Home           Contact us           FAQs           
 
   Journal Page   |   Aims & Scope   |   Author Guideline   |   Editorial Board   |   Search
    Abstract
2014 (Vol. 7, Issue: 8)
Article Information:

Model Reference Adaptive Control Based on GANN for Vertical Electric Furnace

Hongxing Li, Xiangling Kong and Yinong Zhang
Corresponding Author:  Hongxing Li 

Key words:  Adaptive control, genetic algorithm, multi-variable system, neural network, vertical electric furnace, ,
Vol. 7 , (8): 1529-1535
Submitted Accepted Published
May 10, 2013 June 07, 2013 February 27, 2014
Abstract:

The vertical electric furnace is a multi-variable complex system, conventional control methods are used to control it, to need modelling and decoupling. In this study, a model reference adaptive control using the Neural Network with Genetic Algorithm (GANN) for the temperature control of the vertical electric furnace is proposed. The neural model of the system is identified by the genetic algorithm. Another neural network is trained to learn the inverse dynamics of the system so that it can be used as a nonlinear controller. Because of the limitation of BP algorithm, the genetic algorithm is used to find the fitness weights and thresholds of the neural network model and the simulation results show that the model is satisfied and the control is effective.
Abstract PDF HTML
  Cite this Reference:
Hongxing Li, Xiangling Kong and Yinong Zhang , 2014. Model Reference Adaptive Control Based on GANN for Vertical Electric Furnace.  Research Journal of Applied Sciences, Engineering and Technology, 7(8): 1529-1535.
    Advertise with us
 
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
Submit Manuscript
   Current Information
   Sales & Services
   Contact Information
  Executive Managing Editor
  Email: admin@maxwellsci.com
  Publishing Editor
  Email: support@maxwellsci.com
  Account Manager
  Email: faisalm@maxwellsci.com
  Journal Editor
  Email: admin@maxwellsci.com
  Press Department
  Email: press@maxwellsci.com
Home  |  Contact us  |  About us  |  Privacy Policy
Copyright © 2009. MAXWELL Science Publication, a division of MAXWELLl Scientific Organization. All rights reserved