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Analyzing Atmospheric Gravity Waves and Visualizing Machine Learning: Comparing Stations

Anastasia
Brown
Utah State University CASS
Abstract text

The ANtarctic Gravity Wave Instrument Network (ANGWIN) is an international collaboration aimed at investigating the upper atmosphere dynamics over a continent-size region, using a network of all-sky airglow imagers (ASI). In an effort to streamline the identification of “clean” windows of airglow in all sky imager data for the ANGWIN experiment, we have developed a Light Gradient Boosted Machine (LightGBM) learning algorithm that sorts “clean” (marked as 0) wave images from “obscured” (marked as 1) images. These “clean” windows are then processed and undergo FFT-spectrum analysis. Already, we have successfully created LightGBM models that accurately sorts through images taken at the Davis, McMurdo, and Halley research stations in Antarctica. Imager data from the Davis and McMurdo station has been fully processed from years 2012 to 2022 with clean windows identified by using their respective LightGBM Models. The LightGBM model for the Halley station was recently verified and already several years’ worth of data have been processed. To gauge the effectiveness of the three models, phase velocity spectrums from a season’s worth of data from each station were compared against each other as well as previous findings from each station.

Authors
Anastasia Brown, Utah State University CASS
Kenneth Zia, Utah State University CASS
Pierre-Dominique Pautet, Utah State University CASS
Yucheng Zhao, Utah State University CASS
Connor Waite, Utah State University CASS
Dallin Tucker, Utah State University CASS
Eli Kroeber, Utah State University CASS
Max Haehnel, Utah State University CASS
Michel J. Taylor, Utah State University CASS
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Poster category
MLTG - Mesosphere and Lower Thermosphere Gravity Waves