Thermally Averaged Magnetic Anisotropy Tensors via Machine Learning Based on Gaussian Moments
Abstract
A machine learning method using Gaussian-moment neural networks accurately models molecular magnetic anisotropy tensors and interatomic potential energies, offering insights into spin-phonon relaxation.
We propose a machine learning method to model molecular tensorial quantities, namely the magnetic anisotropy tensor, based on the Gaussian-moment neural-network approach. We demonstrate that the proposed methodology can achieve an accuracy of 0.3--0.4 cm^{-1} and has excellent generalization capability for out-of-sample configurations. Moreover, in combination with machine-learned interatomic potential energies based on Gaussian moments, our approach can be applied to study the dynamic behavior of magnetic anisotropy tensors and provide a unique insight into spin-phonon relaxation.
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