DocumentCode :
1347447
Title :
The SMOS L3 Mapping Algorithm for Sea Surface Salinity
Author :
Jordà, Gabriel ; Gomis, Damià ; Talone, Marco
Author_Institution :
Inst. Mediterrani d´´Estudis Avancats, CSIC-UIB, Esporles, Spain
Volume :
49
Issue :
3
fYear :
2011
fDate :
3/1/2011 12:00:00 AM
Firstpage :
1032
Lastpage :
1051
Abstract :
The Soil Moisture and Ocean Salinity (SMOS) mission launched in November 2009 will provide, for the first time, satellite observations of sea surface salinity (SSS). At level 3 (L3) of the SMOS processing chain, the large amount of SSS data obtained by the satellite will be summarized in gridded products with the aim of synthesizing the information and reducing the error of individual SSS observations. In this paper, we present the algorithm adopted by the CP34 SMOS processing center to generate the SMOS L3 products and discuss the choices adopted. The algorithm is based on optimal statistical interpolation. This method needs the following: 1) the prescription of a background field; 2) a prefiltering procedure to reduce the data set size; 3) the definition of a suitable correlation model; and 4) the characterization of the observational error statistics. For the present initial stage, a monthly climatology is chosen as the best background field. The spatiotemporal correlations between the departures from the climatology are described using a bivariate Gaussian function. The correlation model parameters are obtained by fitting the function to the realistic ocean model data. The sensitivity experiments show that an accurate correlation model that permits local variations in the correlation parameters is the best option. The observational error statistics (bias, variance, and correlation) are addressed from the results of the SMOS level-2 processor simulator. Finally, several sensitivity experiments show that a bad prescription of observational errors in the L3 algorithm does result in a dramatic impact on the generation of L3 products.
Keywords :
data reduction; geophysical signal processing; interpolation; oceanographic techniques; remote sensing; seawater; statistical analysis; CP34 SMOS processing center; SMOS L3 mapping algorithm; SMOS L3 products; SMOS mission; SMOS processing chain; Soil Moisture and Ocean Salinity; background field prescription; bivariate Gaussian function; correlation model definition; correlation model parameters; data set size reduction; gridded SSS products; observational error statistics; optimal statistical interpolation; prefiltering procedure; satellite observations; sea surface salinity; Microwave radiometry; Soil Moisture and Ocean Salinity (SMOS); observational errors; optimal interpolation; sea salinity;
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2010.2068551
Filename :
5599292
Link To Document :
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