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Discrete‐time Adaptive ILC for Non‐parametric Uncertain Nonlinear Systems with Iteration‐Varying Trajectory and Random Initial Condition
Authors:R H Chi  Z S Hou  S T Jin  D W Wang
Affiliation:1. School of Automation & Electrical Engineering, Qingdao University of Science & Tech, , Qingdao, 266042 China;2. Advanced Control Systems Lab, School of Electronics & Information Engineering, Beijing Jiaotong University, , Beijing, 100044 China;3. Centre for E‐City, School of Electrical & Electronic Engineering, Nanyang Technological Unive, , 639798 Singapore
Abstract:This paper presents a new discrete‐time adaptive iterative learning control approach (AILC) for a class of time‐varying nonlinear systems with nonparametric uncertainties and non‐repeatable external disturbances by incorporating a novel iterative estimate scheme. A major distinct feature of the presented approach is that uncertainties can be completely compensated for, using only I/O data. Another distinct feature is that the pointwise convergence is achieved over a finite time interval without requiring the matching condition on initial states and reference trajectory. Rigorous mathematical analysis is developed, and simulation results illustrate the effectiveness of the proposed approach.
Keywords:Adaptive iterative learning control  non‐parametric uncertainties  nonlinear discrete‐time system  random initial condition  iteration‐varying target trajectories
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