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Sparsity-based space-time adaptive processing in random pulse repetition frequency and random arrays radar

机译:随机脉冲重复频率和随机阵列雷达中基于稀疏性的时空自适应处理

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摘要

In this paper, we focus on sparsity-based space-time adaptive processing (STAP) in airborne radar with compressive sampling both in Doppler and spatial domains. Compared with the uniform pluses repetition Frequency (UPRF) and uniform arrays (UA) radar, the designed radar transmits random pulse repetition interval pulses and receives the returns with random arrays, which reduces the number of pulses in one coherent processing interval (CPI) and brings down the number of sensors. Firstly, we build the sparse model with spatial-temporal compressive sampling, and analyze the restricted isometry property (RIP) for the steering dictionary. Then, we recover the clutter angle-Doppler profile via existing sparse recovery algorithms, and design the space-time filter to mitigate the clutter. Simulations are conducted to illustrate the effectiveness of the sparsity-based STAP in random PRF and random arrays radar.
机译:在本文中,我们专注于机载雷达中基于稀疏性的时空自适应处理(STAP),并在多普勒和空间域进行压缩采样。与统一脉冲重复频率(UPRF)雷达和均匀阵列(UA)雷达相比,设计的雷达发送随机脉冲重复间隔脉冲并接收具有随机阵列的返回信号,从而减少了一个相干处理间隔(CPI)中的脉冲数,并且减少了传感器的数量。首先,我们利用时空压缩采样建立了稀疏模型,并分析了转向字典的受限等距特性(RIP)。然后,我们通过现有的稀疏恢复算法恢复杂波角多普勒轮廓,并设计时空滤波器以减轻杂波。进行仿真以说明基于稀疏性的STAP在随机PRF和随机阵列雷达中的有效性。

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