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).
1Fily, et al. PRL (2012).
2Digregorio et al. PRL (2018).
3Kovács, et al. PRB (2014).
4Goh, et al. EPL (2008).
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Presenters
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Daniel Matoz Fernandez
Northwestern University
Authors
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Daniel Matoz Fernandez
Northwestern University
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Sean Patrick Edblom Dougherty
Northwestern University
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Brendan Blackwell
Northwestern University, Northwestern Univeristy
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Michelle R Driscoll
Northwestern University, Northwestern Univeristy
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Istvan Kovacs
Northwestern University
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Monica Olvera De La Cruz
Northwestern University, Materials Science and Engineering, Northwestern University