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The Impact of the Assimilation of Hyperspectral Infrared Retrieved Profiles on Advanced Weather and Research Model Simulations of a Non-Convective Wind Event
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Abstract
Non-convective wind events commonly occur with passing extratropical cyclones and have
significant societal and economic impacts. Since non-convective winds often occur in the
absence of specific phenomena such as a thunderstorm, tornado, or hurricane, the public are less
likely to heed high wind warnings and continue daily activities. Thus non-convective wind
events result in as many fatalities as straight line thunderstorm winds. One physical explanation
for non-convective winds includes tropopause folds. Improved model representation of
stratospheric air and associated non-convective wind events could improve non-convective wind
forecasts and associated warnings. In recent years, satellite data assimilation has improved skill
in forecasting extratropical cyclones; however errors still remain in forecasting the position and
strength of extratropical cyclones as well as the tropopause folding process. The goal of this
study is to determine the impact of assimilating satellite temperature and moisture retrieved
profiles from hyperspectral infrared (IR) sounders (i.e. Atmospheric Infrared Sounder (AIRS),
Cross-track Infrared and Microwave Sounding Suite (CrIMSS), and Infrared Atmospheric
Sounding Interferometer (IASI)) on the model representation of the tropopause fold and an
associated high wind event that impacted the Northeast United States on 09 February 2013.
Model simulations using the Advanced Research Weather Research and Forecasting Model
(ARW) were conducted on a 12-km grid with cycled data assimilation mimicking the operational
North American Model (NAM). The results from the satellite assimilation run are compared to a
control experiment (without hyperspectral IR retrievals), Modern Era-Retrospective Analysis for
Research and Applications (MERRA) reanalysis, and Rapid Refresh analyses