基于多域联合稀疏重构的间歇采样转发干扰抑制算法

    An Interrupted Sampling Repeater Jamming Suppression Algorithm Based on Multi-Domain Joint Sparse Reconstruction

    • 摘要: 针对间歇采样转发干扰(Interrupted Sampling Repeater Jamming, ISRJ),常规的信号重构类算法高度依赖参数估计的准确性且计算复杂度高,滤波器类算法则对干扰和目标的可分性要求较高,无法应对目标和干扰重叠的复杂场景。基于上述问题,本文提出了一种基于多域联合稀疏重构的间歇采样转发干扰抑制算法。将目标信号在发射信号的时延字典矩阵中稀疏表示,并利用时频域中ISRJ和目标的幅度差异,将干扰信号在时频域中稀疏表示,为了高效求解该优化问题,使用基于交替方向乘子法(Alternating Direction Method of Multipliers, ADMM)的求解器进行迭代求解。最后通过仿真结果表明,当目标和干扰在时频域重叠时,与传统的max-TF(max-Time Frequency, max-TF)滤波器算法相比,所提算法具有更高的鲁棒性和信干比改善因子(Signal-to-Jamming Ratio Improvement Factor, SJRIF)。

       

      Abstract: ​ Conventional signal reconstruction-based algorithms for countering Interrupted Sampling Repeater Jamming (ISRJ) are highly dependent on the accuracy of parameter estimation and suffer from high computational complexity. And filter-based algorithms require high separability between the jamming and target signals, rendering them ineffective in complex scenarios where the target and jamming signals overlap. To address these issues, this paper proposes a novel ISRJ suppression algorithm based on multi-domain joint sparse reconstruction. The target signal is sparsely represented using a time-delay dictionary matrix constructed from the transmitted signal. Leveraging the amplitude difference between the ISRJ and the target in the time-frequency domain, the jamming signal is sparsely represented in this domain. To efficiently solve this optimization problem, a solver based on the Alternating Direction Method of Multipliers (ADMM) is employed for iterative solution. Simulation results demonstrate that the proposed algorithm achieves higher robustness and a superior Signal-to-Jamming Ratio Improvement Factor (SJRIF) compared to the traditional max-Time Frequency (max-TF) filter algorithm, particularly when the target and jamming signals overlap in the time-frequency domain.

       

    /

    返回文章
    返回