Spatiotemporal Variations in Precipitation Forecasting Skill of Three Global Subseasonal Prediction Products over China

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES
Shiyuan Liu, Wentao Li, Qingyun Duan
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Abstract

Abstract Subseasonal to seasonal (S2S) predictions, which bridge the gap between weather forecasts and climate outlooks, have the great societal benefits of improving water resource management and food security. However, there are tremendous disparities in the forecasting skills of subseasonal precipitation prediction products. This study investigates the spatiotemporal variations in the precipitation forecasting skill of three subseasonal prediction products from the CMA, ECMWF, and NCEP over China. Daily precipitation predictions with lead times ranging from 1 to 30 days and cumulative precipitation predictions over 1–30 days were evaluated in nine major river basins. The daily prediction skill rapidly declines with lead time. In contrast, the correlation coefficient between the cumulative precipitation predictions and corresponding observations increases at first and peaks at 0.7–0.8 after 3–5 days, then gradually decreases and settles at approximately 0.2–0.6. Among the three evaluated models, the ECMWF model demonstrates the best skill, maintaining a correlation coefficient of approximately 0.5 for 2-week cumulative precipitation. Moreover, the correlation coefficient of the model’s prediction is 0.2–0.5 higher than that of the climatological prediction over a large domain for the 30-day cumulative precipitation during the rainy summer. Similarly, the equitable threat score for forecasting below- and above-normal precipitation events presents good results in eastern China but is affected by biases of raw predictions. The variations in the subseasonal prediction skill at different time scales reveal the potential values of cumulative precipitation predictions. The findings of this study can provide practical information for applications that prioritize the long-term aggregation of hydrometeorological variables. Significance Statement The daily and cumulative precipitation prediction skills of three subseasonal prediction products were evaluated over China in this study. Our results reveal the spatiotemporal variations in prediction skill, especially with respect to time scale. Compared to daily precipitation predictions, cumulative precipitation predictions are more skillful, with correlation coefficients peaking at 0.7–0.8 after 3–5 days. These results can provide valuable information for water resource managers who are more concerned with the general conditions over a period than with hydrometeorological events occurring on a particular day. This study can guide end users in applying appropriate time scales to fully exploit numerical weather prediction information and satisfy their specific needs.
三种全球亚季节预报产品对中国降水预报能力的时空变化
亚季节到季节(S2S)预测可以弥补天气预报和气候展望之间的差距,在改善水资源管理和粮食安全方面具有巨大的社会效益。然而,亚季节降水预报产品的预报能力存在巨大差异。研究了CMA、ECMWF和NCEP三种亚季节预报产品对中国降水预报能力的时空变化特征。对9个主要流域1 ~ 30 d的日降水预报和1 ~ 30 d的累积降水预报进行了评价。每日预测技能随着交货时间的缩短而迅速下降。累积降水预报与观测的相关系数先增大,3 ~ 5 d后达到最大值0.7 ~ 0.8,然后逐渐减小,稳定在0.2 ~ 0.6左右。在3种模式中,ECMWF模式表现出最好的能力,对2周累积降水的相关系数保持在0.5左右。对夏季多雨期30 d累积降水,模式预报的相关系数比大区域气候预报的相关系数高0.2 ~ 0.5。同样,在中国东部地区,预测低于和高于正常水平降水事件的公平威胁得分结果良好,但受到原始预测偏差的影响。不同时间尺度的亚季节预报能力的变化揭示了累积降水预报的潜在价值。本研究结果可为优先考虑水文气象变量长期聚集的应用提供实用信息。对3种亚季节预报产品的逐日和累积降水预报能力进行了评价。我们的研究结果揭示了预测能力的时空变化,特别是在时间尺度上。与逐日降水预测相比,累积降水预测更为熟练,3 ~ 5 d后相关系数达到0.7 ~ 0.8。这些结果可以为水资源管理者提供有价值的信息,他们更关心一段时间内的一般情况,而不是某一天发生的水文气象事件。该研究可指导终端用户应用适当的时间尺度,充分利用数值天气预报信息,满足其特定需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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