Spectrum sensing based on Maximum Eigenvalue approximation in cognitive radio networks

Adeel Ahmed, Yim-Fun Hu, J. Noras, P. Pillai
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引用次数: 7

Abstract

Eigenvalue based spectrum sensing schemes such as Maximum Minimum Eigenvalue (MME), Maximum Energy Detection (MED) and Energy with Minimum Eigenvalue (EME) have higher spectrum sensing performance without requiring any prior knowledge of Primary User (PU) signal but the decision hypothesis used in these eigenvalue based sensing schemes depends on the calculation of maximum eigenvalue from covariance matrix of measured signal. Calculation of the covariance matrix followed by eigenspace analysis of the covariance matrix is a resource intensive operation and takes overhead time during critical process of spectrum sensing. In this paper we propose a new blind spectrum sensing scheme based on the approximation of the maximum eigenvalue using state of the art results from Random Matrix Theory (RMT). The proposed sensing scheme has been evaluated through extensive simulations on wireless microphone signals and the proposed scheme shows higher probability of detection (Pd) performance. The proposed spectrum sensing also shows higher detection performance as compared to energy detection scheme and RMT based sensing schemes such as MME and EME.
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认知无线电网络中基于最大特征值逼近的频谱感知
基于特征值的频谱感知方案,如最大最小特征值(MME)、最大能量检测(MED)和最小特征值能量检测(EME),在不需要对主用户(PU)信号有任何先验知识的情况下,具有较高的频谱感知性能,但这些基于特征值的频谱感知方案所使用的决策假设依赖于从测量信号的协方差矩阵中计算最大特征值。协方差矩阵的计算和协方差矩阵的特征空间分析是一项资源密集型的操作,在频谱感知的关键过程中占用了大量的时间。本文利用随机矩阵理论(RMT)的最新研究成果,提出了一种基于最大特征值逼近的盲频谱感知方案。通过对无线麦克风信号的大量仿真对所提出的传感方案进行了评估,所提出的方案具有较高的检测概率(Pd)性能。与能量检测方案和基于RMT的传感方案(如MME和EME)相比,所提出的频谱传感也显示出更高的检测性能。
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