Prediction of primary climate variability modes at the Beijing Climate Center

被引:0
|
作者
Hong-Li Ren
Fei-Fei Jin
Lianchun Song
Bo Lu
Ben Tian
Jinqing Zuo
Ying Liu
Jie Wu
Chongbo Zhao
Yu Nie
Peiqun Zhang
Jin Ba
Yujie Wu
Jianghua Wan
Yuping Yan
Fang Zhou
机构
[1] National Climate Center,Laboratory for Climate Studies
[2] China Meteorological Administration,CMA–NJU Joint Laboratory for Climate Prediction Studies, Institute for Climate and Global Change Research
[3] School of Atmospheric Sciences,Department of Atmospheric Sciences
[4] Nanjing University,Collaborative Innovation Center on Forecast and Evaluation of Meteorological Disasters
[5] University of Hawaii,undefined
[6] Nanjing University of Information Science & Technology,undefined
来源
关键词
climate phenomenon prediction system (CPPS); El Niño–Southern Oscillation (ENSO); Madden–Julian Oscillation (MJO); Arctic Oscillation (AO); Beijing Climate Center (BCC);
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中图分类号
学科分类号
摘要
Climate variability modes, usually known as primary climate phenomena, are well recognized as the most important predictability sources in subseasonal–interannual climate prediction. This paper begins by reviewing the research and development carried out, and the recent progress made, at the Beijing Climate Center (BCC) in predicting some primary climate variability modes. These include the El Niño–Southern Oscillation (ENSO), Madden–Julian Oscillation (MJO), and Arctic Oscillation (AO), on global scales, as well as the sea surface temperature (SST) modes in the Indian Ocean and North Atlantic, western Pacific subtropical high (WPSH), and the East Asian winter and summer monsoons (EAWM and EASM, respectively), on regional scales. Based on its latest climate and statistical models, the BCC has established a climate phenomenon prediction system (CPPS) and completed a hindcast experiment for the period 1991–2014. The performance of the CPPS in predicting such climate variability modes is systematically evaluated. The results show that skillful predictions have been made for ENSO, MJO, the Indian Ocean basin mode, the WPSH, and partly for the EASM, whereas less skillful predictions were made for the Indian Ocean Dipole (IOD) and North Atlantic SST Tripole, and no clear skill at all for the AO, subtropical IOD, and EAWM. Improvements in the prediction of these climate variability modes with low skill need to be achieved by improving the BCC’s climate models, developing physically based statistical models as well as correction methods for model predictions. Some of the monitoring/prediction products of the BCC-CPPS are also introduced in this paper.
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页码:204 / 223
页数:19
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