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Adaptive Coverage Path Planning Policy for a Cleaning Robot with Deep Reinforcement Learning

DongKi Noh, Wooju Lee, Hyoung-Rock Kim, Il-Soo Cho, In‐Bo Shim, Seung-Min Baek

Year
2022
Citations
16

Abstract

This paper presents an adaptive policy for coverage path planning for a cleaning robot in 2D environments based on reinforcement learning. We applied an actor-critic model and a simulator to make a robot learn a path planning policy. In the view of consumer electronics, our objective function is designed to generate the minimum energy path. We used a real cleaning robot called R9 made by LG to evaluate our algorithm. Compared with a rule-based algorithm and other learning-based algorithms, our algorithm is probably more efficient in the view of energy saving.

Keywords

Reinforcement learningMotion planningComputer sciencePath (computing)RobotRobot learningQ-learningMobile robotEnergy (signal processing)Artificial intelligence

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