Long-Term Wind Power Forecasting Using Tree-Based Learning Algorithms

被引:91
作者
Ahmadi, Amirhossein [1 ]
Nabipour, Mojtaba [2 ]
Mohammadi-Ivatloo, Behnam [3 ,4 ]
Amani, Ali Moradi [5 ]
Rho, Seungmin [6 ]
Piran, Md. Jalil [7 ]
机构
[1] Amirkabir Univ Technol, Tehran Polytech, Dept Elect Engn, Tehran 1344893854, Iran
[2] Tarbiat Modares Univ, Dept Mech Engn, Tehran 4816718986, Iran
[3] Univ Tabriz, Dept Elect Engn, Tabriz 5166616471, Iran
[4] Duy Tan Univ, Inst Res & Dev, Da Nang 550000, Vietnam
[5] RMIT Univ, Sch Engn, Melbourne, Vic 3001, Australia
[6] Sejong Univ, Dept Software, Seoul 05006, South Korea
[7] Sejong Univ, Dept Comp Sci & Engn, Seoul 05006, South Korea
基金
新加坡国家研究基金会;
关键词
Forecasting; Wind power generation; Wind forecasting; Predictive models; Machine learning; Wind speed; Machine learning algorithms; Wind energy; long-term; wind power forecasting; machine learning; regression; NEURAL-NETWORK; SPEED; PREDICTION; MULTISTEP; REGRESSION; FARM;
D O I
10.1109/ACCESS.2020.3017442
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The intermittent and uncertain nature of wind places a premium on accurate wind power forecasting for the reliable and efficient operation of power grids with large-scale wind power penetration. Herein, six-month-ahead wind power forecasting models were developed using tree-based learning algorithms. Three models were developed to investigate the impact of input data on forecasting accuracy. The first model was trained with the average and standard deviation of wind speed values measured at a height of 40 m with a 10-min sampling time. To evaluate the impact of sampling time on model performance, a second model was trained with wind speed values measured at a height of 40 m with 1-h, 12-h, and 24-h sampling times. To assess the effect of measuring height on model accuracy, the third model was trained with wind speed values measured at 40 m extrapolated from values measured at heights of 30 m and 10 m. Experiments revealed that using longer time intervals and height extrapolation leads to considerable accuracy degradation in forecasted models. Finally, to study the generalization ability of the forecasted models, they were tested against wind data measured at heights and locations different from what the models had been trained with. Simulation results substantiated that tree-based learning algorithms can be successfully adopted not only for long-term wind power forecasting, but for potential wind power forecasting at different heights and geographical locations.
引用
收藏
页码:151511 / 151522
页数:12
相关论文
共 46 条
[31]   Wind speed prediction method based on Empirical Wavelet Transform and New Cell Update Long Short-Term Memory network [J].
Pei, Shaoqian ;
Qin, Hui ;
Zhang, Zhendong ;
Yao, Liqiang ;
Wang, Yongqiang ;
Wang, Chao ;
Liu, Yongqi ;
Jiang, Zhiqiang ;
Zhou, Jianzhong ;
Yi, Tailai .
ENERGY CONVERSION AND MANAGEMENT, 2019, 196 :779-792
[32]   Hybrid technique of ant colony and particle swarm optimization for short term wind energy forecasting [J].
Rahmani, Rasoul ;
Yusof, Rubiyah ;
Seyedmahmoudian, Mohammadmehdi ;
Mekhilef, Saad .
JOURNAL OF WIND ENGINEERING AND INDUSTRIAL AERODYNAMICS, 2013, 123 :163-170
[33]   Very short-term wind power density forecasting through artificial neural networks for microgrid control [J].
Rodriguez, Fermin ;
Florez-Tapia, Ane M. ;
Fontan, Luis ;
Galarza, Ainhoa .
RENEWABLE ENERGY, 2020, 145 :1517-1527
[34]   Short-term wind power forecasts by a synthetical similar time series data mining method [J].
Sun, Gaiping ;
Jiang, Chuanwen ;
Cheng, Pan ;
Liu, Yangyang ;
Wang, Xu ;
Fu, Yang ;
He, Yang .
RENEWABLE ENERGY, 2018, 115 :575-584
[35]   Wind power forecasting based on singular spectrum analysis and a new hybrid Laguerre neural network [J].
Wang, Cong ;
Zhang, Hongli ;
Ma, Ping .
APPLIED ENERGY, 2020, 259
[36]   A hybrid wind power forecasting approach based on Bayesian model averaging and ensemble learning [J].
Wang, Gang ;
Jia, Ru ;
Liu, Jinhai ;
Zhang, Huaguang .
RENEWABLE ENERGY, 2020, 145 :2426-2434
[37]   Deterministic and probabilistic wind power forecasting using a variational Bayesian-based adaptive robust multi-kernel regression model [J].
Wang, Yun ;
Hu, Qinghua ;
Meng, Deyu ;
Zhu, Pengfei .
APPLIED ENERGY, 2017, 208 :1097-1112
[38]   Combined forecasting models for wind energy forecasting: A case study in China [J].
Xiao, Ling ;
Wang, Jianzhou ;
Dong, Yao ;
Wu, Jie .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2015, 44 :271-288
[39]   Reviews on uncertainty analysis of wind power forecasting [J].
Yan, Jie ;
Liu, Yongqian ;
Han, Shuang ;
Wang, Yimei ;
Feng, Shuanglei .
RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2015, 52 :1322-1330
[40]   Advanced wind power prediction based on data-driven error correction [J].
Yan, Jing ;
Ouyang, Tinghui .
ENERGY CONVERSION AND MANAGEMENT, 2019, 180 :302-311