SpinMultiNet: Neural Network Potential Incorporating Spin Degrees of Freedom with Multi-Task Learning
Neural Network Potentials (NNPs) have attracted significant attention as a method for accelerating density functional theory (DFT) calculations. However, conventional NNP models typically do not incorporate spin degrees of freedom, limiting their applicability to systems where spin states critically...
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Zusammenfassung: | Neural Network Potentials (NNPs) have attracted significant attention as a
method for accelerating density functional theory (DFT) calculations. However,
conventional NNP models typically do not incorporate spin degrees of freedom,
limiting their applicability to systems where spin states critically influence
material properties, such as transition metal oxides. This study introduces
SpinMultiNet, a novel NNP model that integrates spin degrees of freedom through
multi-task learning. SpinMultiNet achieves accurate predictions without relying
on correct spin values obtained from DFT calculations. Instead, it utilizes
initial spin estimates as input and leverages multi-task learning to optimize
the spin latent representation while maintaining both $E(3)$ and time-reversal
equivariance. Validation on a dataset of transition metal oxides demonstrates
the high predictive accuracy of SpinMultiNet. The model successfully reproduces
the energy ordering of stable spin configurations originating from
superexchange interactions and accurately captures the rhombohedral distortion
of the rocksalt structure. These results pave the way for new possibilities in
materials simulations that consider spin degrees of freedom, promising future
applications in large-scale simulations of various material systems, including
magnetic materials. |
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DOI: | 10.48550/arxiv.2409.03253 |