Improving the Estimation of Temperature and Salinity by Assimilation of Observed Sound Speed Profiles

Author:

Zhang Jiali1,Zhang Liang12,Zhang Anmin1,Zhang Lianxin3,Li Dong3,Zhang Xuefeng1

Affiliation:

1. 1 School of Marine Science and Technology, Tianjin University, Tianjin, China

2. 2 Department of Oceanography, Texas A&M University, College Station, Texas, USA

3. 3 Key Laboratory of Marine Environmental Information Technology, National Marine Data and Information Service, Ministry of Natural Resources, Tianjin, China

Abstract

AbstractSound Speed Profile (SSP) affecting underwater acoustics is closely related to the temperature and the salinity fields. It is of great value to obtain the temperature and the salinity information through the high-precision sound speed profiles. In this paper, a data assimilation scheme by introducing sound speed profiles as a new constraint is proposed within the framework of 3DVAR data assimilation (referenced as SSP-constraint 3DVAR (SSPC-3DVAR) ), which aims at improving the analysis accuracy of initial fields of the temperature and salinity in coastal sea areas. In order to validate the performance of the new assimilation scheme, ideal experiments are firstly carried out to show the advantages of the new proposed SSPC-3DVAR. Then the temperature, the salinity, and the SSP observations from field experiments in a coastal area are assimilated into the Princeton Ocean Model to validate the performance of short-time forecasts, adopting the SSPC-3DVAR scheme. Results show that it is efficient to improve the estimate accuracy by as much as 14.6% (11.1%) for the temperature (salinity), compared with the standard 3DVAR. It demonstrates that the proposed SSPC-3DVAR approach works better in practice than the standard 3DVAR and will primarily benefit from variously and widely distributed observations in the future.

Publisher

American Meteorological Society

Subject

Atmospheric Science,Ocean Engineering

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