DocumentCode
3170576
Title
Recurrent neural networks training with optimal bounded ellipsoid algorithm
Author
de Jesus Rubio, Jose ; Yu, Wen
Author_Institution
UAM, Reynosa
fYear
2007
fDate
9-13 July 2007
Firstpage
4768
Lastpage
4773
Abstract
Compared to normal learning algorithms, for example backpropagation, the optimal bounded ellipsoid (OBE) algorithm has some better properties, such as faster convergence, since it has a similar structure as Kalman filter. OBE has some advantages over Kalman filter training, the noise is not required to be Guassian. In this paper OBE algorithm is applied traing the weights of recurrent neural networks for nonlinear system identification Both hidden layers and output layers can be updated. From a dynamic systems point of view, such training can be useful for all neural network applications requiring real-time updating of the weights. A simple simulation gives the effectiveness of the suggested algorithm.
Keywords
identification; learning (artificial intelligence); nonlinear systems; recurrent neural nets; Kalman filter training; nonlinear system identification; optimal bounded ellipsoid algorithm; recurrent neural networks training; Backpropagation algorithms; Ellipsoids; Feedforward neural networks; Function approximation; Neural networks; Nonlinear dynamical systems; Nonlinear systems; Real time systems; Recurrent neural networks; Uncertainty;
fLanguage
English
Publisher
ieee
Conference_Titel
American Control Conference, 2007. ACC '07
Conference_Location
New York, NY
ISSN
0743-1619
Print_ISBN
1-4244-0988-8
Electronic_ISBN
0743-1619
Type
conf
DOI
10.1109/ACC.2007.4282818
Filename
4282818
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