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Distributed Adaptive Largest Eigenvalue Detection with SNR Weighted Observations

机译:SNR加权观测值的分布式自适应最大特征值检测

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Cognitive radio (CR) systems have to be able to detect the presence of a primary user (PU) signal by sensing the spectrum area of interest. Due to radiowave propagation effects like fading and shadowing, spectrum sensing is often complicated, because the PU signal can be attenuated in a particular area. In this paper, we explore a distributed spectrum sensing approach that exploits the largest eigenvalue of correlation matrices (CMs) that are adaptively estimated, based on the combine and adapt least (CTA) type of diffusion method with no fusion center (FC). More specifically, CR nodes exchange also observations with a subset of neighbouring nodes and combine the neighbouring observations based on the locally estimated signal to noise ratio (SNR) values. We analyse the resulting detection performance and verify the theoretical findings through simulations.
机译:认知无线电(CR)系统必须能够通过感测感兴趣的频谱区域来检测主要用户(PU)信号的存在。由于诸如衰落和阴影之类的无线电波传播效应,频谱感测通常很复杂,因为PU信号可能会在特定区域内衰减。在本文中,我们探索一种分布式频谱感知方法,该方法利用基于组合和自适应最小(CTA)类型的无融合中心(FC)扩散方法,利用自适应估计的相关矩阵(CM)的最大特征值。更具体地,CR节点还与邻近节点的子集交换观察结果,并且基于本地估计的信噪比(SNR)值来组合邻近观察结果。我们分析所得的检测性能,并通过仿真验证理论发现。

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