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A Cooperative Spectrum Sensing Method Based on Empirical Mode Decomposition and Information Geometry in Complex Electromagnetic Environment

机译:基于经验模式分解和复杂电磁环境中信息几何的协作频谱传感方法

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摘要

In a complex electromagnetic environment, there are caseswhere the noise is uncertain and difficult to estimate,which poses a great challenge to spectrum sensing systems. This paper proposes a cooperative spectrum sensing method based on empirical mode decomposition and information geometry. The method mainly includes two modules, a signal feature extraction module and a spectrum sensingmodule based on K-medoids. In the signal feature extractionmodule, firstly, the empiricalmodal decomposition algorithm is used to denoise the signals collected by the secondary users, so as to reduce the influence of the noise on the subsequent spectrum sensing process. Further, the spectrum sensing problem is considered as a signal detection problem. To analyze the problem more intuitively and simply, the signal after empirical mode decomposition is mapped into the statistical manifold by using the information geometry theory, so that the signal detection problem is transformed into geometric problems. Then, the corresponding geometric tools are used to extract signal features as statistical features. In the spectrum sensing module, the Kmedoids clustering algorithm is used for training. A classifier can be obtained after a successful training, thereby avoiding the complex threshold derivation in traditional spectrumsensing methods. In the experimental part, we verified the proposed method and analyzed the experimental results, which show that the proposed method can improve the spectrum sensing performance.
机译:在复杂的电磁环境中,噪声不确定且难以估计的情况下,对频谱感测系统产生了巨大的挑战。本文提出了一种基于经验模式分解和信息几何的协作频谱传感方法。该方法主要包括两个模块,信号特征提取模块和基于K-yemoids的频谱传感尺寸。在信号特征提取模块中,首先,仿真二极分解算法用于去代表由二级用户收集的信号,以减少噪声对后续频谱感测过程的影响。此外,频谱感测问题被认为是信号检测问题。为了更直观地分析问题,简单地,通过使用信息几何理论将经验模式分解之后的信号映射到统计歧管中,使得信号检测问题被转换为几何问题。然后,相应的几何工具用于将信号特征提取为统计特征。在频谱传感模块中,kMedoids聚类算法用于训练。可以在成功的训练之后获得分类器,从而避免了传统的光谱敏感方法中的复杂阈值衍生。在实验部分中,我们验证了该方法并分析了实验结果,表明该方法可以提高光谱传感性能。

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