Understanding solid nitrogen through molecular dynamics simulations with a machine-learning potential

被引:1
|
作者
Kirsz, Marcin [1 ,2 ]
Pruteanu, Ciprian G. [1 ,2 ]
Cooke, Peter I. C. [3 ]
Ackland, Graeme J. [1 ,2 ]
机构
[1] Univ Edinburgh, Ctr Sci Extreme Condit, Edinburgh EH9 3FD, Scotland
[2] Univ Edinburgh, Sch Phys & Astron, Edinburgh EH9 3FD, Scotland
[3] Univ Cambridge, Dept Mat Sci & Met, Cambridge CB3 0FS, England
基金
英国工程与自然科学研究理事会; 欧洲研究理事会;
关键词
X-RAY-DIFFRACTION; EQUATION-OF-STATE; THERMODYNAMIC PROPERTIES; PHASE-TRANSITIONS; ALPHA-GAMMA; BETA-PHASE; N-2; GPA; TEMPERATURES; PRESSURES;
D O I
10.1103/PhysRevB.110.184107
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We construct a fast, transferable, general purpose, machine-learning interatomic potential suitable for largescale simulations of N-2. The potential is trained only on high quality quantum chemical molecule-molecule interactions; no condensed phase information is used. Although there are no explicit or implicit many-molecule interaction terms, the potential reproduces the experimental phase diagram including the melt curve and the molecular solid phases of nitrogen up to 10 GPa. This demonstrates that many-molecule interactions are unnecessary to explain the condensed phases of N-2. With increased pressure, transitions are observed from cubic (alpha), which optimizes quadrupole-quadrupole interactions, through tetragonal (gamma ), which allows more efficient packing, to monoclinic (lambda), which packs still more efficiently. On heating, we obtain the hcp three-dimensional (3D) rotor phase (beta) and, at pressure, the cubic delta phase which contains both 3D and 2D rotors, tetragonal delta* phase with 2D rotors, and the rhombohedral epsilon. Molecular dynamics demonstrates where these phases are indeed rotors, rather than frustrated order. The model supports the metastability of the complex iota phase, but not the reported existence of the wide range of bond lengths. The thermodynamic transitions involve both shifts of molecular centers and rotations of molecules: the onset of rotation is rapid, whereas motion of molecular centers is inhibited and we suggest that this is the cause of the experimentally observed sluggishness of transitions. Routine density functional theory calculations give a similar picture to the potential.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Machine-Learning Upscales Realistic Discrete Fracture Simulations
    Carpenter, Chris
    JPT, Journal of Petroleum Technology, 2021, 73 (11): : 65 - 66
  • [32] Layer-by-layer phase transformation in Ti3O5 revealed by machine-learning molecular dynamics simulations
    Liu, Mingfeng
    Wang, Jiantao
    Hu, Junwei
    Liu, Peitao
    Niu, Haiyang
    Yan, Xuexi
    Li, Jiangxu
    Yan, Haile
    Yang, Bo
    Sun, Yan
    Chen, Chunlin
    Kresse, Georg
    Zuo, Liang
    Chen, Xing-Qiu
    NATURE COMMUNICATIONS, 2024, 15 (01)
  • [33] The CAMELS Project: Cosmology and Astrophysics with Machine-learning Simulations
    Villaescusa-Navarro, Francisco
    Angles-Alcazar, Daniel
    Genel, Shy
    Spergel, David N.
    Somerville, Rachel S.
    Dave, Romeel
    Pillepich, Annalisa
    Hernquist, Lars
    Nelson, Dylan
    Torrey, Paul
    Narayanan, Desika
    Li, Yin
    Philcox, Oliver
    La Torre, Valentina
    Delgado, Ana Maria
    Ho, Shirley
    Hassan, Sultan
    Burkhart, Blakesley
    Wadekar, Digvijay
    Battaglia, Nicholas
    Contardo, Gabriella
    Bryan, Greg L.
    ASTROPHYSICAL JOURNAL, 2021, 915 (01):
  • [34] Molecular Dynamics Simulations of Molten Magnesium Chloride Using Machine-Learning-Based Deep Potential
    Liang, Wenshuo
    Lu, Guimin
    Yu, Jianguo
    ADVANCED THEORY AND SIMULATIONS, 2020, 3 (12)
  • [35] How machine learning can assist the interpretation of ab initio molecular dynamics simulations and conceptual understanding of chemistry
    Hase, Florian
    Galvan, Ignacio Fdez.
    Aspuru-Guzik, Alan
    Lindh, Roland
    Vacher, Morgane
    CHEMICAL SCIENCE, 2019, 10 (08) : 2298 - 2307
  • [36] Understanding protein dispensability through machine-learning analysis of high-throughput data
    Chen, Y
    Xu, D
    BIOINFORMATICS, 2005, 21 (05) : 575 - 581
  • [37] Insights into Water Permeation through hBN Nanocapillaries by Ab Initio Machine Learning Molecular Dynamics Simulations
    Ghorbanfekr, Hossein
    Behler, Joerg
    Peeters, Francois M.
    JOURNAL OF PHYSICAL CHEMISTRY LETTERS, 2020, 11 (17): : 7363 - 7370
  • [38] Molecular dynamics simulations of lanthanum chloride by deep learning potential
    Feng, Taixi
    Zhao, Jia
    Liang, Wenshuo
    Lu, Guimin
    COMPUTATIONAL MATERIALS SCIENCE, 2022, 210
  • [39] Accelerated Simulations of Molecular Systems through Learning of Effective Dynamics
    Vlachas, Pantelis R.
    Zavadlav, Julija
    Praprotnik, Matej
    Koumoutsakos, Petros
    JOURNAL OF CHEMICAL THEORY AND COMPUTATION, 2022, 18 (01) : 538 - 549
  • [40] Large-Scale Atomislic Simulations of Cleavage in BCC Fe using Machine-Learning Potential
    Suzudo T.
    Ebihara K.-I.
    Tsuru T.
    Mori H.
    Zairyo/Journal of the Society of Materials Science, Japan, 2024, 73 (02) : 129 - 135