论文标题

稳健的两阶段减少差异稀疏感与副阵列的研究

Study of Robust Two-Stage Reduced-Dimension Sparsity-Aware STAP with Coprime Arrays

论文作者

Wang, X., Yang, Z., Huang, J., de Lamare, R. C.

论文摘要

与均匀的线性阵列相比,具有副阵列的时空自适应加工(Stap)算法可以提供良好的混乱抑制潜力,而空气中雷达系统的成本低。但是,这些算法的性能受到实际应用中的培训样品支持的限制。为了解决这个问题,在这项工作中提出了强大的两阶段减少差异(RD)稀疏感知的Stap算法。在第一阶段,使用所有空间通道构建了RD虚拟快照,但仅$ m $相邻的多普勒通道周围围绕目标多普勒频率,以降低信号的缓慢维度。在第二阶段,基于构造的RD虚拟快照制定了RD稀疏测量建模,在该快照中,杂物的稀疏性和杂物脊的先验知识被利用以制定RD超过词典。此外,提出了一种正交匹配追踪(OMP)样方法来恢复混乱子空间。为了设置类似OMP方法的停止参数,开发了强大的混乱等级估计方法。与最近开发的稀疏性stap算法相比,所提出的稀疏表示字典的大小要小得多,从而导致较低的复杂性。仿真结果表明,所提出的算法对于先验知识错误是可靠的,并且可以在低样本支持中提供良好的混乱抑制性能。

Space-time adaptive processing (STAP) algorithms with coprime arrays can provide good clutter suppression potential with low cost in airborne radar systems as compared with their uniform linear arrays counterparts. However, the performance of these algorithms is limited by the training samples support in practical applications. To address this issue, a robust two-stage reduced-dimension (RD) sparsity-aware STAP algorithm is proposed in this work. In the first stage, an RD virtual snapshot is constructed using all spatial channels but only $m$ adjacent Doppler channels around the target Doppler frequency to reduce the slow-time dimension of the signal. In the second stage, an RD sparse measurement modeling is formulated based on the constructed RD virtual snapshot, where the sparsity of clutter and the prior knowledge of the clutter ridge are exploited to formulate an RD overcomplete dictionary. Moreover, an orthogonal matching pursuit (OMP)-like method is proposed to recover the clutter subspace. In order to set the stopping parameter of the OMP-like method, a robust clutter rank estimation approach is developed. Compared with recently developed sparsity-aware STAP algorithms, the size of the proposed sparse representation dictionary is much smaller, resulting in low complexity. Simulation results show that the proposed algorithm is robust to prior knowledge errors and can provide good clutter suppression performance in low sample support.

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