Using synchronism of chaos for adaptive learning of network topology
Francesco Sorrentino, Edward Ott

TL;DR
This paper introduces an adaptive method leveraging chaos synchronization to learn and track the evolving topology of dynamical networks, even with limited data and delays, demonstrated through sensor network examples.
Contribution
It presents a novel adaptive strategy utilizing chaos synchronization properties to identify time-varying network connections from limited information.
Findings
Effective topology identification from limited signals.
Enhanced scalability with a maestro node.
Successful application to sensor network scenarios.
Abstract
In this paper we consider networks of dynamical systems that evolve in synchrony and investigate how dynamical information from the synchronization dynamics can be effectively used to learn the network topology, i.e., identify the time evolution of the couplings between the network nodes. To this aim, we present an adaptive strategy that, based on a potential that the network systems seek to minimize in order to maintain synchronization, can be successfully applied to identify the time evolution of the network from limited information. This strategy takes advantage of the properties of synchronism of chaos and of the presence of different communication delays over the network links. As a motivating example we consider a network of sensors surveying an area, in which information regarding the time evolution of the network connections can be used, e.g., to detect changes taking place…
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