Robust DOA Estimation with Distorted Sensors

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Detail(s)

Original languageEnglish
Pages (from-to)5730-5741
Journal / PublicationIEEE Transactions on Aerospace and Electronic Systems
Volume60
Issue number5
Online published30 Apr 2024
Publication statusPublished - Oct 2024

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Abstract

The distorted sensors in an array system willdegrade the signal-to-interference-plus-noise ratio of received signal, resulting in performance deterioration. Without knowing the number of source signals, this paper focuses on direction of-arrival (DOA) estimation for a uniform linear array where a small fraction of sensors are distorted. Meanwhile, sourceenumeration and detection of distorted sensors are realized. We model the array system with distorted sensors introducing unknown gain and phase errors to the output signals, where the observations corresponding to the distorted sensors are treated asoutliers. In this way, we tackle the DOA estimation task under the framework of low-rank and row-sparse matrix decomposition. We directly adopt the rank function and 2,0-norm to obtain the low-rank and row-sparse matrices, respectively, instead ofutilizing their surrogates as in the conventional methods. Therefore, the approximation bias is avoided. In detail, rank and 2,0-norm optimization is converted to 2,0-norm minimization. To solve it, we propose a shifted median absolute deviation based strategy, achieving adaptive hard-thresholding control. The resultant optimization problem is then handled by proximal block coordinate descent, and the convergences of the objective function value and the solution sequence are proved. Extensive simulation results demonstrate the superior performance of the proposedalgorithm in terms of DOA estimation, source number estimation, and distorted sensor detection. © 2024 IEEE.

Research Area(s)

  • DOA estimation, source number estimation, distorted sensor detection, ℓ0-norm minimization, proximal block coordinate descent, convergence

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