论文标题

认知无线电的智能反射表面辅助频谱传感

Intelligent Reflecting Surface-Aided Spectrum Sensing for Cognitive Radio

论文作者

Lin, Shaoe, Zheng, Beixiong, Chen, Fangjiong, Zhang, Rui

论文摘要

Spectrum Sensing是认知无线电(CR)的关键启用技术,它提供了有关频谱可用性的基本信息。但是,由于严重的无线通道褪色和路径损失,在CR或二级用户(SU)接收的主要用户(PU)信号实际上可能太弱,无法进行可靠的检测。为了解决这个问题,我们在这封信中考虑了新的智能反射表面(IRS)辅助频谱传感方案,用于利用IRS的较大光圈和被动横梁成型的收益,以提高SU接收到的PU信号强度,以促进其频谱感应。具体而言,通过根据给定代码簿动态地改变IRS反射,其反射信号功率在SU上有很大变化,该信号功率可用于机会性信号检测。此外,我们通过将接收的信号功率值组合在不同的IRS反射上,提出了一种加权能量检测方法,从而显着改善了检测性能。与不同的基准方案相比,模拟结果验证了所提出的IRS ADED频谱传感方案的性能增益。

Spectrum sensing is a key enabling technique for cognitive radio (CR), which provides essential information on the spectrum availability. However, due to severe wireless channel fading and path loss, the primary user (PU) signals received at the CR or secondary user (SU) can be practically too weak for reliable detection. To tackle this issue, we consider in this letter a new intelligent reflecting surface (IRS)-aided spectrum sensing scheme for CR, by exploiting the large aperture and passive beamforming gains of IRS to boost the PU signal strength received at the SU to facilitate its spectrum sensing. Specifically, by dynamically changing the IRS reflection over time according to a given codebook, its reflected signal power varies substantially at the SU, which is utilized for opportunistic signal detection. Furthermore, we propose a weighted energy detection method by combining the received signal power values over different IRS reflections, which significantly improves the detection performance. Simulation results validate the performance gain of the proposed IRS-aided spectrum sensing scheme, as compared to different benchmark schemes.

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