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Iterative Learning Control With Data-Driven-Based Compensation

Shaoying He, Wenbo Chen, Dewei Li, Yugeng Xi, Yunwen Xu, Pengyuan Zheng

2021IEEE Transactions on Cybernetics40 citationsDOI

Abstract

The robust iterative learning control (RILC) can deal with the systems with unknown time-varying uncertainty to track a repeated reference signal. However, the existing robust designs consider all the possibilities of uncertainty, which makes the design conservative and causes the controlled process converging to the reference trajectory slowly. To eliminate this weakness, a data-driven method is proposed. The new design intends to employ more information from the past input-output data to compensate for the robust control law and then to improve performance. The proposed control law is proved to guarantee convergence and accelerate the convergence rate. Ultimately, the experiments on a robot manipulator have been conducted to verify the good convergence of the trajectory errors under the control of the proposed method.

Topics & Concepts

Iterative learning controlTrajectoryComputer scienceConvergence (economics)Control theory (sociology)Compensation (psychology)Process (computing)Control (management)Robustness (evolution)RobotRobust controlControl engineeringControl systemArtificial intelligenceEngineeringPhysicsEconomicsGenePsychologyOperating systemBiochemistryAstronomyPsychoanalysisEconomic growthElectrical engineeringChemistryIterative Learning Control SystemsAdvanced machining processes and optimizationAdvanced Measurement and Metrology Techniques
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