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

Author

Listed:
  • Jennie Molinder

    (Department of Earth Sciences, Uppsala University, SE-75236 Uppsala, Sweden)

  • Sebastian Scher

    (Bolin Centre for Climate Research and Department of Meteorology, Stockholm University, SE-106 91 Stockholm, Sweden)

  • Erik Nilsson

    (Department of Earth Sciences, Uppsala University, SE-75236 Uppsala, Sweden)

  • Heiner Körnich

    (Unit for Meteorology Research, SMHI, SE-60176 Norrköping, Sweden)

  • Hans Bergström

    (Department of Earth Sciences, Uppsala University, SE-75236 Uppsala, Sweden)

  • Anna Sjöblom

    (Department of Earth Sciences, Uppsala University, SE-75236 Uppsala, Sweden)

Abstract

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.

Suggested Citation

  • Jennie Molinder & Sebastian Scher & Erik Nilsson & Heiner Körnich & Hans Bergström & Anna Sjöblom, 2020. "Probabilistic Forecasting of Wind Turbine Icing Related Production Losses Using Quantile Regression Forests," Energies, MDPI, vol. 14(1), pages 1-19, December.
  • Handle: RePEc:gam:jeners:v:14:y:2020:i:1:p:158-:d:470680
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    References listed on IDEAS

    as
    1. Kraj, Andrea G. & Bibeau, Eric L., 2010. "Phases of icing on wind turbine blades characterized by ice accumulation," Renewable Energy, Elsevier, vol. 35(5), pages 966-972.
    2. Kim, Deockho & Hur, Jin, 2018. "Short-term probabilistic forecasting of wind energy resources using the enhanced ensemble method," Energy, Elsevier, vol. 157(C), pages 211-226.
    3. Markus Reichstein & Gustau Camps-Valls & Bjorn Stevens & Martin Jung & Joachim Denzler & Nuno Carvalhais & Prabhat, 2019. "Deep learning and process understanding for data-driven Earth system science," Nature, Nature, vol. 566(7743), pages 195-204, February.
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    Cited by:

    1. Swenson, Lauren & Gao, Linyue & Hong, Jiarong & Shen, Lian, 2022. "An efficacious model for predicting icing-induced energy loss for wind turbines," Applied Energy, Elsevier, vol. 305(C).

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