Learning how to find targets in the micro-world: the case of intermittent active Brownian particles

SOFT MATTER(2024)

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摘要
Finding the best strategy to minimize the time needed to find a given target is a crucial task both in nature and in reaching decisive technological advances. By considering learning agents able to switch their dynamics between standard and active Brownian motion, here we focus on developing effective target-search behavioral policies for microswimmers navigating a homogeneous environment and searching for targets of unknown position. We exploit projective simulation, a reinforcement learning algorithm, to acquire an efficient stochastic policy represented by the probability of switching the phase, i.e. the navigation mode, in response to the type and the duration of the current phase. Our findings reveal that the target-search efficiency increases with the particle's self-propulsion during the active phase and that, while the optimal duration of the passive case decreases monotonically with the activity, the optimal duration of the active phase displays a non-monotonic behavior. Microswimmers able to switch their dynamics between standard and active Brownian motion can learn how to optimize their odds of finding unknown targets by tuning the probability of switching from the active to the passive phase and vice versa.
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