4.7 Article

A complex network framework for studying particle-laden flows

Journal

PHYSICS OF FLUIDS
Volume 34, Issue 7, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0098917

Keywords

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Funding

  1. J. C. Bose fellowship [JCB/2018/000034/SSC]
  2. Science and Engineering Research Board (SERB) of the Department of Science and Technology (DST), Government of India

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This study introduces a method of analyzing the dynamics of particle-laden flows using complex networks from a Lagrangian perspective. By utilizing this approach, local and global clustering characteristics of particles can be obtained simultaneously, providing insight into the dynamics of particle clustering in flow fields.
Studying particle-laden flows is essential for understanding diverse physical processes such as rain formation in clouds, pathogen transmission, and pollutant dispersal. This work introduces a framework of complex networks to analyze the particle dynamics through a Lagrangian perspective. To illustrate this method, we study the clustering of inertial particles (small heavy particles) in Taylor-Green flow, where the dynamics depend on the particle Stokes number (St). Using complex networks, we can obtain the instantaneous local and global clustering characteristics simultaneously. Furthermore, from the complex networks derived from the particle locations, we observe an emergence of a giant component through a continuous phase transition as particles cluster in the flow field, thus providing novel insight into the spatiotemporal dynamics of particles such as the rate of clustering. Finally, we believe that complex networks have a great potential for analyzing the spatiotemporal dynamics of particle-laden flows. Published under an exclusive license by AIP Publishing.

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