认知网络中基于实时似然比的频谱感知算法

Yanyan Ge, Jiajun Chen, Dongmei Li, Shibing Zhang, Lili Guo, Yonghong Chen
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引用次数: 0

摘要

为了提高衰落信道下的频谱感知性能,提出了一种基于实时似然比的频谱感知算法。在算法中,我们根据虚警概率和检测概率的加权因子来设置决策阈值。然后,基于认知网络的历史信息和主用户、信道的实时信息,计算接收信号的循环频谱峰值的似然比;我们将似然比与决策阈值进行比较,以确定主要用户是否存在。克服了信道衰落对频谱感知的影响,有效地平衡了认知网络的虚警概率和检测概率。仿真结果表明,在衰落信道中,该算法比传统算法具有约3db的信噪比优势。
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Spectrum Sensing Algorithm Based on Real-time Likelihood Ratio in Cognitive Networks
In order to improve the spectrum sensing performance in the fading channel, a real-time likelihood ratio-based sensing algorithm is proposed. In the algorithm, we set the decision threshold according to the weighted factors of false alarm probability and detection probability. And then, we count the likelihood ratio of the cyclic spectrum peak of the signal received, which is based on the historical information of cognitive networks and the real-time information of the primary user and channel. We compare the likelihood ratio with the decision threshold to make the decision whether the primary user is present or absent. It overcomes the effect of channel fading on the spectrum sensing, and effectively trades off between the false alarm probability and detection probability of cognitive networks. Simulation results show that the algorithm proposed has about 3 dB signal-noise-ratio advantage over the conventional one in the fading channel.
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