Error Corrected References for Accelerated Convergence of Low Gain Norm Optimal Iterative Learning Control
成果类型:
Article
署名作者:
Owens, David H.; Chu, Bing
署名单位:
Zhengzhou University; University of Sheffield; University of Southampton
刊物名称:
IEEE TRANSACTIONS ON AUTOMATIC CONTROL
ISSN/ISSBN:
0018-9286
DOI:
10.1109/TAC.2024.3362857
发表日期:
2024
页码:
5836-5851
关键词:
convergence
Robustness
Aerospace electronics
Heuristic algorithms
PROCESS CONTROL
Iterative learning control
convolution
Iterative learning control (ILC)
performance optimization
摘要:
To reduce the need for high gains (reduced control weighting) for fast convergence in norm optimal iterative learning control (NOILC), this article presents a simple data-driven mechanism for accelerating the convergence of low gain feedback NOILC controllers. The method uses a modification to the reference signal on each NOILC iteration using the measured tracking error from the previous iteration. The basic algorithm is equivalent to a gradient iteration combined with an NOILC iteration. The choice of design parameters is interpreted in terms of the spectrum of the error update operator and the systematic annihilation of spectral components of the error signal. The methods apply widely, including continuous and discrete-time end point, intermediate point, and signal tracking. The effects of parameter choice are revealed using examples. A robustness analysis is presented and illustrated by frequency-domain robustness conditions for multi-input, multi-output discrete-time tracking, and robustness conditions for end-point problems for state-space systems. Finally, the algorithm is extended to embed a number of gradient iterations within a single NOILC iteration. This makes possible the systematic manipulation of the spectrum, providing additional acceleration capabilities with the theoretical possibility of arbitrary fast convergence.