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Joint Fr FTFFT basis compressed sensing and adaptive iterative optimization for countering suppressive jamming

机译:基于Fr FT - FFT 的联合压缩感测和自适应迭代优化,以应对抑制性干扰

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Accurate suppressive jamming is a prominent problem faced by radar equipment. It is difficult to solve signal detection problems for extremely low signal to noise ratios using traditional signal processing methods. In this study, a joint sensing dictionary based compressed sensing and adaptive iterative optimization algorithm is proposed to counter suppressive jamming in information domain. Prior information of the linear frequency modulation ( LFM ) and suppressive jamming signals are fully used by constructing a joint sensing dictionary. The jamming sensing dictionary is further adaptively optimized to perfectly match actual jamming signals. Finally, through the precise reconstruction of the jamming signal, high detection precision of the original LFM signal is realized. The construction of sensing dictionary adopts the Pei type fast fractional Fourier decomposition method, which serves as an efficient basis for the LFM signal. The proposed adaptive iterative optimization algorithm can solve grid mismatch problems brought on by undetermined signals and quickly achieve higher detection precision. The simulation results clearly show the effectiveness of the method.
机译:精确的抑制性干扰是雷达设备面临的突出问题。使用传统的信号处理方法很难解决极低信噪比的信号检测问题。在这项研究中,提出了一种基于联合感知字典的压缩感知和自适应迭代优化算法来对抗信息域中的抑制性干扰。通过构建联合传感字典,可以充分利用线性调频(LFM)和抑制性干扰信号的先验信息。干扰感测字典进一步进行了自适应优化,以完全匹配实际的干扰信号。最后,通过对干扰信号的精确重构,实现了原始LFM信号的高检测精度。感知字典的构建采用Pei型快速分数阶傅里叶分解法,为LFM信号的有效基础。提出的自适应迭代优化算法可以解决信号不确定带来的网格失配问题,并能快速实现较高的检测精度。仿真结果清楚地表明了该方法的有效性。

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