%0 Journal Article %T Enhanced Neuro-Fuzzy Architecture for Electrical Load Forecasting %A Hany Ferdinando %A Felix Pasila %A Henry Kuswanto %J TELKOMNIKA %D 2010 %I %X Previous researches about electrical load time series data forecasting showed that the result was not satisfying. This paper elaborates the enhanced neuro-fuzzy architecture for the same application. The system uses Gaussian membership function (GMF) for Takagi-Sugeno fuzzy logic system. The training algorithm is Levenberg-Marquardt algorithm to adjust the parameters in order to get better forecasting system than the previous researches. The electrical load was taken from East Java-Bali from September 2005 to August 2007. The architecture uses 4 inputs, 3 outputs with 5 GMFs. The system uses the following parameters: momentum=0.005, gamma=0.0005 and wildness factor=1.001. The MSE for short term forecasting for January to March 2007 is 0.0010, but the long term forecasting for June to August 2007 has MSE 0.0011. %K forecasting %K LMA %K neuro-fuzzy %U http://telkomnika.ee.uad.ac.id/n9/files/Vol.8No.2Agt10/8.2.8.10.03.pdf