Electric
load forecasting plays an important role in the planning and operation of the
power system for high productivity in any institution of learning. A short-term
electrical energy forecast for Gidan Kwano campus, Federal University of
Technology Minna, Nigeria was carried out using GMDH-type neural network and
the result was compared to that of regression analysis. GMDH-type neural
network was used to train and test weekly energy consumed in the campus from
September 2010 to December 2014. The neural network was trained using quadratic
neural function. Root mean square error (RMSE) and mean absolute percentage
error (MAPE) were used as performance indices to test the accuracy of the
forecast. The neural network model gave a root mean square error (RMSE) of
0.1189, a mean absolute percentage error (MAPE) of 0.0922 and a correlation (R)
value of 0.8995 while the regression analysis method gave a standard error of
10968.1 and a correlation (R) value of 0.1137. Results obtained show the
efficacy of the GMDH-type neural network model in forecasting over the
regression analysis method.
Website: http://www.arjonline.org/engineering/american-research-journal-of-electrical-engineering/
Website: http://www.arjonline.org/engineering/american-research-journal-of-electrical-engineering/
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