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Title: | State estimation based optimal control and NARMA-L2 controllers of a scaled-model helicopter | Authors: | Khaldi, Mohamad Abiad, Hassan El |
Affiliations: | Department of Electrical Engineering | Issue Date: | 2009 | Part of: | 2nd IFAC International Conference on Intelligent Control Systems and Signal Processing (ICONS 2009) | Start page: | 55 | End page: | 60 | Conference: | IFAC International Conference on Intelligent Control Systems and Signal Processing (ICONS 2009) (2nd : 21-23 Sept 2009 : Istanbul,Turkey) | Abstract: | Scaled-model helicopters are highly nonlinear, coupled, and unstable machines. They have fast response and controlling them is very complicated and need high degree of precision. In this paper, a detailed nonlinear model is derived. An optimal controller that is based upon state estimation is designed and implemented for each of the control inputs using a linearized model around an unaccelerated hovering motion. The optimal linear controller was then applied to the nonlinear model. In addition, input/output measurements of the nonlinear model were used to train the Multi-Layer Neural Networks (MLNNs) of the Nonlinear AutoRegressive with Moving Average (NARMA-L2) controller. Then, NARMA-L2 was applied to the nonlinear model and the results were compared with both the classical, namely PI-D, and the optimal control. |
URI: | https://scholarhub.balamand.edu.lb/handle/uob/829 | Type: | Conference Paper |
Appears in Collections: | Department of Electrical Engineering |
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