SICNN:软干扰消除神经网络均衡器

Stefan Baumgartner;Oliver Lang;Mario Huemer
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摘要

近年来,人们对数据驱动的机器学习方法进行了广泛研究,以取代或增强数字通信系统中传统的基于模型的处理方法。在这项工作中,我们重点关注均衡问题,并提出了一种基于神经网络(NN)的新方法,即 SICNN。SICNN 是通过深度展开基于模型的迭代软干扰消除(SIC)方法而设计的。它消除了基于模型的对应方法的主要缺点,即计算复杂度高和由于需要近似而导致性能下降。我们介绍了 SICNN 的不同变体。SICNNv1 专门针对单载波频域均衡(SC-FDE)系统(本研究主要考虑的通信系统)。SICNNv2 则更具通用性,可作为均衡器应用于任何采用基于块的数据传输方案的通信系统。此外,对于 SICNNv1 和 SICNNv2,我们都提出了可学习参数数量大大减少的版本。这项工作的另一个贡献是为基于 NN 的均衡器生成训练数据集的新方法,它显著提高了均衡器在高信噪比下的性能。我们将所提出的基于 NN 的均衡器的误码率性能与最先进的基于模型和基于 NN 的方法进行了比较,突出了 SICNNv1 在 SC-FDE 方面优于所有其他方法。此外,为了强调其通用性,我们还将 SICNNv2 应用于独特的字正交频分复用(UW-OFDM)系统,并在该系统中实现了最先进的性能。此外,我们还对所提出的基于 NN 的均衡方法进行了全面的复杂性分析,并研究了训练集大小对基于 NN 的均衡器性能的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SICNN: Soft Interference Cancellation Inspired Neural Network Equalizers
In recent years data-driven machine learning approaches have been extensively studied to replace or enhance traditionally model-based processing in digital communication systems. In this work, we focus on equalization and propose a novel neural network (NN-)based approach, referred to as SICNN. SICNN is designed by deep unfolding a model-based iterative soft interference cancellation (SIC) method. It eliminates the main disadvantages of its model-based counterpart, which suffers from high computational complexity and performance degradation due to required approximations. We present different variants of SICNN. SICNNv1 is specifically tailored to single carrier frequency domain equalization (SC-FDE) systems, the communication system mainly regarded in this work. SICNNv2 is more universal and is applicable as an equalizer in any communication system with a block-based data transmission scheme. Moreover, for both SICNNv1 and SICNNv2, we present versions with highly reduced numbers of learnable parameters. Another contribution of this work is a novel approach for generating training datasets for NN-based equalizers, which significantly improves their performance at high signal-to-noise ratios. We compare the bit error ratio performance of the proposed NN-based equalizers with state-of-the-art model-based and NN-based approaches, highlighting the superiority of SICNNv1 over all other methods for SC-FDE. Exemplarily, to emphasize its universality, SICNNv2 is additionally applied to a unique word orthogonal frequency division multiplexing (UW-OFDM) system, where it achieves state-of-the-art performance. Furthermore, we present a thorough complexity analysis of the proposed NN-based equalization approaches, and we investigate the influence of the training set size on the performance of NN-based equalizers.
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