Matched-field source localization using sparsely-coded neural network and data-model mixed training

Source localization is a basic problem in underwater acoustics. Many solving approaches have been developed, and the matched-field processing (MFP) is one of the mostly-studied. However, MFP is sensitive to the mismatch problem and performs well only when the knowledge of ocean environment is accurate. Machine learning learns directly from the observation and can be designed to learn a generic model suitable for different scenarios. In this paper, source localization is viewed as a machine learning problem and a matched-field source localization model is learned by training a sparsely-coded feed-forward neural network with mixed environment models and data. Sparsely-coded network can prevent the model from over-learning. Results on SWellEx-96 experiment show that the learned model achieves good positioning performance in source range estimation for varying sound-speed profiles (SSP). Compared with Bartlett matched-field processing, machine learning model is more robust and thus has potential advantages in underwater source localization.

[1]  John M. Ozard,et al.  An artificial neural network for range and depth discrimination in matched field processing , 1991 .

[2]  Peter Gerstoft,et al.  Source localization in an ocean waveguide using supervised machine learning , 2017, The Journal of the Acoustical Society of America.

[3]  Guigang Zhang,et al.  Deep Learning , 2016, Int. J. Semantic Comput..

[4]  Radford M. Neal Pattern Recognition and Machine Learning , 2007, Technometrics.

[5]  Trent L McDonald,et al.  Automated detection and localization of bowhead whale sounds in the presence of seismic airgun surveys. , 2012, The Journal of the Acoustical Society of America.

[6]  W. Kuperman,et al.  Matched field processing: source localization in correlated noise as an optimum parameter estimation problem , 1988 .

[7]  Mark Porter,et al.  The KRAKEN normal mode program , 1992 .

[8]  A. Tolstoy,et al.  Sensitivity of matched field processing to sound‐speed profile mismatch for vertical arrays in a deep water Pacific environment , 1988 .

[9]  Wen Xu,et al.  Matched-field source localization via statistical covariance matching , 2013, 2013 OCEANS - San Diego.

[10]  Mark J. Beran,et al.  A neural network approach to source localization , 1991 .

[11]  Arthur B. Baggeroer,et al.  An overview of matched field methods in ocean acoustics , 1993 .

[12]  Christopher M. Bishop,et al.  Pattern Recognition and Machine Learning (Information Science and Statistics) , 2006 .

[13]  H. Bucker Use of calculated sound fields and matched‐field detection to locate sound sources in shallow water , 1976 .

[14]  Christopher Feuillade,et al.  Environmental mismatch in shallow‐water matched‐field processing: Geoacoustic parameter variability , 1989 .