.••
AGRICULTURAL
AND
FOREST
METEOROLOGY
ELSEVIER Agricultural and Forest Meteorology 71 (1994) 115-132
Development of a neural network model to predict daily
solar radiation
David Elizondo a, Gerrit Hoogenboom *'b, R.W. McClendon c
aArtificial Intelligence Programs, University of Georgia, Athens, GA 30602, USA
bDepartment of Biological and Agricultural Engineering, University of Georgia, Georgia Station. Griffin.
GA 30223-1797, USA
CDepartment of Biological and Agricultural Engineering, University of Georgia, A thens, GA 30602. USA
Received 3 September 1993; revision accepted 29 December 1993
Abstract
Many computer simulation models which predict growth, development, and yield of agro-
nomic and horticultural crops require daily weather data as input. One of these inputs is daily
total solar radiation, which in many cases is not available owing to the high cost and complexity
of the instrumentation needed to record it. The aim of this study was to develop a neural
network model which can predict solar radiation as a function of readily available weather
data and other environmental variables. Four sites in the southeastern USA, i.e. Tifton, GA,
Clayton, NC, Gainesville, FL, and Quincy, FL, were selected because of the existence of long-
term daily weather data sets which included solar radiation. A combined total of 23 complete
years of weather data sets were available, and these data sets were separated into 11 years for
the training data set and 12 years for the testing data set. Daily observed values of minimum
and maximum air temperature and precipitation, together with daily calculated values for
daylength and clear sky radiation, were used as inputs for the neural network model. Day-
length and clear sky radiation were calculated as a function of latitude, day of year, solar angle,
and solar constant. An optimum momentum, learning rate, and number of hidden nodes were
determined for further use in the development of the neural network model. After model
development, the neural network model was tested against the independent data set. Root
mean square error varied from 2.92 to 3.64 MJ m -2 and the coefficient of determination varied
from 0.52 to 0.74 for the individual years used to test the accuracy of the model. Although this
neural network model was developed and tested for a limited number of sites, the results
suggest that it can be used to estimate daily solar radiation when measurements of only daily
maximum and minimum air temperature and precipitation are available.
*Corresponding author.
0168-1923/94/$07.00 © 1994 - Elsevier Science B.V. All rights reserved
SSDI 0168-1923(94)02139-B