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A comparison study of radar emitter identification based on signal transients

机译:基于信号瞬变的雷达辐射源识别比较研究

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Radar emitter identification has been studied for decades using library-based techniques that rely on pre-existing knowledge of parameters such as radio frequency (RF), pulse amplitude, pulse width, intentional pulse modulation type, or pulse repetition intervals. However, current radar emitter identification techniques will not be sufficient against cognitive radars due to their parameter agility and adaptability. In this study, five radar emitter identification fingerprints based on radar signal transients were analyzed and compared. These fingerprints include: (1) fractal dimension estimation of signal transients, (2) natural measures of signal transients, (3) polynomial regression of a signal transient energy trajectory acquired by its 4th order cumulants, (4) RF fingerprints based on the energy trajectory characteristics of signal transients, and (5) intrinsic shape of the rising edge of a pulse. The analysis and comparison were performed using K-Nearest Neighbours, Quadratic Discriminant Analysis, and relative entropy over a dataset from five different radar emitters. The advantages and drawbacks of each technique are highlighted. Our results show that (2), (4) and (5) achieve very competitive emitter identification performance using the selected radar datasets and classification algorithms. This study also demonstrates that the optimal emitter identification performance is dependent on the combination of RF fingerprints and classification algorithms.
机译:数十年来,已经使用基于库的技术对雷达辐射器的识别进行了研究,这些技术依赖于已有的参数知识,例如射频(RF),脉冲幅度,脉冲宽度,故意脉冲调制类型或脉冲重复间隔。然而,由于其参数敏捷性和适应性,当前的雷达发射器识别技术还不足以对抗认知雷达。在这项研究中,分析和比较了基于雷达信号瞬变的五个雷达发射器识别指纹。这些指纹包括:(1)信号瞬态的分形维数估计;(2)信号瞬态的自然度量;(3)由其四阶累积量获取的信号瞬态能量轨迹的多项式回归;(4)基于能量的RF指纹信号瞬变的轨迹特性,以及(5)脉冲上升沿的固有形状。使用K最近邻,二次判别分析和来自五个不同雷达辐射源的数据集的相对熵进行了分析和比较。突出了每种技术的优缺点。我们的结果表明,使用选定的雷达数据集和分类算法,(2),(4)和(5)可以获得非常有竞争力的发射器识别性能。这项研究还表明,最佳的发射器识别性能取决于RF指纹和分类算法的组合。

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