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Evaluation of machine learning models for prediction of daily reference evapotranspiration in semi-arid India

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Relation http://oar.icrisat.org/12506/
https://www.indianjournals.com/ijor.aspx?target=ijor:rma&volume=44&issue=1&article=014
https://doi.org/10.59515/rma.2023.v44.i1.14
 
Title Evaluation of machine learning models for prediction of daily reference evapotranspiration in semi-arid India
 
Creator Singh, A K
Singh, J B
Das, B
Singh, R
Ghosh, A
Kantwa, S R
 
Subject Semi-Arid Tropics
India
 
Description Reference evapotranspiration (ET0) is controlled by climatic factors; hence, its estimation provides an idea about the atmospheric demand of water. Machine learning techniques like elastic net (ELNET), K-nearest neighbours (KNN), multivariate adaptive regression splines (MARS), partial least squares regression (PSLR), random forest (RF), support vector regression (SVR), XGBoost and cubist were employed to predict daily reference evapotranspiration based on daily weather parameters of twenty years. Penman-Monteith method was used as the reference method for ET0 estimation. All models performed well during calibration showing higher coefficient of determination (R2) which ranged from 0.97 (for PLSR) to 1 (for cubist models). Mean absolute error during calibration ranges from 0.027 mm-1 d-1 for cubist to 0.607 mm-1 d-1 for ELNET. Cubist model (R2= 1, MAE = 0.017 mm d-1, RMSE = 0.027 mm d-1) outper formed other models during the calibration. During validation, the coefficient of determination (R2) for the machine learning models varied from 0.819 to 1, RMSE varied from 0.06 to 0.60 mm d-1 and MAE varied from 0.031 to 0.38 mm d-1. Based on statistical parameters, best performance was observed for cubist model (R2 = 1, RMSE = 0.06 mm d-1, MAE = 0.031 mm d-1) among the studied machine learning models for the prediction of reference evapotranspiration. Hence, the cubist model may be used to estimate daily reference evapotranspiration for the studied region.
 
Date 2023-09-20
 
Type Article
PeerReviewed
 
Identifier Singh, A K and Singh, J B and Das, B and Singh, R and Ghosh, A and Kantwa, S R (2023) Evaluation of machine learning models for prediction of daily reference evapotranspiration in semi-arid India. Range Management and Agroforestry, 44 (1). pp. 118-125. ISSN 2249-5231