4.7 Article

Sea Surface Salinity Estimation and Spatial-Temporal Heterogeneity Analysis in the Gulf of Mexico

期刊

REMOTE SENSING
卷 13, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/rs13050881

关键词

sea surface salinity; remote sensing; Gulf of Mexico; data mining

资金

  1. National Key R&D Program of China [2018YFB0505000]
  2. National Natural Science Foundation of China [41671391, 41922043, 41871287]

向作者/读者索取更多资源

Sea surface salinity (SSS) is an important parameter for characterizing physical and biogeochemical processes, and the Cubist model shows high accuracy in estimating and analyzing SSS in the Gulf of Mexico (GOM). The model divides the GOM into four sub-regions based on model rules, reflecting the gradient distribution of SSS and the influence of factors such as river discharges and local wind forces on seasonal changes. Overall, the Cubist model proves to be a reliable method for coastal SSS estimation and spatial-temporal heterogeneity analysis under different geographical and seasonal conditions.
As an important parameter to characterize physical and biogeochemical processes, sea surface salinity (SSS) has received extensive attention. Cubist is a data mining model, which can be well-suited to estimate and analyze SSS in the Gulf of Mexico (GOM) because it can reflect the SSS internal heterogeneity in the GOM-overall circular distribution, and the seasonality related to temperature and river discharge changes. Using remote sensing reflectance (Rrs) at 412, 443, 488 (490), 555, and 667 (670) nm and sea surface temperature (SST), a cubist model was developed to estimate SSS with high accuracy with the overall performance demonstrates a root mean square error (RMSE) of 0.27 psu and correlation coefficient of 0.97 of R2. The model divides the GOM area according to model rules into four sub-regions, which include estuary, nearshore, and open sea, reflecting the gradient distribution of SSS. The division of sub-regions and seasonal changes can be explained by the distribution of water bodies, river discharges, and local wind forces since it is obvious that the estuary region reaches the largest low-value area and spreads eastward with the monsoon in the spring when the river flow increases to the highest value. While the east to west wind in the non-summer monsoon period guides the plume westward, and the lowest river discharge in winter corresponds to the smallest low value area. After comparison with other statistical models, the cubist model showed satisfactory results in independent verification of cruise data, proving the estimation capability under different geographical conditions (such as estuaries and open seas) and seasons. Therefore, considering high accuracy and heterogeneity mining, the cubist-based model is an ideal method for coastal SSS estimation and spatial-temporal heterogeneity analysis, and can provide ideas for model construction for coastal areas with similar geographic environments.

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