Asymptotic Approximation of the Standard Condition Number Detector for Large Multi-Antenna Cognitive Radio Systems

Hussein Kobeissi, Y. Nasser, A. Nafkha, O. Bazzi, Y. Louët
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Abstract

Standard condition number (SCN) detector is a promising detector that can work efficiently in uncertain environments. In this paper, we consider a Cognitive Radio (CR) system with large number of antennas (eg. Massive MIMO) and we provide an accurate and simple closed form approximation for the SCN distribution using the generalized extreme value (GEV) distribution. The approximation framework is based on the moment-matching method where the expressions of the moments are approximated using bi-variate Taylor expansion and results from random matrix theory. In addition, the performance probabilities and the decision threshold are considered. Since the number of antennas and/or the number of samples used in the sensing process may frequently change, this paper provides simple form decision threshold and performance probabilities offering dynamic and real-time computations. Simulation results show that the provided approximations are tightly matched to relative empirical ones. Received on 17 May 2016; accepted on 07 May 2017; published on 31 May 2017
大型多天线认知无线电系统标准条件数检测器的渐近逼近
标准条件数检测器(SCN)是一种很有前途的检测器,可以在不确定环境中高效工作。在本文中,我们考虑了一个具有大量天线的认知无线电(CR)系统。我们使用广义极值(GEV)分布为SCN分布提供了一个精确和简单的封闭形式近似。该近似框架基于矩匹配方法,其中矩的表达式使用双变量泰勒展开和随机矩阵理论的结果逼近。此外,还考虑了性能概率和决策阈值。由于传感过程中使用的天线数量和/或样本数量可能经常变化,因此本文提供了简单形式的决策阈值和性能概率,提供了动态和实时的计算。仿真结果表明,所提供的近似值与相关经验值吻合较好。2016年5月17日收到;2017年5月7日验收;于2017年5月31日发布
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