A Lagrangian model of copepod dynamics: Clustering by escape jumps in turbulence
Hamidreza Ardeshiri, Ibtissem Benkeddad, Fran\c{c}ois G. Schmitt, Sami, Souissi, Federico Toschi, Enrico Calzavarini

TL;DR
This study combines experiments and simulations to model copepod escape jumps in turbulence, revealing how their behavior influences small-scale clustering and potential ecological interactions.
Contribution
It introduces a Lagrangian copepod model calibrated with experimental data, demonstrating the impact of jumping behavior on clustering in turbulent flows.
Findings
Copepod clustering varies with shear-rate sensitivity.
Fractal dimension of clustering can be as low as 2.3.
Jump behavior significantly affects spatial distribution.
Abstract
Planktonic copepods are small crustaceans that have the ability to swim by quick powerful jumps. Such an aptness is used to escape from high shear regions, which may be caused either by flow per- turbations, produced by a large predator (i.e., fish larvae), or by the inherent highly turbulent dynamics of the ocean. Through a combined experimental and numerical study, we investigate the impact of jumping behaviour on the small-scale patchiness of copepods in a turbulent environment. Recorded velocity tracks of copepods displaying escape response jumps in still water are here used to define and tune a Lagrangian Copepod (LC) model. The model is further employed to simulate the behaviour of thousands of copepods in a fully developed hydrodynamic turbulent flow obtained by direct numerical simulation of the Navier-Stokes equations. First, we show that the LC velocity statistics is in…
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