Progress on Materials Design and Multiscale Simulations for Phase-Change Memory

被引:0
|
作者
Shen, Xueyang [1 ]
Chu, Ruixuan [1 ]
Jiang, Yihui [1 ]
Zhang, Wei [1 ]
机构
[1] Xi An Jiao Tong Univ, Ctr Alloy Innovat & Design CAID, State Key Lab Mech Behav Mat, Xian 710049, Peoples R China
关键词
phase-change memory material; first principles; high-throughput screening; multiscale simulation; machine-learning potential; SB-TE; CRYSTALLIZATION; ULTRAFAST; GETE;
D O I
10.11900/0412.1961.2024.00188
中图分类号
TF [冶金工业];
学科分类号
0806 ;
摘要
In the era of big data, the demand for data storage and processing is increasing because of advanced technologies such as artificial intelligence (AI), 5G, and cloud computing. Emerging non-volatile memory materials and devices present remarkable opportunities to enhance computing capacity. Concurrently, the AI-driven scientific research paradigm introduces a new mode for improving device performance. This review focuses on recent advances in phase-change memory materials and devices, emphasizing computational- and data-driven methodologies. Phase-change materials (PCMs) operate based on rapid and reversible phase transitions between amorphous and crystalline states, where differences in electrical and optical properties are used to encode digital information. These materials typically consist of multi- component alloys, with phase transitions involving melting, quenching, crystallization, glass relaxation, and crystal- crystal structural changes. To achieve a detailed atomistic understanding of PCMs, largescale density functional theory (DFT) and DFT-based ab initio molecular dynamics (AIMD) simulations are essential. Comparisons between DFT/AIMD simulations and experimental results have clarified many fundamental aspects of PCM. The first part of this review provides an overview of the history and progress in large-scale ab initio simulations of PCMs. With atomic-scale knowledge, rational materials design becomes feasible. The second part explores methods for developing new PCMs with specific properties, such as accelerating crystallization at elevated temperatures while maintaining non-volatile characteristics at room temperature. High-throughput screening's role in discovering new phase change alloys is also discussed. In the third part, we examine multiscale and cross-scale simulations of PCM for various optical and electronic phase change applications. By computing the dielectric functions of PCM during the amorphous- to- crystalline transition, we can track changes in the refractive index and extinction coefficient across visible and infrared spectra over time. These DFT-computed parameters inform coarse-grained device simulations using finite-difference time-domain (FDTD) or finite element method (FEM). Based on these multiscale simulations, we offer optimization guidelines for non-volatile color display and photonic waveguide devices. The machine learning potentials address some performance gaps between the DFT/AIMD and FEM/FDTD calculations. Machine-learning-driven molecular dynamics (MLMD) simulations serve as cross-scale simulations, with recent developments including neural networks, graph convolutional neural networks, and Gaussian approximation potentials. We discuss the role of MLMD in enabling device-scale atomistic simulations, facilitating device design and optimization with atomic-scale information. Finally, we outline future opportunities and challenges in theoretical PCM research. With ongoing AI-driven fundamental research, we anticipate the commercialization of high-performance phase change memory, neuroinspired computing, and reconfigurable nanophotonic devices, which will, in turn, foster the development of more advanced theoretical tools for research.
引用
收藏
页码:1362 / 1378
页数:17
相关论文
共 137 条
  • [51] Deep-learning density functional theory Hamiltonian for efficient ab initio electronic-structure calculation
    Li, He
    Wang, Zun
    Zou, Nianlong
    Ye, Meng
    Xu, Runzhang
    Gong, Xiaoxun
    Duan, Wenhui
    Xu, Yong
    [J]. NATURE COMPUTATIONAL SCIENCE, 2022, 2 (06): : 367 - 377
  • [52] Revealing the crystallization dynamics of Sb-Te phase change materials by large-scale simulations
    Li, Kaiqi
    Liu, Bin
    Zhou, Jian
    Sun, Zhimei
    [J]. JOURNAL OF MATERIALS CHEMISTRY C, 2024, 12 (11) : 3897 - 3906
  • [53] LI X, 2019, J PHYS STATUS SOLIDI, V13
  • [54] Role of Electronic Excitation in the Amorphization of Ge-Sb-Te Alloys
    Li, Xian-Bin
    Liu, X. Q.
    Liu, Xin
    Han, Dong
    Zhang, Z.
    Han, X. D.
    Sun, Hong-Bo
    Zhang, S. B.
    [J]. PHYSICAL REVIEW LETTERS, 2011, 107 (01)
  • [55] Yttrium-Doped Sb2Te3: A Promising Material for Phase-Change Memory
    Li, Zhen
    Si, Chen
    Zhou, Jian
    Xu, Huibin
    Sun, Zhimei
    [J]. ACS APPLIED MATERIALS & INTERFACES, 2016, 8 (39) : 26126 - 26134
  • [56] LIU B, 2021, J CHIN PHYS, V30
  • [57] Multi-level phase-change memory with ultralow power consumption and resistance drift
    Liu, Bin
    Li, Kaiqi
    Liu, Wanliang
    Zhou, Jian
    Wu, Liangcai
    Song, Zhitang
    Elliott, Stephen R.
    Sun, Zhimei
    [J]. SCIENCE BULLETIN, 2021, 66 (21) : 2217 - 2224
  • [58] Rewritable color nanoprints in antimony trisulfide films
    Liu, Hailong
    Dong, Weiling
    Wang, Hao
    Lu, Li
    Ruan, Qifeng
    Tan, You Sin
    Simpson, Robert E.
    Yang, Joel K. W.
    [J]. SCIENCE ADVANCES, 2020, 6 (51)
  • [59] Eliminating Negative-SET Behavior by Suppressing Nanofilament Overgrowth in Cation-Based Memory
    Liu, Sen
    Lu, Nianduan
    Zhao, Xiaolong
    Xu, Hui
    Banerjee, Writam
    Lv, Hangbing
    Long, Shibing
    Li, Qingjiang
    Liu, Qi
    Liu, Ming
    [J]. ADVANCED MATERIALS, 2016, 28 (48) : 10623 - +
  • [60] LIU YT, 2021, J ADV FUNCT MAT, V31