Article ID Journal Published Year Pages File Type
4974115 Journal of the Franklin Institute 2017 18 Pages PDF
Abstract
This paper contributes to the convergence analysis of iterative learning control for linear systems under general data dropouts at both measurement and actuator sides. By using a simple compensation mechanism for the dropped data, the sample path behavior along the iteration axis is analyzed and formulated as a Markov chain first. Based on the Markov chain, the recursion of the input error is reformulated as a switching system, and then a novel convergence proof is established in the almost sure sense under mild design conditions. Illustrative examples are provided to verify the theoretical results.
Related Topics
Physical Sciences and Engineering Computer Science Signal Processing
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