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首页> 外文期刊>IEEE Transactions on Signal Processing >Components Separation Algorithm for Localization and Classification of Mixed Near-Field and Far-Field Sources in Multipath Propagation
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Components Separation Algorithm for Localization and Classification of Mixed Near-Field and Far-Field Sources in Multipath Propagation

机译:多径传播中近场和远场混合源的定位和分类的成分分离算法

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摘要

In recent years, the sources localization has noticed an increase in research conducted on the problem of mixed far-field sources (FFSs) and near-field sources (NFSs). The main assumption of the existing researches is that the signals should be uncorrelated. Therefore, they cannot be used for multipath environments. The present paper provides a method called components separation algorithm (CSA) for the localization of multiple mixed FFSs and NFSs, including uncorrelated, lowly correlated and coherent signals. Firstly, by constructing one special cumulant matrix, and using a MUSIC-based technique, the noncoherent DOA vector (NDOAV) is extracted. By constructing another special cumulant matrix, and with respect to NDOAV, an estimate of the range, as well as a signal classification is obtained for noncoherent sources. Then, by estimating their kurtosis, the noncoherent component and consequently the coherent one of the second cumulant matrix is obtained. Finally, by introducing a novel approach based on squaring, projection, spatial smoothing, array interpolation transform and coherent component restoring, the parameters of coherent signals in each coherent group are estimated separately. The CSA prevents severe loss of the aperture. Furthermore, it does not require any pairing. The simulation results validate its satisfactory performance in terms of estimation accuracy, resolution, computational complexity, reasonable classification, and also its robustness against lowly correlated sources.
机译:近年来,震源的本地化已经注意到有关混合远场震源(FFS)和近场震源(NFS)问题的研究有所增加。现有研究的主要假设是信号应该不相关。因此,它们不能用于多路径环境。本文提供了一种称为分量分离算法(CSA)的方法来定位多个混合FFS和NFS,包括不相关,低相关和相干的信号。首先,通过构造一个特殊的累积量矩阵,并使用基于MUSIC的技术,提取非相干DOA向量(NDOAV)。通过构造另一个特殊的累积量矩阵,并针对NDOAV,可以获得非相干源的范围估计值以及信号分类。然后,通过估计其峰度,获得第二累积量矩阵的非相干分量并因此获得相干的一个。最后,通过引入基于平方,投影,空间平滑,阵列插值变换和相干分量恢复的新颖方法,分别估计每个相干组中相干信号的参数。 CSA可以防止光圈严重损失。此外,它不需要任何配对。仿真结果在估计精度,分辨率,计算复杂度,合理分类以及针对低相关性源的鲁棒性方面验证了其令人满意的性能。

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