• Corpus ID: 16091007

Forecasting Electrical Load using ANN Combined with Multiple Regression Method

@inproceedings{Badran2012ForecastingEL,
  title={Forecasting Electrical Load using ANN Combined with Multiple Regression Method},
  author={Saeed M. Badran and Ossama B. Abouelatta},
  year={2012}
}
This paper combined artificial neural network and regression modeling methods to predict electrical load. We propose an approach for specific day, week and/or month load forecasting for electrical companies taking into account the historical load. Therefore, a modified technique, based on artificial neural network (ANN) combined with linear regression, is applied on the KSA electrical network dependent on its historical data to predict the electrical load demand forecasting up to year 2020… 

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