Learning to school in the presence of hydro dynamic interactions
Authored by M Gazzola, A A Tchieu, D Alexeev, Brauer A de, P Koumoutsakos
Date Published: 2016
DOI: 10.1017/jfm.2015.686
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Mathematical description
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Abstract
Schooling, an archetype of collective behaviour, emerges from the
interactions of fish responding to sensory information mediated by their
aqueous environment. A fundamental and largely unexplored question in
fish schooling concerns the role of hydrodynamics. Here, we investigate
this question by modelling swimmers as vortex dipoles whose interactions
are governed by the Biot-Savart law. When we enhance these dipoles with
behavioural rules from classical agent-based models, we find that they
do not lead robustly to schooling because of flow-mediated interactions.
We therefore propose to use swimmers equipped with adaptive
decision-making that adjust their gaits through a reinforcement learning
algorithm in response to nonlinearly varying hydrodynamic loads. We
demonstrate that these swimmers can maintain their relative position
within a formation by adapting their strength and school in a variety of
prescribed geometrical arrangements. Furthermore, we identify schooling
patterns that minimize the individual and collective swimming effort, through an evolutionary optimization. The present work suggests that the
adaptive response of individual swimmers to flow-mediated interactions
is critical in fish schooling.
Tags
Simulations
Emergent properties
Model
microorganisms
Animal groups
System
Fish schools
Intermediate reynolds-numbers
3-dimensional structure
Swimmers