Can flocking aid the path planning of microswimmers in turbulent flows?
We show that flocking of microswimmers in a turbulent flow can enhance the efficacy of reinforcement-learning-based path-planning of microswimmers in turbulent flows. In particular, we develop a machine-learning strategy that incorporates Vicsek-model-type flocking in microswimmer assemblies in a st...
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Zusammenfassung: | We show that flocking of microswimmers in a turbulent flow can enhance the
efficacy of reinforcement-learning-based path-planning of microswimmers in
turbulent flows. In particular, we develop a machine-learning strategy that
incorporates Vicsek-model-type flocking in microswimmer assemblies in a
statistically homogeneous and isotropic turbulent flow in two dimensions (2D).
We build on the adversarial-reinforcement-learning of
Ref.~\cite{alageshan2020machine} for non-interacting microswimmers in turbulent
flows. Such microswimmers aim to move optimally from an initial position to a
target. We demonstrate that our flocking-aided version of the
adversarial-reinforcement-learning strategy of Ref.~\cite{alageshan2020machine}
can be superior to earlier microswimmer path-planning strategies. |
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DOI: | 10.48550/arxiv.2411.15902 |