Thesis (M.S.)--Wichita State University, College of Engineering, Dept. of Electrical Engineering and Computer Science.This thesis explores the bit error rate (BER) characteristics of a convolutional decoder constructed of a backpropagation neural network (NN) using a newly proposed input shifting window. Due to the fact that each NN is independent and unique, multiple NNs are placed in parallel and utilize the majority rule to further improve BER performance. NNs are efficient in complex statistical systems because of their inherently fast parallel-processing speed and pattern-recognition abilities. It was found that with a code rate of ½ and a constraint length of K = 3, a NN with the optimal convolutional code generator polynomial, which ...
This paper outlines a novel iterative decoding technique for a rate K/N convolutional code based on ...
This paper introduces two decoders for binary linear codes based on Metaheuristics. The first one us...
This paper presents a novel Random Neural Network (RNN) based soft decision decoder for block codes....
Convolutional Codes are used in a variety of areas from computers to communications. Ideally one sim...
Due to the curse of dimensionality, the training complexity of the neural network based channel-code...
Error Correcting codes are used to ensure integrity, accuracy and fault-tolerance in transmitted dat...
This paper presents a parallel computing approach that is employed to reconstruct original informati...
Error control coding, or channel coding, is an essential part of a communication system. Recent inve...
A silicon efficient real-time approach to decode convolutional codes is presented. The algorithm is ...
A Viterbi algorithm (VA) is the optimal decoding strategy for the convolutional code. The Viterbi al...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
International audienceIn forward error correction, convolutional turbo codes were introduced to incr...
The main features of error correcting codes and standard decoding techniques are reviewed. Feedforwa...
Digital transmission over noisy and possibly distorted channel is subject to bit errors in decoding....
We demonstrate the use of a continuous Hopfield neural network as a K-WinnerTake-All (KWTA) network....
This paper outlines a novel iterative decoding technique for a rate K/N convolutional code based on ...
This paper introduces two decoders for binary linear codes based on Metaheuristics. The first one us...
This paper presents a novel Random Neural Network (RNN) based soft decision decoder for block codes....
Convolutional Codes are used in a variety of areas from computers to communications. Ideally one sim...
Due to the curse of dimensionality, the training complexity of the neural network based channel-code...
Error Correcting codes are used to ensure integrity, accuracy and fault-tolerance in transmitted dat...
This paper presents a parallel computing approach that is employed to reconstruct original informati...
Error control coding, or channel coding, is an essential part of a communication system. Recent inve...
A silicon efficient real-time approach to decode convolutional codes is presented. The algorithm is ...
A Viterbi algorithm (VA) is the optimal decoding strategy for the convolutional code. The Viterbi al...
A Neural Network is a powerful data modeling tool that is able to capture and represent complex inpu...
International audienceIn forward error correction, convolutional turbo codes were introduced to incr...
The main features of error correcting codes and standard decoding techniques are reviewed. Feedforwa...
Digital transmission over noisy and possibly distorted channel is subject to bit errors in decoding....
We demonstrate the use of a continuous Hopfield neural network as a K-WinnerTake-All (KWTA) network....
This paper outlines a novel iterative decoding technique for a rate K/N convolutional code based on ...
This paper introduces two decoders for binary linear codes based on Metaheuristics. The first one us...
This paper presents a novel Random Neural Network (RNN) based soft decision decoder for block codes....