Electricity Load Demand Forecast using Fast Ensemble-Decomposed Model

Authors

  • Nuramirah Akrom Department of Mathematical Sciences, Faculty of Sciences, Universiti Teknologi Malaysia
  • Zuhaimy Ismail Department of Mathematical Sciences, Faculty of Sciences, Universiti Teknologi Malaysia

Keywords:

Fast Ensemble-Decomposed Model (FED), Electricity load demand, Electricity consumption, Electricity production, Forecasting

Abstract

Electricity load demand forecasting is a complex process since the pattern of electricity load demand data sets varies. To overcome this problem, a fast ensemble-decomposed model was proposed in this work. Firstly, two data sets of electricity load demand, which are electricity consumption and electricity production, were decomposed into two Intrinsic Mode Functions (IMFs). Secondly, the different values of ensemble trials are employed into fast ensemble-decomposed model. Then, the second IMF was used as the intrinsic prediction trend for the actual electricity load demand data sets. Lastly, the second IMF was compared with the actual electricity load demand time series data and the intrinsic prediction trend of the second IMF was forecasted. Simulation results revealed that the FED model better than the ARIMA and ANN methods and different values of ensembles trials do effect forecast accuracy.

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Published

01-08-2018

How to Cite

Akrom, N., & Ismail, Z. (2018). Electricity Load Demand Forecast using Fast Ensemble-Decomposed Model. Journal of Science and Technology, 10(2). https://penerbit.uthm.edu.my/ojs/index.php/JST/article/view/3018