Long Short-Term Memory Neural Equalizer

Zihao Wang;Zhifei Xu;Jiayi He;Hervé Delingette;Jun Fan
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引用次数: 4

Abstract

A trainable neural equalizer based on the long short-term memory (LSTM) neural network architecture is proposed in this article to recover the channel output signal. The current widely used solution for the transmission line signal recovery is generally realized through a decision feedback equalizer (DFE) or : Feed forward equalizer (FFE) combination. The novel learning-based equalizer is suitable for highly nonlinear signal restoration, thanks to its recurrent design. The effectiveness of the LSTM equalizer (LSTME) is shown through an advance design system simulation channel signal equalization task, including a quantitative and qualitative comparison with an FFE–DFE combination. The LSTM neural network shows good equalization results compared with that of the FFE–DFE combination. The advantage of a trainable LSTME lies in its ability to learn its parameters in a flexible manner and to tackle complex scenarios without any hardware modification. This can reduce the equalizer implantation cost for variant transmission channels and bring additional portability in practical applications.
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长短期记忆神经均衡器
本文提出了一种基于长短期记忆(LSTM)神经网络结构的可训练神经均衡器来恢复信道输出信号。目前广泛使用的传输线信号恢复解决方案通常通过判决反馈均衡器(DFE)或前馈均衡器(FFE)组合来实现。这种新型的基于学习的均衡器由于其递归设计,适用于高度非线性的信号恢复。通过预先设计的系统模拟信道信号均衡任务,包括与FFE–DFE组合的定量和定性比较,展示了LSTM均衡器(LSTME)的有效性。与FFE–DFE组合相比,LSTM神经网络显示出良好的均衡结果。可训练LSTME的优势在于它能够以灵活的方式学习参数,并在不修改任何硬件的情况下处理复杂场景。这可以降低可变传输信道的均衡器植入成本,并在实际应用中带来额外的便携性。
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