使用反传播网络的自适应信道均衡

J.C. Pastra, R. Pal
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引用次数: 1

摘要

在数字通信系统中,有效的信道均衡对于在分散信道上实现无差错数据传输至关重要。传统的自适应均衡使用线性LMS算法来实现这一目的。然而,当信道本质上是非线性时,这种均衡器的性能会严重下降;这在大多数实际情况下都是正确的。通过对人工神经网络进行非线性处理,可以提高均衡器的性能。提出了一种基于反传播网络(CPN)的自适应信道均衡器来实现信道均衡。大量的计算机仿真表明,该均衡器的性能比基于LMS的均衡器要好得多。在广泛的信噪比和特征值比(EVR)范围内,基于CPN的均衡器在具有线性和非线性特性的信道的MSE方面优于LMS均衡器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive channel equalization using counter propagation networks
Effective channel equalization in a digital communication system is essential for error free data transmission over dispersive channels. Conventional adaptive equalization uses the linear LMS algorithm for this purpose. However, the performance of this equalizer degrades severely when the channel is nonlinear in nature; which is true in most of the practical situations. The equalizer performance can be improved by the use of nonlinear processing in an artificial neural network. We propose a counter propagation network (CPN) based adaptive channel equalizer for the task of channel equalization. It has been shown by extensive computer simulation that this equalizer performs much better than a LMS based equalizer. Over a wide range of SNR and eigenvalue ratio (EVR), the CPN based equalizer outperforms the LMS equalizer in terms of MSE for channels possessing linear as well as nonlinear characteristics.<>
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