Steering 'microswimmers' through choppy waters

(Nanowerk News) New research looks at navigation strategies for deformable microswimmers in a viscous fluid faced with drifts, strains, and other deformations.
A deformable microswimmer is a small-scale organism or artificial structure that uses sinusoidal body undulations to propel itself through a fluid environment.
The term applies to organisms like bacteria which navigate through fluids using whip-like tails called flagella, sperm cells propelling themselves through the female reproductive system, and even nematodes, tiny worms that move through water or soil with undulations. Microswimmers can also describe tiny microrobots constructed from soft-materials designed to respond to stimuli and perform tasks like drug delivery on a micro-scale.
That means the study of microswimmers has applications in a vast array of scientific fields, from biology to fundamental physics to nanorobotics.
A diagram of microswimmers immersed in a non-steady flow following five possible navigation strategies
A diagram of microswimmers immersed in a non-steady flow following five possible navigation strategies.(Image: J. Bec)
In a new paper in EPJ D ("Steering undulatory micro-swimmers in a fluid flow through reinforcement learning") by Jérémie Bec, a researcher at CNRS and Centre Inria d’Université Côte d’Azur and his colleagues attempt to find an optimal navigation policy for microswimmers, crucial for enhancing their performance, functionality, and versatility for applications such as targeted drug delivery.
“Finding an optimal navigation policy for microswimmers is crucial for enhancing their performance, functionality, and versatility in the mentioned applications,” Bec says. “By determining an optimal navigation policy, microswimmers can effectively adapt and respond to changes in the fluid environment. This enables them to navigate through obstacles, avoid hazards, and exploit flow patterns for improved locomotion.
“An optimal navigation policy ensures their ability to manoeuver and explore their surroundings efficiently,” Bec adds.
The researcher explains that further to this, an optimal navigation policy guarantees robust performance across different conditions and variations as they undulate through a fluid environment.
Bec says that the team was particularly intrigued by the notable level of variability in the performance of the machine-learning strategies they employed. The unexpected variability in performance granted the team valuable insights and allowed them to identify optimal strategies that surpassed their initial expectations.
“We gained a deeper understanding of the complex dynamics involved in optimising navigation policies for microswimmers,” Bec concludes. “These findings underscore the importance of exploring beyond conventional expectations and embracing the potential for variability and unpredictability in artificial intelligence.”
Source: Tokyo Tech (Note: Content may be edited for style and length)
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