Litcius/Paper detail

Block sparse Bayesian learning for broadband mode extraction in shallow water from a vertical array

Haiqiang Niu, Peter Gerstoft, Emma Ozanich, Zhenglin Li, Renhe Zhang, Zaixiao Gong, Haibin Wang

2020The Journal of the Acoustical Society of America44 citationsDOI

Abstract

The horizontal wavenumbers and modal depth functions are estimated by block sparse Bayesian learning (BSBL) for broadband signals received by a vertical line array in shallow-water waveguides. The dictionary matrix consists of multi-frequency modal depth functions derived from shooting methods given a large set of hypothetical horizontal wavenumbers. The dispersion relation for multi-frequency horizontal wavenumbers is also taken into account to generate the dictionary. In this dictionary, only a few of the entries are used to describe the pressure field. These entries represent the modal depth functions and associated wavenumbers. With the constraint of block sparsity, the BSBL approach is shown to retrieve the horizontal wavenumbers and corresponding modal depth functions with high precision, while a priori knowledge of sea bottom, moving source, and source locations is not needed. The performance is demonstrated by simulations and experimental data.

Topics & Concepts

WavenumberModalBroadbandA priori and a posterioriAlgorithmComputer scienceBlock (permutation group theory)Sparse arrayGeologyOpticsMathematicsPhysicsGeometryTelecommunicationsMaterials scienceEpistemologyPolymer chemistryPhilosophyUnderwater Acoustics ResearchSpeech and Audio ProcessingStructural Health Monitoring Techniques