A General Framework for the Robustness of Structured Difference Coarrays to Element Failures

Chun-Lin Liu
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引用次数: 1

Abstract

Sparse arrays have received attention in array signal processing since they can resolve $\mathcal{O}\left( {{N^2}} \right)$ uncorrelated sources using N physical sensors. The reason is that the difference coarray, which consists of the differences between sensor locations, has a central uniform linear array (ULA) segment of size $\mathcal{O}\left( {{N^2}} \right)$. From the theory of the k-essentialness property and the k-fragility, the difference coarrays of some sparse arrays are not robust to sensor failures, possibly affecting the applicability of coarray-based direction-of-arrival (DOA) estimators. However, the k-essentialness property might not fully reflect the conditions under which these estimators fail. This paper proposes a framework for the robustness of array geometries based on the importance function and the generalized k-fragility. The importance function characterizes the importance of the subarrays in an array subject to some defining properties. The importance function is also compatible with the k-essentialness property and the size of the central ULA segment in the difference coarray. The latter is closely related to the performance of some coarray-based DOA estimators. Based on the importance function, the generalized k-fragility is proposed to quantify the robustness of an array. Properties of the importance function and the generalized k-fragility are also studied and demonstrated through numerical examples.
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结构差分阵对单元失效鲁棒性的一般框架
稀疏数组可以利用N个物理传感器解析$\mathcal{O}\left({{N^2}} \right)$不相关源,因此在数组信号处理中受到了广泛关注。原因是由传感器位置之间的差异组成的差分同轴阵列具有一个大小为$\mathcal{O}\left({{N^2}} \right)$的中心均匀线性阵列(ULA)段。从k-本质性和k-脆弱性理论出发,某些稀疏阵列的差分阵对传感器故障不具有鲁棒性,可能影响基于阵的DOA估计的适用性。然而,k-本质性质可能不能完全反映这些估计失败的条件。本文提出了一种基于重要性函数和广义k-脆弱性的阵列几何鲁棒性框架。重要性函数表示受某些定义属性约束的数组中子数组的重要性。重要性函数也与差分阵中的k-本质性和中央ULA段的大小相兼容。后者与一些基于队列的DOA估计器的性能密切相关。在重要函数的基础上,提出了广义k-脆弱性来量化数组的鲁棒性。研究了重要性函数和广义k-脆弱性的性质,并通过数值算例进行了论证。
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