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An interative learning control scheme using the weighted least-squares method
Authors:Keigo Watanabe  Toshio Fukuda  Spyros G Tzafestas
Affiliation:(1) Faculty of Science and Engineering, Saga University, Honjomachi-1, 840 Saga, Japan;(2) Faculty of Engineering, Nagoya University, Furocho-1, Chikusa-ku, 464 Nagoya, Japan;(3) Computer Engineering Division, National Technical University of Athens, Zografou, 5773 Athens, Greece
Abstract:An iterative learning control scheme is described for linear discrete-time systems. A weighted least-squares criterion of learning error is optimized to obtain a unique control gain for a case when the number of sampling is relatively small. It is then shown that algorithmic convergence can be readily guaranteed, because the present learning rule consists of a steady-state Kalman filter. By paying attention to the sparse system structure for the system's impulse response model, we further derive a suboptimal iterative learning control for a practical case when the number of sampling is large.
Keywords:Iterative learning control  robot manipulator  weighted least-squares method  impulse response model  Kalman filter  sparse system structure
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