Determining actual evapotranspiration based on machine learning and sinusoidal approaches applied to thermal high-resolution remote sensing imagery in a semi-arid ecosystem
Author
dc.contributor.author
Reyes Rojas, Luis A.
Author
dc.contributor.author
Moletto Lobos, Italo Giuliano
Author
dc.contributor.author
Corradini Santander, Fabio Alfonso
Author
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Mattar Bader, Cristian
Author
dc.contributor.author
Fuster Gómez, Rodrigo
Author
dc.contributor.author
Escobar Avaria, Cristián Andrés
Admission date
dc.date.accessioned
2022-06-09T15:29:48Z
Available date
dc.date.available
2022-06-09T15:29:48Z
Publication date
dc.date.issued
2021
Cita de ítem
dc.identifier.citation
Remote Sens. 2021, 13, 4105
es_ES
Identifier
dc.identifier.other
10.3390/rs13204105
Identifier
dc.identifier.uri
https://repositorio.uchile.cl/handle/2250/185972
Abstract
dc.description.abstract
Evapotranspiration (ET) is key to assess crop water balance and optimize water-use efficiency. To attain sustainability in cropping systems, especially in semi-arid ecosystems, it is necessary to improve methodologies of ET estimation. A method to predict ET is by using land surface temperature (LST) from remote sensing data and applying the Operational Simplified Surface Energy Balance Model (SSEBop). However, to date, LST information from Landsat-8 Thermal Infrared Sensor (TIRS) has a coarser resolution (100 m) and longer revisit time than Sentinel-2, which does not have a thermal infrared sensor, which compromises its use in ET models as SSEBop. Therefore, in the present study we set out to use Sentinel-2 data at a higher spatial-temporal resolution (10 m) to predict ET. Three models were trained using TIRS' images as training data (100 m) and later used to predict LST at 10 m in the western section of the Copiapo Valley (Chile). The models were built on cubist (Cub) and random forest (RF) algorithms, and a sinusoidal model (Sin). The predicted LSTs were compared with three meteorological stations located in olives, vineyards, and pomegranate orchards. RMSE values for the prediction of LST at 10 m were 7.09 K, 3.91 K, and 3.4 K in Cub, RF, and Sin, respectively. ET estimation from LST in spatial-temporal relation showed that RF was the best overall performance (R-2 = 0.710) when contrasted with Landsat, followed by the Sin model (R-2 = 0.707). Nonetheless, the Sin model had the lowest RMSE (0.45 mm d(-1)) and showed the best performance at predicting orchards' ET. In our discussion, we argue that a simplistic sinusoidal model built on NDVI presents advantages over RF and Cub, which are constrained to the spatial relation of predictors at different study areas. Our study shows how it is possible to downscale Landsat-8 TIRS' images from 100 m to 10 m to predict ET.
es_ES
Patrocinador
dc.description.sponsorship
Chiles National Agency of Research and Development (ANID) [FONDEF] IT18I0022
es_ES
Lenguage
dc.language.iso
en
es_ES
Publisher
dc.publisher
MDPI
es_ES
Type of license
dc.rights
Attribution-NonCommercial-NoDerivs 3.0 United States
Determining actual evapotranspiration based on machine learning and sinusoidal approaches applied to thermal high-resolution remote sensing imagery in a semi-arid ecosystem