JOURNAL ARTICLE

Ensemble Empirical Mode Decomposition Based Deep Learning Model for Short-Term Wind Power Forecasting

Juan Manuel González Sopeña

Year: 2021 Journal:   Materials research proceedings Vol: 20 Pages: 58-65

Abstract

Abstract. In the last few years, wind power forecasting has established itself as an essential tool in the energy industry due to the increase of wind power penetration in the electric grid. This paper presents a wind power forecasting method based on ensemble empirical mode decomposition (EEMD) and deep learning. EEMD is employed to decompose wind power time series data into several intrinsic mode functions and a residual component. Afterwards, every intrinsic mode function is trained by means of a CNN-LSTM architecture. Finally, wind power forecast is obtained by adding the prediction of every component. Compared to the benchmark model, the proposed approach provides more accurate predictions for several time horizons. Furthermore, prediction intervals are modelled using quantile regression.

Keywords:
Hilbert–Huang transform Wind power Wind power forecasting Residual Computer science Mode (computer interface) Deep learning Benchmark (surveying) Artificial intelligence Time series Wind speed Electric power system Power (physics) Energy (signal processing) Machine learning Engineering Algorithm Meteorology Mathematics Statistics

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Citation History

Topics

Energy Load and Power Forecasting
Physical Sciences →  Engineering →  Electrical and Electronic Engineering
Machine Fault Diagnosis Techniques
Physical Sciences →  Engineering →  Control and Systems Engineering
Power System Reliability and Maintenance
Physical Sciences →  Engineering →  Safety, Risk, Reliability and Quality
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