气候学
副热带高压脊
星团(航天器)
长江
环境科学
山脊
亚热带
低谷(经济学)
气候变化
地理
自然地理学
气象学
中国
地质学
降水
生态学
海洋学
地图学
宏观经济学
经济
生物
考古
程序设计语言
计算机科学
作者
Yang Hu,Yanluan Lin,Yi Deng,Jiawei Bao
摘要
Abstract It is one of the major challenges in climate science to project future changes in extreme rainfall. To overcome this challenge, in this study, four typical synoptic patterns (SPs) triggering summer extreme rainfall over the middle and lower reaches of Yangtze River (MLYR) are identified through hierarchical clustering. These typical SPs share common characteristics of intensified Mei‐yu trough and Western Pacific Subtropical High but differ in terms of mid‐latitudes disturbances, such as an intensified ridge (Cluster 1, Cluster 2) or trough (Cluster 3, Cluster 4) near Lake Baikal (Cluster 1, Cluster 3) or Northeast China (Cluster 2, Cluster 4). The linkage between extreme rainfall and typical SPs is verified at various time scales. The typical SPs associated with extreme rainfall are substantially different from the circulation patterns found on ordinary days, and their frequency is significantly correlated with that of extreme rainfall across the interannual scales. Furthermore, the distinct changes in different typical SPs serve as a “bridge” for understanding the long‐term impact of circulation changes on local extreme rainfall, even though the two do not appear to be connected at first sight. Specifically, the circulation changes imply more (less) frequent SP‐Cluster 1 (SP‐Cluster 3), which tends to produce more extreme rainfall to the south (north) of the Yangtze River within MLYR. To project future changes in extreme rainfall, we utilize a weighting method for the multi‐model ensemble based on each model's capability to capture the observed typical SPs. This method effectively narrows the inter‐model spread.
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