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Compressive sensing-based coprime array direction-of-arrival estimation

机译:基于压缩感知的共质数阵列到达方向估计

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A coprime array has a larger array aperture as well as increased degrees-of-freedom (DOFs), compared with a uniform linear array with the same number of physical sensors. Therefore, in a practical wireless communication system, it is capable to provide desirable performance with a low-computational complexity. In this study, the authors focus on the problem of efficient direction-of-arrival (DOA) estimation, where a coprime array is incorporated with the idea of compressive sensing. Specifically, the authors first generate a random compressive sensing kernel to compress the received signals of coprime array to lower-dimensional measurements, which can be viewed as a sketch of the original received signals. The compressed measurements are subsequently utilised to perform high-resolution DOA estimation, where the large array aperture of the coprime array is maintained. Moreover, the authors also utilise the derived equivalent virtual array signal of the compressed measurements for DOA estimation, where the superiority of coprime array in achieving a higher number of DOFs can be retained. Theoretical analyses and simulation results verify the effectiveness of the proposed methods in terms of computational complexity, resolution, and the number of DOFs.
机译:与具有相同数量的物理传感器的均匀线性阵列相比,共质数阵列具有更大的阵列孔径以及更大的自由度(DOF)。因此,在实际的无线通信系统中,它能够以低计算复杂度提供期望的性能。在这项研究中,作者专注于有效到达方向(DOA)估计的问题,其中将互质数阵列与压缩感测的思想结合在一起。具体来说,作者首先生成一个随机压缩感测内核,以将共质数数组的接收信号压缩为较低维度的测量值,可以将其视为原始接收信号的草图。压缩后的测量值随后用于执行高分辨率DOA估计,其中维持了互质矩阵的大阵列孔径。此外,作者还利用压缩测量的推导等效虚拟阵列信号进行DOA估计,从而可以保留共质数阵列在实现更多数量DOF方面的优势。理论分析和仿真结果验证了所提方法在计算复杂度,分辨率和自由度数量方面的有效性。

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