• DocumentCode
    948116
  • Title

    Adaptive Fuzzy-Neural-Network Control for Maglev Transportation System

  • Author

    Wai, Rong-Jong ; Lee, Jeng-Dao

  • Author_Institution
    Yuan Ze Univ., Chung Li
  • Volume
    19
  • Issue
    1
  • fYear
    2008
  • Firstpage
    54
  • Lastpage
    70
  • Abstract
    A magnetic-levitation (maglev) transportation system including levitation and propulsion control is a subject of considerable scientific interest because of highly nonlinear and unstable behaviors. In this paper, the dynamic model of a maglev transportation system including levitated electromagnets and a propulsive linear induction motor (LIM) based on the concepts of mechanical geometry and motion dynamics is developed first. Then, a model-based sliding-mode control (SMC) strategy is introduced. In order to alleviate chattering phenomena caused by the inappropriate selection of uncertainty bound, a simple bound estimation algorithm is embedded in the SMC strategy to form an adaptive sliding-mode control (ASMC) scheme. However, this estimation algorithm is always a positive value so that tracking errors introduced by any uncertainty will cause the estimated bound increase even to infinity with time. Therefore, it further designs an adaptive fuzzy-neural-network control (AFNNC) scheme by imitating the SMC strategy for the maglev transportation system. In the model-free AFNNC, online learning algorithms are designed to cope with the problem of chattering phenomena caused by the sign action in SMC design, and to ensure the stability of the controlled system without the requirement of auxiliary compensated controllers despite the existence of uncertainties. The outputs of the AFNNC scheme can be directly supplied to the electromagnets and LIM without complicated control transformations for relaxing strict constrains in conventional model-based control methodologies. The effectiveness of the proposed control schemes for the maglev transportation system is verified by numerical simulations, and the superiority of the AFNNC scheme is indicated in comparison with the SMC and ASMC strategies.
  • Keywords
    adaptive control; control system synthesis; fuzzy control; fuzzy neural nets; learning (artificial intelligence); linear induction motors; magnetic levitation; neurocontrollers; transportation; uncertain systems; variable structure systems; adaptive fuzzy-neural-network control design; bound estimation algorithm; chattering phenomena; levitated electromagnets; maglev transportation system; magnetic-levitation transportation system; mechanical geometry; model-based SMC strategy; model-free AFNNC; motion dynamics; online learning algorithms; propulsive linear induction motor; sliding-mode control; uncertainty bound; Fuzzy neural network (FNN); linear induction motor (LIM); maglev transportation system; magnetic levitation (maglev); sliding-mode control (SMC); Algorithms; Feedback; Fuzzy Logic; Humans; Neural Networks (Computer); Nonlinear Dynamics; Pattern Recognition, Automated; Signal Processing, Computer-Assisted; Transportation;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2007.900814
  • Filename
    4359190