Xiaowei Liang, Bin Shen, Taiping Cui, Longyang Huang
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引用次数: 0
摘要
由于主用户(pu)和次用户(su)之间存在非合作共存机制,单纯依靠传统的频谱感知技术寻求次频谱机会往往是不可靠的。作为一种辅助信息,PU和SU之间的相互位置信息可以帮助判断SU对LFB (license frequency band)的接入是否会对PU造成干扰。为了识别不同位置的LFB状态,我们提出了一种低复杂度的基于邻域的加权质心定位(NB-WCL)算法,首次解决了认知无线网络(CRN)中的SU定位问题。因此,该算法能够根据su的定位结果,随后为su设置lfb访问标志。分析了二维位置估计算法的均方根误差(RMSE)。理论分析和实验结果表明,该算法比现有的传统定位算法具有更强的鲁棒性和更好的误差性能。该算法可作为CRN中LFB状态识别的一种实际有效的候选解决方案。
Weighted Centroid Location Based Spectrum Status Identification in Cognitive Radio Network
Due to the non-cooperative coexistence mechanism between the primary users (PUs) and secondary users (SUs), seeking secondary spectrum opportunities is usually unreliable by merely relying on traditional spectrum sensing technology. As one kind of auxiliary information, the mutual location information of the PUs and SUs can assist in determining whether the SU's access to the licensed frequency band (LFB) will interfere the PU. Aiming to identify the LFB status at different locations, we propose a low-complexity neighborhood-based weighted centroid localization (NB-WCL) algorithm to first solve the SU localization problem in the cognitive radio network (CRN). The proposed algorithm is therefore capable of setting the LFB-access flag for the SUs subsequently, based on their positioning results. The root mean square error (RMSE) of the proposed two-dimensional position estimation algorithm is analyzed. Theoretical analysis and experimental results suggest that the proposed algorithm outperforms some existing conventional localization algorithms with more robustness and better error performance. The proposed algorithm can serve as a practically effective candidate solution for LFB status identification in the CRN.