Sliding Mode Iterative Learning Control With Iteration-Dependent Parameter Learning Mechanism for Nonlinear Systems and Its Application

IEEE TRANSACTIONS ON AUTOMATION SCIENCE AND ENGINEERING(2023)

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摘要
In this study, the data-driven sliding-mode iterative learning tracking control problem of a piezoelectric-actuated micro-positioning (PAMP) stage is investigated. To improve the convergence performance of the data-driven sliding mode iterative learning control (DDSILC) method, a novel iteration-dependent parameter learning mechanism is proposed. Subsequently, an enhanced DDSILC (E-DDSILC) scheme is constructed. The novel parameter-learning mechanism is designed such that the tracking error in time-varying systems can converge to zero in the time domain at the final iteration, and to significantly improve the transient performance of the system. Additionally, the effect of control parameters on the convergence performance is analyzed, which enables the parameters to be adjusted reasonably and efficiently. Several comparison experiments are conducted on the PAMP stage to verify the effectiveness of the proposed control approach .
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关键词
Iterative learning control,data driven,piezoelectric actuated micro-positioning stage,parameter learning mechanism
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