A Comparative Study of Neural Networks and Fuzzy Systems in Modeling of a Nonlinear Dynamic System

Authors

  • Metin DEMIRTAS Balikesir University
  • Musa ALCI Ege University

DOI:

https://doi.org/10.11121/ijocta.01.2011.0055

Keywords:

Neural networks, fuzzy, brushless dc motor, modeling system, DSP

Abstract

The aim of this paper is to compare the neural network and fuzzy modeling approaches on a nonlinear system. We have taken Permanent Magnet Brushless Direct Current (PMBDC) motor data and have generated models using both approaches. The predictive performance of both methods was compared on the data set for model configurations.

The paper describes the results of these tests and discusses the effects of changing model parameters on predictive and practical performance. Modeling sensitivity was used to compare for two methods.

 

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Author Biographies

Metin DEMIRTAS, Balikesir University

Balikesir University

Engineering Faculty

Electrical and Electronics Department

Musa ALCI, Ege University

Electrical and Electronics

References

N. Selvaganesan and R. Saraswathy Ramya, A Simple Fuzzy Modeling of Permanent Magnet Synchronous Generator,Elektrika, vol. 11, no. 1, 38-43, (2009)

K.J.Astrom, C.C.Hang, P.Persson, and W.K.Ho, Towards Intelligent PID Control, Automatica, vol. 28, no. 1, 1-9, (1992)

Saleem R.M., and Poslethwaite B.F., A comparison of neural networks and fuzzy relational systems in dynamic modeling, control‟94, IEE, no.389, 1448-1452, (1994)

Metin Demirtas, Off-line tuning of a PI speed controller for a permanent magnet brushless DC motor using DSP, Energy Conversion and Management 52, 264–273, (2011) CrossRef

Zhang Bo, Li Zhong and Mao Zong Yuan, A type of fuzzy modeling of the chaotic system of Permanent Magnet Synchronous Motor, IEEE Conf., pp 880-883.

Jacek Kabzifski, Fuzzy modeling of disturbance torques/forces in rotational/linear interior permanent magnet synchronous motors, Proc. On EPE, 1-10, (2005)

S.Yamamoto and I. Hashimoto, “Present status and future needs: the view from Japanese industry. Chemical Process controlâ€, Proceedings of the fourth international conf. on chemical process control, TX, (1991)

Y. Wang and H. Shao, Optimal tuning for PI controller, Automatica, 36, 147-152, (2000) CrossRef

TECHNOFOFT DSP Motion Solutions, MxWIN243 User Manuel, Switzerland, (2001)

Cybenko G., “Approximation by superpositions of a sigmoidal functionâ€, Math. Control Signal Syst., 303-314, (1989)

Girosi., F., and Poggio., T., Networks and the best approximation property, Biol. Cybernetics, 169-179, (1990)

Park., J., and Sandberg, I.W., Universal approximation using radial basis function networks, Neur. Comput., 246-257, (1991)

Ustun SV, Demirtas M, Optimal tuning of PI speed controller coefficients for electric drives using neural networks and genetic algorithms, Electrical Engineering, vol. 87, No:2, 77-82, (2005) CrossRef

Krishnan R., Election Criteria for Servo Motor Drives, IEEE Transactions on Industry Applications, vol.M-23 no.2, 270-275, (1987) CrossRef

G. R. Slemon, Electric Machines and Drives, Addison-Wesley Publication Company, 503–511, (1992)

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Published

2011-06-30
CITATION
DOI: 10.11121/ijocta.01.2011.0055
Published: 2011-06-30

How to Cite

DEMIRTAS, M., & ALCI, M. (2011). A Comparative Study of Neural Networks and Fuzzy Systems in Modeling of a Nonlinear Dynamic System. An International Journal of Optimization and Control: Theories & Applications (IJOCTA), 1(1), 65–73. https://doi.org/10.11121/ijocta.01.2011.0055

Issue

Section

Engineering Applications of AI