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Autori principali: Padmanabhan, Ram, Makam, Rajini, George, Koshy
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2203.11892
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author Padmanabhan, Ram
Makam, Rajini
George, Koshy
author_facet Padmanabhan, Ram
Makam, Rajini
George, Koshy
contents This article focuses on making discrete-time Adaptive Iterative Learning Control (ILC) more effective using multiple estimation models. Existing strategies use the tracking error to adjust the parametric estimates. Our strategy uses the last component of the identification error to tune these estimates of the model parameters. We prove that this strategy results in bounded estimates of the parameters, and bounded and convergent identification and tracking errors. We emphasize that the proof does not use the key technical lemma. Rather, it uses the properties of square-summable sequences. We extend this strategy to include multiple estimation models and show that all the signals are bounded, and the errors converge. It is also shown that this works whether we switch between the models at every instant and every iteration or at the end of every iteration. Simulation results demonstrate the efficacy of the proposed method with a faster convergence using multiple estimation models.
format Preprint
id arxiv_https___arxiv_org_abs_2203_11892
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Multiple Estimation Models for Discrete-time Adaptive Iterative Learning Control
Padmanabhan, Ram
Makam, Rajini
George, Koshy
Systems and Control
This article focuses on making discrete-time Adaptive Iterative Learning Control (ILC) more effective using multiple estimation models. Existing strategies use the tracking error to adjust the parametric estimates. Our strategy uses the last component of the identification error to tune these estimates of the model parameters. We prove that this strategy results in bounded estimates of the parameters, and bounded and convergent identification and tracking errors. We emphasize that the proof does not use the key technical lemma. Rather, it uses the properties of square-summable sequences. We extend this strategy to include multiple estimation models and show that all the signals are bounded, and the errors converge. It is also shown that this works whether we switch between the models at every instant and every iteration or at the end of every iteration. Simulation results demonstrate the efficacy of the proposed method with a faster convergence using multiple estimation models.
title Multiple Estimation Models for Discrete-time Adaptive Iterative Learning Control
topic Systems and Control
url https://arxiv.org/abs/2203.11892