6533b857fe1ef96bd12b437c
RESEARCH PRODUCT
Mapping daily global solar irradiation over Spain: A comparative study of selected approaches
Alvaro MorenoBeatriz MartínezMaría Amparo Gilabertsubject
MeteorologyArtificial neural networkRenewable Energy Sustainability and the EnvironmentKrigingKernel ridge regressionMean absolute errorEnvironmental scienceGeneral Materials ScienceIrradiationPrecipitationImage resolutiondescription
Abstract Three methods to estimate the daily global solar irradiation are compared: the Bristow–Campbell (BC), Artificial Neural Network (ANN) and Kernel Ridge Regression (KRR). BC is an empirical approach based on air maximum and minimum temperature. ANN and KRR are non-linear approaches that use temperature and precipitation data (which have been selected as the best combination of input data from a gamma test). The experimental dataset includes 4 years (2005–2008) of daily irradiation collected at 40 stations and temperature and precipitation data collected at 400 stations over Spain. Results show that the ANN method produces the best global solar irradiation estimates, with a mean absolute error 2.33 MJ m−2 day−1. Daily maps of solar irradiation over Spain at 1-km spatial resolution are produced by applying the ANN method to temperature and precipitation maps generated from ordinary kriging.
year | journal | country | edition | language |
---|---|---|---|---|
2011-09-01 | Solar Energy |