A supervised learning neural network coprocessor for soft-decision maximum-likelihood decoding

A supervised learning neural network (SLNN) coprocessor which enhances the performance of a digital soft-decision Viterbi decoder used for forward error correction in a digital communication channel with either fading plus additive white Gaussian noise (AWGN) or pure AWGN has been investigated and d...

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Veröffentlicht in:IEEE transactions on neural networks 1995-07, Vol.6 (4), p.986-992
Hauptverfasser: Yu-Jhih Wu, Chau, P.M., Hecht-Nielsen, R.
Format: Artikel
Sprache:eng
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Zusammenfassung:A supervised learning neural network (SLNN) coprocessor which enhances the performance of a digital soft-decision Viterbi decoder used for forward error correction in a digital communication channel with either fading plus additive white Gaussian noise (AWGN) or pure AWGN has been investigated and designed. The SLNN is designed to cooperate with a phase shift keying (PSK) demodulator, an automatic gain control (AGC) circuit, and a 3-bit quantizer which is an analog to digital convertor. It is trained to learn the best uniform quantization step-size /spl Delta//sub BEST/ as a function of the mean and the standard deviation of various sets of Gaussian distributed random variables. The channel cutoff rate (R/sub 0/) of the channel is employed to determine the best quantization threshold step-size (/spl Delta//sub BEST/) that results in the minimization of the Viterbi decoder output bit error rate (BER). For a digital communication system with a SLNN coprocessor, consistent and substantial BER performance improvements are observed. The performance improvement ranges from a minimum of 9% to a maximum of 25% for a pure AWGN channel and from a minimum of 25% to a maximum of 70% for a fading channel. This neural network coprocessor approach can be generalized and applied to any digital signal processing system to decrease the performance losses associated with quantization and/or signal instability.< >
ISSN:1045-9227
1941-0093
DOI:10.1109/72.392260