Fast general two- and three-body interatomic potential

被引:4
作者
Pozdnyakov, Sergey [1 ]
Oganov, Artem R. [1 ]
Mazhnik, Efim [1 ]
Mazitov, Arslan [2 ,3 ]
Kruglov, Ivan [2 ,3 ]
机构
[1] Skolkovo Inst Sci & Technol, Bolshoy Blvd 30,bldg 1, Moscow 121205, Russia
[2] Dukhov Res Inst Automatics VNIIA, Moscow 127055, Russia
[3] Moscow Inst Phys & Technol, 9 Inst lane, Dolgoprudnyi 141700, Russia
基金
俄罗斯科学基金会;
关键词
TOTAL-ENERGY CALCULATIONS; EMBEDDED-ATOM METHOD; CRYSTAL; FIELDS;
D O I
10.1103/PhysRevB.107.125160
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We introduce a new class of machine learning interatomic potentials-fast general two-and three-body potential (GTTP), which is as fast as conventional empirical potentials and require computational time that remains constant with increasing fitting flexibility. GTTP does not contain any assumptions about the functional form of two-and three-body interactions. These interactions can be modeled arbitrarily accurately, potentially by thousands of parameters not affecting resulting computational cost. Time complexity is O(1) per every considered pair or triple of atoms. The fitting procedure is reduced to simple linear regression on ab initio calculated energies and forces and leads to effective two-and three-body potential, reproducing quantum many-body interactions as accurately as possible. Our potential can be made continuously differentiable any number of times at the expense of increased computational time. We made a number of performance tests on one-, two-and three-component systems. The flexibility of the introduced approach makes the potential transferable in terms of size and type of atomic systems as long as they involve the same atomic species. We show that trained on randomly generated structures with just eight atoms in the unit cell, it significantly outperforms common empirical interatomic potentials in the study of large systems, such as grain boundaries in polycrystalline materials.
引用
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页数:16
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