Enhancing AI and Dynamical Subseasonal Forecasts with Probabilistic Bias Correction
Hannah Guan, Soukayna Mouatadid, Paulo Orenstein, Judah Cohen, Haiyu Dong + 8 more
TLDR
Probabilistic Bias Correction (PBC) substantially improves subseasonal weather forecasts, doubling AI model skill and winning the ECMWF 2025 competition.
Key contributions
- Introduces Probabilistic Bias Correction (PBC) for reducing systematic errors in subseasonal forecasts.
- Doubles the subseasonal skill of AI models and improves operationally-debiased dynamical models.
- PBC won ECMWF's 2025 real-time forecasting competition for all variables and lead times.
- Outperformed leading dynamical models, multi-model ensembles, and 34 other global teams.
Why it matters
This paper introduces a critical advancement for subseasonal weather forecasting, a timescale where current models struggle. By significantly improving forecast accuracy, PBC enables better decision-making for agriculture, energy, and disaster preparedness, especially for vulnerable communities.
Original Abstract
Decision-makers rely on weather forecasts to plant crops, manage wildfires, allocate water and energy, and prepare for weather extremes. Today, such forecasts enjoy unprecedented accuracy out to two weeks thanks to steady advances in physics-based dynamical models and data-driven artificial intelligence (AI) models. However, model skill drops precipitously at subseasonal timescales (2 - 6 weeks ahead), due to compounding errors and persistent biases. To counter this degradation, we introduce probabilistic bias correction (PBC), a machine learning framework that substantially reduces systematic error by learning to correct historical probabilistic forecasts. When applied to the leading dynamical and AI models from the European Centre for Medium-Range Weather Forecasts (ECMWF), PBC doubles the subseasonal skill of the AI Forecasting System and improves the skill of the operationally-debiased dynamical model for 91% of pressure, 92% of temperature, and 98% of precipitation targets. We designed PBC for operational deployment, and, in ECMWF's 2025 real-time forecasting competition, its global forecasts placed first for all weather variables and lead times, outperforming the dynamical models from six operational forecasting centers, an international dynamical multi-model ensemble, ECMWF's AI Forecasting System, and the forecasting systems of 34 teams worldwide. These probabilistic skill gains translate into more accurate prediction of extreme events and have the potential to improve agricultural planning, energy management, and disaster preparedness in vulnerable communities.
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