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Decentralized Circle Formation Control for Fish-like Robots in the Real-world via Reinforcement Learning

Authors :
Zhang, Tianhao
Li, Yueheng
Li, Shuai
Ye, Qiwei
Wang, Chen
Xie, Guangming
Zhang, Tianhao
Li, Yueheng
Li, Shuai
Ye, Qiwei
Wang, Chen
Xie, Guangming
Publication Year :
2021

Abstract

In this paper, the circle formation control problem is addressed for a group of cooperative underactuated fish-like robots involving unknown nonlinear dynamics and disturbances. Based on the reinforcement learning and cognitive consistency theory, we propose a decentralized controller without the knowledge of the dynamics of the fish-like robots. The proposed controller can be transferred from simulation to reality. It is only trained in our established simulation environment, and the trained controller can be deployed to real robots without any manual tuning. Simulation results confirm that the proposed model-free robust formation control method is scalable with respect to the group size of the robots and outperforms other representative RL algorithms. Several experiments in the real world verify the effectiveness of our RL-based approach for circle formation control.<br />Comment: to be published in ICRA2021

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1269534432
Document Type :
Electronic Resource