DocumentCode :
1064713
Title :
Using recurrent neural networks for adaptive communication channel equalization
Author :
Kechriotis, G. ; Zervas, E. ; Manolakos, E.S.
Author_Institution :
CDSP Center for Res. & Graduate Studies, Northeastern Univ., Boston, MA, USA
Volume :
5
Issue :
2
fYear :
1994
fDate :
3/1/1994 12:00:00 AM
Firstpage :
267
Lastpage :
278
Abstract :
Nonlinear adaptive filters based on a variety of neural network models have been used successfully for system identification and noise-cancellation in a wide class of applications. An important problem in data communications is that of channel equalization, i.e., the removal of interferences introduced by linear or nonlinear message corrupting mechanisms, so that the originally transmitted symbols can be recovered correctly at the receiver. In this paper we introduce an adaptive recurrent neural network (RNN) based equalizer whose small size and high performance makes it suitable for high-speed channel equalization. We propose RNN based structures for both trained adaptation and blind equalization, and we evaluate their performance via extensive simulations for a variety of signal modulations and communication channel models. It is shown that the RNN equalizers have comparable performance with traditional linear filter based equalizers when the channel interferences are relatively mild, and that they outperform them by several orders of magnitude when either the channel´s transfer function has spectral nulls or severe nonlinear distortion is present. In addition, the small-size RNN equalizers, being essentially generalized IIR filters, are shown to outperform multilayer perceptron equalizers of larger computational complexity in linear and nonlinear channel equalization cases
Keywords :
adaptive filters; equalisers; filtering and prediction theory; recurrent neural nets; telecommunication channels; adaptive communication channel equalization; blind equalization; data communications; generalized IIR filters; high-speed channel equalization; interference removal; linear message corrupting mechanisms; noise-cancellation; nonlinear adaptive filters; nonlinear message corrupting mechanisms; recurrent neural networks; severe nonlinear distortion; spectral nulls; system identification; transfer function; Adaptive filters; Adaptive systems; Communication channels; Data communication; Equalizers; IIR filters; Interference; Neural networks; Recurrent neural networks; System identification;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.279190
Filename :
279190
Link To Document :
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