Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture

Inland open water bodies often pose a systematic error source in the passive remote sensing retrievals of soil moisture. Water temperature is a necessary variable used to compute water emissions that is required to be subtracted from satellite observation to yield actual emissions from the land port...

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Published in:Remote Sensing
Main Authors: Runze Zhang, Steven Chan, Rajat Bindlish, Venkataraman Lakshmi
Format: Article
Language:English
Published: MDPI AG 2021-05-01
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Online Access:https://www.mdpi.com/2072-4292/13/10/1872
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author Runze Zhang
Steven Chan
Rajat Bindlish
Venkataraman Lakshmi
author_facet Runze Zhang
Steven Chan
Rajat Bindlish
Venkataraman Lakshmi
author_sort Runze Zhang
collection DOAJ
container_title Remote Sensing
description Inland open water bodies often pose a systematic error source in the passive remote sensing retrievals of soil moisture. Water temperature is a necessary variable used to compute water emissions that is required to be subtracted from satellite observation to yield actual emissions from the land portion, which in turn generates accurate soil moisture retrievals. Therefore, overestimation of soil moisture can often be corrected using concurrent water temperature data in the overall mitigation procedure. In recent years, several data sets of lake water temperature have become available, but their specifications and accuracy have rarely been investigated in the context of passive soil moisture remote sensing on a global scale. For this reason, three lake temperature products were evaluated against in-situ measurements from 2007 to 2011. The data sets include the lake surface water temperature (LSWT) from Global Observatory of Lake Responses to Environmental Change (GloboLakes), the Copernicus Global Land Operations Cryosphere and Water (C-GLOPS), as well as the lake mix-layer temperature (LMLT) from the European Centers for Medium-Range Weather Forecast (ECMWF) ERA5 Land Reanalysis. GloboLakes, C-GLOPS, and ERA5 Land have overall comparable performance with Pearson correlations (R) of 0.87, 0.92 and 0.88 in comparison with in-situ measurements. LSWT products exhibit negative median biases of −0.27 K (GloboLakes) and −0.31 K (C-GLOPS), whereas the median bias of LMLT is 1.56 K. When mapped from their respective native resolutions to a common 9 km Equal-Area Scalable Earth (EASE) Grid 2.0 projection, similar relative performance was observed. LMLT and LSWT data are closer in performance over the 9 km grid cells that exhibit a small range of lake cover fractions (0.05–0.5). Despite comparable relative performance, ERA5 Land shows great advantages in spatial coverage and temporal resolution. In summary, an integrated evaluation on data accuracy, long-term availability, global coverage, temporal resolution, and regular forward processing with modest data latency led us to conclude that LMLT from the ERA5 Land Reanalysis product represents the most optimal path for use in the development of a long-term soil moisture product.
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spelling doaj-art-e6cf2b55c1aa4c098755ceaf33d5bcfb2025-08-19T23:19:11ZengMDPI AGRemote Sensing2072-42922021-05-011310187210.3390/rs13101872Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil MoistureRunze Zhang0Steven Chan1Rajat Bindlish2Venkataraman Lakshmi3Department of Engineering Systems and Environment, University of Virginia, Charlottesville, VA 22904, USANASA Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA 91109, USANASA Goddard Space Flight Center, Greenbelt, MD 20771, USADepartment of Engineering Systems and Environment, University of Virginia, Charlottesville, VA 22904, USAInland open water bodies often pose a systematic error source in the passive remote sensing retrievals of soil moisture. Water temperature is a necessary variable used to compute water emissions that is required to be subtracted from satellite observation to yield actual emissions from the land portion, which in turn generates accurate soil moisture retrievals. Therefore, overestimation of soil moisture can often be corrected using concurrent water temperature data in the overall mitigation procedure. In recent years, several data sets of lake water temperature have become available, but their specifications and accuracy have rarely been investigated in the context of passive soil moisture remote sensing on a global scale. For this reason, three lake temperature products were evaluated against in-situ measurements from 2007 to 2011. The data sets include the lake surface water temperature (LSWT) from Global Observatory of Lake Responses to Environmental Change (GloboLakes), the Copernicus Global Land Operations Cryosphere and Water (C-GLOPS), as well as the lake mix-layer temperature (LMLT) from the European Centers for Medium-Range Weather Forecast (ECMWF) ERA5 Land Reanalysis. GloboLakes, C-GLOPS, and ERA5 Land have overall comparable performance with Pearson correlations (R) of 0.87, 0.92 and 0.88 in comparison with in-situ measurements. LSWT products exhibit negative median biases of −0.27 K (GloboLakes) and −0.31 K (C-GLOPS), whereas the median bias of LMLT is 1.56 K. When mapped from their respective native resolutions to a common 9 km Equal-Area Scalable Earth (EASE) Grid 2.0 projection, similar relative performance was observed. LMLT and LSWT data are closer in performance over the 9 km grid cells that exhibit a small range of lake cover fractions (0.05–0.5). Despite comparable relative performance, ERA5 Land shows great advantages in spatial coverage and temporal resolution. In summary, an integrated evaluation on data accuracy, long-term availability, global coverage, temporal resolution, and regular forward processing with modest data latency led us to conclude that LMLT from the ERA5 Land Reanalysis product represents the most optimal path for use in the development of a long-term soil moisture product.https://www.mdpi.com/2072-4292/13/10/1872lake mix-layer temperature (LMLT)lake surface water temperature (LSWT)ERA5 LandGlobal Observatory of Lake Responses to Environmental Change (GloboLakes)Copernicus Global Land Operations Cryosphere and Water (C-GLOPS)
spellingShingle Runze Zhang
Steven Chan
Rajat Bindlish
Venkataraman Lakshmi
Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
lake mix-layer temperature (LMLT)
lake surface water temperature (LSWT)
ERA5 Land
Global Observatory of Lake Responses to Environmental Change (GloboLakes)
Copernicus Global Land Operations Cryosphere and Water (C-GLOPS)
title Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
title_full Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
title_fullStr Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
title_full_unstemmed Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
title_short Evaluation of Global Surface Water Temperature Data Sets for Use in Passive Remote Sensing of Soil Moisture
title_sort evaluation of global surface water temperature data sets for use in passive remote sensing of soil moisture
topic lake mix-layer temperature (LMLT)
lake surface water temperature (LSWT)
ERA5 Land
Global Observatory of Lake Responses to Environmental Change (GloboLakes)
Copernicus Global Land Operations Cryosphere and Water (C-GLOPS)
url https://www.mdpi.com/2072-4292/13/10/1872
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AT rajatbindlish evaluationofglobalsurfacewatertemperaturedatasetsforuseinpassiveremotesensingofsoilmoisture
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