A Practical Probabilistic Benchmark for AI Weather Models

IF 4.6 1区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY Geophysical Research Letters Pub Date : 2025-04-08 DOI:10.1029/2024GL113656
Noah D. Brenowitz, Yair Cohen, Jaideep Pathak, Ankur Mahesh, Boris Bonev, Thorsten Kurth, Dale R. Durran, Peter Harrington, Michael S. Pritchard
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Abstract

Since the weather is chaotic, it is necessary to forecast an ensemble of future states. Recently, multiple AI weather models have emerged claiming breakthroughs in deterministic skill. Unfortunately, it is hard to fairly compare ensembles of AI forecasts because variations in ensembling methodology become confounding and the baseline data volume is immense. We address this by scoring lagged initial condition ensembles—whereby an ensemble can be constructed from a library of deterministic hindcasts. This allows the first parameter-free intercomparison of leading AI weather models' probabilistic skill against an operational baseline. Lagged ensembles of the two leading AI weather models, GraphCast and Pangu, perform similarly even though the former outperforms the latter in deterministic scoring. These results are elaborated upon by sensitivity tests showing that commonly used multiple time-step loss functions damage ensemble calibration.

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人工智能天气模型的实用概率基准
因为天气是混乱的,所以有必要预测未来的整体状态。最近,多个人工智能天气模型出现,声称在确定性技能方面取得了突破。不幸的是,很难公平地比较人工智能预测的集合,因为集合方法的变化变得混乱,基线数据量巨大。我们通过对滞后的初始条件集成进行评分来解决这个问题,从而可以从确定性后置库构建集成。这使得领先的人工智能天气模型的概率技能与操作基线的首次无参数相互比较成为可能。GraphCast和盘古这两种领先的人工智能天气模型的滞后组合表现相似,尽管前者在确定性评分方面优于后者。这些结果通过灵敏度试验加以阐述,表明常用的多时间步损失函数会破坏集合校准。
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来源期刊
Geophysical Research Letters
Geophysical Research Letters 地学-地球科学综合
CiteScore
9.00
自引率
9.60%
发文量
1588
审稿时长
2.2 months
期刊介绍: Geophysical Research Letters (GRL) publishes high-impact, innovative, and timely research on major scientific advances in all the major geoscience disciplines. Papers are communications-length articles and should have broad and immediate implications in their discipline or across the geosciences. GRLmaintains the fastest turn-around of all high-impact publications in the geosciences and works closely with authors to ensure broad visibility of top papers.
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