Global sea surface salinity via the synergistic use of SMAP satellite and HYCOM data based on machine learning SCIE SCOPUS

Cited 10 time in WEB OF SCIENCE Cited 20 time in Scopus
Title
Global sea surface salinity via the synergistic use of SMAP satellite and HYCOM data based on machine learning
Author(s)
Jang, Eunna; Kim, Young Jun; Im, Jungho; Park, Young Gyu; Sung, Taejun
KIOST Author(s)
Park, Young Gyu(박영규)
Alternative Author(s)
박영규
Publication Year
2022-05
Abstract
Sea surface salinity (SSS) provides information on the variability of ocean dynamics (global water cycle and ocean circulation) and air-sea interactions, thereby contributing to the identification and prediction of significant changes in the global climate. Monitoring global SSS via satellite observations has been possible using L-band microwave radiometers since 2010; however, their performance is limited by their retrieval algorithms under conditions such as radio frequency interference, low sea surface temperatures, and strong winds. This study proposes a new global SSS model using multi-source data based on seven machine learning approaches: K-nearest neighbor, support vector regression, artificial neural network, random forest, extreme gradient boosting, light gradient boosting model, and gradient boosted regression trees (GBRT). Five Soil Moisture Active Passive (SMAP) products, Hybrid Coordinate Ocean Model (HYCOM) SSS, and four ancillary data were used as input variables. All models produced better performance than either SMAP or HYCOM SSS products, with the top performing GBRT model reducing the root mean square difference for the validation dataset from 1.062 to 0.259 practical salinity units compared to the SMAP SSS product. The improved SSS products had increased correlation with the in-situ data for both low-and high-salinity waters across all global oceans, thus further advancing the understanding and monitoring of global SSS.
ISSN
0034-4257
URI
https://sciwatch.kiost.ac.kr/handle/2020.kiost/42409
DOI
10.1016/j.rse.2022.112980
Bibliographic Citation
Remote Sensing of Environment, v.273, 2022
Publisher
Elsevier BV
Keywords
GBRT; Sea surface salinity; SMAP; HYCOM; Machine learning
Type
Article
Language
English
Document Type
Article
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