Optimized hybrid ensemble learning approaches applied to very short-term load forecasting

被引:29
|
作者
Yamasaki Junior, Marcos [1 ]
Freire, Roberto Zanetti [2 ]
Seman, Laio Oriel [3 ]
Stefenon, Stefano Frizzo [4 ,5 ]
Mariani, Viviana Cocco [6 ,7 ]
Coelho, Leandro dos Santos [1 ,7 ]
机构
[1] Pontifical Catholic Univ Parana PUCPR, Ind & Syst Engn Grad Program, BR-80215901 Curitiba, Brazil
[2] Univ Tecnol Fed Parana UTFPR, BR-80230901 Curitiba, Brazil
[3] Fed Univ Santa Catarina UFSC, Dept Automat & Syst Engn, BR-88040900 Florianopolis, Brazil
[4] Fdn Bruno Kessler, Digital Ind Ctr, I-38123 Trento, Italy
[5] Univ Udine, Dept Math Comp Sci & Phys, I-33100 Udine, Italy
[6] Pontifical Catholic Univ Parana PUCPR, Mech Engn Grad Program, BR-80215901 Curitiba, Brazil
[7] Fed Univ Parana UFPR, Dept Elect Engn, BR-81530000 Curitiba, Brazil
关键词
Electrical power systems; Ensemble learning; Machine Learning; Short-term load forecasting; Signals decomposition methods; Time series forecasting;
D O I
10.1016/j.ijepes.2023.109579
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The significance of accurate short-term load forecasting (STLF) for modern power systems' efficient and secure operation is paramount. This task is intricate due to cyclicity, non-stationarity, seasonality, and nonlinear power consumption time series data characteristics. The rise of data accessibility in the power industry has paved the way for machine learning (ML) models, which show the potential to enhance STLF accuracy. This paper presents a novel hybrid ML model combining Gradient Boosting Regressor (GBR), Extreme Gradient Boosting (XGBoost), k-Nearest Neighbors (kNN), and Support Vector Regression (SVR), examining both standalone and integrated, coupled with signal decomposition techniques like STL, EMD, EEMD, CEEMDAN, and EWT. Through Automated Machine Learning (AutoML), these models are integrated and their hyperparameters optimized, predicting each load signal component using data from two sources: The National Operator of Electric System (ONS) and the Independent System Operators New England (ISO-NE), boosting prediction capacity. For the 2019 ONS dataset, combining EWT and XGBoost yielded the best results for very short-term load forecasting (VSTLF) with an RMSE of 1,931.8 MW, MAE of 1,564.9 MW, and MAPE of 2.54%. These findings highlight the necessity for diverse approaches to each VSTLF problem, emphasizing the adaptability and strength of ML models combined with signal decomposition techniques.
引用
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页数:17
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