Non-Gaussian Signal Detection: How Much Can Massive MIMO Help?

T. Peken, R. Tandon, T. Bose
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Abstract

The radio frequency spectrum is occupied with authorized and unauthorized user activities which might include noise and interference. Detection of signals-of-interest (SOI) and differentiation from non-signals-of-interest (NSOI) are therefore crucial for frequency use management. There is a wide variety of signals in a desired radio spectrum band, which leads to the application of Signal Intelligence (SIGINT) to detect and identify signals in real-time. In this paper, we study the problem of non-Gaussian signal detection when the receivers are configured with a large number of antennas (or the massive antenna regime). First, we investigate the performance of signal detection with massive MIMO when the transmitted signals are generated from a Gaussian distribution. For the detection of Gaussian signals, we consider the Neyman-Pearson (NP) detector. Then, we focus on the performance of non-Gaussian signal detection with massive MIMO, which is one of the main objectives of this paper. We show that the NP detector gives poor performance for non-Gaussian signals in low signal-to- noise-ratio (SNR). Therefore, we propose to use a bispectrum detector, which contains the Gaussian noise and reveals the non-Gaussian information that exists in the signal. We present the theoretical analysis for asymptotic behavior of Probability of False Alarm (PFA) and Probability of Detection (PD) when the transmitter sends Gaussian and non-Gaussian signals. We show the performance of signal detection (for both Gaussian and non-Gaussian signals) as a function of the number of antennas and sampling rate. We also obtain the scaling behavior of the performance in the massive antenna regime.
非高斯信号检测:大规模MIMO有多大帮助?
无线电频谱被授权和未经授权的用户活动占用,这些活动可能包括噪音和干扰。因此,感兴趣信号(SOI)的检测和与非感兴趣信号(NSOI)的区分对于频率使用管理至关重要。在期望的无线电频段内存在各种各样的信号,这导致了信号智能(SIGINT)的应用,以实时检测和识别信号。本文研究了接收机配置大量天线(或大量天线区)时的非高斯信号检测问题。首先,我们研究了传输信号为高斯分布时的大规模MIMO信号检测性能。对于高斯信号的检测,我们考虑了Neyman-Pearson (NP)检测器。然后,我们重点研究了大规模MIMO的非高斯信号检测性能,这是本文的主要目标之一。我们证明了NP检测器在低信噪比(SNR)下对非高斯信号的性能较差。因此,我们建议使用双谱检测器,它包含高斯噪声并揭示信号中存在的非高斯信息。给出了发射机发送高斯和非高斯信号时虚警概率(PFA)和检测概率(PD)的渐近行为的理论分析。我们展示了信号检测的性能(对于高斯和非高斯信号)作为天线数量和采样率的函数。我们还得到了在大天线条件下性能的标度特性。
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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