An Improved Iterative Learning Control for Uncertain Multi-Axis Systems

2020 AMERICAN CONTROL CONFERENCE (ACC)(2020)

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Abstract
For learning control algorithms to date, the convergence rate in the iteration domain depends on the level of plant knowledge. This work presents a Fast Cross-coupled Iterative Learning Control (F-CCILC) scheme to overcome the current limitations in learning control algorithms. F-CCILC achieves fast convergence for multi-input multi-output (MIMO) systems with high model uncertainty. The approach uses involves using a novel error term in the ILC learning law based on techniques from Sliding Mode Control (SMC). The input signal is guaranteed to remain bounded in the time and iteration domains, and the approach does not require end-user tuning of arbitrary gains. In this paper, the design for the F-CCILC system is presented, and the performance of this system is compared to the performance of existing ILC control schemes via simulations and experimental testing. Compared to the current control methods, the simulation results demonstrate increased robustness and learning speeds for multi-axis systems with significant model uncertainty.
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Key words
uncertain multiaxis systems,convergence rate,iteration domain,multiinput multioutput systems,F-CCILC system,fast cross-coupled iterative learning control,MIMO systems,Sliding Mode Control,SMC
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