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Dictionary Learning and Waveform Design for Dense False Target Jamming Suppression

机译:致密虚假靶带中文化学习和波形设计的混蛋抑制

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摘要

-For linear frequency modulation (LFM) pulse radars, dense false targets generated by new system jamming seriously damage the performance of such radar systems. In order to avoid the influence of dense false target jamming, an anti-jamming strategy combining waveform design and sparse decomposition are proposed. Specifically, the radar system transmits a random pulse initial phase (RPIP) signal, and uses peak detection method to detect the deception jamming. The phase distribution of the RPIP signal is partially randomly perturbed for a jamming, and we use optimization algorithm to design a phase perturbed LFM (PPLFM) signal with good autocorrelation characteristics. Using the correlation function of the designed signal, the target sample set and the jamming sample set are constructed, and the target echo and the jamming signal are separated using designed dictionary learning method to achieve suppression of dense false target jamming and range side-lobes. The effectiveness of the proposed method is verified by numerical simulation, and the results proved that this proposed method maintains good anti-jamming performance under low signal-tonoise ratio (SNR).
机译:- 对于线性频率调制(LFM)脉冲雷达,新系统干扰产生的密集假目标严重损坏了这种雷达系统的性能。为了避免致密的假靶干扰的影响,提出了组合波形设计和稀疏分解的抗干扰策略。具体地,雷达系统发送随机脉冲初始相位(RPIP)信号,并使用峰值检测方法来检测欺骗干扰。 RPIP信号的相位分布是部分随机扰乱的干扰,我们使用优化算法设计具有良好自相关特性的相位扰动的LFM(PPLFM)信号。使用设计信号的相关函数,构造目标样品组和干扰样品组,并且使用设计的字典学习方法分离目标回波和干扰信号,以实现抑制密集的假靶干带干扰和范围侧叶。通过数值模拟验证了所提出的方法的有效性,结果证明,该提出的方法在低信号 - 温度比(SNR)下保持良好的抗干扰性能。

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