2024
DOI: 10.1002/qj.4777
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A machine‐learning approach to thunderstorm forecasting through post‐processing of simulation data

Kianusch Vahid Yousefnia,
Tobias Bölle,
Isabella Zöbisch
et al.

Abstract: Thunderstorms pose a major hazard to society and the economy, which calls for reliable thunderstorm forecasts. In this work, we introduce SALAMA, a feedforward neural network model for identifying thunderstorm occurrence in numerical weather prediction (NWP) data. The model is trained on convection‐resolving ensemble forecasts over central Europe and lightning observations. Given only a set of pixel‐wise input parameters that are extracted from NWP data and related to thunderstorm development, SALAMA infers th… Show more

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