低复杂度宽带相干频率差分波束形成方法
Low-complexity coherent frequency-difference beamforming for broadband signals
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摘要: 针对宽带信号频率差分波束形成方法方位谱背景旁瓣较高的问题, 利用频率差分方法中自积的相位信息对自积项进行修正, 提出了相干频率差分波束形成方法和仅相位相干频率差分波束形成方法。所提方法首先对不同频率宽带信号共轭相乘构造自积, 从而降低处理频率满足阵列的空间奈奎斯特采样要求, 然后对自积项空域滤波得到相位信息, 分别对自积项进行不同相干修正, 最后分别在频域及差频域相干平均得到宽带信号方位估计谱。仿真结果表明, 所提方法可有效抑制频率差分方法的额外干扰, 提高对弱目标的检测能力, 同时提升多目标场景下的目标分辨能力, 且具有较低的运算复杂度, 在工程应用中可较为容易地实现实时化处理。通过对海上试验的水平阵数据进行处理, 对比分析了传统方法与所提相干算法获得的方位历程图, 验证了相干处理算法性能的优越性。Abstract: To address the high background sidelobe level in the bearing spectrum of conventional frequency-difference beamforming for broadband signals, a coherent frequency-difference beamforming method and a phase-only coherent frequency-difference beamforming method are proposed by exploiting the phase information of the auto-product terms in the frequency-difference process. First, auto-products are constructed by conjugate multiplication of broadband signals at different frequencies, such that the resulting processing frequencies satisfy the spatial Nyquist sampling requirement of the array. Then, spatial filtering is applied to the auto-product terms to extract phase information, based on which different coherent corrections are performed on the auto-product components. Finally, coherent averaging is carried out in the frequency domain and the difference-frequency domain to obtain the broadband bearing estimation spectrum. Simulation results demonstrate that the proposed methods can effectively suppress the additional interference introduced by the frequency-difference process, improve weak target detection capability, and enhance target resolution in multi-target scenarios. Moreover, the proposed methods maintain relatively low computational complexity, making real-time implementation feasible in practical engineering applications. Experimental results using horizontal array data from sea trials further compare the bearing-time records obtained by conventional methods and the proposed coherent approaches, verifying the superior performance of the proposed coherent processing methods.
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