Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations
Retrieving multi-temporal and large-scale thermohaline structure information of the interior of the global ocean based on surface satellite observations is important for understanding the complex and multidimensional dynamic processes within the ocean. This study proposes a new ensemble learning alg...
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doaj-270f6a2ca86a4dbe802d539c8770867c2020-11-25T00:05:33ZengMDPI AGRemote Sensing2072-42922019-07-011113159810.3390/rs11131598rs11131598Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing ObservationsHua Su0Xin Yang1Wenfang Lu2Xiao-Hai Yan3Key Laboratory of Spatial Data Mining and Information Sharing of Ministry of Education, National & Local Joint Engineering Research Centre of Satellite Geospatial Information Technology, Fuzhou University, Fuzhou 350108, ChinaKey Laboratory of Spatial Data Mining and Information Sharing of Ministry of Education, National & Local Joint Engineering Research Centre of Satellite Geospatial Information Technology, Fuzhou University, Fuzhou 350108, ChinaKey Laboratory of Spatial Data Mining and Information Sharing of Ministry of Education, National & Local Joint Engineering Research Centre of Satellite Geospatial Information Technology, Fuzhou University, Fuzhou 350108, ChinaCenter for Remote Sensing, College of Earth, Ocean and Environment, University of Delaware, Newark, DE 19716, USARetrieving multi-temporal and large-scale thermohaline structure information of the interior of the global ocean based on surface satellite observations is important for understanding the complex and multidimensional dynamic processes within the ocean. This study proposes a new ensemble learning algorithm, extreme gradient boosting (XGBoost), for retrieving subsurface thermohaline anomalies, including the subsurface temperature anomaly (STA) and the subsurface salinity anomaly (SSA), in the upper 2000 m of the global ocean. The model combines surface satellite observations and in situ Argo data for estimation, and uses root-mean-square error (RMSE), normalized root-mean-square error (NRMSE), and R<sup>2</sup> as accuracy evaluations. The results show that the proposed XGBoost model can easily retrieve subsurface thermohaline anomalies and outperforms the gradient boosting decision tree (GBDT) model. The XGBoost model had good performance with average R<sup>2</sup> values of 0.69 and 0.54, and average NRMSE values of 0.035 and 0.042, for STA and SSA estimations, respectively. The thermohaline anomaly patterns presented obvious seasonal variation signals in the upper layers (the upper 500 m); however, these signals became weaker as the depth increased. The model performance fluctuated, with the best performance in October (autumn) for both STA and SSA, and the lowest accuracy occurred in January (winter) for STA and April (spring) for SSA. The STA estimation error mainly occurred in the El Niño-Southern Oscillation (ENSO) region in the upper ocean and the boundary of the ocean basins in the deeper ocean; meanwhile, the SSA estimation error presented a relatively even distribution. The wind speed anomalies, including the u and v components, contributed more to the XGBoost model for both STA and SSA estimations than the other surface parameters; however, its importance at deeper layers decreased and the contributions of the other parameters increased. This study provides an effective remote sensing technique for subsurface thermohaline estimations and further promotes long-term remote sensing reconstructions of internal ocean parameters.https://www.mdpi.com/2072-4292/11/13/1598thermohaline structureglobal ocean interiorremote sensing dataXGBoostdeeper ocean remote sensing |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hua Su Xin Yang Wenfang Lu Xiao-Hai Yan |
spellingShingle |
Hua Su Xin Yang Wenfang Lu Xiao-Hai Yan Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations Remote Sensing thermohaline structure global ocean interior remote sensing data XGBoost deeper ocean remote sensing |
author_facet |
Hua Su Xin Yang Wenfang Lu Xiao-Hai Yan |
author_sort |
Hua Su |
title |
Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations |
title_short |
Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations |
title_full |
Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations |
title_fullStr |
Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations |
title_full_unstemmed |
Estimating Subsurface Thermohaline Structure of the Global Ocean Using Surface Remote Sensing Observations |
title_sort |
estimating subsurface thermohaline structure of the global ocean using surface remote sensing observations |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2019-07-01 |
description |
Retrieving multi-temporal and large-scale thermohaline structure information of the interior of the global ocean based on surface satellite observations is important for understanding the complex and multidimensional dynamic processes within the ocean. This study proposes a new ensemble learning algorithm, extreme gradient boosting (XGBoost), for retrieving subsurface thermohaline anomalies, including the subsurface temperature anomaly (STA) and the subsurface salinity anomaly (SSA), in the upper 2000 m of the global ocean. The model combines surface satellite observations and in situ Argo data for estimation, and uses root-mean-square error (RMSE), normalized root-mean-square error (NRMSE), and R<sup>2</sup> as accuracy evaluations. The results show that the proposed XGBoost model can easily retrieve subsurface thermohaline anomalies and outperforms the gradient boosting decision tree (GBDT) model. The XGBoost model had good performance with average R<sup>2</sup> values of 0.69 and 0.54, and average NRMSE values of 0.035 and 0.042, for STA and SSA estimations, respectively. The thermohaline anomaly patterns presented obvious seasonal variation signals in the upper layers (the upper 500 m); however, these signals became weaker as the depth increased. The model performance fluctuated, with the best performance in October (autumn) for both STA and SSA, and the lowest accuracy occurred in January (winter) for STA and April (spring) for SSA. The STA estimation error mainly occurred in the El Niño-Southern Oscillation (ENSO) region in the upper ocean and the boundary of the ocean basins in the deeper ocean; meanwhile, the SSA estimation error presented a relatively even distribution. The wind speed anomalies, including the u and v components, contributed more to the XGBoost model for both STA and SSA estimations than the other surface parameters; however, its importance at deeper layers decreased and the contributions of the other parameters increased. This study provides an effective remote sensing technique for subsurface thermohaline estimations and further promotes long-term remote sensing reconstructions of internal ocean parameters. |
topic |
thermohaline structure global ocean interior remote sensing data XGBoost deeper ocean remote sensing |
url |
https://www.mdpi.com/2072-4292/11/13/1598 |
work_keys_str_mv |
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