| Previous | [ 1] | [ 2] | [ 3] | [ 4] | [ 5] | [ 6] | [ 7] | [ 8] | [ 9] | [ 10] | [ 11] | [ 12] | [ 13] | [ 14] | [ 15] | [ 16] | [ 17] | [ 18] | [ 19] |
¡@
Adem Kalinli and Seref Sagiroglu*
Department of Industrial Electronics
Kayseri Vocational High School
Erciyes University
38039, Kayseri, Turkey
*Department of Computer Engineering
Engineering and Architecture Faculty
Gazi University
06570, Ankara, Turkey
This paper presents a new recurrent neural network (RNN) structure called ENEM
for dynamic system identification. ENEM structure is based on Elman network and
NARX neural network. In order to show the performance of ENEM for system identification,
the results were also compared to the results of Elman network, Jordan network
and their modified models. The identification results of linear and nonlinear systems
have shown that the proposed ENEM structure is better than the other results of RNN
models.
Received August 23, 2004; revised December 8, 2004 & April 25 & June 7, 2005; accepted June 15, 2005.
Communicated by Pau-Choo Chung.