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arXiv 提交日期: 2026-07-06
📄 Abstract - AIFS-SUBS: Extending Data-Driven Forecasting to Sub-Seasonal Timescales

Data-driven models now rival numerical weather prediction in the medium range, but extending them to sub-seasonal lead times raises challenges absent at shorter horizons. Errors accumulate over long autoregressive rollouts, systematic biases grow with lead time, and several years of data must be held out for independent verification, even though machine-learning models otherwise benefit from longer training records. To address these challenges, we adapt ECMWF's AIFS-CRPS medium-range model. AIFS-SUBS adopts a 24h autoregressive time step to reduce error accumulation, adds stratospheric levels and top-of-atmosphere thermal radiation as predictors, and reserves 2007--2011 as an independent verification window. We evaluate two config-durations: AIFS-SUBS, fine-tuned on operational analyses, and AIFS-SUBS-ERA5, trained on ERA5 alone. Across weeks 2--6, AIFS-SUBS matches the operational Integrated Forecasting System (IFS) in probabilistic skill while reducing systematic biases. For the convective (OLR) component of the Madden--Julian Oscillation (MJO), AIFS-SUBS extends skilful forecasts (correlation > 0.5) by eight days relative to the IFS, while matching or exceeding the IFS for the full multivariate RMM index. AIFS-SUBS also reproduces the observed MJO modulation of tropical cyclone activity comparably. Stratospheric skill is particularly strong with AIFS-SUBS reproducing sudden stratospheric warming (SSW) frequency and surface impact. In the AI Weather Quest, AIFS-SUBS-ERA5 attains a variable-averaged ranked probability skill score slightly ahead of the IFS at weeks 3 and 4. At inference, AIFS-SUBS uses about 200 times less energy than the IFS, opening the door to much larger real-time ensembles. AIFS-SUBS is ECMWF's first machine-learning model targeted at sub-seasonal time-scales.

顶级标签: machine learning systems
详细标签: weather forecasting sub-seasonal mjo emsemble 或 搜索:

AIFS-SUBS:将数据驱动预测扩展到次季节时间尺度 / AIFS-SUBS: Extending Data-Driven Forecasting to Sub-Seasonal Timescales


1️⃣ 一句话总结

这篇论文介绍了AIFS-SUBS,一个基于机器学习的新型次季节预测模型,通过改进时间步长、引入平流层等新变量和独立验证机制,在预测2至6周内的天气(如季风和热带气旋)时,准确性与欧洲中期天气预报中心(ECMWF)的顶级数值模型相当,但能耗仅为后者的约1/200。

源自 arXiv: 2607.05100