Global changes are increasing the frequency and intensity of extreme weather events, posing challenges for forecasting localized phenomena with sub-grid resolution. The Hi-WeFAI project addresses this by combining high-performance computing, Federated Artificial Intelligence, and heterogeneous sensor networks to improve short-term precipitation forecasting and flood nowcasting. In this paper, we present preliminary results using a transformer-based radar prediction model coupled with a flood model to generate high-resolution early warning maps. The results from the Naples pilot site improved accuracy and detail, highlighting the potential of the hybrid AI and HPC approach to support quasi-real-time decision-making and disaster risk reduction.
AI and HPC for intense rain event early warning leveraging real-time weather radar
Luccio, Diana Di;De Vita, Ciro Giuseppe;Mellone, Gennaro;De Luca, Pasquale;Nardo, Emanuel Di;Capozzi, Vincenzo;Bucciero, Vincenzo;Montella, Raffaele
2025-01-01
Abstract
Global changes are increasing the frequency and intensity of extreme weather events, posing challenges for forecasting localized phenomena with sub-grid resolution. The Hi-WeFAI project addresses this by combining high-performance computing, Federated Artificial Intelligence, and heterogeneous sensor networks to improve short-term precipitation forecasting and flood nowcasting. In this paper, we present preliminary results using a transformer-based radar prediction model coupled with a flood model to generate high-resolution early warning maps. The results from the Naples pilot site improved accuracy and detail, highlighting the potential of the hybrid AI and HPC approach to support quasi-real-time decision-making and disaster risk reduction.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


