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Performance analysis of direction finding with large arrays and finite data

机译:大阵列有限数据测向性能分析

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This paper considers analysis of methods for estimating the parameters of narrow-band signals arriving at an array of sensors. This problem has important applications in, for instance, radar direction finding and underwater source localization. The so-called deterministic and stochastic maximum likelihood (ML) methods are the main focus of this paper. A performance analysis is carried out assuming a finite number of samples and that the array is composed of a sufficiently large number of sensors. Several thousands of antennas are not uncommon in, e.g., radar applications. Strong consistency of the parameter estimates is proved, and the asymptotic covariance matrix of the estimation error is derived. Unlike the previously studied large sample case, the present analysis shows that the accuracy is the same for the two ML methods. Furthermore, the asymptotic covariance matrix of the estimation error coincides with the deterministic Cramer-Rao bound. Under a certain assumption, the ML methods can be implemented by means of conventional beamforming for a large enough number of sensors. We also include a simple simulation study, which indicates that both ML methods provide efficient estimates for very moderate array sizes, whereas the beamforming method requires a somewhat larger array aperture to overcome the inherent bias and resolution problem.
机译:本文考虑分析估计到达传感器阵列的窄带信号参数的方法。这个问题在例如雷达测向和水下源定位中具有重要的应用。所谓的确定性和随机最大似然(ML)方法是本文的重点。假设样本数量有限且阵列由足够多的传感器组成,则进行性能分析。在例如雷达应用中,成千上万的天线并不少见。证明了参数估计的强一致性,并推导了估计误差的渐近协方差矩阵。与先前研究的大样本案例不同,本分析表明两种ML方法的准确性相同。此外,估计误差的渐近协方差矩阵与确定性Cramer-Rao边界一致。在一定的假设下,可以通过常规的波束形成对足够多的传感器实施ML方法。我们还包括一个简单的模拟研究,该研究表明这两种ML方法都能对非常中等的阵列大小提供有效的估计,而波束成形方法则需要更大的阵列孔径来克服固有的偏差和分辨率问题。

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