FastFind »   Lastname: doi:10.1029/ Year: Advanced Search  

AGU: Geophysical Research Letters

 

Keywords

  • sonic layer depth
  • artificial neural network
  • surface parameters

Index Terms

  • Global Change: Oceans
  • History of Geophysics: Ocean sciences
  • Oceanography: General: Ocean acoustics
  • Oceanography: General: Ocean predictability and prediction

Abstract

Estimation of sonic layer depth from surface parameters

Sarika Jain

National Remote Sensing Agency, Hyderabad, India

M. M. Ali

National Remote Sensing Agency, Hyderabad, India

P. N. Sen

Department of Atmospheric and Space Sciences, University of Pune, Pune, India

Sonic layer depth (SLD), an important parameter in underwater acoustics, is the near surface depth of first maxima of the sound speed in the ocean. The lack of direct observations of vertical profiles of velocimeters or temperature and salinity, from which sound speed and SLD can be calculated, hampers the investigation of SLD. In this study, we demonstrate SLD estimation using artificial neural network (ANN) from surface measurements that can be replaced with satellite observations later. Surface and subsurface measurements from a central Arabian Sea mooring are used for this purpose. The estimated SLD had a root mean square error (correlation coefficient) of 11.83 m (0.84). Approximately 76% (91%) of estimations lie within ±10 m (±20 m). SLD has also been estimated from surface parameters using multiple regression technique (MRT). ANN proved its superiority over MRT in estimating SLD from surface parameters.

Received 10 May 2007; accepted 20 July 2007; published 5 September 2007.

Citation: Jain, S., M. M. Ali, and P. N. Sen (2007), Estimation of sonic layer depth from surface parameters, Geophys. Res. Lett., 34, L17602, doi:10.1029/2007GL030577.

Cited By

Please wait one moment ...