Item Details
Skip Navigation Links
   ActiveUsers:1402Hits:19849294Skip Navigation Links
Show My Basket
Contact Us
IDSA Web Site
Ask Us
Today's News
HelpExpand Help
Advanced search

In Basket
  Journal Article   Journal Article
 

ID150820
Title ProperForecasting annual gross electricity demand by artificial neural networks using predicted values of socio-economic indicators and climatic conditions:
Other Title InformationCase of Turkey
LanguageENG
AuthorM. Erdem Günay ;  Günay, M. Erdem
Summary / Abstract (Note)In this work, the annual gross electricity demand of Turkey was modeled by multiple linear regression and artificial neural networks as a function population, gross domestic product per capita, inflation percentage, unemployment percentage, average summer temperature and average winter temperature. Among these, the unemployment percentage and the average winter temperature were found to be insignificant to determine the demand for the years between 1975 and 2013. Next, the future values of the statistically significant variables were predicted by time series ANN models, and these were simulated in a multilayer perceptron ANN model to forecast the future annual electricity demand. The results were validated with a very high accuracy for the years that the electricity demand was known (2007–2013), and they were also superior to the official predictions (done by Ministry of Energy and Natural Resources of Turkey). The model was then used to forecast the annual gross electricity demand for the future years, and it was found that, the demand will be doubled reaching about 460 TW h in the year 2028. Finally, it was concluded that the approach applied in this work can easily be implemented for other countries to make accurate predictions for the future.
`In' analytical NoteEnergy Policy Vol. 90, No.90; Mar 2016: p.92–101
Journal SourceEnergy Policy 2016-03 90, 90
Key WordsPopulation ;  Economic indicators ;  Time Series ;  Artificial Neural Networks ;  Electricity Demand Forecasting ;  Average Ambient Temperature