Robust iterative learning control with current feedback for uncertain linear systems

Citation
Ty. Doh et al., Robust iterative learning control with current feedback for uncertain linear systems, INT J SYST, 30(1), 1999, pp. 39-47
Citations number
21
Categorie Soggetti
AI Robotics and Automatic Control
Journal title
INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE
ISSN journal
00207721 → ACNP
Volume
30
Issue
1
Year of publication
1999
Pages
39 - 47
Database
ISI
SICI code
0020-7721(199901)30:1<39:RILCWC>2.0.ZU;2-4
Abstract
Considering an uncertain plant in iterative learning control (ILC), robust convergence and robust stability are important issues. Since the feedback c ontroller robustly stabilises the uncertain plant and has an effect on the convergence, if plays as significant a role as the learning controller does in the ILC system. To deal with both convergence and stability in ILC, we take account of an ILC scheme with current feedback in this paper. First, a few terms related to robust convergence are defined and a sufficient condi tion for robust convergence and robust stability free from uncertainty is o btained via structured singular value (mu) and linear fractional transforma tions (LFTs). Secondly, a synthesis method is presented on the basis of the proposed condition and D-K iteration. In this method, a feedback controlle r and learning controllers can be designed at one time and a weighting func tion is introduced to increase the learning performance. Lastly, through a computational experiment, we confirm the feasibility of the proposed method .