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Theory and application of neural networks for 1 rate convolutional decoders

机译:1 / n速率卷积解码器的神经网络理论与应用

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In this paper a detailed mathematical model of a 1 rate conventional convolutional decoder system, based on neural networks (NNs) applications and the gradient descent algorithm, has been developed and analysed. The general expression for the noise energy function, needed for the recurrent neural networks (RNNs) decoding, is derived. Then, the expressions for the gradient descent updating rule are derived and the NN decoder was designed. Based on the developed theory, a simulator of the decoder was implemented. Simulation results have confirmed that the RNN decoder is capable of performing very close to the Viterbi decoder and works extremely well for some specially structured convolutional codes. In particular, decoding capabilities of RNN decoders are investigated in the case when simulated annealing (SA) technique has been used. It is also shown that there are certain codes that do not require SA and can achieve performance comparable to the Viterbi algorithm.
机译:本文基于神经网络(NNs)应用和梯度下降算法,开发了一种1 / n速率常规卷积解码器系统的详细数学模型,并对其进行了分析。推导了递归神经网络(RNN)解码所需的噪声能量函数的一般表达式。然后,推导了梯度下降更新规则的表达式,并设计了NN解码器。基于发展的理论,实现了解码器的仿真器。仿真结果证实,RNN解码器的性能非常接近Viterbi解码器,并且对于某些特殊结构的卷积码非常有效。特别是,在使用模拟退火(SA)技术的情况下,将研究RNN解码器的解码能力。还显示出某些代码不需要SA,并且可以实现与Viterbi算法相当的性能。

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