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Article
Monotonic Convergence of Iterative Learning Control for Uncertain Systems using a Time-Varying Filter
IEEE Transactions on Automatic Control
  • Douglas A. Bristow, Missouri University of Science and Technology
  • Andrew G. Alleyne
Abstract

Iterative learning control (ILC) is a learning technique used to improve the performance of systems that execute the same task multiple times. Learning transient behavior has emerged as an important topic in the design and analysis of ILC systems. In practice, the learning control is often low-pass filtered with a ldquoQ-filterrdquo to prevent transient growth, at the cost of performance. In this note, we consider linear time-invariant, discrete-time, single-input single-output systems, and convert frequency-domain uncertainty models to a time-domain representation for analysis. We then develop robust monotonic convergence conditions, which depend directly on the choice of the Q-filter and are independent of the nominal plant dynamics. This general result is then applied to a class of linear time-varying Q-filters that is particularly suited for precision motion control.

Department(s)
Mechanical and Aerospace Engineering
Keywords and Phrases
  • Adaptive Control,
  • Convergence,
  • Iterative Methods,
  • Learning Systems,
  • Time-Varying Filters,
  • Uncertain Systems
Document Type
Article - Journal
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2008 Institute of Electrical and Electronics Engineers (IEEE), All rights reserved.
Publication Date
3-1-2008
Publication Date
01 Mar 2008
Citation Information
Douglas A. Bristow and Andrew G. Alleyne. "Monotonic Convergence of Iterative Learning Control for Uncertain Systems using a Time-Varying Filter" IEEE Transactions on Automatic Control Vol. 53 Iss. 2 (2008) p. 582 - 585 ISSN: 0018-9286
Available at: http://works.bepress.com/douglas-bristow/31/