Annual soil moisture estimates are useful to characterize trends in the climate system, in the capacity of soils to retain water and for predicting land and atmosphere interactions. The main source of soil moisture spatial information across large areas (e.g., continents) is satellite-based microwave remote sensing. However, satellite soil moisture datasets have coarse spatial resolution (e.g., 25-50 km grids); and large areas from regional-to-global scales have spatial information gaps. We provide an alternative approach to predict soil moisture spatial patterns (and associated uncertainty) with higher spatial resolution across areas where no information is otherwise available. This approach relies on geomorphometry derived terrain paramet...
Summarization: The European Space Agency (ESA), through the Climate Change Initiative (CCI), is curr...
If given the correct remotely sensed information, machine learning can accurately describe soil mois...
Successful monitoring of soil moisture dynamics at high spatio-temporal resolutions globally is hamp...
This study presents machine learning-based approaches for understanding and predicting plot-scale so...
This study presents machine learning-based approaches for understanding and predicting plot-scale so...
Although numerous satellite-based soil moisture (SM) products can provide spatiotemporally continuou...
Soil moisture is an important variable linking the atmosphere and the terrestrial ecosystems. Howeve...
Three widely used primary soil moisture (SM) data sources, namely, in-situ measurements, satellite o...
The surface soil moisture (SSM) products derived from microwave remote sensing have a coarse spatial...
Passive microwave remotely sensed soil moisture products, such as Advanced Microwave Scanning Radiom...
International audienceCharacterizing soil moisture at spatiotemporal scales relevant to land surface...
Root-zone soil moisture condition is an important component of water cycle at all spatial scales, as...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Characterizing soil moisture at spatiotemporal scales relevant to land surface processes (i.e., of t...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Summarization: The European Space Agency (ESA), through the Climate Change Initiative (CCI), is curr...
If given the correct remotely sensed information, machine learning can accurately describe soil mois...
Successful monitoring of soil moisture dynamics at high spatio-temporal resolutions globally is hamp...
This study presents machine learning-based approaches for understanding and predicting plot-scale so...
This study presents machine learning-based approaches for understanding and predicting plot-scale so...
Although numerous satellite-based soil moisture (SM) products can provide spatiotemporally continuou...
Soil moisture is an important variable linking the atmosphere and the terrestrial ecosystems. Howeve...
Three widely used primary soil moisture (SM) data sources, namely, in-situ measurements, satellite o...
The surface soil moisture (SSM) products derived from microwave remote sensing have a coarse spatial...
Passive microwave remotely sensed soil moisture products, such as Advanced Microwave Scanning Radiom...
International audienceCharacterizing soil moisture at spatiotemporal scales relevant to land surface...
Root-zone soil moisture condition is an important component of water cycle at all spatial scales, as...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Characterizing soil moisture at spatiotemporal scales relevant to land surface processes (i.e., of t...
Monitoring soil moisture dynamics from local to global scales is essential for a wide range of appli...
Summarization: The European Space Agency (ESA), through the Climate Change Initiative (CCI), is curr...
If given the correct remotely sensed information, machine learning can accurately describe soil mois...
Successful monitoring of soil moisture dynamics at high spatio-temporal resolutions globally is hamp...