ZANETTI, Sidney S.; SOUSA, Elias F.; CARVALHO, Daniel F. de.; OLIVEIRA, Vicente de Paulo S. de.; ALMEIDA, Frederico T. de.
Resumen:
This work was performed with the aim of proposing an artificial neural network (ANN)
to estimate the reference evapotranspiration (ETo) as a function of geographic position coordinates
and air temperature in Rio de Janeiro State. Data used for the network training were collected from 18
Historical series of climatic elements. Starting from historical series the ETo was calculated by
Penman-Monteith (FAO-56) method and used as a reference for network training. ANNs of multilayer
perceptron type (MLP) were trained to estimate ETo as a function of latitude, longitude, altitude,
average air temperature, thermal amplitude and day of the year. After training with different network
configurations the one showing best performance was selected, and was composed by only one
intermediary layer (with twenty neurons and sigmoid logistic activation function) and one output layer
(with one neuron and linear activation function). According to the results obtained on the test stage we
can conclude that, considering only geographical positioning coordinates and air temperature it is
possible to estimate daily ETo in Rio de Janeiro State by using an ANN.