Characterizing Skyrmion Flow Phases with Principal Component Analysis
C.J.O. Reichhardt, D. McDermott, and C. Reichhardt

TL;DR
This paper uses principal component analysis to identify and characterize various disordered skyrmion flow phases, revealing new flow regimes and linking microscopic dynamics to bulk transport properties.
Contribution
It demonstrates that PCA applied to position and velocity data can resolve multiple skyrmion flow phases and detect new disordered states influenced by the Magnus force.
Findings
PCA identifies known and new skyrmion flow phases.
Disordered phases correlate with transport measurements.
Magnus force extends the range of observable flow behaviors.
Abstract
Principal component analysis (PCA) is a powerful method that can identify patterns in large, complex data sets by constructing low-dimensional order parameters from higher-dimensional feature vectors. There are increasing efforts to use space-and-time-dependent PCA to detect transitions in nonequilibrium systems that are difficult to characterize with equilibrium methods. Here, we demonstrate that feature vectors incorporating the position and velocity information of driven skyrmions moving through random disorder permit PCA to resolve different types of disordered skyrmion motion as a function of driving force and the ratio of the Magnus force to the dissipation. Since the Magnus force creates gyroscopic motion and a finite Hall angle, skyrmions can exhibit a greater range of flow phases than what is observed in overdamped driven systems with quenched disorder. We show that in addition…
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Taxonomy
TopicsTheoretical and Computational Physics · Quantum many-body systems · Block Copolymer Self-Assembly
