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Toward Overcoming a Hidden Terminal Problem Arising in MIMO Cognitive Radio Networks: A Tensor-Based Spectrum Sensing Algorithm

机译:克服MIMO认知无线电网络中出现的隐藏终端问题:基于张量的频谱感知算法

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摘要

As the main enablers of cognitive radio (CR), numerous spectrum sensing techniques have been proposed to date. Despite the numerous techniques, the existing spectrum sensing techniques tend to fail in rendering an efficient spectrum sensing whenever a hidden terminal problem arises. Meanwhile, this problem can happen at any time in any severely fading primary-to-secondary channels resulting in very low primary signal-to-noise ratios (SNRs) and hence ineffective detection of the primary user. Toward overcoming this problem, by introducing a tensor-based hypothesis testing framework, this paper proposes an efficient tensor-based detector (TBD) for a multiple-input multiple-output (MIMO) CR networks over multi-path fading channels. For the proposed spectrum sensing technique, insightful asymptotic performance analyses are provided and Monte-Carlo simulations that assess its performance have been conducted. These simulations corroborate that TBD outperforms the generalized likelihood ratio test (GLRT) detector and the maximum-minimum eigenvalue (MME) detector, especially in the very low SNR regime which is a manifestation of the hidden terminal problem. Moreover, the simulations validate the derived asymptotic performance charcterizations.
机译:作为认知无线电(CR)的主要推动力,迄今为止已经提出了许多频谱传感技术。尽管有许多技术,但是只要出现隐藏的终端问题,现有的频谱感测技术往往无法提供有效的频谱感测。同时,在任何严重衰落的主从信道中,任何时候都可能发生此问题,从而导致非常低的主信噪比(SNR),从而导致对主用户的检测无效。为了克服这个问题,本文通过引入基于张量的假设测试框架,为多径衰落信道上的多输入多输出(MIMO)CR网络提出了一种有效的基于张量的检测器(TBD)。对于所提出的频谱感测技术,提供了有见地的渐近性能分析,并进行了评估其性能的蒙特卡洛仿真。这些仿真证明,TBD优于广义似然比测试(GLRT)检测器和最大最小特征值(MME)检测器,尤其是在非常低的SNR体制下,这是隐藏终端问题的体现。此外,仿真验证了所得到的渐近性能特征。

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