4.7 Article

A novel decomposition-ensemble learning framework for multi-step ahead wind energy forecasting

期刊

ENERGY
卷 216, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.energy.2020.119174

关键词

Wind energy; Forecasting; Time series; Decomposition; Stacking ensemble learning; Machine learning

资金

  1. National Council of Scientific and Technologic Development of Brazil - CNPq [307958/2019-1-PQ, 307966/2019-4-PQ, 404659/2016-0-Univ, 405101/2016-3-Univ, 160817/2019-6-PDJ]
  2. PRONEX 'Fundacao Araucaria' [042/2018]
  3. Coordenacao de Aperfeicoamento de Pessoal de Nivel Superior - Brasil (CAPES) [001]

向作者/读者索取更多资源

This paper introduces a decomposition-ensemble learning model to predict wind energy for a turbine in a wind farm in Parazinho city, Brazil, with high accuracy and efficiency.
Wind energy is one of the sources which is still in development in Brazil. However, it already represents 17% of the National Interconnected System. Due to the high level of uncertainty and fluctuations in wind speed, predicting wind energy with high accuracy is challenging. In this context, this paper proposes a novel decomposition-ensemble learning approach that combines Complete Ensemble Empirical Mode Decomposition (CEEMD) and Stacking-ensemble learning (STACK) based on Machine Learning algorithms to forecast the wind energy of a turbine in a wind farm at Parazinho city, Brazil, using multi-step ahead forecasting strategy. The approached forecasting models were k-Nearest Neighbors, Partial Least Squares Regression, Ridge Regression, Support Vector Regression, and Cubist Regression. Additionally, Box-Cox transformation, correlation matrix, and principal component analysis were used to pre-process the data. The performance of the proposed forecasting models was evaluated by using three performance metrics: mean absolute error, mean absolute percentage error, and root mean square error, and the Diebold-Mariano statistical test to evaluate the forecasting error signals. The proposed models outperform the CEEMD, STACK, and single models in all forecasting horizons, with a performance improvement that ranges 0.06%-97.53%. Indeed, the decomposition-ensemble learning model is an efficient and accurate model for wind energy forecasting. (C) 2020 Elsevier Ltd. All rights reserved.

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