CN

阮小娥

教授    Supervisor of Doctorate Candidates    Supervisor of Master's Candidates

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  • Education Level:With Certificate of Graduation for Doctorate Study

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Convergence issue of nonrrpetitive iterative learning controllers for large-scale systems

Release Time:2025-04-30
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Date:
2025-04-30
Title of Paper:
Convergence issue of nonrrpetitive iterative learning controllers for large-scale systems
Journal:
连续离散与脉冲系统动力学A辑
Summary:
In this paper, we embed a set of iterative learning controllers into the procedure of the steady-state optimization for a class of large-scale industrial process that consists of a number of Multiple-Input-Multiple-Output subsystems. The controllers are devised to generate a sequence of control inputs to take responsibility of a sequential step functional control signals with distinct scales. The aim of the control design is to consecutively refine the transient performance of the system. By means of Hausdorff-Young inequality of involution integral, the convergence of the updating law is analyzed in the sense of Lebesgue–p norm. Effectiveness of the proposed control scheme is manifested by simulations.
Co-author:
Xiaoe Ruan, Fengmin Chen, Zeungnam Bien
Page Number:
771-776
Translation or Not:
No
Date of Publication:
2006-07-24