A Versatile Door Opening System with Mobile Manipulator through Adaptive Position-Force Control and Reinforcement Learning
Gyuree Kang, Hyunki Seong, Daegyu Lee, D.Hyunchul Shim

TL;DR
This paper presents a versatile mobile manipulator system capable of autonomously opening various doors using adaptive position-force control and deep reinforcement learning, enhancing adaptability, safety, and efficiency in indoor environments.
Contribution
It introduces a combined approach using neural networks, force sensing, and reinforcement learning to enable robots to open diverse doors without prior knowledge.
Findings
RL approach reduces maximum force by 3.27 times
RL improves motion smoothness by 1.82 times
Adaptive control handles a wider range of door types
Abstract
The ability of robots to navigate through doors is crucial for their effective operation in indoor environments. Consequently, extensive research has been conducted to develop robots capable of opening specific doors. However, the diverse combinations of door handles and opening directions necessitate a more versatile door opening system for robots to successfully operate in real-world environments. In this paper, we propose a mobile manipulator system that can autonomously open various doors without prior knowledge. By using convolutional neural networks, point cloud extraction techniques, and external force measurements during exploratory motion, we obtained information regarding handle types, poses, and door characteristics. Through two different approaches, adaptive position-force control and deep reinforcement learning, we successfully opened doors without precise trajectory or…
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Taxonomy
TopicsTeleoperation and Haptic Systems · Prosthetics and Rehabilitation Robotics · Tactile and Sensory Interactions
