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Cramer-Rao bounds for coprime and other sparse arrays, which find more sources than sensors

机译:CRAMER-RAO用于共同和其他稀疏阵列的界限,它找到比传感器更多的来源

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摘要

The Cramer-Rao bound (CRB) offers a lower bound on the variances of unbiased estimates of parameters, e.g., directions of arrival (DOA) in array processing. While there exist landmark papers on the study of the CRB in the context of array processing, the closed-form expressions available in the literature are not easy to use in the context of sparse arrays (such as minimum redundancy arrays (MRAs), nested arrays, or coprime arrays) for which the number of identifiable sources D exceeds the number of sensors N. Under such situations, the existing literature does not spell out the conditions under which the Fisher information matrix is nonsingular, or the condition under which specific closed-form expressions for the CRB remain valid. This paper derives a new expression for the CRB to fill this gap. The conditions for validity of this expression are expressed as the rank condition of a matrix defined based on the difference coarray. The rank condition and the closed-form expression lead to a number of new insights. For example, it is possible to prove the previously known experimental observation that, when there are more sources than sensors, the CRB stagnates to a constant value as the SNR tends to infinity. It is also possible to precisely specify the relation between the number of sensors and the number of uncorrelated sources such that these conditions are valid. In particular, for nested arrays, coprime arrays, and MRAs, the new expressions remain valid for D = O (N-2), the precise detail depending on the specific array geometry. (C) 2016 Elsevier Inc. All rights reserved.
机译:Cramer-Rao绑定(CRB)在参数的无偏见估计的差异方面提供下限,例如,阵列处理中的到达方向(DOA)。虽然存在关于CRB在阵列处理的背景下的研究的地标论文,但文献中可用的封闭形式表达式在稀疏阵列的上下文中不易使用(例如最小冗余阵列(MRAS),嵌套数组或者协调阵列),其可识别源D的数量超过传感器N的数量。在这种情况下,现有文献不会拼出Fisher信息矩阵是非奇异性的条件,或者特定关闭的条件CRB的表单表达式仍然有效。本文导出了CRB填补了这个差距的新表达式。该表达式的有效性的条件表示为基于差异CoArray定义的矩阵的等级条件。等级条件和闭合形式表达导致许多新的见解。例如,可以证明先前已知的实验观察,当存在比传感器有更多的源时,随着SNR倾向于无穷大,CRB持续到恒定值。还可以精确地指定传感器数量与不相关源的数量之间的关系,使得这些条件有效。特别是,对于嵌套数组,Coprime阵列和MRA,新表达式对D = O(n-2)保持有效,这取决于特定阵列几何体。 (c)2016年Elsevier Inc.保留所有权利。

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