Intelligent Wheelchairs Rolling in Pairs Using Reinforcement Learning

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Abstract

Intelligent wheelchairs aim to improve mobility limitations by providing ingenious mechanisms to control and move the chair. This paper aims to enhance the autonomy level of intelligent wheelchair navigation by applying reinforcement learning algorithms to move the chair to the desired location. Also, as a second objective, add one more chair and move both chairs in pairs to promote group social activities. The experimental setup is based on a simulated environment using gazebo and ROS where a leader chair moves towards a goal, and the follower chair should navigate near the leader chair. The collected metrics (time to complete the task and the trajectories of the chairs) demonstrated that Deep Q-Network (DQN) achieved better results than the Q-Learning algorithm by being the unique algorithm to accomplish the pair navigation behaviour between two chairs.

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Rodrigues, N., Sousa, A., Reis, L. P., & Coelho, A. (2023). Intelligent Wheelchairs Rolling in Pairs Using Reinforcement Learning. In Lecture Notes in Networks and Systems (Vol. 590 LNNS, pp. 274–285). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-031-21062-4_23

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