Litcius/Paper detail

Reference Evapotranspiration Modeling Using New Heuristic Methods

Rana Muhammad Adnan, Zhihuan Chen, Xiaohui Yuan, Özgür Kişi, Ahmed El‐Shafie, Alban Kuriqi, Misbah Ikram

2020Entropy40 citationsDOIOpen Access PDF

Abstract

The study investigates the potential of two new machine learning methods, least-square support vector regression with a gravitational search algorithm (LSSVR-GSA) and the dynamic evolving neural-fuzzy inference system (DENFIS), for modeling reference evapotranspiration (ETo) using limited data. The results of the new methods are compared with the M5 model tree (M5RT) approach. Previous values of temperature data and extraterrestrial radiation information obtained from three stations, in China, are used as inputs to the models. The estimation exactness of the models is measured by three statistics: root mean square error, mean absolute error, and determination coefficient. According to the results, the temperature or extraterrestrial radiation-based LSSVR-GSA models perform superiorly to the DENFIS and M5RT models in terms of estimating monthly ETo. However, in some cases, a slight difference was found between the LSSVR-GSA and DENFIS methods. The results indicate that better prediction accuracy may be obtained using only extraterrestrial radiation information for all three methods. The prediction accuracy of the models is not generally improved by including periodicity information in the inputs. Using optimum air temperature and extraterrestrial radiation inputs together generally does not increase the accuracy of the applied methods in the estimation of monthly ETo.

Topics & Concepts

EvapotranspirationMean squared errorSupport vector machineStatisticsComputer scienceData miningMathematicsAlgorithmMachine learningEcologyBiologyPlant Water Relations and Carbon DynamicsSolar Radiation and PhotovoltaicsHydrological Forecasting Using AI
Reference Evapotranspiration Modeling Using New Heuristic Methods | Litcius