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首页> 外文期刊>IEEE Transactions on Signal Processing >Robustness of Difference Coarrays of Sparse Arrays to Sensor Failures—Part II: Array Geometries
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Robustness of Difference Coarrays of Sparse Arrays to Sensor Failures—Part II: Array Geometries

机译:稀疏阵列的差分协阵列对传感器故障的鲁棒性-第二部分:阵列几何

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In array processing, sparse arrays are capable of resolving O(N-2) uncorrelated sources with N sensors. Sparse arrays have this property because they possess uniform linear array (ULA) segments of size O(N-2) in the difference coarray, defined as the differences between sensor locations. However, the coarray structure of sparse arrays is susceptible to sensor failures and the reliability of sparse arrays remains a significant but challenging topic for investigation. In the companion paper, a theory of the k-essential family, the k-fragility, and the k-essential Sperner family were presented not only to characterize the patterns of k faulty sensors that shrink the difference coarray, but also to provide a number of insights into the robustness of arrays. This paper derives closed-form characterizations of the k-essential Sperner family for several commonly used array geometries, such as ULA, minimum redundancy arrays (MRA), minimum holes arrays (MHA), Cantor arrays, nested arrays, and coprime arrays. These results lead to many insights into the relative importance of each sensor, the robustness of these arrays, and the DOA estimation performance in the presence of sensor failure. Broadly speaking, ULAs are more robust than coprime arrays, while coprime arrays are more robust than maximally economic sparse arrays, such as MRA, MHA, Cantor arrays, and nested arrays.
机译:在数组处理中,稀疏数组能够使用N个传感器解析O(N-2)不相关的源。稀疏阵列具有此属性,因为它们在差分协阵列中具有大小为O(N-2)的均匀线性阵列(ULA)段,定义为传感器位置之间的差异。但是,稀疏阵列的共阵列结构易受传感器故障的影响,而稀疏阵列的可靠性仍然是一个重要但具有挑战性的研究课题。在随附的论文中,提出了k本质家族,k易碎性和k本质Sperner家族的理论,不仅是为了表征k个缩小差异协阵列的故障传感器的模式,而且还提供了一些阵列健壮性的见解。本文针对几种常用的阵列几何,例如ULA,最小冗余阵列(MRA),最小孔阵列(MHA),Cantor阵列,嵌套阵列和共质子阵列,得出了k必不可少的Sperner系列的闭式特征。这些结果使人们对每个传感器的相对重要性,这些阵列的鲁棒性以及在传感器出现故障时的DOA估计性能有了深入的了解。广义上讲,ULA比互质数组更健壮,而互质数组比最大经济型稀疏数组(例如MRA,MHA,Cantor数组和嵌套数组)更健壮。

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