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Main-lobe clutter suppression algorithm based on rotating beam method and optimal sample selection for small-aperture HFSWR

机译:基于旋转光束法和小孔径最优样本选择的主瓣杂波抑制算法

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摘要

When the azimuths of clutter and targets are in the same beam bin, the clutter is called main-lobe clutter of the corresponding targets. In small-aperture high-frequency surface wave radar (HFSWR) systems, the angle spectrum of main-lobe clutter suffers from severe broadening under the influence of the smaller array aperture, which can affect the detection performance of moving vessels. This situation occurs because the target vessels are more easily submerged in this broadened angle spectrum and can hardly be detected. In this study, a novel two-dimensional cascaded algorithm for main-lobe clutter that is based on combining an adaptive selection strategy for the optimal training samples and the rotating spatial beam method is proposed to suppress the clutter in both the angle domain and range domain. First, the correlation between training samples is analysed with the angle-Doppler joint eigenvector method. Then, the samples that are similar to the cell under test serve as training samples. Finally, the secondary beams that have Euclidean distances closest to the main beam are chosen. The experimental results of simulation and measured data confirm that the proposed approach provides far superior suppression performance and has strong robustness against array amplitude-phase errors and beam deviation.
机译:当杂波和目标的方位角在同一波束仓中时,该杂波称为相应目标的主瓣杂波。在小孔径高频表面波雷达(HFSWR)系统中,主瓣杂波的角谱在较小的阵列孔径的影响下会严重展宽,这会影响移动血管的检测性能。发生这种情况是因为目标血管更容易淹没在此广角光谱中,并且很难被检测到。在这项研究中,提出了一种新颖的二维主瓣杂波级联算法,该算法将最优训练样本的自适应选择策略与旋转空间波束法相结合,以抑制角度域和范围域中的杂波。首先,使用角度多普勒联合特征向量法分析训练样本之间的相关性。然后,将与被测细胞相似的样品用作训练样品。最后,选择具有最接近主光束的欧几里得距离的副光束。仿真和实测数据的实验结果证实,该方法具有出色的抑制性能,对阵列幅度相位误差和光束偏移具有很强的鲁棒性。

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