Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region

Agricultural and hydrological applications could greatly benefit from soil moisture (SM) information at sub-field resolution and (sub-) daily revisit time. However, current operational satellite missions provide soil moisture information at either lower spatial or temporal resolution. Here, we downs...

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Main Authors: Luca Zappa, Matthias Forkel, Angelika Xaver, Wouter Dorigo
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/22/2596
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spelling doaj-ba289bd276e24ebc89961ac45a5fa9cc2020-11-25T00:39:17ZengMDPI AGRemote Sensing2072-42922019-11-011122259610.3390/rs11222596rs11222596Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural RegionLuca Zappa0Matthias Forkel1Angelika Xaver2Wouter Dorigo3Department of Geodesy and Geoinformation, TU Wien, 1040 Vienna, AustriaDepartment of Geodesy and Geoinformation, TU Wien, 1040 Vienna, AustriaDepartment of Geodesy and Geoinformation, TU Wien, 1040 Vienna, AustriaDepartment of Geodesy and Geoinformation, TU Wien, 1040 Vienna, AustriaAgricultural and hydrological applications could greatly benefit from soil moisture (SM) information at sub-field resolution and (sub-) daily revisit time. However, current operational satellite missions provide soil moisture information at either lower spatial or temporal resolution. Here, we downscale coarse resolution (25−36 km) satellite SM products with quasi-daily resolution to the field scale (30 m) using the random forest (RF) machine learning algorithm. RF models are trained with remotely sensed SM and ancillary variables on soil texture, topography, and vegetation cover against SM measured in the field. The approach is developed and tested in an agricultural catchment equipped with a high-density network of low-cost SM sensors. Our results show a strong consistency between the downscaled and observed SM spatio-temporal patterns. We found that topography has higher predictive power for downscaling than soil texture, due to the hilly landscape of the study area. Furthermore, including a proxy of vegetation cover results in considerable improvements of the performance. Increasing the training set size leads to significant gain in the model skill and expanding the training set is likely to further enhance the accuracy. When only limited in-situ measurements are available as training data, increasing the number of sensor locations should be favored over expanding the duration of the measurements for improved downscaling performance. In this regard, we show the potential of low-cost sensors as a practical and cost-effective solution for gathering the necessary observations. Overall, our findings highlight the suitability of using ground measurements in conjunction with machine learning to derive high spatially resolved SM maps from coarse-scale satellite products.https://www.mdpi.com/2072-4292/11/22/2596soil moisturedownscalingadvanced scatterometer (ascat)soil moisture active passive (smap)random forestlow-cost sensor
collection DOAJ
language English
format Article
sources DOAJ
author Luca Zappa
Matthias Forkel
Angelika Xaver
Wouter Dorigo
spellingShingle Luca Zappa
Matthias Forkel
Angelika Xaver
Wouter Dorigo
Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
Remote Sensing
soil moisture
downscaling
advanced scatterometer (ascat)
soil moisture active passive (smap)
random forest
low-cost sensor
author_facet Luca Zappa
Matthias Forkel
Angelika Xaver
Wouter Dorigo
author_sort Luca Zappa
title Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
title_short Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
title_full Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
title_fullStr Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
title_full_unstemmed Deriving Field Scale Soil Moisture from Satellite Observations and Ground Measurements in a Hilly Agricultural Region
title_sort deriving field scale soil moisture from satellite observations and ground measurements in a hilly agricultural region
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-11-01
description Agricultural and hydrological applications could greatly benefit from soil moisture (SM) information at sub-field resolution and (sub-) daily revisit time. However, current operational satellite missions provide soil moisture information at either lower spatial or temporal resolution. Here, we downscale coarse resolution (25−36 km) satellite SM products with quasi-daily resolution to the field scale (30 m) using the random forest (RF) machine learning algorithm. RF models are trained with remotely sensed SM and ancillary variables on soil texture, topography, and vegetation cover against SM measured in the field. The approach is developed and tested in an agricultural catchment equipped with a high-density network of low-cost SM sensors. Our results show a strong consistency between the downscaled and observed SM spatio-temporal patterns. We found that topography has higher predictive power for downscaling than soil texture, due to the hilly landscape of the study area. Furthermore, including a proxy of vegetation cover results in considerable improvements of the performance. Increasing the training set size leads to significant gain in the model skill and expanding the training set is likely to further enhance the accuracy. When only limited in-situ measurements are available as training data, increasing the number of sensor locations should be favored over expanding the duration of the measurements for improved downscaling performance. In this regard, we show the potential of low-cost sensors as a practical and cost-effective solution for gathering the necessary observations. Overall, our findings highlight the suitability of using ground measurements in conjunction with machine learning to derive high spatially resolved SM maps from coarse-scale satellite products.
topic soil moisture
downscaling
advanced scatterometer (ascat)
soil moisture active passive (smap)
random forest
low-cost sensor
url https://www.mdpi.com/2072-4292/11/22/2596
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AT angelikaxaver derivingfieldscalesoilmoisturefromsatelliteobservationsandgroundmeasurementsinahillyagriculturalregion
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