Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
699681 | Control Engineering Practice | 2016 | 11 Pages |
Abstract
This paper develops an iterative learning control law that exploits recent results in the area of predictive repetitive control where a priori information about the characteristics of the reference signal is embedded in the control law using the internal model principle. The control law is based on receding horizon control and Laguerre functions can be used to parameterize the future control trajectory if required. Error convergence of the resulting controlled system is analyzed. To evaluate the performance of the design, including comparative aspects, simulation results from a chemical process control problem and supporting experimental results from application to a robot with two inputs and two outputs are given.
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Authors
Liuping Wang, Chris T. Freeman, Eric Rogers,