Efficient sparse parameter estimation based methods for two-dimensional DOA estimation of coherent signals

Hyung-Rae Park, Jian Li
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引用次数: 6

Abstract

: This study addresses the problem of direction-of-arrival (DOA) estimation of coherent signals via sparse parameter estimation. Since many sparse methods provide good performances regardless of signal correlations and array geometry, they can be considered as candidates for DOA estimation of coherent signals impinging on a sensor array with arbitrary geometry. However, their straightforward applications require high computational loads especially for two-dimensional (2D) DOA estimation. Two efficient methods based on sparse parameter estimation are herein presented; one is a combined approach of sparse estimation and the RELAX algorithm extended for 2D DOA estimation and the other relies on the adaptive 2D grid refinement and power update control. Numerical simulations are performed to demonstrate the efficiency of the proposed methods using a uniform circular array for both 1D and 2D DOA estimation cases. It is shown that sparse asymptotic minimum variance (SAMV)-RELAX, a combined approach of SAMV and RELAX, outperforms SAMV and multi-stage SAMV in 2D scenarios without suffering from plateau effects for off-grid signals and that its computational load is significantly lower than those of SAMV and multi-stage SAMV. In addition, SAMV-RELAX does not require the difficult selection of grid parameters for fine DOA estimation unlike the multi-stage approach.
基于稀疏参数估计的相干信号二维DOA估计方法
本研究利用稀疏参数估计方法解决相干信号的到达方向估计问题。由于许多稀疏方法在不考虑信号相关性和阵列几何形状的情况下都能提供良好的性能,因此它们可以被认为是任意几何形状的传感器阵列上相干信号的DOA估计的候选方法。然而,它们的直接应用需要很高的计算负荷,特别是对于二维(2D) DOA估计。提出了两种基于稀疏参数估计的有效方法;一种是将稀疏估计与扩展的RELAX算法相结合进行二维DOA估计,另一种是基于自适应二维网格细化和功率更新控制。通过数值模拟,验证了该方法在一维和二维DOA估计情况下的有效性。研究表明,基于SAMV和RELAX的稀疏渐近最小方差(SAMV)-RELAX算法在2D场景下的性能优于SAMV和多级SAMV算法,且不受离网信号平台效应的影响,其计算量明显低于SAMV和多级SAMV算法。此外,SAMV-RELAX不需要像多阶段方法那样难以选择网格参数来进行精细的DOA估计。
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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