Learning feed forward control of a flexible beam - Intelligent Control, 1996., Proceedings of the 1996 IEEE International Symposium on
نویسنده
چکیده
Servo control is usually done by means of model-based feedback controllers, which has two difficulties. Firstly, the design of a well performing feedback controller requires extensive and time consuming modelling of the process. Secondly, by applying feedback control a compromise has to be made between performance and robust stability. The learning feed forward controller (LFFC) may help to overcome these difficulties. The LFFC consists of a feedback and a feed forward controller. The feedback controller is designed such that robust stability is guaranteed, while the performance is obtained by the feed forward controller. The feed forward controller is a function approximator that is adapted on the basis of the feedback signal. The LFFC is applied to a flexible robot arm, which has complex dynamics and unknown properties, such as friction. A stability analysis of the (idealised) LFFC i s presented. Simulation experiments (with a non-idealised LFFC) confirm the results of this analysis and show that without extensive modelling a good performance can be obtained.
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تاریخ انتشار 2004