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A critical assessment of recurrent artificial neural networks as adaptive equalizers in digital communications

机译:循环人工神经网络作为数字通信中的自适应均衡器的关键评估

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A number of neural network structures have previously been applied to the problem of equalization of digital communications channels and view the problem as one of pattern classification rather than one of inverse filtering. The recurrent neural network (RNN) has previously been shown to outperform the conventional linear transversal equalizer structure and has the advantage of requiring a small number of nodes to achieve a given level of equalization. The paper aims to highlight the mechanism by which RNNs equalize channels and to show that the dynamics of such networks create a structure unsuitable for reliable equalization.
机译:先前已经将许多神经网络结构应用于数字通信信道的均衡问题,并将该问题视为模式分类之一而不是逆滤波之一。先前已经显示了递归神经网络(RNN)优于传统的线性横向均衡器结构,并且具有需要少量节点才能达到给定级别的均衡的优点。本文旨在强调RNN均衡信道的机制,并表明这种网络的动态性创建了不适合可靠均衡的结构。

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