Abstract

Direction-of-arrival (DOA) estimation in a spatially isotropic white noise background has been widely researched for decades. However, in practice, such as underwater acoustic ambient noise in shallow water, the ambient noise can be spatially colored, which may severely degrade the performance of DOA estimation. To solve this problem, this paper proposes a DOA estimation method based on sparse Bayesian learning with the modified noise model using acoustic vector hydrophone arrays. Firstly, an applicable linear noise model is established by using the prolate spheroidal wave functions (PSWFs) to characterize spatially colored noise and exploiting the excellent performance of the PSWFs in extrapolating band-limited signals to the space domain. Then, using the proposed noise model, an iterative method for sparse spectrum reconstruction is developed under a sparse Bayesian learning (SBL) framework to fit the actual noise field received by the acoustic vector hydrophone array. Finally, a DOA estimation algorithm under the modified noise model is also presented, which has a superior performance under spatially colored noise. Numerical results validate the effectiveness of the proposed method.

Highlights

  • Array signal processing by passive sonar systems is an important topic for underwater targets monitoring, locating and tracking [1]

  • A performance evaluation system for vector hydrophone arrays has been proposed in the literature [2], and, as a result, some traditional beamforming and direction of arrival (DOA) estimation algorithms have been extended to vector hydrophone arrays

  • Sparse signal recovery (SSR) based methods have been applied to solve the problem of DOA estimation in recent years, and the sparse Bayesian learning technique has been introduced in a spatial isotropic white noise background and obtained good performance both theoretically and experimentally [38,39,40,41,42,43]

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Summary

Introduction

Array signal processing by passive sonar systems is an important topic for underwater targets monitoring, locating and tracking [1]. D. Zoltowski [4,5,6] have carried out intensive research in the field of high-resolution DOA estimation using vector hydrophone arrays. There is little in the literature about the DOA estimation under the spatially colored noise using vector hydrophone arrays. This paper considers introducing high-resolution DOA estimation into the vector hydrophone array under spatially colored noise. Sparse signal recovery (SSR) based methods have been applied to solve the problem of DOA estimation in recent years, and the sparse Bayesian learning technique has been introduced in a spatial isotropic white noise background and obtained good performance both theoretically and experimentally [38,39,40,41,42,43].

Signal Model
Noise Model
Time Domain Fitting of Finite Bandwidth Signals with Prolate Spheroidal Wav
Sparse Bayesian Learning Based DOA Estimation under Spatially Colored Noise
Complexity Analysis
Property Analysis
Results of the Spatial
Results of Spatial
Spatial spectrumunder underdirectional directional noise
Statistical
It can low spatially
Conclusions
Full Text
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