Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains

Soil moisture (SM) plays a crucial role in the water and energy flux exchange between the atmosphere and the land surface. Remote sensing and modeling are two main approaches to obtain SM over a large-scale area. However, there is a big difference between them due to algorithm, spatial-temporal reso...

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Main Authors: Bo Jiang, Hongbo Su, Kai Liu, Shaohui Chen
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/12/2030
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spelling doaj-ba5492437f044037984cc2b2ae12d14f2020-11-25T04:08:58ZengMDPI AGRemote Sensing2072-42922020-06-01122030203010.3390/rs12122030Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great PlainsBo Jiang0Hongbo Su1Kai Liu2Shaohui Chen3The Institute of Geographical Sciences and Natural Resources Research, CAS, Beijing 100101, ChinaDepartment of Civil, Environmental and Geomatics Engineering, Florida Atlantic University, Florida, Boca Raton 33431, USAThe Institute of Geographical Sciences and Natural Resources Research, CAS, Beijing 100101, ChinaThe Institute of Geographical Sciences and Natural Resources Research, CAS, Beijing 100101, ChinaSoil moisture (SM) plays a crucial role in the water and energy flux exchange between the atmosphere and the land surface. Remote sensing and modeling are two main approaches to obtain SM over a large-scale area. However, there is a big difference between them due to algorithm, spatial-temporal resolution, observation depth and measurement uncertainties. In this study, an assessment of the comparison of two state-of-the-art remotely sensed SM products, Soil Moisture Active Passive (SMAP) and European Space Agency Climate Change Initiative (ESACCI), and one land surface modeled dataset from the North American Land Data Assimilation System project phase 2 (NLDAS-2), were conducted using 17 permanent SM observation sites located in the Southern Great Plains (SGP) in the U.S. We first compared the daily mean SM of three products with in-situ measurements; then, we decompose the raw time series into a short-term seasonal part and anomaly by using a moving smooth window (35 days). In addition, we calculate the daily spatial difference between three products based on in-situ data and assess their temporal evolution. The results demonstrate that (1) in terms of temporal correlation R, the SMAP (R = 0.78) outperforms ESACCI (R = 0.62) and NLDAS-2 (R = 0.72) overall; (2) for the seasonal component, the correlation R of SMAP still outperforms the other two products, and the correlation R of ESACCI and NLDAS-2 have not improved like the SMAP; as for anomaly, there is no difference between the remotely sensed and modeling data, which implies the potential for the satellite products to capture the variations of short-term rainfall events; (3) the distribution pattern of spatial bias is different between the three products. For NLDAS-2, it is strongly dependent on precipitation; meanwhile, the spatial distribution of bias represents less correlation with the precipitation for two remotely sensed products, especially for the SMAP. Overall, the SMAP was superior to the other two products, especially when the SM was of low value. The difference between the remotely sensed and modeling products with respect to the vegetation type might be an important reason for the errors.https://www.mdpi.com/2072-4292/12/12/2030SMAPESACCINLDAS-2U.S. SGPsoil moisture
collection DOAJ
language English
format Article
sources DOAJ
author Bo Jiang
Hongbo Su
Kai Liu
Shaohui Chen
spellingShingle Bo Jiang
Hongbo Su
Kai Liu
Shaohui Chen
Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
Remote Sensing
SMAP
ESACCI
NLDAS-2
U.S. SGP
soil moisture
author_facet Bo Jiang
Hongbo Su
Kai Liu
Shaohui Chen
author_sort Bo Jiang
title Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
title_short Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
title_full Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
title_fullStr Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
title_full_unstemmed Assessment of Remotely Sensed and Modelled Soil Moisture Data Products in the U.S. Southern Great Plains
title_sort assessment of remotely sensed and modelled soil moisture data products in the u.s. southern great plains
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-06-01
description Soil moisture (SM) plays a crucial role in the water and energy flux exchange between the atmosphere and the land surface. Remote sensing and modeling are two main approaches to obtain SM over a large-scale area. However, there is a big difference between them due to algorithm, spatial-temporal resolution, observation depth and measurement uncertainties. In this study, an assessment of the comparison of two state-of-the-art remotely sensed SM products, Soil Moisture Active Passive (SMAP) and European Space Agency Climate Change Initiative (ESACCI), and one land surface modeled dataset from the North American Land Data Assimilation System project phase 2 (NLDAS-2), were conducted using 17 permanent SM observation sites located in the Southern Great Plains (SGP) in the U.S. We first compared the daily mean SM of three products with in-situ measurements; then, we decompose the raw time series into a short-term seasonal part and anomaly by using a moving smooth window (35 days). In addition, we calculate the daily spatial difference between three products based on in-situ data and assess their temporal evolution. The results demonstrate that (1) in terms of temporal correlation R, the SMAP (R = 0.78) outperforms ESACCI (R = 0.62) and NLDAS-2 (R = 0.72) overall; (2) for the seasonal component, the correlation R of SMAP still outperforms the other two products, and the correlation R of ESACCI and NLDAS-2 have not improved like the SMAP; as for anomaly, there is no difference between the remotely sensed and modeling data, which implies the potential for the satellite products to capture the variations of short-term rainfall events; (3) the distribution pattern of spatial bias is different between the three products. For NLDAS-2, it is strongly dependent on precipitation; meanwhile, the spatial distribution of bias represents less correlation with the precipitation for two remotely sensed products, especially for the SMAP. Overall, the SMAP was superior to the other two products, especially when the SM was of low value. The difference between the remotely sensed and modeling products with respect to the vegetation type might be an important reason for the errors.
topic SMAP
ESACCI
NLDAS-2
U.S. SGP
soil moisture
url https://www.mdpi.com/2072-4292/12/12/2030
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