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Learning to Recharge: UAV Coverage Path Planning through Deep Reinforcement Learning (2309.03157v2)

Published 6 Sep 2023 in cs.RO and cs.LG

Abstract: Coverage path planning (CPP) is a critical problem in robotics, where the goal is to find an efficient path that covers every point in an area of interest. This work addresses the power-constrained CPP problem with recharge for battery-limited unmanned aerial vehicles (UAVs). In this problem, a notable challenge emerges from integrating recharge journeys into the overall coverage strategy, highlighting the intricate task of making strategic, long-term decisions. We propose a novel proximal policy optimization (PPO)-based deep reinforcement learning (DRL) approach with map-based observations, utilizing action masking and discount factor scheduling to optimize coverage trajectories over the entire mission horizon. We further provide the agent with a position history to handle emergent state loops caused by the recharge capability. Our approach outperforms a baseline heuristic, generalizes to different target zones and maps, with limited generalization to unseen maps. We offer valuable insights into DRL algorithm design for long-horizon problems and provide a publicly available software framework for the CPP problem.

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Authors (4)
  1. Mirco Theile (15 papers)
  2. Harald Bayerlein (8 papers)
  3. Marco Caccamo (49 papers)
  4. Alberto L. Sangiovanni-Vincentelli (15 papers)
Citations (4)