z-logo
Premium
Retrieving Temperature Anomaly in the Global Subsurface and Deeper Ocean From Satellite Observations
Author(s) -
Su Hua,
Li Wene,
Yan XiaoHai
Publication year - 2018
Publication title -
journal of geophysical research: oceans
Language(s) - English
Resource type - Journals
eISSN - 2169-9291
pISSN - 2169-9275
DOI - 10.1002/2017jc013631
Subject(s) - argo , sea surface temperature , sea surface height , anomaly (physics) , satellite , ocean surface topography , ocean observations , geology , scale (ratio) , remote sensing , climatology , environmental science , oceanography , physics , aerospace engineering , engineering , condensed matter physics , quantum mechanics
Retrieving the subsurface and deeper ocean (SDO) dynamic parameters from satellite observations is crucial for effectively understanding ocean interior anomalies and dynamic processes, but it is challenging to accurately estimate the subsurface thermal structure over the global scale from sea surface parameters. This study proposes a new approach based on Random Forest (RF) machine learning to retrieve subsurface temperature anomaly (STA) in the global ocean from multisource satellite observations including sea surface height anomaly (SSHA), sea surface temperature anomaly (SSTA), sea surface salinity anomaly (SSSA), and sea surface wind anomaly (SSWA) via in situ Argo data for RF training and testing. RF machine‐learning approach can accurately retrieve the STA in the global ocean from satellite observations of sea surface parameters (SSHA, SSTA, SSSA, SSWA). The Argo STA data were used to validate the accuracy and reliability of the results from the RF model. The results indicated that SSHA, SSTA, SSSA, and SSWA together are useful parameters for detecting SDO thermal information and obtaining accurate STA estimations. The proposed method also outperformed support vector regression (SVR) in global STA estimation. It will be a useful technique for studying SDO thermal variability and its role in global climate system from global‐scale satellite observations.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here