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A Type-2 Block-Component-Decomposition Based 2D AOA Estimation Algorithm for an Electromagnetic Vector Sensor Array

机译:电磁矢量传感器阵列的基于类型2块分解的二维AOA估计算法

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摘要

This paper investigates a two-dimensional angle of arrival (2D AOA) estimation algorithm for the electromagnetic vector sensor (EMVS) array based on Type-2 block component decomposition (BCD) tensor modeling. Such a tensor decomposition method can take full advantage of the multidimensional structural information of electromagnetic signals to accomplish blind estimation for array parameters with higher resolution. However, existing tensor decomposition methods encounter many restrictions in applications of the EMVS array, such as the strict requirement for uniqueness conditions of decomposition, the inability to handle partially-polarized signals, etc. To solve these problems, this paper investigates tensor modeling for partially-polarized signals of an L-shaped EMVS array. The 2D AOA estimation algorithm based on rank-(L1, L2,  · ) BCD is developed, and the uniqueness condition of decomposition is analyzed. By means of the estimated steering matrix, the proposed algorithm can automatically achieve angle pair-matching. Numerical experiments demonstrate that the present algorithm has the advantages of both accuracy and robustness of parameter estimation. Even under the conditions of lower SNR, small angular separation and limited snapshots, the proposed algorithm still possesses better performance than subspace methods and the canonical polyadic decomposition (CPD) method.
机译:本文研究了基于Type-2块成分分解(BCD)张量建模的电磁矢量传感器(EMVS)阵列的二维到达角(2D AOA)估计算法。这种张量分解方法可以充分利用电磁信号的多维结构信息来完成对高分辨率阵列参数的盲估计。但是,现有的张量分解方法在EMVS阵列的应用中遇到很多限制,例如对分解唯一性条件的严格要求,无法处理部分极化的信号等。为解决这些问题,本文研究了部分张量建模形EMVS阵列的极化信号。开发了基于秩-(L1,L2,··)BCD的二维AOA估计算法,并分析了分解的唯一性条件。借助于估计的转向矩阵,所提出的算法可以自动实现角度对匹配。数值实验表明,该算法具有参数估计的准确性和鲁棒性。即使在较低的SNR,较小的角度间隔和有限的快照的条件下,所提出的算法仍具有比子空间方法和规范多Adadic分解(CPD)方法更好的性能。

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