DocumentCode :
3493732
Title :
Computationally efficient locally-recurrent neural networks for online signal processing
Author :
Hussain, Amir ; Soraghan, John J. ; Shim, Ivy
Author_Institution :
Dept. of Appl. Comput., Dundee Univ., UK
Volume :
2
fYear :
1999
fDate :
1999
Firstpage :
684
Abstract :
A general class of computationally efficient locally recurrent networks (CERN) is described for real-time adaptive signal processing. The structure of the CERN is based on linear-in-the-parameters single-hidden-layered feedforward neural networks such as the radial basis function (RBF) network, the Volterra neural network (VNN) and the functionally expanded neural network (FENN), adapted to employ local output feedback. The corresponding learning algorithms are derived and key structural and computational complexity comparisons are made between the CERN and conventional recurrent neural networks. Two case studies are performed involving the real-time adaptive nonlinear prediction of real-world chaotic, highly non-stationary laser time series and an actual speech signal, which show that a recurrent FENN based adaptive CERN predictor can significantly outperform the corresponding feedforward FENN and conventionally employed linear adaptive filtering models
Keywords :
adaptive signal processing; Volterra neural network; computationally efficient locally-recurrent neural networks; functionally expanded neural network; learning algorithms; linear-in-the-parameters single-hidden-layered feedforward neural networks; local output feedback; online signal processing; real-time adaptive nonlinear prediction; real-time adaptive signal processing; real-world chaotic highly nonstationary laser time series; speech signal;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Artificial Neural Networks, 1999. ICANN 99. Ninth International Conference on (Conf. Publ. No. 470)
Conference_Location :
Edinburgh
ISSN :
0537-9989
Print_ISBN :
0-85296-721-7
Type :
conf
DOI :
10.1049/cp:19991190
Filename :
818012
Link To Document :
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