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Optimized adaptive consensus control for multi-agent systems with prescribed performance

Yan, Lei; Liu, Zhi*; Chen, C. L. Philip; Zhang, Yun; Wu, Zongze
Science Citation Index Expanded
广东工业大学; 南阳理工学院

摘要

This article focuses on the optimized adaptive leader-follower consensus control problem for high-order nonlinear multi-agent systems (MASs) with prescribed performance and system uncertainties. A finite-time scaling function is introduced to prescribe not only steady-state accuracy but also settling time, which circumvents the initial condition dependence. By integrating integral reinforcement learning (IRL) and experience replay (ER) into backstepping design procedures, an optimized adaptive control scheme is devel-oped. With the scheme, no system dynamic identifier is involved, and the persistence exci-tation requirements are checked by a simplified condition. It is proved that all the signals of the closed-loop system are bounded, and consensus error evolves with user-prescribed behavior. Finally, the effectiveness of the proposed scheme is validated by simulation results.

关键词

Optimized consensus control Multi-agent systems Prescribed performance Integral reinforcement learning Experience replay