期刊论文详细信息
AIMS Energy
Short-term load forecasting using machine learning and periodicity decomposition
Nour eddine Belbounaguia1  Abdelkarim El khantach1  Mohamed Hamlich2 
[1] 1 Laboratory of Physics of Atmosphere, Modeling and Simulation LPAMS. FSTM, Mohammedia. BP 146 Mohammedia 20650 Morocco. Hassan II University Casablanca;2 LSSIEE ENSAM Casablanca. 150 Avenue Nile Sidi Othman Casablanca 20670, Morocco. Hassan II University Casablanca;
关键词: load forecasting;    machine learning;    periodicity decomposition;    time series;    smart grid;   
DOI  :  10.3934/energy.2019.3.382
来源: DOAJ
【 摘 要 】

The accuracy of electricity consumption forecasts is of paramount importance in energy planning, it provides strong support for the effective energy demand management. In this work, we proposed a load forecast through the decomposition of the historical time series in relation to the historical evolution of each hour of the day. The output of these decomposition were served as input to different algorithms of machine learning. We tested our model by five machines learning methods, the achieved results are examined with three of the most commonly used evaluation measures in forecasting. The obtained results were very satisfactory.

【 授权许可】

Unknown   

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