基于小波变换的认知无线电宽带频谱感知

Z. Tian, G. Giannakis
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引用次数: 643

摘要

在认知无线电网络中,任何形式的动态频谱管理之前的第一个认知任务是无线环境中频谱空洞的感知和识别。本文提出了一种基于小波变换的宽带信道高效频谱感知方法。宽频带上的信号频谱被分解成子带的基本构建块,这些子带在频率上具有很好的局部不规则特征。小波变换作为分析奇异性和边缘的强大数学工具,用于检测和估计局部频谱不规则结构,其中包含子带频率位置和功率谱密度的重要信息。在此基础上,基于小波变换模量的局部最大值和多尺度小波积,发展了几种宽带频谱传感技术。所提出的传感技术提供了一种有效的无线电传感体系结构来识别和定位信号频谱中的频谱孔
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A Wavelet Approach to Wideband Spectrum Sensing for Cognitive Radios
In cognitive radio networks, the first cognitive task preceding any form of dynamic spectrum management is the sensing and identification of spectrum holes in wireless environments. This paper develops a wavelet approach to efficient spectrum sensing of wideband channels. The signal spectrum over a wide frequency band is decomposed into elementary building blocks of subbands that are well characterized by local irregularities in frequency. As a powerful mathematical tool for analyzing singularities and edges, the wavelet transform is employed to detect and estimate the local spectral irregular structure, which carries important information on the frequency locations and power spectral densities of the subbands. Along this line, a couple of wideband spectrum sensing techniques are developed based on the local maxima of the wavelet transform modulus and the multi-scale wavelet products. The proposed sensing techniques provide an effective radio sensing architecture to identify and locate spectrum holes in the signal spectrum
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