S2S预报中基于初始大气状态的预报技巧和实际可预测性

IF 3 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of the Atmospheric Sciences Pub Date : 2023-04-20 DOI:10.1175/jas-d-22-0262.1
M. Inatsu, M. Matsueda, Naoto Nakano, S. Kawazoe
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引用次数: 0

摘要

对可预测性取决于北半球冬季行星尺度低频变率的大气状态的假设进行了检验。本文首先利用自组织图(SOM)和k-聚类分析,从北半球500 hpa位势高度异常中计算出6种典型天气模式。接下来,我们利用亚季节到季节(S2S)操作和再预测档案中的11个模式,计算了每个模式的气候学作为前置时间的函数,以评估模式偏差。虽然预报偏差取决于模式,但从北太平洋东部具有阻塞型的大气状态开始预报时,预报偏差始终最大。并将基于S2S多模型预报数据的集合预报差与基于再分析数据的经验估计FPE参数进行了比较。多模式平均集合预报差与扩散张量范数相关;当大气状态从具有阻塞模式的星团开始时,它们是大的。由于预计多模式平均值将大大减少模式偏差,并可能近似于自然界固有的可预测性,我们可以总结出,与群集对应的大气状态比其他状态更难以预测。
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Prediction skill and practical predictability depending on the initial atmospheric states in S2S forecasts
The hypothesis that predictability depends on the atmospheric state in the planetary-scale low-frequency variability in boreal winter was examined. We first computed six typical weather patterns from 500-hPa geopotential height anomalies in the Northern Hemisphere using self-organising map (SOM) and k-clustering analysis. Next, using 11 models from the subseasonal-to-seasonal (S2S) operational and reforecast archive, we computed each model’s climatology as a function of lead time to evaluate model bias. Although the forecast bias depends on the model, it is consistently the largest when the forecast begins from the atmospheric state with a blocking-like pattern in the eastern North Pacific. Moreover, the ensemble-forecast spread based on S2S multi-model forecast data was compared with empirically estimated Fokker-Planck equation (FPE) parameters based on reanalysis data. The multi-model mean ensemble-forecast spread was correlated with the diffusion tensor norm; they are large for the cases when the atmospheric state started from a cluster with a blocking-like pattern. As the multi-model mean is expected to substantially reduce model biases and may approximate the predictability inherent in nature, we can summarise that the atmospheric state corresponding to the cluster was less predictable than others.
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来源期刊
Journal of the Atmospheric Sciences
Journal of the Atmospheric Sciences 地学-气象与大气科学
CiteScore
0.20
自引率
22.60%
发文量
196
审稿时长
3-6 weeks
期刊介绍: The Journal of the Atmospheric Sciences (JAS) publishes basic research related to the physics, dynamics, and chemistry of the atmosphere of Earth and other planets, with emphasis on the quantitative and deductive aspects of the subject. The links provide detailed information for readers, authors, reviewers, and those who wish to submit a manuscript for consideration.
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