Intermittent Synchronization in finite-state random networks under Markov Perturbations
Arno Berger, Hong Qian, Shirou Wang, Yingfei Yi

TL;DR
This paper investigates how extrinsic noise and intrinsic uncertainties cause intermittent synchronization in finite-state Markov random networks, providing a detailed mathematical analysis of the phenomenon.
Contribution
It introduces a novel analysis of intermittent synchronization in Markov networks under combined extrinsic and intrinsic randomness, with explicit asymptotic expansions and invariant distribution characterizations.
Findings
High-probability synchronization occurs after a certain time.
Intermittent desynchronization and synchronization are characterized mathematically.
Invariant distributions converge as perturbation vanishes.
Abstract
By introducing extrinsic noise as well as intrinsic uncertainty into a network with stochastic events, this paper studies the dynamics of the resulting Markov random network and characterizes a novel phenomenon of intermittent synchronization and desynchronization that is due to an interplay of the two forms of randomness in the system. On a finite state space and in discrete time, the network allows for unperturbed (or "deterministic") randomness that represents the extrinsic noise but also for small intrinsic uncertainties modelled by a Markov perturbation. It is shown that if the deterministic random network is synchronized (resp., uniformly synchronized), then for almost all realizations of its extrinsic noise the stochastic trajectories of the perturbed network synchronize along almost all (resp., along all) time sequences after a certain time, with high probability. That is, both…
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