Predicting Peak Wind Gusts during Specific Weather Types with the Meteorologically Stratified Gust Factor Model

  • Victoria A. Lang
  • , Teresa J. Turner
  • , Brandon R. Selbig
  • , Austin R. Harris
  • , Jonathan D.W. Kahl

Research output: Contribution to journalArticlepeer-review

7 Scopus citations

Abstract

Wind gusts present challenges to operational meteorologists, both to forecast accurately and also to verify. Strong wind gusts can damage structures and create costly risks for diverse industrial sectors. The meteorologically stratified gust factor (MSGF) model incorporates site-specific gust factors (the ratio of peak wind gust to mean wind speed) with wind speed and direction forecast guidance. The MSGF model has previously been shown to be a viable operational tool that exhibits skill (improvement over climatology) in forecasting peak wind gusts. This study assesses the performance characteristics of the MSGF model by evaluating peak gust predictions during several types of gust-producing weather phe-nomena. Peak wind gusts were prepared and verified for seven specific weather conditions over an 8-yr period at 16 sites across the United States. When coupled with two forms of model output statistics (MOS) wind guidance, the MSGF model generally shows skill in predicting peak wind gusts at forecast projections ranging from 6 to 72 h. The model performed best during high pressure and nocturnal conditions and was also skillful during conditions involving snow. The model did not perform well during the “rain with thunder” weather type. The MSGF model is a viable tool for the operational prediction of peak gusts for most gust-producing weather types.

Original languageEnglish
Pages (from-to)1435-1446
Number of pages12
JournalWeather and Forecasting
Volume37
Issue number8
DOIs
StatePublished - Aug 2022

Keywords

  • Forecasting techniques
  • Operational forecasting
  • Wind gusts

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