Linear synchronous motor servo drive based on adaptive wavelet neural network

Faa Jeng Lin, Po Hung Shen

Research output: Contribution to conferencePaperpeer-review

Abstract

An adaptive wavelet neural network (AWNN) control system is proposed to control the position of the mover of a permanent magnet linear synchronous motor (PMLSM) servo drive system to track periodic reference trajectories in this study. In the proposed AWNN control system, a WNN with accurate approximation capability is employed to approximate the unknown dynamics of the PMLSM, and a robust term is proposed to confront the inevitable approximation errors due to finite number of wavelet basis functions and disturbances including the friction force. The adaptive learning algorithm that can learn the parameters of weight, dilation and translation of the WNN on line is derived using Lyapunov stability theorem. Moreover, to relax the requirement for the bound of uncertainty in robust term, which comprises a minimum approximation error, optimal parameter vectors, higher-order terms in Taylor series and friction force, an adaptive bound estimation law is investigated where a simple adaptive algorithm is utilized to estimate the bound of uncertainty. Furthermore, the experimental results due to periodic reference trajectories show that the dynamic behaviors of the proposed control systems are robust with regard to uncertainties.

Original languageEnglish
Pages673-678
Number of pages6
StatePublished - 2005
Event2005 IEEE International Symposium on Computational Intelligence in Robotics and Automation CIRA 2005 - Espoo, Finland
Duration: 27 Jun 200530 Jun 2005

Conference

Conference2005 IEEE International Symposium on Computational Intelligence in Robotics and Automation CIRA 2005
Country/TerritoryFinland
CityEspoo
Period27/06/0530/06/05

Keywords

  • Adaptive bound estimation
  • Permanent magnet linear synchronous motor
  • Taylor series
  • Wavelet neural network

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