Using Machine Learning to Calibrate Storm-Scale Probabilistic Guidance of Severe Weather Hazards in the Warn-on-Forecast System
Montgomery Flora, Corey K. Potvin, Patrick S. Skinner, Shawn Handler,, Amy McGovern

TL;DR
This study compares machine learning algorithms to a simple updraft helicity method for calibrating storm-scale probabilistic severe weather guidance, demonstrating that ML models provide more reliable hazard predictions in the NOAA Warn-on-Forecast system.
Contribution
The paper introduces a novel application of ML algorithms for calibrating storm-scale severe weather guidance, outperforming traditional methods in reliability.
Findings
ML models outperform simple UH-based method in reliability.
ML algorithms effectively predict tornado, hail, and wind reports.
Calibration improves short-term probabilistic severe weather guidance.
Abstract
A primary goal of the National Oceanic and Atmospheric Administration (NOAA) Warn-on-Forecast (WoF) project is to provide rapidly updating probabilistic guidance to human forecasters for short-term (e.g., 0-3 h) severe weather forecasts. Maximizing the usefulness of probabilistic severe weather guidance from an ensemble of convection-allowing model forecasts requires calibration. In this study, we compare the skill of a simple method using updraft helicity against a series of machine learning (ML) algorithms for calibrating WoFS severe weather guidance. ML models are often used to calibrate severe weather guidance since they leverage multiple variables and discover useful patterns in complex datasets. \indent Our dataset includes WoF System (WoFS) ensemble forecasts available every 5 minutes out to 150 min of lead time from the 2017-2019 NOAA Hazardous Weather Testbed Spring Forecasting…
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Taxonomy
MethodsLogistic Regression
