Prediction of Evapotranspiration in the Pampean Plain from CERES Satellite Products and Machine Learning Techniques

Authors

  • Facundo Carmona Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas
  • Ad´an Farami˜n´an Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas
  • Ra´ul Rivas Comisi´on de Investigaciones Cient´ıficas de la Provincia de Buenos Aires
  • Facundo Orte Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas

DOI:

https://doi.org/10.24215/1850468Xe021

Keywords:

evapotranspiration, CERES, teledetection, machine learning

Abstract

A key aspect in agricultural zones, such as the Pampean Plain of Argentina, is to accurately estimate evapotranspiration rates to optimize crops and irrigation requirements and the floods and droughts prediction. In this sense, we evaluate six machine learning approaches to estimate the reference and actual evapotranspiration (ET0 and ETa) through CERES satellite products data. The results obtained applying machine learning techniques were compared with values obtained from ground-based information. After training and validating the algorithms, we observed that Support Vector machine-based Regressor (SVR) showed the best accuracy. Then, with an independent dataset, the calibrated SVR were tested. For predicting the reference evapotranspiration, we observed statistical errors of MAE = 0.437 mm d−1, and RMSE = 0.616 mm d−1, with a determination coefficient, R2, of 0.893. Regarding actual evapotranspiration modelling, we observed statistical errors of MAE = 0.422 mm d−1, and RMSE =0.599 mm d−1, with a R2 of 0.614. Comparing the results obtained with the machine learning models developed another studies in the same field, we understand that the results are promising and represent a baseline for future studies. Combining CERES data with information from other sources may generate more specific evapotranspiration products, considering the different land covers.

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Author Biographies

Facundo Carmona, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas

Instituto de Hidrolog´ıa de Llanuras “Dr. Eduardo Jorge Usunoff”, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas.

Ad´an Farami˜n´an, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas

Instituto de Hidrolog´ıa de Llanuras “Dr. Eduardo Jorge Usunoff”, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas.

Ra´ul Rivas, Comisi´on de Investigaciones Cient´ıficas de la Provincia de Buenos Aires

Instituto de Hidrolog´ıa de Llanuras “Dr. Eduardo Jorge Usunoff”, Comisi´on de Investigaciones Cient´ıficas de la Provincia de Buenos Aires.

Facundo Orte, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas

Departamento de Investigaciones en Láseres y sus aplicaciones, Instituto de Investigaciones Científicas y Técnicas para la Defensa, Consejo Nacional de Investigaciones Cient´ıficas y T´ecnicas.

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2023-10-04

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