Probabilistic Forecasting of Wind Turbine Icing Related Production Losses Using Quantile Regression Forests

被引:13
|
作者
Molinder, Jennie [1 ]
Scher, Sebastian [2 ,3 ]
Nilsson, Erik [1 ]
Kornich, Heiner [4 ]
Bergstrom, Hans [1 ]
Sjoblom, Anna [1 ]
机构
[1] Uppsala Univ, Dept Earth Sci, SE-75236 Uppsala, Sweden
[2] Stockholm Univ, Bolin Ctr Climate Res, SE-10691 Stockholm, Sweden
[3] Stockholm Univ, Dept Meteorol, SE-10691 Stockholm, Sweden
[4] SMHI, Unit Meteorol Res, SE-60176 Norrkoping, Sweden
关键词
wind energy; icing on wind turbines; machine learning; probabilistic forecasting; WET SNOW; WEATHER; PREDICTION; SYSTEM; LEARN;
D O I
10.3390/en14010158
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
A probabilistic machine learning method is applied to icing related production loss forecasts for wind energy in cold climates. The employed method, called quantile regression forests, is based on the random forest regression algorithm. Based on the performed tests on data from four Swedish wind parks available for two winter seasons, it has been shown to produce valuable probabilistic forecasts. Even with the limited amount of training and test data that were used in the study, the estimated forecast uncertainty adds more value to the forecast when compared to a deterministic forecast and a previously published probabilistic forecast method. It is also shown that the output from a physical icing model provides useful information to the machine learning method, as its usage results in an increased forecast skill when compared to only using Numerical Weather Prediction data. A potential additional benefit in machine learning for some stations was also found when using information in the training from other stations that are also affected by icing. This increases the amount of data, which is otherwise a challenge when developing forecasting methods for wind energy in cold climates.
引用
收藏
页数:19
相关论文
共 50 条
  • [31] Enhanced Probabilistic Spatiotemporal Wind Speed Forecasting Based on Deep Learning, Quantile Regression, and Error Correction
    Zhu, Shuang
    Chen, Xudong
    Luo, Xiangang
    Luo, Kai
    Wei, Jianan
    Li, Jiang
    Xiong, Yanping
    JOURNAL OF ENERGY ENGINEERING, 2022, 148 (02)
  • [32] Bayesian bootstrap quantile regression for probabilistic photovoltaic power forecasting
    Mokhtar Bozorg
    Antonio Bracale
    Pierluigi Caramia
    Guido Carpinelli
    Mauro Carpita
    Pasquale De Falco
    Protection and Control of Modern Power Systems, 2020, 5
  • [33] An Improved Quantile Regression Neural Network for Probabilistic Load Forecasting
    Zhang, Wenjie
    Quan, Hao
    Srinivasan, Dipti
    IEEE TRANSACTIONS ON SMART GRID, 2019, 10 (04) : 4425 - 4434
  • [34] Wind turbine icing characteristics and icing-induced power losses to utility-scale wind turbines
    Gao, Linyue
    Hu, Hui
    PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2021, 118 (42)
  • [35] Probabilistic Forecasting of Electric Vehicle Charging Load using Composite Quantile Regression LSTM
    Chen, Yi
    Pang, Bin
    Xiang, Xinyu
    Lu, Tao
    Xia, Tian
    Geng, Guangchao
    2023 IEEE/IAS INDUSTRIAL AND COMMERCIAL POWER SYSTEM ASIA, I&CPS ASIA, 2023, : 984 - 989
  • [36] Parallel and reliable probabilistic load forecasting via quantile regression forest and quantile determination
    Zhang, Wenjie
    Quan, Hao
    Srinivasan, Dipti
    ENERGY, 2018, 160 : 810 - 819
  • [37] Quantile based probabilistic wind turbine power curve model*
    Xu, Keyi
    Yan, Jie
    Zhang, Hao
    Zhang, Haoran
    Han, Shuang
    Liu, Yongqian
    APPLIED ENERGY, 2021, 296
  • [38] Adjustable piecewise regression strategy based wind turbine power forecasting for probabilistic condition monitoring
    Jing, Hua
    Zhao, Chunhui
    SUSTAINABLE ENERGY TECHNOLOGIES AND ASSESSMENTS, 2022, 52
  • [39] Effect of icing roughness on wind turbine power production
    Blasco, Peter
    Palacios, Jose
    Schmitz, Sven
    WIND ENERGY, 2017, 20 (04) : 601 - 617
  • [40] Probabilistic Forecasts Based on Quantile Regression for Regional Wind Farms
    Wang Z.
    Wang B.
    Feng S.
    Wang W.
    Wang, Zhao (wangzhaohsgd@126.com), 1600, Power System Technology Press (44): : 1368 - 1375