Phase change materials are exploited in several enabling technologies such as storage class memories, neuromorphic devices and memories embedded in microcontrollers. A key functional property for these applications is the fast crystal nucleation and growth in the supercool liquid phase. Over the last decade, atomistic simulations based on density functional theory (DFT) have provided crucial insights on the early stage of this process. These simulations are, however, restricted to a few hundred atoms for at most a few ns. More recently, the scope of the DFT simulations is greatly extended by leveraging on machine learning techniques. In this study, it is showed that the exploitation of a recently devised neural network potential for the prototypical phase change compound Ge2Sb2Te5, allows simulating the crystallization process in a multimillion atom model at the length and time scales of the real memory devices. The simulations provide a vivid atomistic picture of the subtle interplay between crystal nucleation and crystal growth from the crystal/amorphous rim. Moreover, the simulations have allowed quantifying the distribution of point defects that controls electronic transport, in a very large crystallite grown at the real conditions of the set process of the device.
Abou El Kheir, O., Bernasconi, M. (2025). Million-Atom Simulation of the Set Process in Phase Change Memories at the Real Device Scale. ADVANCED ELECTRONIC MATERIALS, 11(13) [10.1002/aelm.202500110].
Million-Atom Simulation of the Set Process in Phase Change Memories at the Real Device Scale
Abou El Kheir O.;Bernasconi M.
2025
Abstract
Phase change materials are exploited in several enabling technologies such as storage class memories, neuromorphic devices and memories embedded in microcontrollers. A key functional property for these applications is the fast crystal nucleation and growth in the supercool liquid phase. Over the last decade, atomistic simulations based on density functional theory (DFT) have provided crucial insights on the early stage of this process. These simulations are, however, restricted to a few hundred atoms for at most a few ns. More recently, the scope of the DFT simulations is greatly extended by leveraging on machine learning techniques. In this study, it is showed that the exploitation of a recently devised neural network potential for the prototypical phase change compound Ge2Sb2Te5, allows simulating the crystallization process in a multimillion atom model at the length and time scales of the real memory devices. The simulations provide a vivid atomistic picture of the subtle interplay between crystal nucleation and crystal growth from the crystal/amorphous rim. Moreover, the simulations have allowed quantifying the distribution of point defects that controls electronic transport, in a very large crystallite grown at the real conditions of the set process of the device.| File | Dimensione | Formato | |
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