Passive source localization based on multipath arrival angles with a vertical line array using sparse Bayesian learning

Author:

Qi Yubo1,Zhou Shihong1,Luo Zailei2,Liu Changpeng1,Du Shuyuan1ORCID,Dun Jincong1,Zhou Lei1

Affiliation:

1. State Key Laboratory of Acoustics, Institute of Acoustics, Chinese Academy of Sciences 1 , Beijing 100190, People's Republic of China

2. Advanced Interdisciplinary Technology Research Center, National Innovation Institute of Defense Technology 2 , Beijing 100071, People's Republic of China

Abstract

In deep water, multipath time delays or frequency-domain interference periods of the acoustic intensity combined with multipath arrival angles are typically used for source localization. However, depth estimate is hard to achieve for a narrowband source at a remote part of the direct arrival zone as the required bandwidth increases with the source range. In this paper, a passive source localization method with a vertical line array, suitable for both broadband and narrowband sources, is proposed. Based on the variation trends of multipath angles with source range and depth, source localization is achieved by only matching the measured angles of the direct path and surface-reflected path with model-based values of a predefined grid of potential source locations. Considering the angle resolution limited by the array aperture and the presence of coherent multipath, sparse Bayesian learning is used and compared with the conventional beamforming and the minimum-variance distortionless-response beamforming to resolve and estimate the multipath angles. Simulations and experimental data of explosive sources collected by a vertical line array in the South China Sea are carried out to illustrate the method and demonstrate the performance.

Funder

National Natural Science Foundation of China

Publisher

Acoustical Society of America (ASA)

Subject

Acoustics and Ultrasonics,Arts and Humanities (miscellaneous)

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