Advanced Ensemble Methods Using Machine Learning and Deep Learning for One-Day-Ahead Forecasts of Electric Energy Production in Wind Farms

被引:29
作者
Piotrowski, Pawel [1 ]
Baczynski, Dariusz [1 ]
Kopyt, Marcin [1 ]
Gulczynski, Tomasz [2 ]
机构
[1] Warsaw Univ Technol, Elect Power Engn Inst, Koszykowa 75 St, PL-00662 Warsaw, Poland
[2] Globema Sp Zoo, Wita Stwosza 22 St, PL-02661 Warsaw, Poland
关键词
wind energy; wind farm; ensemble methods; short-term forecasting; electric energy production; machine learning; deep neural network; swarm intelligence; PREDICTION; HYBRID;
D O I
10.3390/en15041252
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
The ability to precisely forecast power generation for large wind farms is very important, since such generation is highly unstable and creates problems for Distribution and Transmission System Operators to properly prepare the power system for operation. Forecasts for the next 24 h play an important role in this process. They are also used in energy market transactions. Even a small improvement in the quality of these forecasts translates into more security of the system and savings for the economy. Using two wind farms for statistical analyses and forecasting considerably increases credibility of newly created effective prediction methods and formulated conclusions. In the first part of our study, we have analysed the available data to identify potentially useful explanatory variables for forecasting models with additional development of new input data based on the basic data set. We demonstrate that it is better to use Numerical Weather Prediction (NWP) point forecasts for hourly lags: -3, 2, -1, 0, 1, 2, 3 (original contribution) as input data than lags 0, 1 that are typically used. Also, we prove that it is better to use forecasts from two NWP models as input data. Ensemble, hybrid and single methods are used for predictions, including machine learning (ML) solutions like Gradient-Boosted Trees (GBT), Random Forest (RF), Multi-Layer Perceptron (MLP), Long Short-Term Memory (LSTM), K-Nearest Neighbours Regression (KNNR) and Support Vector Regression (SVR). Original ensemble methods, developed for researching specific implementations, have reduced errors of forecast energy generation for both wind farms as compared to single methods. Predictions by the original ensemble forecasting method, called "Ensemble Averaging Without Extremes" have the lowest normalized mean absolute error (nMAE) among all tested methods. A new, original "Additional Expert Correction" additionally reduces errors of energy generation forecasts for both wind farms. The proposed ensemble methods are also applicable to short-time generation forecasting for other renewable energy sources (RES), e.g., hydropower or photovoltaic (PV) systems.
引用
收藏
页数:30
相关论文
共 43 条
[1]   Improved EMD-Based Complex Prediction Model for Wind Power Forecasting [J].
Abedinia, Oveis ;
Lotfi, Mohamed ;
Bagheri, Mehdi ;
Sobhani, Behrouz ;
Shafie-khah, Miadreza ;
Catalao, Joao P. S. .
IEEE TRANSACTIONS ON SUSTAINABLE ENERGY, 2020, 11 (04) :2790-2802
[2]   Long-Term Wind Power Forecasting Using Tree-Based Learning Algorithms [J].
Ahmadi, Amirhossein ;
Nabipour, Mojtaba ;
Mohammadi-Ivatloo, Behnam ;
Amani, Ali Moradi ;
Rho, Seungmin ;
Piran, Md. Jalil .
IEEE ACCESS, 2020, 8 :151511-151522
[3]  
[Anonymous], 2018, Hands-on Machine Learning with Scikit-Learn and Tensorflow
[4]   Diurnal cycle RANS simulations applied to wind resource assessment [J].
Barcons, Jordi ;
Avila, Matias ;
Folch, Arnau .
WIND ENERGY, 2019, 22 (02) :269-282
[5]   Medium-term wind power forecasting based on multi-resolution multi-learner ensemble and adaptive model selection [J].
Chen, Chao ;
Liu, Hui .
ENERGY CONVERSION AND MANAGEMENT, 2020, 206
[6]   Learning Heterogeneous Features Jointly: A Deep End-to-End Framework for Multi-Step Short-Term Wind Power Prediction [J].
Chen, Jinfu ;
Zhu, Qiaomu ;
Li, Hongyi ;
Zhu, Lin ;
Shi, Dongyuan ;
Li, Yinhong ;
Duan, Xianzhong ;
Liu, Yilu .
IEEE TRANSACTIONS ON SUSTAINABLE ENERGY, 2020, 11 (03) :1761-1772
[7]   An adaptive hybrid system using deep learning for wind speed forecasting [J].
de Mattos Neto, Paulo S. G. ;
de Oliveira, Joao F. L. ;
Santos Junior, Domingos S. de O. ;
Siqueira, Hugo Valadares ;
Marinho, Manoel H. N. ;
Madeiro, Francisco .
INFORMATION SCIENCES, 2021, 581 :495-514
[8]   Ensemble Machine Learning-Based Wind Forecasting to Combine NWP Output With Data From Weather Station [J].
Du, Pengwei .
IEEE TRANSACTIONS ON SUSTAINABLE ENERGY, 2019, 10 (04) :2133-2141
[9]   Short-term wind power forecasting using the hybrid model of improved variational mode decomposition and Correntropy Long Short-term memory neural network [J].
Duan, Jiandong ;
Wang, Peng ;
Ma, Wentao ;
Tian, Xuan ;
Fang, Shuai ;
Cheng, Yulin ;
Chang, Ying ;
Liu, Haofan .
ENERGY, 2021, 214
[10]  
Dudek Grzegorz, 2017, Przeglad Elektrotechniczny, V93, P62, DOI 10.15199/48.2017.04.16