Recovery time after localized perturbations in complex dynamical networks

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Date
2017
Volume
19
Issue
10
Journal
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Publisher
Bristol : Institute of Physics Publishing
Abstract

Maintaining the synchronous motion of dynamical systems interacting on complex networks is often critical to their functionality. However, real-world networked dynamical systems operating synchronously are prone to random perturbations driving the system to arbitrary states within the corresponding basin of attraction, thereby leading to epochs of desynchronized dynamics with a priori unknown durations. Thus, it is highly relevant to have an estimate of the duration of such transient phases before the system returns to synchrony, following a random perturbation to the dynamical state of any particular node of the network. We address this issue here by proposing the framework of single-node recovery time (SNRT) which provides an estimate of the relative time scales underlying the transient dynamics of the nodes of a network during its restoration to synchrony. We utilize this in differentiating the particularly slow nodes of the network from the relatively fast nodes, thus identifying the critical nodes which when perturbed lead to significantly enlarged recovery time of the system before resuming synchronized operation. Further, we reveal explicit relationships between the SNRT values of a network, and its global relaxation time when starting all the nodes from random initial conditions. Earlier work on relaxation time generally focused on investigating its dependence on macroscopic topological properties of the respective network. However, we employ the proposed concept for deducing microscopic relationships between topological features of nodes and their respective SNRT values. The framework of SNRT is further extended to a measure of resilience of the different nodes of a networked dynamical system. We demonstrate the potential of SNRT in networks of Rössler oscillators on paradigmatic topologies and a model of the power grid of the United Kingdom with second-order Kuramoto-type nodal dynamics illustrating the conceivable practical applicability of the proposed concept.

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Keywords
complex systems, dynamical timescales, networked dynamical systems, nonlinear dynamics, synchronization, transient stability against shocks, Complex networks, Computer system recovery, Dynamics, Electric power transmission networks, Large scale systems, Random processes, Recovery, Relaxation oscillators, Relaxation time, Synchronization, Topology, Complex dynamical networks, Localized perturbation, Networked dynamical systems, Random initial conditions, Random perturbations, Time-scales, Topological features, Topological properties, Dynamical systems
Citation
Mitra, C., Kittel, T., Choudhary, A., Kurths, J., & Donner, R. V. (2017). Recovery time after localized perturbations in complex dynamical networks. 19(10). https://doi.org//10.1088/1367-2630/aa7fab
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CC BY 3.0 Unported