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Machine learning classification of significant tornadoes and hail in the U.S. using ERA5 proximity soundings
2021
Weather and forecasting
AbstractPrevious studies have identified environmental characteristics that skillfully discriminate between severe and significant-severe weather events, but they have largely been limited by sample size and/or population of predictor variables. Given the heightened societal impacts of significant-severe weather, this topic was revisited using over 150 000 ERA5 reanalysis-derived vertical profiles extracted at the grid-point nearest—and just prior to—tornado and hail reports during the period
doi:10.1175/waf-d-21-0056.1
fatcat:6qbfhpyfczet7kwf5rti7igyn4