Mocanu Felix C, Konstantinou Konstantinos, Lee Tae Hoon, Bernstein Noam, Deringer Volker L, Csányi Gábor, Elliott Stephen R
Department of Chemistry , University of Cambridge , Cambridge CB2 1EW , United Kingdom.
Engineering Laboratory , University of Cambridge , Cambridge CB2 1PZ , United Kingdom.
J Phys Chem B. 2018 Sep 27;122(38):8998-9006. doi: 10.1021/acs.jpcb.8b06476. Epub 2018 Sep 14.
The phase-change material, GeSbTe, is the canonical material ingredient for next-generation storage-class memory devices used in novel computing architectures, but fundamental questions remain regarding its atomic structure and physicochemical properties. Here, we introduce a machine-learning (ML)-based interatomic potential that enables large-scale atomistic simulations of liquid, amorphous, and crystalline GeSbTe with an unprecedented combination of speed and density functional theory (DFT) level of accuracy. Two applications exemplify the usefulness of such an ML-driven approach: we generate a 7200-atom structural model, hitherto inaccessible with DFT simulations, that affords new insight into the medium-range structural order and we create an ensemble of uncorrelated, smaller structures, for studies of their chemical bonding with statistical significance. Our work opens the way for new atomistic insights into the fascinating and chemically complex class of phase-change materials that are used in real nonvolatile memory devices.
相变材料GeSbTe是用于新型计算架构的下一代存储类内存设备的典型材料成分,但关于其原子结构和物理化学性质仍存在一些基本问题。在此,我们引入了一种基于机器学习(ML)的原子间势,它能够以前所未有的速度和密度泛函理论(DFT)精度水平,对液态、非晶态和晶态的GeSbTe进行大规模原子模拟。两个应用实例证明了这种基于ML驱动方法的实用性:我们生成了一个7200原子的结构模型,这是DFT模拟迄今无法实现的,它为中程结构有序性提供了新的见解;我们创建了一组不相关的较小结构,用于具有统计意义的化学键合研究。我们的工作为深入了解用于实际非易失性存储设备的迷人且化学性质复杂的相变材料类别开辟了新的原子层面视角。