چکیده
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With the rapid increase of energy demand, it is becoming increasingly important to obtain accurate
energy demand forecasts. To incorporate long time causal relationships, autoregressive with exogenous
regression components models have received increasing attention from many researchers in
this field. These are linear models applied through hybrid methodology of time series and econometrics,
however, some recent studies find evidences that nonlinear models outperform over linear
ones in long term peak demand forecasting. This paper proposed a nonlinear Auto Regressive
Integrated Moving Average with Exogenous Inputs (N-ARIMAX) model to forecast sectoral peak
demand using a case study of Iran. The results indicate that significant improvements in forecasting
accuracy are obtained with the proposed models compared to the existing models.
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