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Optimal navigation of microswimmers in complex and noisy environments

Lorenzo Piro, Benoît Mahault, Ramin Golestanian

2022New Journal of Physics20 citationsDOIOpen Access PDF

Abstract

Abstract We design new navigation strategies for travel time optimization of microscopic self-propelled particles in complex and noisy environments. In contrast to strategies relying on the results of optimal control theory or machine learning approaches, implementation of these protocols can be done in a semi-autonomous fashion, as it does not require control over the microswimmer motion via external feedback loops. Although the strategies we propose rely on simple principles, they show arrival time statistics strikingly close to optimality, as well as performances that are robust to environmental changes and strong fluctuations. These features, as well as their applicability to more general optimization problems, make these strategies promising candidates for the realization of optimized semi-autonomous navigation.

Topics & Concepts

PhysicsAerospace engineeringStatistical physicsClassical mechanicsEngineeringMicro and Nano RoboticsDistributed Control Multi-Agent SystemsModular Robots and Swarm Intelligence
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