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Emergence of the London Millennium Bridge instability without synchronisation

Author

Listed:
  • Igor Belykh

    (Georgia State University
    Lobachevsky University)

  • Mateusz Bocian

    (Wrocław University of Science and Technology
    University of Leicester)

  • Alan R. Champneys

    (University of Bristol)

  • Kevin Daley

    (Georgia State University)

  • Russell Jeter

    (Georgia State University)

  • John H. G. Macdonald

    (University of Bristol)

  • Allan McRobie

    (University of Cambridge)

Abstract

The pedestrian-induced instability of the London Millennium Bridge is a widely used example of Kuramoto synchronisation. Yet, reviewing observational, experimental, and modelling evidence, we argue that increased coherence of pedestrians’ foot placement is a consequence of, not a cause of the instability. Instead, uncorrelated pedestrians produce positive feedback, through negative damping on average, that can initiate significant lateral bridge vibration over a wide range of natural frequencies. We present a simple general formula that quantifies this effect, and illustrate it through simulation of three mathematical models, including one with strong propensity for synchronisation. Despite subtle effects of gait strategies in determining precise instability thresholds, our results show that average negative damping is always the trigger. More broadly, we describe an alternative to Kuramoto theory for emergence of coherent oscillations in nature; collective contributions from incoherent agents need not cancel, but can provide positive feedback on average, leading to global limit-cycle motion.

Suggested Citation

  • Igor Belykh & Mateusz Bocian & Alan R. Champneys & Kevin Daley & Russell Jeter & John H. G. Macdonald & Allan McRobie, 2021. "Emergence of the London Millennium Bridge instability without synchronisation," Nature Communications, Nature, vol. 12(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:12:y:2021:i:1:d:10.1038_s41467-021-27568-y
    DOI: 10.1038/s41467-021-27568-y
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    References listed on IDEAS

    as
    1. Steven H. Strogatz & Daniel M. Abrams & Allan McRobie & Bruno Eckhardt & Edward Ott, 2005. "Crowd synchrony on the Millennium Bridge," Nature, Nature, vol. 438(7064), pages 43-44, November.
    2. Allan McRobie, 2011. "Business Cycles in the Phillips Machine," ASSRU Discussion Papers 1102, ASSRU - Algorithmic Social Science Research Unit.
    3. Jing Yan & Moses Bloom & Sung Chul Bae & Erik Luijten & Steve Granick, 2012. "Linking synchronization to self-assembly using magnetic Janus colloids," Nature, Nature, vol. 491(7425), pages 578-581, November.
    4. Yi Ma & Eric Wai Ming Lee & Meng Shi & Richard Kwok Kit Yuen, 2021. "Spontaneous synchronization of motion in pedestrian crowds of different densities," Nature Human Behaviour, Nature, vol. 5(4), pages 447-457, April.
    5. Liviu Aron & Bruce A. Yankner, 2016. "Neural synchronization in Alzheimer's disease," Nature, Nature, vol. 540(7632), pages 207-208, December.
    6. Steven H. Strogatz, 2001. "Exploring complex networks," Nature, Nature, vol. 410(6825), pages 268-276, March.
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