2024
DOI: 10.17268/sci.agropecu.2024.008
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Watershed scale soil moisture estimation model using machine learning and remote sensing in a data-scarce context

Marcelo Bueno Dueñas,
Carlos Baca García,
Nilton Montoya
et al.

Abstract: Soil moisture content can be used to predict drought impact on agricultural yield better than precipitation. Remote sensing is viable source of soil moisture data in instrument-scarce areas. However, space-based soil moisture estimates lack suitability for daily and high-resolution agricultural, hydrological, and environmental applications. This study aimed to assess the potential of the random forest machine learning technique to enhance the spatial resolution of remote soil moisture products from the SMAP sa… Show more

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