Detecting partial synchrony in a complex oscillatory network using pseudo-vortices
Yasuhiro Yamada, Kensuke Inaba

TL;DR
This paper introduces a novel, data-driven topological method to detect partial synchronization in complex oscillatory networks, using pseudo-vortices to identify chimera states from phase data.
Contribution
It proposes a robust, measurable-phase-based approach leveraging pseudo-vorticity to identify partial synchrony, applicable to neural and other oscillatory networks.
Findings
Successfully identified chimera states in FitzHugh-Nagumo neurons
Discriminated synchronized states with phase lags
Applicable to general oscillatory networks
Abstract
Partial synchronization is characteristic phase dynamics of coupled oscillators on various natural and artificial networks, which can remain undetected due to the complexity of the systems. With an analogy between pairwise asynchrony of oscillators and topological defects, i.e., vortices, in the two-dimensional XY spin model, we propose a robust and data-driven method to identify the partial synchronization on complex networks. The proposed method is based on an integer matrix whose element is pseudo-vorticity that discretely quantifies asynchronous phase dynamics in every two oscillators, which results in graphical and entropic representations of partial synchrony. As a first trial, we apply our method to 200 FitzHugh-Nagumo neurons on a complex small-world network. Partially synchronized chimera states are revealed by discriminating synchronized states even with phase lags. Such phase…
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation · Neural dynamics and brain function · Neural Networks and Reservoir Computing
