USRP N210 demonstration of wideband sensing and blind hierarchical modulation classification

M. Laghate, S. Chaudhari, D. Cabric
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引用次数: 10

Abstract

Blind modulation classification problem is particularly difficult when the exact frequency band of the signal is unknown since the modulation classifiers require accurate estimates of the signal parameters such as center frequency, bandwidth, and SNR. In this work, we demonstrate a hierarchical classification tree that filters and classifies a received signal as AM, FM, 4/16/64-QAM, 2/4/8-PAM, 4/8/16-PSK, DSSS, and FSK. Coarse estimates of signal parameters are obtained from energy detection and are refined using cyclostationary estimators. Cumulants and cyclostationarity are used to classify AM and FM while a reduced complexity Kuiper test is used for differentiating modulation level for QAM, PAM, and PSK. The effects of multipath are countered using a blind equalizer. The classifier is implemented in C++ using GNURadio libraries and is demonstrated using a USRP N210.
宽带传感和盲分层调制分类的USRP N210演示
当信号的确切频带未知时,盲调制分类问题尤其困难,因为调制分类器需要准确估计信号参数,如中心频率、带宽和信噪比。在这项工作中,我们展示了一种分层分类树,该树过滤并分类接收到的信号为AM, FM, 4/16/64-QAM, 2/4/8-PAM, 4/8/16-PSK, DSSS和FSK。从能量检测中得到信号参数的粗估计,并使用循环平稳估计器进行细化。累积量和循环平稳性用于对AM和FM进行分类,而降低复杂度的Kuiper测试用于区分QAM, PAM和PSK的调制水平。使用盲均衡器来抵消多径的影响。该分类器使用GNURadio库在c++中实现,并使用USRP N210进行演示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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