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Space and time cluster tomography of active systems

ORAL

Abstract

Bacteria swarming, cell migration and the collective motion animal groups are all examples of active matter. A paradigmatic system that captures the essence of activity is the Brownian particles (ABP) model, which considers self-propelled disks with excluded volume interactions1. ABP systems with no alignment exhibit an athermal clustering instability to a phase-separated regime. Several exciting properties such as large density fluctuations, structure factors and hexatic order parameters have been measured showing a clear contrast to equilibrium systems2. Yet, as we study active systems of increasing complexity, it becomes more and more challenging to a priori identify the right order parameters. As an alternative, here we propose to perform cluster tomography in space and time by measuring the spatial gap size distribution3 and inter-event time distribution4 within particle clusters. We show that such measures can reliably detect different regimes and characterise the transitions between them, even without system-specific order parameters, providing a versatile tool to study a broad range of active systems.

1Fily, et al. PRL (2012).
2Digregorio et al. PRL (2018).
3Kovács, et al. PRB (2014).
4Goh, et al. EPL (2008).

Presenters

  • Daniel Matoz Fernandez

    Northwestern University

Authors

  • Daniel Matoz Fernandez

    Northwestern University

  • Sean Patrick Edblom Dougherty

    Northwestern University

  • Brendan Blackwell

    Northwestern University, Northwestern Univeristy

  • Michelle R Driscoll

    Northwestern University, Northwestern Univeristy

  • Istvan Kovacs

    Northwestern University

  • Monica Olvera De La Cruz

    Northwestern University, Materials Science and Engineering, Northwestern University