Evaluating Machine Learning–based probabilistic lightning forecasts using the HRRR: A comparison to three forecast baselines

Probabilistic forecasts of lightning for the CONUS were generated by postprocessing the HRRR with neural networks (NNs). These NN probability forecasts (NNPFs) were produced for HRRR forecasts in 2021–22 using NNs trained with 0000 UTC HRRR forecasts from 2019 to 2020 paired with ≥1 observed cloud-to-ground (CG1) flash as the target variable. CG1-NNPF skill was evaluated against three baselines: smoothed HRRR-based surrogate lightning forecasts, SPC probabilistic thunderstorm outlooks, and calibrated ensemble thunderstorm guidance from the High-Resolution Ensemble Forecast (HREF) system. The hourly maximum updraft speed (UP) diagnostic was the most skillful HRRR surrogate for predicting CG1, outperforming diagnostics such as hourly maximum lightning threat and updraft helicity. The UP forecasts were compared to the NNPFs by using the most skillful combination of UP threshold and smoothing length scale at each forecast hour. The 4- and 1-h CG1-NNPFs exceeded the skill of the UP forecasts in 2021 for nearly all forecast hours, with reduced skill differences overnight compared to the daytime. The NNPFs exhibited excellent reliability, with slight overforecasting of probabilities overnight. The NNPFs were more skillful than NOAA Storm Prediction Center (SPC) Thunderstorm Outlooks in both 2021 and 2022, especially overnight, while during the daytime, the SPC forecasts had similar or slightly greater skill. Finally, the NNPFs outperformed calibrated thunder guidance from the HREF system evaluated across forecasts in 2022. These findings imply that using NNs for thunderstorm prediction can improve upon existing non–machine learning baselines from deterministic and ensemble systems and may improve operational SPC thunderstorm forecasts.

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Author Sobash, Ryan A.
Ahijevych, David ORCID icon
Publisher UCAR/NCAR - Library
Publication Date 2025-05-01T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2025-12-24T17:50:41.185454
Metadata Record Identifier edu.ucar.opensky::articles:43773
Metadata Language eng; USA
Suggested Citation Sobash, Ryan A., Ahijevych, David. (2025). Evaluating Machine Learning–based probabilistic lightning forecasts using the HRRR: A comparison to three forecast baselines. UCAR/NCAR - Library. https://n2t.net/ark:/85065/d78d01qk. Accessed 05 February 2026.

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