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adaptive 'soft' sliding block decoding of convolutional code using the artificial neural network

journal contribution
posted on 2012-01-01, 00:00 authored by S Rajbhandari, Z Ghassemlooy, Maia Angelova TurkedjievaMaia Angelova Turkedjieva
A Viterbi algorithm (VA) is the optimal decoding strategy for the convolutional code. The Viterbi algorithm is complex and requires a large memory and delay. In this paper, an alternative sub-optimal decoder based on the artificial neural network (ANN) is proposed and studied using a sliding block decoding algorithm. The ANN is trained in a supervised manner and the system parameters are optimised using computer simulations for the optimum performance. Comparative study with the Viterbi decoder is carried out. The performance of the ANN decoder is found to be comparable to the Viterbi ‘soft’ decoding with much reduced decoding length. The key advantages of the proposed ANN decoder compared with other ANN decoders are the reduced decoding and training length, adaptive decoding, no iteration required and possibility of
parallel decoding.

History

Journal

Transactions on Emerging Telecommunications Technologies

Volume

23

Issue

7

Pagination

672 - 677

Publisher

Wiley

Location

Chichester, ENg.

ISSN

2161-3915

eISSN

1541-8251

Language

eng

Publication classification

C Journal article; C1.1 Refereed article in a scholarly journal

Copyright notice

2012 John Wiley & Sons