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Primary User Localization in Cognitive Radio Networks Using Sectorized Antennas

机译:使用扇区化天线认知无线电网络中的主要用户本地化

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Information about primary user (PU) location can enable several key capabilities in cognitive radio (CR) networks. In this paper we consider PU localization using received-signal-strength (RSS) and direction-of-arrival (DoA) estimates from sectorized antenna. Abstracting from practical antenna types, we define a sectorized antenna as an antenna that can be set to different operating modes, each of which resulting in a selectivity of those signals that arrive from within a certain, continuous range of angles, i.e. a sector. We propose a low complexity algorithm, the MaxE algorithm, that provides coarse RSS and DoA estimates, and derive the asymptotic bounds for its root mean square error (RMSE) as a function of the antenna parameters. We then propose a modified Stansfield algorithm with a novel RSS-based weighting scheme based on the Stansfield DoA fusion method, which obtains PU location estimates from measurements of the MaxE algorithm. The modified Stansfield algorithm improves the accuracy of the Stansfield algorithm with equal weights. Simulation results studying the impact of various system parameters, such as number of sectors, number of samples and signal-to-noise ratio, on the DoA/RSS estimation and localization accuracy are presented to provide design guidelines for localization systems based on sectorized antennas.
机译:有关主用户(PU)位置的信息可以在认知无线电(CR)网络中启用几个关键功能。在本文中,我们考虑使用接收信号 - 强度(RSS)和来自扇区化天线的估计的PU本地化和到达方向(DOA)估计。从实际天线类型中抽象,我们将扇形天线定义为可以设置为不同的操作模式的天线,每个天线每个都导致从一定,连续的角度范围内到达的那些信号的选择性,即扇区。我们提出了一种低复杂性算法,即提供粗RSS和DOA估计的MAXE算法,并为其根部均方误差(RMSE)导出作为天线参数的函数的渐近界限。然后,我们提出了一种基于Stansfield DOA融合方法的新型RSS的加权方案修改了斯坦菲德算法,其从MaxE算法的测量获得了PU位置估计。修改的稳态算法提高了具有相等权重的Stysfield算法的准确性。仿真结果研究了各种系统参数的影响,例如扇区数量,样品数量和信噪比,在DOA / RS估计和定位准确度上提出,为基于扇区化天线的定位系统提供设计指南。

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