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📖 Description
This study applies double seasonal Holt-Winter method, Double seasonal autoregressive integrated moving average (DSARIMA) model and Artificial Neural Networks (ANNs) in forecasting the Egyptian electricity demand series. Double seasonal Holt-Winter method, DSRIMA model and ANNs are commonly used for forecasting electricity in many countries. Electricity demand series in many countries has daily and weekly seasonal cycles. A daily seasonal cycle appears from the similarity of the electricity demand from one day to the next. Similarly, a weekly seasonal cycle appears from comparing the electricity demand on a certain day of different weeks. Double seasonal Holt-Winter method, DSRIMA model and ANNs are proposed by many researchers to capture theses two seasonal cycles and consequently offered accurate forecasts. In this study, we investigate these three forecasting methods in forecasting hourly electricity demand in Egypt to arrive at the best forecasting method. The previous forecasting methods are applied on hourly Egyptian data set. The mean absolute deviation (MAD), the mean absolute percentage error (MAPE), the mean square error (MSE) and the root mean square error (RMSE) are used to evaluate the forecasting accuracy of these methods. The results show the superiority of double seasonal Holt- Winters method in forecasting the Egyptian electricity demand. DSARIMA model and ANNs are competitive to each other. DSARIMA model gives accurate forecasts than ANNs up to two weeks forecast ahead, while ANNs are more accurate for forecast time horizon longer than two weeks.