Intelligent motion control of voice coil motor using PID-based fuzzy neural network with optimized membership function

Syuan Yi Chen, Cheng Yen Lee, Chien Hsun Wu, Yi-xuan Hong

Research output: Contribution to journalArticle

2 Citations (Scopus)

Abstract

Purpose - The purpose of this paper is to develop a proportional-integral-derivative-based fuzzy neural network (PIDFNN) with elitist bacterial foraging optimization (EBFO)-based optimal membership functions (PIDFNN-EBFO) position controller to control the voice coil motor (VCM) for tracking reference trajectory accurately. Design/methodology/approach - Because the control characteristics of the VCM are highly nonlinear and time varying, a PIDFNN, which integrates adaptive PID control with fuzzy rules, is proposed to control the mover position of the VCM. Moreover, an EBFO algorithm is further proposed to find the initial optimal fuzzy membership functions for the PIDFNN controller. Findings - Due to the gradient descent method used in back propagation (BP) to derive the on-line learning algorithm for the PIDFNN, it may reach the local optimal solution due to the inappropriate initial values. Hence, a hybrid learning method, which includes BP and EBFO algorithms, is proposed to improve the learning performance of the PIDFNN controller. Research limitations/implications - Future work will consider reducing the computational burden of bacterial foraging optimization algorithm for on-line parameters optimization. Practical implications - The real-time control system is implemented on a 32-bit floating-point digital signal processor (DSP). The experimental results demonstrate the favorable effectiveness of the proposed PIDFNN-EBFO controlled VCM system. Originality/value - A new PIDFNN-EBFO control scheme is proposed and implemented via DSP for real-time VCM position control. The experimental results show the superior control performance of the proposed PIDFNN-EBFO compared with the other control systems.

Original languageEnglish
Pages (from-to)2302-2319
Number of pages18
JournalEngineering Computations (Swansea, Wales)
Volume33
Issue number8
DOIs
Publication statusPublished - 2016 Jan 1

Fingerprint

Fuzzy neural networks
Intelligent control
Motion control
Membership functions
Derivatives
Digital signal processors
Backpropagation
Controllers
Control systems
Three term control systems
Position control
Real time control
Fuzzy rules
Learning algorithms
Trajectories

Keywords

  • Bacterial foraging optimization
  • Fuzzy neural network
  • Proportional-integral-derivative control
  • Voice coil motor

ASJC Scopus subject areas

  • Software
  • Engineering(all)
  • Computer Science Applications
  • Computational Theory and Mathematics

Cite this

Intelligent motion control of voice coil motor using PID-based fuzzy neural network with optimized membership function. / Chen, Syuan Yi; Lee, Cheng Yen; Wu, Chien Hsun; Hong, Yi-xuan.

In: Engineering Computations (Swansea, Wales), Vol. 33, No. 8, 01.01.2016, p. 2302-2319.

Research output: Contribution to journalArticle

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