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首页> 外文期刊>The Journal of Engineering >Robust space-time adaptive processing based on covariance matrix reconstruction and steering vector correction
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Robust space-time adaptive processing based on covariance matrix reconstruction and steering vector correction

机译:基于协方差矩阵重建和转向矢量校正的鲁棒时空自适应处理

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摘要

Clutter presents considerable heterogeneity in forward-looking airborne radar (FLAR) applications and conventional space-time adaptive processing (STAP) methods are sensitive to model mismatch. As a result, when a strong target signal contaminates the training samples, despite the use of guard cells, the performance of conventional STAP methods degrades significantly. In this study, a robust method, which involves reconstructing a target-free covariance matrix and correcting the presumed steering vector to prevent target cancellation in FLAR, is proposed. First, the target-free covariance matrix is reconstructed through integrating the spatial-temporal spectrum over a sector separated from the desired frequency and direction of targets. Subsequently, the mismatch between presumed steering vector and actual steering vector is corrected via quadratic optimisation. In addition, the processing scheme is applied to real-measured clutter data, and the experimental results validate the effectiveness of the proposed method.
机译:杂波在前瞻性的空中雷达(FLAR)应用中呈现相当大的异质性,并且传统的时空自适应处理(STAP)方法对模型不匹配敏感。结果,当强大的目标信号污染训练样本时,尽管使用保护电池,但传统的STAP方法的性能显着降低。在该研究中,提出了一种稳健的方法,涉及重建无目标协方差矩阵并校正假定的转向载体以防止扰动中的目标取消。首先,通过将空间频谱集成在与目标的所需频率和方向分开的扇区上的空间频谱来重建目标 - 无协方差矩阵。随后,通过二次优化校正假定转向载体和实际转向载体之间的不匹配。另外,处理方案应用于实际测量的杂波数据,实验结果验证了所提出的方法的有效性。

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