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连续时间非线性系统的有限时间与固定时间学习控制

Finite- and Fixed-Time Learning Control for Continuous-Time Nonlinear Systems

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2024
被引 4
ABS 3

中文导读

提出一种有限时间和固定时间学习控制框架,同时实现参数估计与控制,通过直接动态分析方法证明系统状态收敛,并用数值仿真验证。

Abstract

Finite- and fixed-time parameter estimation and adaptive control have been extensively investigated in recent years. This study proposes a finite- and fixed-time learning control framework to achieve simultaneous finite/fixed-time parameter estimation and control. The proposed learning control method first estimates unknown parameters and then uses these estimates to improve the control performance. Therefore, we first consider the convergence condition of finite/fixed-time parameter estimation. Next, a novel learning-based finite/fixed control law is designed. Unlike most existing adaptation laws, the estimate is updated to improve the understanding of the system rather than eliminate the influence of uncertainties. The finite/fixed-time convergence of the system states is analyzed using a direct dynamic analysis method that differs from the long-used Lyapunov method. We show that the proposed control input satisfies the excitation condition of the finite/fixed-time estimation, indicating simultaneous estimation and control. Finally, numerical simulations are performed to verify the theoretical results.

非线性系统参数估计自适应控制学习控制