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A Novel PARAFAC Model for Processing the Nested Vector-Sensor Array

机译:处理嵌套矢量传感器阵列的新型PARAFAC模型

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摘要

In this paper, a novel parallel factor (PARAFAC) model for processing the nested vector-sensor array is proposed. It is first shown that a nested vector-sensor array can be divided into multiple nested scalar-sensor subarrays. By means of the autocorrelation matrices of the measurements of these subarrays and the cross-correlation matrices among them, it is then demonstrated that these subarrays can be transformed into virtual scalar-sensor uniform linear arrays (ULAs). When the measurement matrices of these scalar-sensor ULAs are combined to form a third-order tensor, a novel PARAFAC model is obtained, which corresponds to a longer vector-sensor ULA and includes all of the measurements of the difference co-array constructed from the original nested vector-sensor array. Analyses show that the proposed PARAFAC model can fully use all of the measurements of the difference co-array, instead of its partial measurements as the reported models do in literature. It implies that all of the measurements of the difference co-array can be fully exploited to do the 2-D direction of arrival (DOA) and polarization parameter estimation effectively by a PARAFAC decomposition method so that both the better estimation performance and slightly improved identifiability are achieved. Simulation results confirm the efficiency of the proposed model.
机译:本文提出了一种新颖的并行因子(PARAFAC)模型,用于处理嵌套的矢量传感器阵列。首先显示了一个嵌套的矢量传感器数组可以分为多个嵌套的标量传感器子数组。借助于这些子阵列的测量的自相关矩阵以及它们之间的互相关矩阵,可以证明这些子阵列可以转换为虚拟标量传感器均匀线性阵列(ULA)。当将这些标量传感器ULA的测量矩阵组合起来以形成三阶张量时,将获得一个新颖的PARAFAC模型,该模型对应于更长的矢量传感器ULA,并包括从原始的嵌套矢量传感器数组。分析表明,提出的PARAFAC模型可以完全利用差异共阵列的所有测量值,而不是像文献报道的模型那样完全使用部分测量值。这意味着可以通过PARAFAC分解方法充分利用差分协阵列的所有测量值来有效地进行二维到达方向(DOA)和极化参数估计,从而获得更好的估计性能和略微提高的可识别性实现。仿真结果证实了所提模型的有效性。

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