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Primary User Localization and Its Error Analysis in 5G Cognitive Radio Networks

机译:5G认知无线电网络中的主要用户定位及其错误分析

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摘要

It is crucial to estimate the location of primary users (PUs) for the development of cognitive radio networks (CRNs). Great efforts have been made in the past to develop localization algorithms with better accuracy but low computation. In CRNs, PUs do not cooperate with secondary users (SUs), which makes the localization task challenging. Due to this feature, received signal strength (RSS)-based PU localization techniques, such as centroid localization (CL) and multidimensional scaling (MDS), are the best candidates. However, most of the CL- and MDS-based PU localization methods consider omnidirectional wireless communication. Therefore, in this paper we propose a PU localization method which uses the RSS values at different sectors of the SU antenna, where a scoring strategy is applied to all the sectors to estimate the PU location. Two different scoring functions are proposed. Numerical results show that the proposed localization method is robust to PU locations and channel conditions. The proposed method is validated in terms of various network parameters, such as the number of SUs, beamwidth of the SU sectors, size of the grid, and placement of the PUs. Results show that increasing the number of SUs improve the localization accuracy due to an increased number of measurements. However, the localization accuracy degrades with an increase in the beamwidth of the SU sector because the faraway grid points also participate in the localization. The results are also compared with the conventional CL for PU localization. Compared with conventional CL, it offers a significant improvement in the performance.
机译:估计主要用户(PU)的位置对于认知无线电网络(CRN)的发展至关重要。过去,人们一直在努力开发精度更高但计算量较小的定位算法。在CRN中,PU不与次级用户(SU)合作,这使本地化任务具有挑战性。由于此功能,基于接收信号强度(RSS)的PU定位技术(例如质心定位(CL)和多维缩放(MDS))是最佳的选择。但是,大多数基于CL和MDS的PU定位方法都考虑了全向无线通信。因此,在本文中,我们提出了一种PU定位方法,该方法使用SU天线不同扇区上的RSS值,其中对所有扇区均采用评分策略来估计PU位置。提出了两种不同的评分功能。数值结果表明,所提出的定位方法对PU位置和信道条件具有鲁棒性。根据各种网络参数(例如SU的数量,SU扇区的波束宽度,网格的大小以及PU的位置)验证了该方法的有效性。结果表明,由于测量数量的增加,SU数量的增加提高了定位精度。但是,由于遥远的网格点也参与定位,所以定位精度随着SU扇区的波束宽度的增加而降低。还将结果与用于PU定位的常规CL进行了比较。与传统的CL相比,它在性能上有很大的提高。

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