Contents Online
Communications in Mathematical Sciences
Volume 17 (2019)
Number 4
The continuum limit of the Kuramoto model on sparse random graphs
Pages: 883 – 898
DOI: https://dx.doi.org/10.4310/CMS.2019.v17.n4.a1
Author
Abstract
In this paper, we study convergence of coupled dynamical systems on convergent sequences of graphs to a continuum limit. We show that the solutions of the initial value problem for the dynamical system on a convergent graph sequence tend to that for the nonlocal diffusion equation on a unit interval, as the graph size tends to infinity. We improve our earlier results in [Medvedev, “The nonlinear heat equation on $W$-random graphs”, Arch. Rational Mech. Anal., 212(3): 781–803] and extend them to a larger class of graphs, which includes directed and undirected, sparse and dense, random and deterministic graphs.
There are three main ingredients of our approach. First, we employ a flexible framework for incorporating random graphs into the models of interacting dynamical systems, which fits seamlessly with the derivation of the continuum limit. Next, we prove the averaging principle for approximating a dynamical system on a random graph by its deterministic (averaged) counterpart. The proof covers systems on sparse graphs and yields almost sure convergence on time intervals of order $\mathrm{log} \: n$, where $n$ is the number of vertices. Finally, we prove convergence of the averaged model to the continuum limit. The analysis of this paper covers the Kuramoto model of coupled phase oscillators on a variety of graphs including sparse Erdős–Rényi, small-world, and power law graphs.
Keywords
interacting dynamical systems, continuum limit, random graph, sparse graph, graph limit
2010 Mathematics Subject Classification
05C90, 34C15, 45J05, 45L05, 74A25, 92D25
This work was supported in part by the NSF grant DMS 1715161.
Received 22 June 2018
Accepted 3 November 2018
Published 25 October 2019