Title :
Artificial neural network-based distribution substation and feeder load forecast
Author :
Yasuoka, J. ; Brittes, J.L.P. ; Schmidt, H.P. ; Jardini, J.A.
Author_Institution :
Escola Politecnica, Sao Paulo Univ., Brazil
Abstract :
A methodology for estimating future demand values at both distribution substation and primary feeder levels is described in this paper. The software implementation of the proposed methodology is already running in a 138/11.9-kV, 3×40-MVA distribution substation. Results obtained with this implementation are very encouraging, even when using as little historical data as 3 months. Forecast error is also very low when a demand curve substantially different from the ones presented to the artificial neural network in its training phase are used in the processing mode. A separate module for dealing with load transfers between primary feeders during contingencies is currently in its final stages of development
Keywords :
distribution networks; learning (artificial intelligence); load forecasting; multilayer perceptrons; power system analysis computing; transformer substations; 11.9 kV; 138 kV; 40 MVA; artificial neural network; computer simulation; demand curve; distribution feeder; distribution substation; load forecast; load transfer; primary feeder levels; software implementation; training phase;
Conference_Titel :
Electricity Distribution, 2001. Part 1: Contributions. CIRED. 16th International Conference and Exhibition on (IEE Conf. Publ No. 482)
Conference_Location :
Amsterdam
Print_ISBN :
0-85296-735-7
DOI :
10.1049/cp:20010890