Control the Migration of Self-propelling Particles in Thermal Turbulence via Reinforcement Learning Algorithm

Ao Xu, Hua Lin Wu, Heng Dong Xi

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

Abstract

Planning energy-efficient trajectories can significantly benefit unmanned aerial vehicles (UAVs) by increasing their endurance. Inspired by birds that exploit warm rising atmospheric currents, flying vehicles can be controlled to utilize the updrafts to conserve energy. We adopt the reinforcement learning algorithm to train a self-propelling particle in a Rayleigh-Bénard (RB) convection cell with periodic vertical boundary conditions, where the large-scale circulation oscillates, and small-scale velocities fluctuate. The trained smart particle successfully learns to utilize the background flow structure to minimize energy consumption, enabling it to migrate with less energy consumption. Despite the complex flow structures that arise both in large-scale circulation and small-scale velocity fluctuations, an energy-efficient trajectory is identified by the particle through the strategy with the highest reward. This research has practical implications for UAVs patrolling in the convective layer of the atmosphere, where energy-efficient trajectories can enhance their endurance and cover a wider range.

Original languageEnglish
Title of host publicationIUTAM Bookseries
PublisherSpringer Science and Business Media B.V.
Pages313-325
Number of pages13
DOIs
StatePublished - 2024

Publication series

NameIUTAM Bookseries
Volume41
ISSN (Print)1875-3507
ISSN (Electronic)1875-3493

Keywords

  • particle migration
  • reinforcement learning
  • turbulent thermal convection

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