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Short-Term Load Forecast in Electric Energy System in Bulgaria
Journal Title Advances in Electrical and Electronic Engineering
Journal Abbreviation AEEE
Publisher Group Technical University of Ostrava (VSB)
Website http://advances.utc.sk/index.php/AEEE
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Title Short-Term Load Forecast in Electric Energy System in Bulgaria
Authors Georgiev, Dimitar; Asenova, Irina
Abstract As the accuracy of the electricity load forecast is crucial in providing better cost effective risk management plans, this paper proposes a Short Term Electricity Load Forecast (STLF) model with high forecasting accuracy. Two kind of neural networks, Multilayer Perceptron network model and Radial Basis Function network model, are presented and compared using the mean absolute percentage error. The data used in the models are electricity load historical data. Even though the very good performance of the used model for the load data, weather parameters, especially the temperature, take important part for the energy predicting which is taken into account in this paper. A comparative evaluation between a traditional statistical method and artificial neural networks is presented.
Publisher Faculty of Electrical Engineering and Computer Science
Date 2010-12-31
Source Advances in Electrical and Electronic Engineering Vol 8, No 4 (2010): December
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