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Main Authors: Plasczyk, Tobias, Monderkamp, Paul A., Löwen, Hartmut, Wittmann, René
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.02515
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author Plasczyk, Tobias
Monderkamp, Paul A.
Löwen, Hartmut
Wittmann, René
author_facet Plasczyk, Tobias
Monderkamp, Paul A.
Löwen, Hartmut
Wittmann, René
contents Intelligent decisions in response to external informative input can allow organisms to achieve their biological goals while spending very little of their own resources. In this paper, we develop and study a minimal model for a navigational task, performed by an otherwise completely motorless particle that possesses the ability of \textit{hitchhiking} in a bath of active Brownian particles (ABPs). Hitchhiking refers to identifying and attaching to suitable surrounding bath particles. Using a reinforcement learning algorithm, such an agent, which we refer to as intelligent hitchhiking particle (IHP), is enabled to persistently navigate in the desired direction. This relatively simple IHP can also anticipate and react to characteristic motion patterns of their hosts, which we exemplify for a bath of chiral ABPs (cABPs). To demonstrate that the persistent motion of the IHP will outperform that of the bath particles in view of long-time ballistic motion, we calculate the mean-squared displacement and discuss its dependence on the density and persistence time of the bath ABPs by means of an analytic model.
format Preprint
id arxiv_https___arxiv_org_abs_2410_02515
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Hitchhiker's Guide To Active Motion
Plasczyk, Tobias
Monderkamp, Paul A.
Löwen, Hartmut
Wittmann, René
Soft Condensed Matter
Intelligent decisions in response to external informative input can allow organisms to achieve their biological goals while spending very little of their own resources. In this paper, we develop and study a minimal model for a navigational task, performed by an otherwise completely motorless particle that possesses the ability of \textit{hitchhiking} in a bath of active Brownian particles (ABPs). Hitchhiking refers to identifying and attaching to suitable surrounding bath particles. Using a reinforcement learning algorithm, such an agent, which we refer to as intelligent hitchhiking particle (IHP), is enabled to persistently navigate in the desired direction. This relatively simple IHP can also anticipate and react to characteristic motion patterns of their hosts, which we exemplify for a bath of chiral ABPs (cABPs). To demonstrate that the persistent motion of the IHP will outperform that of the bath particles in view of long-time ballistic motion, we calculate the mean-squared displacement and discuss its dependence on the density and persistence time of the bath ABPs by means of an analytic model.
title A Hitchhiker's Guide To Active Motion
topic Soft Condensed Matter
url https://arxiv.org/abs/2410.02515