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Adaptive cross wigner-ville distribution for parameter estimation of digitally modulated signals

机译:自适应交叉维纳-维纳分布用于数字调制信号的参数估计

摘要

Spectrum monitoring is important, not only to regulatory bodies for spectrum management, but also to the military for intelligence gathering. In recent years, it has become part of spectrum sensing process which is the key in cognitive radio system. Among the features of a spectrum monitoring system is to obtain spectrum usage characteristics and determining signal modulation parameters. All these required a powerful signal analysis technique suitable for use with classifier network. The loss of phase information in the Quadratic Time–Frequency Distributions (QTFDs) makes it an incomplete solution as Phase Shift Keying (PSK) modulation is widely employed in many wireless communication applications nowadays. Therefore, Cross Time–Frequency Distribution (XTFD) which can provide localised phase information is proposed in this research. The Adaptive Windowed Cross Wigner– Ville Distribution (AW–XWVD) and Adaptive Smoothed Windowed Cross Wigner– Ville Distribution (ASW–XWVD) are developed to analyse a broader class of signals such as PSK, Quadrature Amplitude Modulation (QAM), Amplitude Shift Keying (ASK) and Frequency Shift Keying (FSK) signals without any prior knowledge. In non–cooperative environment, two kernel adaptation methods are proposed: local and global adaptive. The developed XTFD is proven to be an efficient estimator as it meets the Cramer–Rao Lower Bound (CRLB) for phase estimation at Signal-to- Noise Ratio (SNR) =4 dB and Instantaneous Frequency (IF) estimation at SNR =–3 dB. Other TFDs such as the S–transform never meet the CRLB in both phase and frequency estimation. A complete signal analysis and classification system is implemented by combining the AW–XWVD and ASW–XWVD for signal analysis. In the presence of Additive White Gaussian Noise, the classifier gives 90% correct classification for all the signals at SNR of about 6 dB. Thus, it has been demonstrated that the XTFD is a complete solution for the analysis and classification of digitally modulated signals.
机译:频谱监测不仅对监管机构进行频谱管理很重要,而且对军队进行情报搜集也很重要。近年来,它已成为频谱感知过程的一部分,这是认知无线电系统的关键。频谱监视系统的功能之一是获得频谱使用特性并确定信号调制参数。所有这些都需要一种适用于分类器网络的强大信号分析技术。相位时频分布(QTFD)中相位信息的丢失使它成为不完整的解决方案,因为如今相移键控(PSK)调制已广泛应用于许多无线通信应用中。因此,本研究提出了可以提供局部相位信息的跨时频分布(XTFD)。自适应开窗交叉维格纳-维勒分布(AW-XWVD)和自适应平滑开窗交叉维格纳-维勒分布(ASW-XWVD)用于分析更广泛的信号类别,例如PSK,正交幅度调制(QAM),幅度移位键控(ASK)和频移键控(FSK)信号,无需任何先验知识。在非合作环境中,提出了两种内核自适应方法:局部自适应和全局自适应。事实证明,开发的XTFD满足Cramer-Rao下界(CRLB)的信噪比(SNR)= 4 dB时的相位估计和SNR = –3时的瞬时频率(IF)估计,是一种有效的估计器D b。其他TFD(例如S变换)在相位和频率估计上都无法满足CRLB的要求。通过组合AW–XWVD和ASW–XWVD进行信号分析,可以实现一个完整的信号分析和分类系统。在存在加性高斯白噪声的情况下,分类器针对SNR约为6 dB的所有信号给出90%正确的分类。因此,已证明XTFD是用于数字调制信号的分析和分类的完整解决方案。

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    Chee Yen Mei;

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  • 年度 2013
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