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Retrieve sea surface salinity using principal component regression model based on SMOS satellite data
Authors:Hong?Zhao  Email author" target="_blank">Changjun?LiEmail author  Hongping?Li  Kebo?Lv  Qinghui?Zhao
Institution:1.School of Mathematical Sciences,Ocean University of China,Qingdao,P. R. China;2.Department of Marine Technology, College of Information Science and Engineering,Ocean University of China,Qingdao,P. R. China
Abstract:The sea surface salinity (SSS) is a key parameter in monitoring ocean states. Observing SSS can promote the understanding of global water cycle. This paper provides a new approach for retrieving sea surface salinity from Soil Moisture and Ocean Salinity (SMOS) satellite data. Based on the principal component regression (PCR) model, SSS can also be retrieved from the brightness temperature data of SMOS L2 measurements and Auxiliary data. 26 pair matchup data is used in model validation for the South China Sea (in the area of 4°–25°N, 105°–125°E). The RMSE value of PCR model retrieved SSS reaches 0.37 psu (practical salinity units) and the RMSE of SMOS SSS1 is 1.65 psu when compared with in-situ SSS. The corresponding Argo daily salinity data during April to June 2013 is also used in our validation with RMSE value 0.46 psu compared to 1.82 psu for daily averaged SMOS L2 products. This indicates that the PCR model is valid and may provide us with a good approach for retrieving SSS from SMOS satellite data.
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