Iterative learning controllers with time-varying gains for large-scale industrial processes to track trajectories with different magnitudes
点击次数:
发布时间:2025-04-30
发布时间:2025-04-30
论文名称:Iterative learning controllers with time-varying gains for large-scale industrial processes to track trajectories with different magnitudes
发表刊物:International Journal of Systems Science
摘要:In this paper, a set of decentralized open-loop and closed-loop iterative learning controllers are embedded into the procedure of steady-state hierarchical optimization utilizing feedback information for large-scale industrial processes. The task of the learning controllers is to generate a sequence of upgraded control inputs iteratively to take responsibilities of a sequential step function-type control decisions each of which is determined by the steady-state optimization layer and then imposed to the real system for feedback information. In the learning control scheme, the learning gains are designated to be time-varying which are adjusted by virtue of expertise experiences-based IF-THEN rules, and the magnitudes of the learning control inputs are amplified by the sequential step function-type control decisions. The aim of learning schemes is to further effectively improve the transient performance. The convergence of the updating laws is deduced in the sense of Lebesgue 1-norm by taking advantage of the Hausdorff-Young inequality of convolution integral and the Hoelder inequality of Lebesgue norm. Numerical simulations manifest that both the open-loop and the closed-loop time-varying learning gain-based schemes can effectively decrease the overshoot, accelerate the rising speed and shorten the settling time, etc.
合写作者:Xiaoe Ruan, Zeungnam Bien
卷号:vol.39, no.5
页面范围:513-527
是否译文:否
发表时间:2008-05-10

