Ma Jieru, Ren Hong-Li, Cai Ming, Deng Yi, Zhou Chenguang, Li Jian, Che Huizheng, Wang Lin
State Key Laboratory of Severe Weather and Institute of Tibetan Plateau Meteorology, Chinese Academy of Meteorological Sciences, Beijing, China.
Department of Earth, Ocean, and Atmospheric Science, Florida State University, Tallahassee, FL, USA.
Nat Commun. 2025 Jan 3;16(1):273. doi: 10.1038/s41467-024-55271-1.
Skillful seasonal climate prediction is critical for food and water security over the world's heavily populated regions, such as in continental East Asia. Current models, however, face significant difficulties in predicting the summer mean rainfall anomaly over continental East Asia, and forecasting rainfall spatiotemporal evolution presents an even greater challenge. Here, we benefit from integrating the spatiotemporal evolution of rainfall to identify the most crucial patterns intrinsic to continental East-Asian rainfall anomalies. A physical-statistical prediction model is developed to capture the predictability offered by these patterns through a detection of precursor signals that describe slowly varying lower boundary conditions. The presented model demonstrates a prediction skill of 0.51, at least twice as high as that of the best dynamical models available (0.26), indicating improved prediction for both the spatiotemporal evolution and summer mean of rainfall anomalies. This advance marks a crucial step toward delivering skillful seasonal predictions to populations in need of new tools for managing risks of both near-term climate disasters, such as floods and droughts, and long-term climate change.
精准的季节性气候预测对于世界人口密集地区(如东亚大陆)的粮食和水安全至关重要。然而,当前的模型在预测东亚大陆夏季平均降雨异常方面面临重大困难,而预测降雨的时空演变则带来了更大的挑战。在此,我们通过整合降雨的时空演变来受益,以识别东亚大陆降雨异常所固有的最关键模式。通过开发一种物理统计预测模型,通过检测描述缓慢变化的下边界条件的前兆信号来捕捉这些模式所提供的可预测性。所提出的模型展示了0.51的预测技巧,至少是现有最佳动力模型(0.26)的两倍,表明对降雨异常的时空演变和夏季平均值的预测有所改进。这一进展标志着朝着为需要新工具来管理近期气候灾害(如洪水和干旱)以及长期气候变化风险的人群提供精准季节性预测迈出了关键一步。