基于神经网络的卷积编码器和Reed-Solomon编码器盲信道编码识别

Naveenta Gautam, Brejesh Lall
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引用次数: 4

摘要

前向纠错码(FEC)用于提高数字通信系统的可靠性。它们在信号中引入冗余,帮助接收器纠正错误而不要求重新传输。FEC码可以分为两类:卷积码和线性分组码。里德-所罗门(RS)码属于lbc的范畴。对于自适应调制和编码(AMC)、军事应用和认知无线电等非合作通信应用,信道编码器必须进行盲识别以解码接收信号。在这项研究中,我们提出了一种卷积码和RS码的盲识别方案。我们利用神经网络(NN)的模式识别特性从候选集中识别编码器。据我们所知,神经网络还没有被用于这个目的。本文对该分类器在无噪声和有噪声情况下的性能进行了评估。为了展示所提出的方法的应用,我们给出了两个最常见的用例的性能结果,即地面无线和卫星通信信道。实验结果表明,该分类器能在低信噪比下对编码器进行高精度识别。
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Blind Channel Coding Identification of Convolutional encoder and Reed-Solomon encoder using Neural Networks
Forward error correcting (FEC) codes are used to improve the reliability of digital communication systems. They introduce redundancy in the signal which helps the receiver to correct errors without requesting for re transmission. FEC codes can be classified into two categories: Convolutional codes and linear block codes (LBCs). Reed-Solomon (RS) codes lie in the category of LBCs. For non-cooperative communication applications such as adaptive modulation and coding (AMC), military applications and cognitive radio, the channel encoder has to be identified blindly for decoding the received signal. In this study, we propose a scheme for blind identification of convolutional and RS codes. We have used the pattern recognition properties of a neural network (NN) to identify the encoder from a candidate set. NNs have not been used for this purpose, to the best of our knowledge. Performance of the proposed classifier has been evaluated for both the noiseless and the noisy case. To show the application of the proposed approach we present the performance results for the two most common use cases namely the terrestrial wireless and the satellite communication channels. Experimental results have shown that the proposed classifier can identify the encoder with high accuracy in low signal-to-noise ratio.
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