Graphop mean-field limits and synchronization for the stochastic Kuramoto model

Marios Antonios Gkogkas, Benjamin Jüttner, Christian Kuehn, Erik Andreas Martens

Research output: Contribution to journalArticlepeer-review

Abstract

Models of coupled oscillator networks play an important role in describing collective synchronization dynamics in biological and technological systems. The Kuramoto model describes oscillator's phase evolution and explains the transition from incoherent to coherent oscillations under simplifying assumptions, including all-to-all coupling with uniform strength. Real world networks, however, often display heterogeneous connectivity and coupling weights that influence the critical threshold for this transition. We formulate a general mean-field theory (Vlasov-Focker Planck equation) for stochastic Kuramoto-type phase oscillator models, valid for coupling graphs/networks with heterogeneous connectivity and coupling strengths, using graphop theory in the mean-field limit. Considering symmetric odd-valued coupling functions, we mathematically prove an exact formula for the critical threshold for the incoherence-coherence transition. We numerically test the predicted threshold using large finite-size representations of the network model. For a large class of graph models, we find that the numerical tests agree very well with the predicted threshold obtained from mean-field theory. However, the prediction is more difficult in practice for graph structures that are sufficiently sparse. Our findings open future research avenues toward a deeper understanding of mean-field theories for heterogeneous systems.

Original languageEnglish
Article number113120
JournalChaos
Volume32
Issue number11
DOIs
Publication statusPublished - 2022 Nov 1

Bibliographical note

Funding Information:
M.A.G. and C.K. gratefully thank the TUM International Graduate School of Science and Engineering (IGSSE) for support via the project “Synchronization in Co-Evolutionary Network Dynamics (SEND).” B.J. and E.A.M. acknowledge the DTU International Graduate School for support via the EU-COFUND project “Synchronization in Co-Evolutionary Network Dynamics (SEND).” C.K. also acknowledges partial support by a Lichtenberg Professorship funded by the Volkswagen Stiftung.

Publisher Copyright:
© 2022 Author(s).

Subject classification (UKÄ)

  • Mathematical Sciences

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