Equivariant Neural Network Force Fields for Magnetic Materials
Neural network force fields have significantly advanced ab initio atomistic simulations across diverse fields. However, their application in the realm of magnetic materials is still in its early stage due to challenges posed by the subtle magnetic energy landscape and the difficulty of obtaining tra...
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Zusammenfassung: | Neural network force fields have significantly advanced ab initio atomistic
simulations across diverse fields. However, their application in the realm of
magnetic materials is still in its early stage due to challenges posed by the
subtle magnetic energy landscape and the difficulty of obtaining training data.
Here we introduce a data-efficient neural network architecture to represent
density functional theory total energy, atomic forces, and magnetic forces as
functions of atomic and magnetic structures. Our approach incorporates the
principle of equivariance under the three-dimensional Euclidean group into the
neural network model. Through systematic experiments on various systems,
including monolayer magnets, curved nanotube magnets, and moir\'e-twisted
bilayer magnets of $\text{CrI}_{3}$, we showcase the method's high efficiency
and accuracy, as well as exceptional generalization ability. The work creates
opportunities for exploring magnetic phenomena in large-scale materials
systems. |
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DOI: | 10.48550/arxiv.2402.04864 |