TL;DR
This paper demonstrates how adding cross-repulsive links in multiplex networks enhances their resilience against parameter perturbations, restoring and stabilizing synchrony even under large mismatches through analytical and numerical methods.
Contribution
The study extends previous recovery strategies to 2-layer multiplex networks, establishing systematic rules for cross-coupling and proving global stability of synchrony using Lyapunov functions.
Findings
Cross-coupling restores synchrony after perturbations.
Global stability of synchrony is achieved.
Effective in networks with FitzHugh-Nagumo neurons.
Abstract
A multiplex network of identical dynamical units becomes resilient against parameter perturbation by adding selective linear diffusive cross-coupling links. A parameter drift at any instant in one or multiple network nodes can destroy synchrony, causing failure and even collapse in the network performance. We introduced [PRE 95, 062204(2017)] a recovery strategy by selective addition of cross-coupling links to save synchrony in the network from the edge of failure due to parameter mismatch (small or large) in any nodes. This concept is extended to 2-layered multiplex networks when the emergent synchrony becomes resilient against a small or large parameter drifting. In addition, the stability of the synchronous state is enhanced from local stability to global stability of synchrony. By the addition of cross-coupling, the network revives complete synchrony in all the nodes except the…
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