Comparison of Neural Network Based Controllers for Nonlinear EMS Magnetic Levitation Train
Author(s) -
Mustefa Jibril,
Eliyas Alemayehu Tadese,
Messay Tadese
Publication year - 2020
Publication title -
control theory and informatics
Language(s) - English
Resource type - Journals
ISSN - 2224-5774
DOI - 10.7176/cti/10-02
Subject(s) - maglev , magnetic levitation , levitation , control theory (sociology) , controller (irrigation) , nonlinear system , engineering , artificial neural network , computer science , control engineering , control (management) , magnet , artificial intelligence , mechanical engineering , physics , electrical engineering , agronomy , quantum mechanics , biology
Magnetic levitation system is operated primarily based at the principle of magnetic attraction and repulsion to levitate the passengers and the train. However, magnetic levitation trains are rather nonlinear and open loop unstable which makes it hard to govern. In this paper, investigation, design and control of a nonlinear Maglev train based on NARMA-L2, model reference and predictive controllers. The response of the Maglev train with the proposed controllers for the precise role of a Magnetic levitation machine have been as compared for a step input signal. The simulation consequences prove that the Maglev teach system with NARMA-L2 controller suggests the quality performance in adjusting the precise function of the system and the device improves the experience consolation and street managing criteria.
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