Heuristic methods applied in reference evapotranspiration modeling

ABSTRACT The importance of the precise estimation of evapotranspiration is directly related to sustainable water usage. Since agriculture represents 70% of Brazil’s water consumption, adequate and efficient application of water may reduce the conflicts over the use of water among the multiple users....

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Main Authors: Daniel Althoff, Helizani Couto Bazame, Roberto Filgueiras, Santos Henrique Brant Dias
Format: Article
Language:English
Published: Universidade Federal de Lavras
Series:Ciência e Agrotecnologia
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1413-70542018000300314&lng=en&tlng=en
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spelling doaj-92700bcc6a2445848bac08f3e9300ed72020-11-24T20:47:12ZengUniversidade Federal de LavrasCiência e Agrotecnologia1981-182942331432410.1590/1413-70542018423006818S1413-70542018000300314Heuristic methods applied in reference evapotranspiration modelingDaniel AlthoffHelizani Couto BazameRoberto FilgueirasSantos Henrique Brant DiasABSTRACT The importance of the precise estimation of evapotranspiration is directly related to sustainable water usage. Since agriculture represents 70% of Brazil’s water consumption, adequate and efficient application of water may reduce the conflicts over the use of water among the multiple users. Considering the importance of accurate estimation of evapotranspiration, the objective of the present study was to model and compare the reference evapotranspiration from different heuristic methodologies. The standard Penman-Monteith method was used as reference for evapotranspiration, however, to evaluate the heuristic methodologies with scarce data, two widely known methods had their performances assessed in relation to Penman-Monteith. The methods used to estimate evapotranspiration from scarce data were Priestley-Taylor and Thornthwaite. The computational techniques Stepwise Regression (SWR), Random Forest (RF), Cubist (CB), Bayesian Regularized Neural Network (BRNN) and Support Vector Machines (SVM) were used to estimate evapotranspiration with scarce and full meteorological data. The results show the robustness of the heuristic methods in the prediction of the evapotranspiration. The performance criteria of machine learning methods for full weather data varied from 0.14 to 0.22 mm d-1 for mean absolute error (MAE), from 0.21 to 0.29 mm d-1 for root mean squared error (RMSE) and from 0.95 to 0.99 coefficient of determination (r²). The computational techniques proved superior performance to established methods in literature, even in scenarios of scarce variables. The BRNN presented the best performance overall.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1413-70542018000300314&lng=en&tlng=enMachine learningmodel comparisonwater management
collection DOAJ
language English
format Article
sources DOAJ
author Daniel Althoff
Helizani Couto Bazame
Roberto Filgueiras
Santos Henrique Brant Dias
spellingShingle Daniel Althoff
Helizani Couto Bazame
Roberto Filgueiras
Santos Henrique Brant Dias
Heuristic methods applied in reference evapotranspiration modeling
Ciência e Agrotecnologia
Machine learning
model comparison
water management
author_facet Daniel Althoff
Helizani Couto Bazame
Roberto Filgueiras
Santos Henrique Brant Dias
author_sort Daniel Althoff
title Heuristic methods applied in reference evapotranspiration modeling
title_short Heuristic methods applied in reference evapotranspiration modeling
title_full Heuristic methods applied in reference evapotranspiration modeling
title_fullStr Heuristic methods applied in reference evapotranspiration modeling
title_full_unstemmed Heuristic methods applied in reference evapotranspiration modeling
title_sort heuristic methods applied in reference evapotranspiration modeling
publisher Universidade Federal de Lavras
series Ciência e Agrotecnologia
issn 1981-1829
description ABSTRACT The importance of the precise estimation of evapotranspiration is directly related to sustainable water usage. Since agriculture represents 70% of Brazil’s water consumption, adequate and efficient application of water may reduce the conflicts over the use of water among the multiple users. Considering the importance of accurate estimation of evapotranspiration, the objective of the present study was to model and compare the reference evapotranspiration from different heuristic methodologies. The standard Penman-Monteith method was used as reference for evapotranspiration, however, to evaluate the heuristic methodologies with scarce data, two widely known methods had their performances assessed in relation to Penman-Monteith. The methods used to estimate evapotranspiration from scarce data were Priestley-Taylor and Thornthwaite. The computational techniques Stepwise Regression (SWR), Random Forest (RF), Cubist (CB), Bayesian Regularized Neural Network (BRNN) and Support Vector Machines (SVM) were used to estimate evapotranspiration with scarce and full meteorological data. The results show the robustness of the heuristic methods in the prediction of the evapotranspiration. The performance criteria of machine learning methods for full weather data varied from 0.14 to 0.22 mm d-1 for mean absolute error (MAE), from 0.21 to 0.29 mm d-1 for root mean squared error (RMSE) and from 0.95 to 0.99 coefficient of determination (r²). The computational techniques proved superior performance to established methods in literature, even in scenarios of scarce variables. The BRNN presented the best performance overall.
topic Machine learning
model comparison
water management
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1413-70542018000300314&lng=en&tlng=en
work_keys_str_mv AT danielalthoff heuristicmethodsappliedinreferenceevapotranspirationmodeling
AT helizanicoutobazame heuristicmethodsappliedinreferenceevapotranspirationmodeling
AT robertofilgueiras heuristicmethodsappliedinreferenceevapotranspirationmodeling
AT santoshenriquebrantdias heuristicmethodsappliedinreferenceevapotranspirationmodeling
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