Displacement Error Characteristics of 500-hPa Cutoff Lows in Operational GFS Forecasts

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Abstract

Cutoff lows are often associated with high-impact weather; therefore, it is critical that operational numerical weather prediction systems accurately represent the evolution of these features. However, medium-range forecasts of upper-level features using the Global Forecast System (GFS) are often subjectively characterized by excessive synoptic progressiveness, i.e., a tendency to advance troughs and cutoff lows too quickly downstream. To better understand synoptic progressiveness errors, this research quantifies seven years of 500-hPa cutoff low position errors over the globe, with the goal of objectively identifying regions where synoptic progressiveness errors are common and how frequently these errors occur. Specifically, 500-hPa features are identified and tracked in 0–240-h 0.258 GFS forecasts during April 2015– March 2022 using an objective cutoff low and trough identification scheme and compared to corresponding 500-hPa GFS analyses. In the Northern Hemisphere, cutoff lows are generally underrepresented in forecasts compared to verifying analyses, particularly over continental midlatitude regions. Features identified in short- to long-range forecasts are generally associated with eastward zonal position errors over the conterminous United States and northern Asia, particularly during the spring and autumn. Similarly, cutoff lows over the Southern Hemisphere midlatitudes are characterized by an eastward displacement bias during all seasons.

Original languageEnglish
Pages (from-to)1849-1871
Number of pages23
JournalWeather and Forecasting
Volume38
Issue number10
DOIs
StatePublished - Oct 2023

Keywords

  • Cutoff lows
  • Model errors
  • Model evaluation/performance
  • Numerical weather prediction/forecasting
  • Operational forecasting

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