Which meteorological parameters influence extreme wind speed in a wind farm? A heterogeneous Granger causality approach.

Which meteorological parameters influence extreme wind speed in a wind farm? A heterogeneous Granger causality approach.

Abstract

For efficient wind farm management and optimized power generation under adverse weather conditions, understanding the causal meteorological drivers is essential. In this paper, we investigate the temporal causal influences of wind speed-related meteorological processes within a wind farm using the Heterogeneous Graphical Granger model (HMML). HMML is applied to synthetically generated wind power production data from Eastern Austria. To assess the plausibility of the identified causal processes, we compare the results with those obtained using the state-of-the-art LiNGAM method. Both methods are applied and evaluated across six different scenarios, each defined by distinct hydrological periods. The scenarios are defined by a set of time intervals characterized by either low/high extreme wind speeds or moderate wind speeds. We applied both methods across these scenarios and conducted causal reasoning to identify potential causes of extreme wind speeds within the wind farm. The sets of causal parameters obtained using HMML were found to be more realistic than those derived from LiNGAM. Combining the knowledge of causal variables affecting wind speed at the turbine hub, identified by HMML in each scenario, with weather forecasts can offer practical guidance for wind farm operators. Specifically, this knowledge can support more informed planning regarding when wind turbines should or should not be generating energy. For instance, the strong Granger-causal linkage identified between wind speed and temperature can inform curtailment strategies. In scenarios where rising temperatures are predictive of declining wind speeds, operators may preemptively adjust turbine output or schedule maintenance to optimize efficiency and reduce wear. Moreover, such predictive insights can feed into energy market models, where anticipated curtailment due to meteorological dependencies affects both generation forecasts and pricing strategies. By integrating these causal relationships into operational planning, the proposed tool offers a pathway toward more adaptive and economically efficient wind energy management.

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Authors
  • Katerina, Hlavackova-Schindler
  • Rainer, Woess
  • Irene, Schicker
  • Claudia, Plant
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Shortfacts
Category
Journal Paper
Divisions
Data Mining and Machine Learning
Journal or Publication Title
Environmental Data Science
ISSN
2634-4602
Publisher
Cambridge University Press
Place of Publication
https://www.cambridge.org/core/journals/environmental-data-science
Page Range
pp. 1-42
Volume
5
Date
9 February 2026
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