Learning to swim efficiently in a nonuniform flow field
December 22, 2022 Β· Declared Dead Β· π Physical Review E
"No code URL or promise found in abstract"
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Authors
Krongtum Sankaewtong, John J. Molina, Matthew S. Turner, Ryoichi Yamamoto
arXiv ID
2212.11482
Category
physics.flu-dyn
Cross-listed
cond-mat.soft,
cs.LG
Citations
4
Venue
Physical Review E
Last Checked
3 months ago
Abstract
Microswimmers can acquire information on the surrounding fluid by sensing mechanical queues. They can then navigate in response to these signals. We analyse this navigation by combining deep reinforcement learning with direct numerical simulations to resolve the hydrodynamics. We study how local and non-local information can be used to train a swimmer to achieve particular swimming tasks in a non-uniform flow field, in particular a zig-zag shear flow. The swimming tasks are (1) learning how to swim in the vorticity direction, (2) the shear-gradient direction, and (3) the shear flow direction. We find that access to lab frame information on the swimmer's instantaneous orientation is all that is required in order to reach the optimal policy for (1,2). However, information on both the translational and rotational velocities seem to be required to achieve (3). Inspired by biological microorganisms we also consider the case where the swimmers sense local information, i.e. surface hydrodynamic forces, together with a signal direction. This might correspond to gravity or, for micro-organisms with light sensors, a light source. In this case, we show that the swimmer can reach a comparable level of performance as a swimmer with access to lab frame variables. We also analyse the role of different swimming modes, i.e. pusher, puller, and neutral swimmers.
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