CEAO-PHMay 24

Exascale Hybrid Numerical-AI Ensembles for Operational Flood-Season Forecasting in East Asia: 15-km Decadal Hindcasts and 1-km High-Resolution Capability

arXiv:2605.2489610.6
Predicted impact top 70% in CE · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the long-standing challenge of seasonal flood forecasting in East Asia, offering a significant operational improvement over current state-of-the-art systems.

CAPES integrates a kilometer-resolution coupled regional model with an AI seasonal forecasting system to improve summer rainfall prediction in East Asia. On 15-km decadal hindcasts, it achieved a mean prediction score of 75.9, surpassing ECMWF's 71.8, and demonstrated 1-km high-resolution capability for typhoon simulation.

Seasonal forecasting of summer rainfall in East Asia remains a grand challenge, as predictability at 3 to 6 month lead times is constrained by the spring predictability barrier, weak large-scale signals, and localized nonlinear convective extremes. We address this challenge with CAPES, which integrates a kilometer-resolution coupled regional model with atmosphere, land, and ocean components and a data-driven AI seasonal forecasting system. At 15 km resolution, the fused workflow combines 174 numerical members from varying start times, physics schemes, and parameter perturbations with 1,600 AI members generated from initial and physical perturbations. Using the full LineShine system, CAPES completes ten annual 1,774-member hindcasts for 2016 to 2025 within 14.6 hours, improving the mean prediction score from ECMWF's 71.8 to 75.9 and delivering a major gain in operational forecasting capability. The 1-km configuration further enables fine-scale typhoon simulation and establishes the feasibility of kilometer-scale fused ensemble forecasting on a one-week timescale.

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