A role of the Atlantic Ocean in predicting summer surface air temperature over North East Asia?

遥相关 气候学 罗斯比波 海面温度 海洋环流 降水 地面气温 东亚 亚热带 副热带高压脊 环境科学 大气(单位) 海洋学 铅(地质) 北大西洋涛动 温盐循环 大气环流 气候变化 地质学 地理 中国 厄尔尼诺南方涛动 气象学 地貌学 考古 渔业 生物
作者
Paul‐Arthur Monerie,Jon Robson,Buwen Dong,Nick Dunstone
出处
期刊:Climate Dynamics [Springer Science+Business Media]
卷期号:51 (1-2): 473-491 被引量:50
标识
DOI:10.1007/s00382-017-3935-z
摘要

We assess the ability of the DePreSys3 prediction system to predict the summer (JJAS) surface-air temperature over North East Asia. DePreSys3 is based on a high resolution ocean–atmosphere coupled climate prediction system (~ 60 km in the atmosphere and ~ 25 km in the ocean), which is full-field initialized from 1960 to 2014 (26 start-dates). We find skill in predicting surface-air temperature, relative to a long-term trend, for 1 and 2–5 year lead-times over North East Asia, the North Atlantic Ocean and Eastern Europe. DePreSys3 also reproduces the interdecadal evolution of surface-air temperature over the North Atlantic subpolar gyre and North East Asia for both lead times, along with the strong warming that occurred in the mid-1990s over both areas. Composite analysis reveals that the skill at capturing interdecadal changes in North East Asia is associated with the propagation of an atmospheric Rossby wave, which follows the subtropical jet and modulates surface-air temperature from Europe to Eastern Asia. We hypothesise that this 'circumglobal teleconnection' pattern is excited over the Atlantic Ocean and is related to Atlantic multi-decadal variability and the associated changes in precipitation over the Sahel and the subtropical Atlantic Ocean. This mechanism is robust for the 2–5 year lead-time. For the 1 year lead-time the Pacific Ocean also plays an important role in leading to skill in predicting SAT over Northeast Asia. Increased temperatures and precipitation over the western Pacific Ocean was found to be associated with a Pacific-Japan like-pattern, which can affect East Asia's climate.

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