Thermal transport of glasses via machine learning driven simulations

被引:2
|
作者
Pegolo, Paolo [1 ]
Grasselli, Federico [2 ]
机构
[1] SISSA Scuola Int Super Avanzati, Trieste, Italy
[2] Ecole Polytech Fed Lausanne, COSMO Lab Computat Sci & Modeling, Inst Mat IMX, Lausanne, Switzerland
基金
欧盟地平线“2020”;
关键词
thermal transport; machine learning; glasses; thermal properties; Green Kubo method; molecular dynamics; cepstral analisys; STATISTICAL-MECHANICAL THEORY; IRREVERSIBLE PROCESSES; CONDUCTIVITY; HEAT; VIBRATIONS; SCATTERING; ENERGIES; CRYSTALS; DYNAMICS; PHONONS;
D O I
10.3389/fmats.2024.1369034
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Accessing the thermal transport properties of glasses is a major issue for the design of production strategies of glass industry, as well as for the plethora of applications and devices where glasses are employed. From the computational standpoint, the chemical and morphological complexity of glasses calls for atomistic simulations where the interatomic potentials are able to capture the variety of local environments, composition, and (dis)order that typically characterize glassy phases. Machine-learning potentials (MLPs) are emerging as a valid alternative to computationally expensive ab initio simulations, inevitably run on very small samples which cannot account for disorder at different scales, as well as to empirical force fields, fast but often reliable only in a narrow portion of the thermodynamic and composition phase diagrams. In this article, we make the point on the use of MLPs to compute the thermal conductivity of glasses, through a review of recent theoretical and computational tools and a series of numerical applications on vitreous silica and vitreous silicon, both pure and intercalated with lithium.
引用
收藏
页数:10
相关论文
共 50 条
  • [41] Computer simulations of structure and transport in glasses and supercooled liquids
    Poole, PH
    [J]. CURRENT OPINION IN SOLID STATE & MATERIALS SCIENCE, 1998, 3 (04): : 391 - 396
  • [42] Quantum Driven Machine Learning
    Saini, Shivani
    Khosla, P. K.
    Kaur, Manjit
    Singh, Gurmohan
    [J]. INTERNATIONAL JOURNAL OF THEORETICAL PHYSICS, 2020, 59 (12) : 4013 - 4024
  • [43] Quantum Driven Machine Learning
    Shivani Saini
    PK Khosla
    Manjit Kaur
    Gurmohan Singh
    [J]. International Journal of Theoretical Physics, 2020, 59 : 4013 - 4024
  • [44] Discovery of organic flow battery electrolytes via a machine learning driven approach
    Tabor, Daniel
    Hase, Florian
    Roch, Loic
    Aspuru-Guzik, Alan
    [J]. ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2018, 256
  • [45] Predicting material microstructure evolution via data-driven machine learning
    Kautz, Elizabeth J.
    [J]. PATTERNS, 2021, 2 (07):
  • [46] RF-Driven Crowd-Size Classifcation via Machine Learning
    de Brito Guerra, Tarciana Cabral
    de Santana, Pedro Maia
    de Medeiros Campos, Millena Michely
    Mattos, Mateus de Oliveira
    de Medeiros, Alvaro A. M.
    de Sousa, Vicente Angelo
    [J]. IEEE ANTENNAS AND WIRELESS PROPAGATION LETTERS, 2019, 18 (11): : 2321 - 2324
  • [47] Chemistrees: Data-Driven Identification of Reaction Pathways via Machine Learning
    Roet, Sander
    Daub, Christopher D.
    Riccardi, Enrico
    [J]. JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2021, 17 (10) : 6193 - 6202
  • [48] Predicting lattice thermal conductivity via machine learning: a mini review
    Yufeng Luo
    Mengke Li
    Hongmei Yuan
    Huijun Liu
    Ying Fang
    [J]. npj Computational Materials, 9
  • [49] Data driven reaction mechanism estimation via transient kinetics and machine learning
    Kunz, M. Ross
    Yonge, Adam
    Fang, Zongtang
    Batchu, Rakesh
    Medford, Andrew J.
    Constales, Denis
    Yablonsky, Gregory
    Fushimi, Rebecca
    [J]. CHEMICAL ENGINEERING JOURNAL, 2021, 420
  • [50] Predicting lattice thermal conductivity via machine learning: a mini review
    Luo, Yufeng
    Li, Mengke
    Yuan, Hongmei
    Liu, Huijun
    Fang, Ying
    [J]. NPJ COMPUTATIONAL MATERIALS, 2023, 9 (01)