Spin-dependent graph neural network potential for magnetic materials

被引:12
作者
Yu, Hongyu [1 ,2 ,3 ]
Zhong, Yang [1 ,2 ,3 ]
Hong, Liangliang [1 ,2 ,3 ]
Xu, Changsong [1 ,2 ,3 ]
Ren, Wei [4 ,5 ]
Gong, Xingao [1 ,2 ,3 ]
Xiang, Hongjun [1 ,2 ,3 ]
机构
[1] Fudan Univ, Inst Computat Phys Sci, State Key Lab Surface Phys, Key Lab Computat Phys Sci,Minist Educ, Shanghai 200433, Peoples R China
[2] Fudan Univ, Dept Phys, Shanghai 200433, Peoples R China
[3] Shanghai Qi Zhi Inst, Shanghai 200030, Peoples R China
[4] Shanghai Univ, Int Ctr Quantum & Mol Struct, Dept Phys, Shanghai 200444, Peoples R China
[5] Shanghai Univ, Mat Genome Inst, Shanghai 200444, Peoples R China
基金
国家重点研发计划;
关键词
MULTIFERROIC BIFEO3; DYNAMICS; TRANSITIONS; GENERATION; CRYSTAL;
D O I
10.1103/PhysRevB.109.144426
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The development of machine-learning interatomic potentials has immensely contributed to the accuracy of simulations of molecules and crystals. However, creating interatomic potentials for magnetic systems that account for both magnetic moments and structural degrees of freedom remains a challenge. This work introduces SpinGNN, a spin-dependent interatomic potential approach that employs the graph neural network (GNN) to describe magnetic systems. SpinGNN consists of two types of edge GNNs: Heisenberg edge GNN (HEGNN) and spin-distance edge GNN (SEGNN). HEGNN is tailored to capture Heisenberg-type spin-lattice interactions, while SEGNN accurately models multibody and high-order spin-lattice coupling. The effectiveness of SpinGNN is demonstrated by its exceptional precision in fitting a high-order spin Hamiltonian and two complex spin-lattice Hamiltonians with great precision. Furthermore, it successfully models the subtle spin-lattice coupling in BiFeO3 and performs large-scale spin-lattice dynamics simulations, predicting its antiferromagnetic ground state, magnetic phase transition, and domain-wall energy landscape with high accuracy. Finally, we perform spin-lattice simulations over one million atoms across GPUs in parallel. Our study broadens the scope of graph neural network potentials to magnetic systems, serving as a foundation for carrying out large-scale spin-lattice dynamic simulations in first-principle accuracy on such systems.
引用
收藏
页数:12
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共 89 条
  • [1] Perspective: Materials informatics and big data: Realization of the "fourth paradigm" of science in materials science
    Agrawal, Ankit
    Choudhary, Alok
    [J]. APL MATERIALS, 2016, 4 (05):
  • [2] On representing chemical environments
    Bartok, Albert P.
    Kondor, Risi
    Csanyi, Gabor
    [J]. PHYSICAL REVIEW B, 2013, 87 (18)
  • [3] Gaussian Approximation Potentials: The Accuracy of Quantum Mechanics, without the Electrons
    Bartok, Albert P.
    Payne, Mike C.
    Kondor, Risi
    Csanyi, Gabor
    [J]. PHYSICAL REVIEW LETTERS, 2010, 104 (13)
  • [4] Batatia I, 2022, Arxiv, DOI arXiv:2206.07697
  • [5] E(3)-equivariant graph neural networks for data-efficient and accurate interatomic potentials
    Batzner, Simon
    Musaelian, Albert
    Sun, Lixin
    Geiger, Mario
    Mailoa, Jonathan P.
    Kornbluth, Mordechai
    Molinari, Nicola
    Smidt, Tess E.
    Kozinsky, Boris
    [J]. NATURE COMMUNICATIONS, 2022, 13 (01)
  • [6] Generalized neural-network representation of high-dimensional potential-energy surfaces
    Behler, Joerg
    Parrinello, Michele
    [J]. PHYSICAL REVIEW LETTERS, 2007, 98 (14)
  • [7] Atom-centered symmetry functions for constructing high-dimensional neural network potentials
    Behler, Joerg
    [J]. JOURNAL OF CHEMICAL PHYSICS, 2011, 134 (07)
  • [8] MAGNETIC AND STRUCTURAL-PROPERTIES OF BIFEO3
    BLAAUW, C
    VANDERWO.F
    [J]. JOURNAL OF PHYSICS C-SOLID STATE PHYSICS, 1973, 6 (08): : 1422 - 1431
  • [9] PROJECTOR AUGMENTED-WAVE METHOD
    BLOCHL, PE
    [J]. PHYSICAL REVIEW B, 1994, 50 (24): : 17953 - 17979
  • [10] Brandstetter J, 2021, arXiv