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首页> 外文期刊>Mathematical Problems in Engineering >Radar Signal Emitter Recognition Based on Combined Ensemble Empirical Mode Decomposition and the Generalized S-Transform
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Radar Signal Emitter Recognition Based on Combined Ensemble Empirical Mode Decomposition and the Generalized S-Transform

机译:基于组合经验模态分解和广义S变换的雷达信号发射源识别

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摘要

Present radar signal emitter recognition approaches suffer from a dependency on prior information. Moreover, modern emitter recognition must meet the challenges associated with low probability of intercept technology and other obscuration methodologies based on complex signal modulation and must simultaneously provide a relatively strong ability for extracting weak signals under low SNR values. Therefore, the present article proposes an emitter recognition approach that combines ensemble empirical mode decomposition (EEMD) with the generalized S-transform (GST) for promoting enhanced recognition ability for radar signals with complex modulation under low signal-to-noise ratios in the absence of prior information. The results of Monte Carlo simulations conducted using various mixed signals with additive Gaussian white noise are reported. The results verify that EEMD suppresses the occurrence of mode mixing commonly observed using standard empirical mode decomposition. In addition, EEMD is shown to extract meaningful signal features even under low SNR values, which demonstrates its ability to suppress noise. Finally, EEMD-GST is demonstrated to provide an obviously better time-frequency focusing property than that of either the standard S-transform or the short-time Fourier transform.
机译:当前的雷达信号发射器识别方法受到对先验信息的依赖。此外,现代的发射器识别必须解决与基于复杂信号调制的拦截技术和其他模糊方法的低概率相关的挑战,并且必须同时提供相对强的在低SNR值下提取弱信号的能力。因此,本文提出了一种结合整体经验模态分解(EEMD)和广义S变换(GST)的发射器识别方法,以在不存在低信噪比的情况下提高复杂调制雷达信号的识别能力。先前的信息。报道了使用具有加性高斯白噪声的各种混合信号进行的蒙特卡洛模拟的结果。结果证实,EEMD抑制了使用标准经验模态分解通常观察到的模态混合的发生。此外,EEMD被证明即使在低SNR值下也能提取有意义的信号特征,这证明了其抑制噪声的能力。最后,与标准S变换或短时傅立叶变换相比,EEMD-GST被证明具有明显更好的时频聚焦特性。

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