Neural Filter Design for Frequency Selective Channel Equalization

Wooju Lee, Sangwoo Park, Dong-Wook Kim, Joonhyuk Kang
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Abstract

Under frequency-selective multi-path channel environment, delayed copies of the transmitted symbols are summed up to form a received signal. In order to remove this intersymbol interference (ISI), linear minimum mean-square error (LMMSE) equalizer can be applied to the received signal to reconstruct the transmitted symbols. While being an optimal linear filter, the LMMSE equalizer ideally requires infinite length of the received signal, which is infeasible in practice. In order to mitigate this limitation of linear filters, we propose to utilize neural networks for equalization, referred to as neural filters. Numerical results verify that, given with enough pilot data, the proposed neural filter outperforms the optimal LMMSE equalizer that uses perfect knowledge on the channel realization vector.
频率选择信道均衡的神经滤波器设计
在频率选择多径信道环境下,将发送信号的延迟副本相加形成接收信号。为了消除这种码间干扰(ISI),可以对接收信号应用线性最小均方误差均衡器(LMMSE)来重建发射信号。虽然LMMSE均衡器是一种最优线性滤波器,但理想情况下,它要求接收信号的长度是无限的,这在实际中是不可行的。为了减轻线性滤波器的这种限制,我们建议利用神经网络进行均衡,称为神经滤波器。数值结果表明,在给定足够导频数据的情况下,所提出的神经滤波器优于使用完美信道实现向量知识的最优LMMSE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。
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