Predictability and applicability evaluation of winter temperatures in China based on Eurasian Arctic sea ice concentrations in autumn

IF 1.5 4区 地球科学 Q3 ECOLOGY Polar Science Pub Date : 2025-03-01 DOI:10.1016/j.polar.2024.101133
Y. Ma , L. Zhao , J.-S. Wang , Q. Wu , X. Li , Q. Li , W. Cheng , T. Yu , L. Sun
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Abstract

The current trends of a warming Arctic and a reduction in Arctic sea ice lead to remote effects on climate anomalies in mid-latitude regions. We investigate the predictability of winter temperatures in China using an empirical regression model to forecast those temperatures based on the Eurasian Arctic sea ice concentration (SIC) in autumn and explore the applicability of this prediction method. Result shows the September Eurasian SIC achieves a highly skilled seasonal prediction of winter temperature anomalies in China. A cross-validated hindcast for the leading principal component of winter temperatures in China using the September SIC within the region (40–150° E, 65–85° N) yields a correlation skill of 0.47 from 1979 to 2018. This suggests that 22% of winter temperature variance in China can be predicted by the Eurasian SIC two months in advance. Winter temperature hindcast/forecast results indicate that September SIC demonstrates a positive temporal anomaly correlation coefficient at most stations in China, with a spatial average reaching 0.32/0.29. However, its forecasting ability for the magnitude of temperature anomalies is relatively weak. Lower tropical Pacific Ocean temperatures, a weak polar vortex, and a strong Ural blocking (UB) in autumn could improve Eurasian SIC's predictive performance.
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来源期刊
Polar Science
Polar Science ECOLOGY-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
3.90
自引率
5.60%
发文量
46
期刊介绍: Polar Science is an international, peer-reviewed quarterly journal. It is dedicated to publishing original research articles for sciences relating to the polar regions of the Earth and other planets. Polar Science aims to cover 15 disciplines which are listed below; they cover most aspects of physical sciences, geosciences and life sciences, together with engineering and social sciences. Articles should attract the interest of broad polar science communities, and not be limited to the interests of those who work under specific research subjects. Polar Science also has an Open Archive whereby published articles are made freely available from ScienceDirect after an embargo period of 24 months from the date of publication. - Space and upper atmosphere physics - Atmospheric science/climatology - Glaciology - Oceanography/sea ice studies - Geology/petrology - Solid earth geophysics/seismology - Marine Earth science - Geomorphology/Cenozoic-Quaternary geology - Meteoritics - Terrestrial biology - Marine biology - Animal ecology - Environment - Polar Engineering - Humanities and social sciences.
期刊最新文献
Editorial Board Predictability and applicability evaluation of winter temperatures in China based on Eurasian Arctic sea ice concentrations in autumn Impact of atmospheric river evolutions on Greenland ice sheet mass changes over the last two decades, 2000–2019 Projected changes in near-surface wind speed in the Arctic by a regional climate model Estimation of annual and seasonal glaciological-based mass balance of Ladakh range in cold-arid Himalayan region – Case studies of Phuche and Khardung glaciers in 2014–2017
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