Ensemble forecasting for electricity consumption based on nonlinear optimization
Author(s) -
Jun Hao,
Qianqian Feng,
Weilan Suo,
Guowei Gao,
Xiaolei Sun
Publication year - 2019
Publication title -
procedia computer science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.334
H-Index - 76
ISSN - 1877-0509
DOI - 10.1016/j.procs.2019.11.252
Subject(s) - exponential smoothing , computer science , electricity , autoregressive integrated moving average , ensemble forecasting , demand forecasting , ensemble learning , electricity demand , sample (material) , extreme learning machine , mathematical optimization , artificial intelligence , operations research , machine learning , power (physics) , electricity generation , time series , artificial neural network , quantum mechanics , chromatography , electrical engineering , computer vision , engineering , chemistry , physics , mathematics
Accurate electricity power demand forecasting can provide scientific decision-making basis for policy making and planning implementation and the electricity-generating target. In this paper, a novel ensemble forecasting model with nonlinear optimization is proposed to predict the demand of electricity. The results of basic forecasting models including exponential smoothing, ARIMA, SVR and extreme learning machine are integrated. Taking clean electricity demand of world’s major regions as sample, the results reveal that the ensemble approach performs much better than the single and average integrated models in terms of the accuracy.
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