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Reinforcement-Learning-Based Fixed-Time Optimal Formation Control for Multiple Mobile Robots With Prescribed Performance

Qing Guo, Chen Wang, Jianhui Wang, Tieshan Li

Year
2025
Citations
9

Abstract

This study investigates reinforcement-learning-based fixed-time optimal formation control for multiple nonholonomic mobile robots with prescribed performance constraints. First, the constrained formation error dynamics is established using a leader-follower approach. Meanwhile, a barrier function is employed to transform the constrained formation error dynamics into an unconstrained form. Then, an adaptive control technique and a critic-only reinforcement learning strategy are utilized to design a fixed-time optimal control law for the unconstrained error dynamics. Rigorous theoretical derivations demonstrate that the proposed control law guarantees that the constrained formation error converges to near zero within a fixed time, optimizing the performance index while satisfying the prescribed performance requirement. Finally, the feasibility of the proposed method is verified through simulations and experiments.

Keywords

Reinforcement learningComputer scienceMobile robotControl (management)RobotArtificial intelligence

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