On improving transient behavior and steady-state performance of model-free iterative learning control
Journal
IFAC-PapersOnLine
Journal Volume
53
Pages
1433-1438
Date Issued
2020
Author(s)
Zhang G.-H
Abstract
A novel model-free iterative learning control algorithm is proposed in this paper to improve both the robustness against output disturbances and the tracking performance in steady-state. For model-free ILC, several methods have been investigated, such as the time-reversal error filtering, the Model-Free Inversion-based Iterative Control (MFIIC), and the Non- Linear Inversion-based Iterative Control (NLIIC). However, the time-reversal error filtering has a conservative learning rate. Other two methods, although with much faster error convergence, have either a high noise sensitivity or a non-optimized steady-state. To improve the performance and robustness of model-free ILC, we apply the time-reversal based ILC and recursively accelerate its error convergence using the online identified learning filter. The effectiveness of the proposed algorithm has been validated by a numerical simulation. The proposed approach not only improves the transient response of the MFIIC, but achieves lower tracking error in steady-state compared to that of the NLIIC. Copyright ? 2020 The Authors.
Subjects
Errors; Iterative methods; Learning algorithms; Learning systems; Robustness (control systems); Transient analysis; Conservative learning; Iterative learning control; Iterative learning control algorithm; Model-free inversion; Non linear inversion; Robustness of model; Steady state performance; Tracking performance; Two term control systems
Type
conference paper
