In the past years, artificial neural networks (ANNs) have become the de-facto standard to solve tasks in communications engineering that are difficult to solve with traditional methods. In parallel, the artificial intelligence community drives its research to biology-inspired, brain-like spiking neural networks (SNNs), which promise extremely energy-efficient computing. In this paper, we investigate the use of SNNs in the context of channel equalization for ultra-low complexity receivers. We propose an SNN-based equalizer with a feedback structure akin to the decision feedback equalizer (DFE). For conversion of real-world data into spike signals we introduce a novel ternary encoding and compare it with traditional log-scale encoding. We show that our approach clearly outperforms conventional linear equalizers for three different exemplary channels. We highlight that mainly the conversion of the channel output to spikes introduces a small performance penalty. The proposed SNN with a decision feedback structure enables the path to competitive energy-efficient transceivers.
翻译:过去几年来,人工神经网络(ANNS)已成为解决难以用传统方法解决的通信工程任务的实际标准。与此同时,人工智能界将其研究推进到生物学启发型的、像大脑一样的飞跃型神经网络(SNNS),这保证了极节能的计算。在本文中,我们调查了在超低复杂接收器频道平等化的背景下使用SNNS的情况。我们提议了以SNNE为基础的平衡器,其反馈结构类似于决定反馈平衡器(DFE) 。在将真实世界数据转换成峰值信号时,我们引入了一种新的耐用新定时编码,并将其与传统的日志尺度编码进行比较。我们表明我们的方法明显超过了三个不同的示范渠道的常规线性平衡器。我们强调,主要将频道输出转换成加压速率的功能会受到小的处罚。拟议的SNNNE(SN)与决定反馈结构相似的反馈结构可以引导通往有竞争力的节能传输器的道路。