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Upward Lightning at Wind Turbines: Risk Assessment from Larger-Scale Meteorology
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  • Isabell Stucke,
  • Deborah Morgenstern,
  • Georg Mayr,
  • Thorsten Simon,
  • Achim Zeileis,
  • Gerhard Diendorfer,
  • Wolfgang Schulz,
  • Hannes Pichler
Isabell Stucke
University of Innsbruck

Corresponding Author:[email protected]

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Deborah Morgenstern
University of Innsbruck
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Georg Mayr
University of Innsbruck
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Thorsten Simon
University of Innsbruck
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Achim Zeileis
University of Innsbruck
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Gerhard Diendorfer
OVE Service GmbH
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Wolfgang Schulz
OVE
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Hannes Pichler
OVE, Austria
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Abstract

Upward lightning (UL) has become a major threat to the growing number of wind turbines producing renewable electricity. It can be much more destructive than downward lightning due to the large charge transfer involved in the discharge process. Ground-truth lightning current measurements indicate that less than 50% of UL could be detected by lightning location systems (LLS). UL is expected to be the dominant lightning type during the cold season. However, current standards for assessing the risk of lightning at wind turbines mainly consider summer lightning, which is derived from LLS. This study assesses the risk of LLS-detectable and LLS-undetectable UL at wind turbines using direct UL measurements at instrumented towers. These are linked to meteorological data using random forests. The meteorological drivers for the absence/occurrence of UL are found from these models. In a second step, the results of the tower-trained models are extended to a larger study area (central and northern Germany). The tower-trained models for LLS-detectable lightning are independently verified at wind turbine sites in this area and found to reliably diagnose this type of UL. Risk maps based on cold season case study events show that high diagnosed probabilities in the study area coincide with actual UL events. This lends credibility to the application of the model to all UL types, increasing both risk and affected areas.
22 Jun 2023Submitted to ESS Open Archive
23 Jun 2023Published in ESS Open Archive