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Automatic modulation classification of radar signals using the generalised time-frequency representation of Zhao, Atlas and Marks

机译:使用Zhao,Atlas和Marks的广义时频表示对雷达信号进行自动调制分类

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摘要

The automatic modulation classification (AMC) of a detected radar signal is a challenging task of an electronic intelligence (ELINT) receiver in a non-cooperative environment. With the aim to realise the AMC of five kinds of radar signals under negative signal-to-noise ratio (SNR), the authors have gained four characteristic features, namely, the ratio of sum of absolute slope, the coefficient of polynomial curve fitting, the number of ridge stairs and the normalised coefficient of difference of the extreme, from the generalised time-frequency representation of Zhao, Atlas and Marks (ZAM-GTFR). Simulation results show the probabilities of successful recognition (PSRs) can reach 90% when SNR is above 22 dB. The algorithm is suitable for the ELINT receiver when the detection range is critical.
机译:在非合作环境中,检测到的雷达信号的自动调制分类(AMC)是电子情报(ELINT)接收器的一项艰巨任务。为了在负信噪比(SNR)下实现五种雷达信号的AMC,作者获得了四个特征,即绝对斜率之比,多项式曲线拟合系数,从Zhao,Atlas和Marks(ZAM-GTFR)的广义时频表示出发,确定脊阶数和极差的归一化系数。仿真结果表明,当SNR高于22 dB时,成功识别(PSR)的概率可以达到90%。当检测范围很关键时,该算法适用于ELINT接收器。

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