini and M. Bernasconi, Nanoscale, 2025, Advance Article , DOI: 10.1039/D5NR00283D

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