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arxiv: 1803.06682 · v2 · pith:PAAXLEJVnew · submitted 2018-03-18 · ❄️ cond-mat.str-el · cond-mat.dis-nn

Supervised learning magnetic skyrmion phases

classification ❄️ cond-mat.str-el cond-mat.dis-nn
keywords magneticapplyapproachclassificationconfigurationslearningmicroscopynetwork
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We propose and apply simple machine learning approaches for recognition and classification of complex non-collinear magnetic structures in two-dimensional materials. The first approach is based on the implementation of the single-hidden-layer neural network that only relies on the z projections of the spins. In this setup one needs a limited set of magnetic configurations to distinguish ferromag- netic, skyrmion and spin spiral phases, as well as their different combinations in transitional areas of the phase diagram. The network trained on the configurations for square-lattice Heisenberg model with Dzyaloshinskii-Moriya interaction can classify the magnetic structures obtained from Monte Carlo calculations for triangular lattice and vice versa. The second approach we apply, a minimum distance method performs a fast and cheap classification in cases when a particular configuration is to be assigned to only one magnetic phase. The methods we propose are also easy to use for analysis of the numerous experimental data collected with spin-polarized scanning tunneling microscopy and Lorentz transmission electron microscopy experiments.

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