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  4. Iterative Learning Control Using Stochastic Approximation Theory with Application to a Mechatronic System
 
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Iterative Learning Control Using Stochastic Approximation Theory with Application to a Mechatronic System

Butcher, Mark Edward John
•
Karimi, Alireza  
Lévine, Jean
•
Müllhaupt, Philippe  
2010
Advances in the Theory of Control, Signals and Systems with Physical Modeling

In this paper it is shown how Stochastic Approximation theory can be used to derive and analyse well-known Iterative Learning Control algorithms for linear systems. The Stochastic Approximation theory gives conditions that, when satisfied, ensure almost sure convergence of the algorithms to the optimal input in the presence of stochastic disturbances. The practical issues of monotonic convergence and robustness to model uncertainty are considered. Specific choices of the learning matrix are studied, as well as a model-free choice. Moreover, the model-free method is applied to a linear motor system, leading to greatly improved tracking.

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Type
book part or chapter
DOI
10.1007/978-3-642-16135-3_5
Author(s)
Butcher, Mark Edward John
Karimi, Alireza  
Editors
Lévine, Jean
•
Müllhaupt, Philippe  
Date Issued

2010

Publisher

Springer

Publisher place

London

Published in
Advances in the Theory of Control, Signals and Systems with Physical Modeling
Start page

49

End page

64

Series title/Series vol.

Lecture Notes in Control and Information Sciences; 407

Subjects

Iterative Learning Control

•

Stochastic approximation

•

Mechatronic system

Written at

EPFL

EPFL units
LA  
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/55884
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