Deep Learning Detector for Large-Scale MIMO Systems with Low-Resolution ADCs

A. Pham, Duc-Tuong Hoang, Hieu T. Nguyen
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Abstract

A large-scale multiple-input multiple-out (LS-MIMO) transmission scheme with low-resolution analog-to-digital converters (ADCs) has become one of the promising techniques for 5G and future wireless networks. In this paper, we investigate the power of a deep-learning network in detecting LS-MIMO signals when the resolution of the ADCs is limited to just a few bits. We found that the performance of the deep-learning detector is sensitive to the resolution of the input signals. And thus, it desires to train a specific deep-learning detector for each level of the resolution. Furthermore, the deep-learning detector can deliver equal or better performance than the belief propagation detector. At the high level of signal-to-noise ratio, the deeper the network is, the better performance of the detector is improved. This makes the deep-learning detector a promising technique to detect large-scale MIMO signals to achieve good performance while keeping the complexity manageable.
基于低分辨率adc的大规模MIMO系统的深度学习检测器
采用低分辨率模数转换器(adc)的大规模多输入多输出(LS-MIMO)传输方案已成为5G和未来无线网络的重要技术之一。在本文中,我们研究了当adc的分辨率被限制在几个比特时,深度学习网络在检测LS-MIMO信号方面的能力。我们发现深度学习检测器的性能对输入信号的分辨率很敏感。因此,它希望为每个分辨率级别训练一个特定的深度学习检测器。此外,深度学习检测器可以提供与信念传播检测器相同或更好的性能。在高信噪比水平下,网络越深,检测器的性能越好。这使得深度学习检测器成为一种很有前途的检测大规模MIMO信号的技术,在保持复杂性可控的同时获得良好的性能。
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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