Title :
Sea Surface Salinity Retrieval for the SMOS Mission Using Neural Networks
Author :
Ammar, Adel ; Labroue, Sylvie ; Obligis, Estelle ; Mejia, Carlos E. ; Crépon, Michel ; Thiria, Sylvie
Author_Institution :
Collecte Localisation Satellites, Ramonville Saint-Agne
fDate :
3/1/2008 12:00:00 AM
Abstract :
During the in-flight phase, using neural networks to retrieve the sea surface salinity from the observed Soil Moisture and Ocean Salinity brightness temperatures (TBs) is an empirical approach that offers the possibility of being independent from any theoretical emissivity model. Due to the large variety of incidence angles, several networks are needed, as well as a preprocessing phase to adapt the observed TBs to the inputs of the networks. When using the first Stokes parameter as an input, the retrieved salinity has a good accuracy (with an error of around 0.6 psu). Furthermore, the solutions for improving these performances are discussed.
Keywords :
geophysics computing; light polarisation; neural nets; ocean temperature; oceanographic techniques; seawater; SMOS mission; Soil Moisture and Ocean Salinity mission; brightness temperature data; first Stokes parameter; neural networks; sea surface salinity retrieval; Brightness temperature; Data preprocessing; Databases; Information retrieval; Neural networks; Oceans; SMOS mission; Sea measurements; Sea surface; Sea surface salinity; Neural network applications; remote sensing; sea surface salinity (SSS);
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
DOI :
10.1109/TGRS.2008.915547