A collaborative spectrum sensing algorithm for cognitive radio based on related vector machine

Baolong Yuan, Yi Ning, F. Kan
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Abstract

Due to the presence of tall buildings, mountains and other high occlusions in mountainous cities, this will produce fading phenomena, which will result in weak or even unrecognizable signals from the main users. To address this problem, a Related Vector Machine (RVM) based spectrum sensing method is proposed in this paper. First, the cognitive radio users (CR users) selection mechanism based on location correlation is designed, and some CR users with the best sensing performance are selected to participate in the sensing of the primary user (PU). Second, some parameters that reflect the characteristics of the PU signal are selected as the sample parameters. Finally, the signal samples received for both the presence and absence of the PU are sensed by using RVM. The experimental results show that the proposed algorithm has high classification detection performance in each low signal-to-noise ratio case, and effectively realizes the perception of the PU signal.
基于相关向量机的认知无线电协同频谱感知算法
在山地城市,由于高楼、山脉等高遮挡物的存在,会产生衰落现象,导致主要用户发出的信号微弱甚至无法识别。针对这一问题,提出了一种基于相关向量机(RVM)的频谱感知方法。首先,设计了基于位置相关性的认知无线电用户(CR用户)选择机制,选择感知性能最好的CR用户参与主用户(PU)的感知;其次,选取一些反映PU信号特性的参数作为采样参数。最后,使用RVM检测PU存在和不存在时接收到的信号样本。实验结果表明,该算法在各种低信噪比情况下都具有较高的分类检测性能,有效地实现了对PU信号的感知。
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