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Modified Blind Equalization Algorithm Based on Cyclostationarity for Contaminated Reference Signal in Airborne PBR

机译:基于循环平稳性的机载PBR中污染参考信号的改进盲均衡算法

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摘要

In airborne passive bistatic radar (PBR), the reference channel toward the opportunity illuminator is applied to receive the direct-path signal as the reference signal. In the actual scenario, the reference signal is contaminated by the multipath signals easily. Unlike the multipath signal in traditional ground PBR system, the multipath signal in the airborne PBR owns not only the time delay but also the Doppler frequency. The contaminated reference signal can cause the spatial-temporal clutter spectrum to expand and the false targets to appear. The performance of target detection is impacted severely. However, the existing blind equalization algorithm is unavailable for the contaminated reference signal in airborne PBR. In this paper, the modified blind equalization algorithm is proposed to suppress the needless multipath signal and restore the pure reference signal. Aiming at the Doppler frequency of multipath signal, the high-order moment information and the cyclostationarity of source signal are exploited to construct the new cost function for the phase constraint, and the complex value back propagation (BP) neural network is exploited to solve the constraint optimization problem for the better convergence. In final, the simulation experiments are conducted to prove the feasibility and superiority of proposed algorithm.
机译:在机载无源双基地雷达(PBR)中,指向机会照明器的参考通道用于接收直接路径信号作为参考信号。在实际情况下,参考信号容易被多径信号污染。与传统地面PBR系统中的多径信号不同,机载PBR中的多径信号不仅具有时间延迟,而且具有多普勒频率。被污染的参考信号可能会导致时空杂波频谱扩展并且出现虚假目标。目标检测的性能受到严重影响。但是,对于机载PBR中受污染的参考信号,现有的盲均衡算法不可用。本文提出了一种改进的盲均衡算法,以抑制不必要的多径信号并恢复纯参考信号。针对多径信号的多普勒频率,利用高阶矩信息和源信号的循环平稳性来构造相位约束的新代价函数,并利用复值反向传播(BP)神经网络来解决该问题。约束优化问题,以获得更好的收敛性。最后,通过仿真实验证明了该算法的可行性和优越性。

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