AI falls short in predicting weather extremes [View all]
https://www.unige.ch/medias/en/2026/lia-demunie-pour-predire-les-phenomenes-meteorologiques-extremesPublished on 4 May 2026
A team from UNIGE and the Karlsruhe Institute of Technology has shown that traditional weather forecasting models remain more reliable than AI in predicting extreme weather events.
Record-breaking heatwaves, torrential rainfall and supercell thunderstorms: extreme events are intensifying under the influence of climate change, with major human and economic consequences. Artificial intelligence models are revolutionizing weather forecasting. But can they anticipate such exceptional events? A team from the University of Geneva (UNIGE) and the Karlsruhe Institute of Technology (KIT) shows that, to date, traditional numerical models remain more reliable for predicting extreme phenomena, even though AI models outperform them under typical conditions. These findings are published in Science Advances.
To forecast the weather in the coming days or weeks, meteorologists rely on simulations generated by complex mathematical models. Powered by vast amounts of datacollected from weather stations, satellites, and aircraftthese models apply the laws of physics to simulate the future state of the atmosphere. The
European Centre for Medium-Range Weather Forecasts, for instance, uses a model known as the High Resolution Forecast, or HRES, to provide simulations to 35 countries across the continent.
While this method is reliable and robust, it is also costly and energy-intensive, as it requires extensive supercomputing infrastructure capable of solving millions of equations several times a day. The introduction, three years ago, of the first models based on artificial intelligence, alongside the traditional numerical approach, has opened the way to simplifying processes and reducing their costs, explains Sebastian Engelke, full professor at the Research Institute for Statistics and Information Science at the UNIGE Geneva School of Economics and Management (GSEM).
But is this AI-based approach capable of predicting the occurrence of often unprecedented extreme events up to ten days in advance? In a recent study, Sebastian Engelke'steam shows that AI outperforms traditional modelsspecifically HRESwhen forecasting typical conditions, but consistently makes larger errors than HRES when predicting the intensity and frequency of extreme temperatures and winds.
Zhongwei Zhang
et al. ,Physics-based models outperform AI weather forecasts of record-breaking extremes.
Sci. Adv.12,eaec1433(2026).DOI:
10.1126/sciadv.aec1433