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EM Based Stochastic Maximum Likelihood Approach for Localization of Near-field Sources in 3-D

机译:基于EM的3D近场源定位随机最大似然方法

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The goal of this paper is to estimate the locations of unknown sources in 3-D space from the data collected by a 2-D rectangular array. Various studies employing different estimation methods under near-field and far-field assumptions were presented in the past. In most of the previous studies, location estimations of sources at the same plane with the antenna array were carried out by using algorithms having constraints for various situations indeed. In this study, location estimations of sources that are placed at a different plane from the antenna array is given. In other words, locations of sources in 3-D space is estimated by using a 2-D rectangular array. Maximum likelihood (ML) method is chosen as the estimator since it has a better resolution performance than the conventional methods in the presence of less number and highly correlated source signal samples and low signal to noise ratio. Besides these superiorities, stability, asymptotic unbiasedness, asymptotic minimum variance properties as well as no restrictions on the antenna array are motivated the application of ML approach. Despite these advantages, ML estimator has computational complexity. However, this problem is tackled by the application of Expectation/Maximization (EM) iterative algorithm which converts the multidimensional search problem to one dimensional parallel search problems in order to prevent computational complexity. EM iterative algorithm is therefore adapted to the localization problem by the data (complete data) assumed to arrive to the sensors separately instead of observed data (incomplete data). Furthermore, performance of the proposed algorithm is tested by deriving Cramer-Rao bounds based on the concentrated likelihood approach. Finally, the applicability and effectiveness of the proposed algorithm is illustrated by some numerical simulations.
机译:本文的目的是根据二维矩形阵列收集的数据来估算未知空间在3-D空间中的位置。过去提出了各种在近场和远场假设下采用不同估计方法的研究。在大多数先前的研究中,通过使用确实具有针对各种情况的约束的算法来进行与天线阵列在同一平面上的源的位置估计。在这项研究中,给出了与天线阵列位于不同平面的源的位置估计。换句话说,通过使用2D矩形阵列估算3D空间中源的位置。选择最大似然(ML)方法作为估计量,因为在存在较少数量和高度相关的源信号样本以及低信噪比的情况下,它比常规方法具有更好的分辨率性能。除了这些优点之外,稳定性,渐近无偏性,渐近最小方差性质以及对天线阵列的限制也促进了ML方法的应用。尽管有这些优点,但ML估计器仍具有计算复杂性。但是,此问题通过使用期望/最大化(EM)迭代算法解决,该算法将多维搜索问题转换为一维并行搜索问题,以防止计算复杂性。因此,EM迭代算法通过假定分别到达传感器的数据(完整数据)而不是观测数据(不完整数据)来适应定位问题。此外,通过基于集中似然方法推导Cramer-Rao边界来测试所提出算法的性能。最后,通过数值模拟说明了该算法的适用性和有效性。

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