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Mixed Near-Field and Far-Field Sources Localization Using the Uniform Linear Sensor Array

机译:使用均匀线性传感器阵列的混合近场和远场源定位

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摘要

Based on the ESPRIT-like and polynomial rooting methods, a high-performance and low computational cost localization algorithm for the mixed near-field sources (NFS) and far-field sources (FFS) is proposed using the uniform linear sensor array. First, we combine the steering vectors of the two subarrays to eliminate the range parameters and then yield a new steering vector, which only contains direction-of-arrival (DOA) information. Second, based on the ESPRIT-like and polynomial rooting methods, the DOAs of all NFSs and FFSs are obtained from the new steering vector. Third, with the DOA estimates, the range parameters are estimated depending on the polynomial rooting method again; and further according to the number of the closest to the unit circle roots, we can determine the number of sources at the same DOA direction. Finally, based on the size of the range parameters, the types (NFS or FFS) of sources can be confirmed. In addition, the proposed algorithm does not require the high-order statistics or any 1- or 2-D search and thus has low computational cost. Meanwhile, it makes full use of the array aperture and obtains outstanding estimation performance for both the DOA and range parameters. Moreover, the proposed algorithm avoids parameter match procedure. Numerical experiments show the performance of the proposed algorithm in this paper.
机译:基于类ESPRIT和多项式生根方法,提出了一种使用均匀线性传感器阵列的混合近场源(NFS)和远场源(FFS)的高性能和低计算量定位算法。首先,我们结合两个子阵列的导向向量以消除范围参数,然后产生一个新的导向向量,其中仅包含到达方向(DOA)信息。其次,基于类ESPRIT和多项式生根方法,从新的引导向量获得所有NFS和FFS的DOA。第三,利用DOA估计,再次根据多项式生根方法来估计范围参数。再根据最接近单位圆根的数量,可以确定同一DOA方向上的光源数量。最后,根据范围参数的大小,可以确定源的类型(NFS或FFS)。另外,所提出的算法不需要高阶统计量或任何一维或二维搜索,因此具有较低的计算成本。同时,它充分利用了阵列孔径,并获得了出色的DOA和距离参数估计性能。此外,该算法避免了参数匹配过程。数值实验表明了该算法的性能。

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