Performance analysis of ESPRIT-Type algorithms for co-array structures

Jens Steinwandt, F. Roemer, M. Haardt
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引用次数: 5

Abstract

In the recent field of co-array signal processing, sparse linear arrays are processed to form a virtual uniform linear array (ULA), termed co-array, that allows to resolve more sources than physical sensors. The extra degrees of freedom (DOFs) are leveraged by the assumption that the signals are uncorrelated, which requires a large sample size. In this paper, we first review the Standard ESPRIT and Unitary ESPRIT algorithms for co-array processing. Secondly, we propose a performance analysis for both methods, which is asymptotic in the effective signal-to-noise ratio (SNR), i.e., the results become exact for either high SNRs or a large sample size. Based on the derived analytical expressions, we study the effects of a small sample size such as the residual sample signal correlation and the sample noise contribution on the estimation accuracy of the proposed algorithms. Simulation results verify the derived analytical expressions.
面向共阵结构的esprit型算法性能分析
在最近的共阵信号处理领域,稀疏线性阵列被处理成一个虚拟均匀线性阵列(ULA),称为共阵,它可以解析比物理传感器更多的源。额外的自由度(dof)是通过假设信号是不相关的来利用的,这需要很大的样本量。本文首先回顾了用于协同阵列处理的标准ESPRIT算法和统一ESPRIT算法。其次,我们提出了两种方法的性能分析,其在有效信噪比(SNR)上是渐近的,即无论高信噪比还是大样本量,结果都是精确的。在导出解析表达式的基础上,研究了残差样本信号相关性和样本噪声贡献等小样本量对算法估计精度的影响。仿真结果验证了推导出的解析表达式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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