Advanced Search
Article Contents

Sub-seasonal to Seasonal Hindcasts of Stratospheric Sudden Warming by BCC_CSM1.1(m): A Comparison with ECMWF


doi: 10.1007/s00376-018-8165-8

  • This study focuses on model predictive skill with respect to stratospheric sudden warming (SSW) events by comparing the hindcast results of BCC_CSM1.1(m) with those of the ECMWF's model under the sub-seasonal to seasonal prediction project of the World Weather Research Program and World Climate Research Program. When the hindcasts are initiated less than two weeks before SSW onset, BCC_CSM and ECMWF show comparable predictive skill in terms of the temporal evolution of the stratospheric circumpolar westerlies and polar temperature up to 30 days after SSW onset. However, with earlier hindcast initialization, the predictive skill of BCC_CSM gradually decreases, and the reproduced maximum circulation anomalies in the hindcasts initiated four weeks before SSW onset replicate only 10% of the circulation anomaly intensities in observations. The earliest successful prediction of the breakdown of the stratospheric polar vortex accompanying SSW onset for BCC_CSM (ECMWF) is the hindcast initiated two (three) weeks earlier. The predictive skills of both models during SSW winters are always higher than that during non-SSW winters, in relation to the successfully captured tropospheric precursors and the associated upward propagation of planetary waves by the model initializations. To narrow the gap in SSW predictive skill between BCC_CSM and ECMWF, ensemble forecasts and error corrections are performed with BCC_CSM. The SSW predictive skill in the ensemble hindcasts and the error corrections are improved compared with the previous control forecasts.
    摘要: 本文使用了国家气候中心的BCC_CSM模式和欧洲中期天气预报中心的ECMWF模式的次季节到季节尺度的数值预报结果,研究了平流层爆发性增温(SSW)事件的潜在预报性. BCC_CSM模式和ECMWF模式都参与了由世界天气研究计划(WWRP)和世界气候研究计划(WCRP)发起的次季节到季节预测研究项目. 在SSW发生前两周以内的起报试验中,BCC_CSM模式和ECMWF模式对SSW期间的平流层绕极西风和极区温度两个指标表现出相当的预报技巧. 然而,随着起报时间的不断提前,BCC_CSM模式对SSW的预测技能逐渐降低. 在SSW爆发前四周的起报试验中,BCC_CSM模式预测的最大环流异常明显偏小,仅仅是观测的10%左右. BCC_CSM模式和ECMWF最模式最早且较好地预测出极区强东风异常的试验分别是起报两周和三周的预报. 比较而言,两个模式在有SSW发生的冬季的预报技巧比没有SSW发生的冬季高一些,这主要与预报初始化时的对流层的先兆信号和行星上传有关. 为了进一步缩小BCC_CSM模式与ECMWF模式之间的差距,本文也使用了BCC_CSM的集合试验结果,并对BCC_CSM模式系统误差进行订正. 与先前的试验相比,集合预报和误差订正都可以有效地改善BCC_CSM模式对SSW的预测技能.
  • 加载中
  • Andrews D. G.,J. R. Holton, and C. B. Leovy, 1987: Middle Atmosphere Dynamics. Academic Press.
    Baldwin M. P.,T. J. Dunkerton, 1999: Propagation of the Arctic Oscillation from the stratosphere to the troposphere. J. Geophys. Res., 104, 30 937-30 946, .https://doi.org/10.1029/1999jd900445
    Baldwin M. P.,T. J. Dunkerton, 2001: Stratospheric harbingers of anomalous weather regimes. Science, 294, 581-584, .https://doi.org/10.1126/science.1063315
    Brunet G., Coauthors, 2010: Collaboration of the weather and climate communities to advance subseasonal-to-seasonal prediction. Bull. Amer. Meteor. Soc., 91, 1397-1406, .https://doi.org/10.1175/2010bams3013.1
    Cai M.,R. C. Ren, 2006: 40-70 day meridional propagation of global circulation anomalies. Geophys. Res. Lett., 33, L06818, .https://doi.org/10.1029/2005gl025024
    Cai M.,Y. Y. Yu, Y. Deng, H. M. van den Dool, R. C. Ren, S. Saha, X. R. Wu, and J. Huang, 2016: Feeling the pulse of the stratosphere: An emerging opportunity for predicting continental-scale cold-air outbreaks 1 month in advance. Bull. Amer. Meteor. Soc., 97, 1475-1489, .https://doi.org/10.1175/bams-d-14-00287.1
    Charlton A. J.,L. M. Polvani, 2007: A new look at stratospheric sudden warmings. Part I: Climatology and modeling benchmarks. J. Climate, 20, 449-469, .https://doi.org/10.1175/jcli3996.1
    Dai Y.,B. K. Tan, 2016: The western Pacific pattern precursor of major stratospheric sudden warmings and the ENSO modulation. Environmental Research Letters, 11, 124032, .https://doi.org/10.1088/1748-9326/aa538a
    Dee, D. P.,Coauthors, 2011: The ERA-Interim reanalysis: Configuration and performance of the data assimilation system. Quart. J. Roy. Meteor. Soc., 137, 553-597, .https://doi.org/10.1002/qj.828
    Garfinkel C. I.,D. L. Hartmann, 2007: Effects of the El NiÑo-Southern oscillation and the quasi-biennial oscillation on polar temperatures in the stratosphere. J. Geophys. Res., 112, D19112, .https://doi.org/10.1029/2007jd008481
    Griffies, S. M.,Coauthors, 2005: Formulation of an ocean model for global climate simulations. Ocean Science, 1, 45-79, .https://doi.org/10.5194/os-1-45-2005
    Hu J. G.,R. C. Ren, and H. M. Xu, 2014: Occurrence of winter stratospheric sudden warming events and the seasonal timing of spring stratospheric final warming. J. Atmos. Sci., 71, 2319-2334, .https://doi.org/10.1175/jas-d-13-0349.1
    Hu J. G.,T. Li, H. M. Xu, and S. Y. Yang, 2017: Lessened response of boreal winter stratospheric polar vortex to El NiÑo in recent decades. Climate Dyn., 49, 263-278, .https://doi.org/10.1007/s00382-016-3340-z
    Hurrell J.,G. A. Meehl, D. Bader, T. L. Delworth, B. Kirtman, and B. Wielicki, 2009: A unified modeling approach to climate system prediction. Bull. Amer. Meteor. Soc., 90, 1819-1832, .https://doi.org/10.1175/2009bams2752.1
    Ji J. J.,M. Huang, and K. R. Li, 2008: Prediction of carbon exchanges between China terrestrial ecosystem and atmosphere in 21st century. Science in China Series D: Earth Sciences, 51, 885-898, .https://doi.org/10.1007/s11430-008-0039-y
    Jiang X. W.,S. Yang, Y. Q. Li, A. Kumar, X. W. Liu, Z. Y. Zuo, and B. Jha, 2013a: Seasonal-to-interannual prediction of the Asian summer monsoon in the NCEP climate forecast system version 2. J. Climate, 26, 3708-3727, .https://doi.org/10.1175/jcli-d-12-00437.1
    Jiang X. W.,S. Yang, J. P. Li, Y. Q. Li, H. R. Hu, and Y. Lian, 2013b: Variability of the Indian Ocean SST and its possible impact on summer western North Pacific anticyclone in the NCEP Climate Forecast System. Climate Dyn., 41, 2199-2212, .https://doi.org/10.1007/s00382-013-1934-2
    Jie W. H.,T. W. Wu, J. Wang, W. J. Li, and X. W. Liu, 2014: Improvement of 6-15 Day precipitation forecasts using a time-lagged ensemble method. Adv. Atmos. Sci., 31, 293-304, .https://doi.org/10.1007/s00376-013-3037-8
    Kalnay E., Coauthors, 1996: The NCEP/NCAR 40-year reanalysis project. Bull. Amer. Meteor. Soc., 77, 437-472, .https://doi.org/10.1175/1520-0477(1996)077<0437:tnyrp>2.0.co;2
    Kim H.-M.,P. J. Webster, J. A. Curry, and V. E. Toma, 2012: Asian summer monsoon prediction in ECMWF system 4 and NCEP CFSv2 retrospective seasonal forecasts. Climate Dyn., 39, 2975-2991, .https://doi.org/10.1007/s00382-012-1470-5
    Kug J.-S.,J.-Y. Lee, and I.-S. Kang, 2008: Systematic error correction of dynamical seasonal prediction of sea surface temperature using a stepwise pattern project method. Mon. Wea. Rev., 136, 3501-3512, .https://doi.org/10.1175/2008mwr2272.1
    Liu, X. W.,Coauthors, 2017: MJO prediction using the sub-seasonal to seasonal forecast model of Beijing Climate Center. Climate Dyn., 48, 3283-3307, .https://doi.org/10.1007/s00382-016-3264-7
    Polvani L. M.,D. W. Waugh, 2004: Upward wave activity flux as a precursor to extreme stratospheric events and subsequent anomalous surface weather regimes. J. Climate, 17, 3548-3554, .https://doi.org/10.1175/1520-0442(2004)017<3548:uwafaa>2.0.co;2
    Rao J.,R. C. Ren, 2016a: Asymmetry and nonlinearity of the influence of ENSO on the northern winter stratosphere: 1. Observations. J. Geophys. Res., 121, 9000-9016, .https://doi.org/10.1002/2015jd024520
    Rao J.,R. C. Ren, 2016b: Asymmetry and nonlinearity of the influence of ENSO on the northern winter stratosphere: 2. Model study with WACCM. J. Geophys. Res., 121, 9017-9032, .https://doi.org/10.1002/2015jd024521
    Rao J.,R. C. Ren, 2016c: A decomposition of ENSO's impacts on the northern winter stratosphere: Competing effect of SST forcing in the tropical Indian Ocean. Climate Dyn., 46, 3689-3707, .https://doi.org/10.1007/s00382-015-2797-5
    Rao J.,R. C. Ren, 2017: Parallel comparison of the 1982/83, 1997/98 and 2015/16 super El NiÑos and their effects on the extratropical stratosphere. Adv. Atmos. Sci., 34, 1121-1133, .https://doi.org/10.1007/s00376-017-6260-x
    Rao J.,R. C. Ren, 2018: Varying stratospheric responses to tropical Atlantic SST forcing from early to late winter. Climate Dyn., 51, 2079-2096, .https://doi.org/10.1007/s00382-017-3998-x
    Rao J.,R. C. Ren, and Y. Yang, 2015: Parallel comparison of the northern winter stratospheric circulation in reanalysis and in CMIP5 models. Adv. Atmos. Sci., 32, 952-966, .https://doi.org/10.1007/s00376-014-4192-2
    Ren R. C.,M. Cai, 2007: Meridional and vertical out-of-phase relationships of temperature anomalies associated with the Northern Annular Mode variability. Geophys. Res. Lett., 34, L07704, .https://doi.org/10.1029/2006gl028729
    Ren R. C.,J. Rao, G. X. Wu, and M. Cai, 2017: Tracking the delayed response of the northern winter stratosphere to ENSO using multi reanalyses and model simulations. Climate Dyn., 48, 2859-2879, .https://doi.org/10.1007/s00382-016-3238-9
    Ren R. C.,M. Cai, C. Y. Xiang, and G. X. Wu, 2012: Observational evidence of the delayed response of stratospheric polar vortex variability to ENSO SST anomalies. Climate Dyn., 38, 1345-1358, .https://doi.org/10.1007/s00382-011-1137-7
    Smith D. M.,A. A. Scaife, and B. P. Kirtman, 2012: What is the current state of scientific knowledge with regard to seasonal and decadal forecasting? Environmental Research Letters, 7, 015602, .https://doi.org/10.1088/1748-9326/7/1/015602
    Taylor K. E.,R. J. Touffer, and G. A. Meehl, 2012: An overview of CMIP5 and the experiment design. Bull. Amer. Meteor. Soc., 93, 485-498, .https://doi.org/10.1175/bams-d-11-00094.1
    Tripathi, O. P.,Coauthors, 2015: The predictability of the extratropical stratosphere on monthly time-scales and its impact on the skill of tropospheric forecasts. Quart. J. Roy. Meteor. Soc., 141, 987-1003, .https://doi.org/10.1002/qj.2432
    Tripathi, O. P.,Coauthors, 2016: Examining the predictability of the stratospheric sudden warming of January 2013 using multiple NWP systems. Mon. Wea. Rev., 144, 1935-1960, .https://doi.org/10.1175/mwr-d-15-0010.1
    Vitart F.,2014: Evolution of ECMWF sub-seasonal forecast skill scores. Quart. J. Roy. Meteor. Soc., 140, 1889-1899, .https://doi.org/10.1002/qj.2256
    Vitart F., Coauthors, 2017: The Subseasonal to Seasonal (S2S) prediction project database. Bull. Amer. Meteor. Soc., 98, 163-173, .https://doi.org/10.1175/bams-d-16-0017.1
    Wallace J. M.,D. S. Gutzler, 1981: Teleconnections in the geopotential height field during the northern hemisphere winter. Mon. Wea. Rev., 109, 784-812, .https://doi.org/10.1175/1520-0493(1981)109<0784:titghf>2.0.co;2
    Winton M.,2000: A reformulated three-layer sea ice model. J. Atmos. Oceanic Technol., 17, 525-531, .https://doi.org/10.1175/1520-0426(2000)017<0525:artlsi>2.0.co;2
    Wu, T. W.,Coauthors, 2010: The Beijing Climate Center atmospheric general circulation model: Description and its performance for the present-day climate. Climate Dyn., 34, 123-147, .https://doi.org/10.1007/s00382-008-0487-2
    Wu, T. W.,Coauthors, 2014: An overview of BCC climate system model development and application for climate change studies. Journal of Meteorological Research, 28, 34-56, .https://doi.org/10.1007/s13351-014-3041-7
    Xie F.,J. Li, W. Tian, J. Feng, and Y. Huo, 2012: Signals of El NiÑo Modoki in the tropical tropopause layer and stratosphere. Atmospheric Chemistry and Physics, 12, 5259-5273, .https://doi.org/10.5194/acp-12-5259-2012
    Yang S.,X. Jiang, 2014: Prediction of eastern and central Pacific ENSO events and their impacts on East Asian climate by the NCEP climate forecast system. J. Climate, 27, 4451-4472, .https://doi.org/10.1175/jcli-d-13-00471.1
    Yu Y. Y.,R. C. Ren, and M. Cai, 2015: Dynamic linkage between cold air outbreaks and intensity variations of the meridional mass circulation. J. Atmos. Sci., 72, 3214-3232, .https://doi.org/10.1175/jas-d-14-0390.1
    Zhou W.,M. Y. Chen, W. Zhuang, F. H. Xu, F. Zheng, T. W. Wu, and X. Wang, 2016: Evaluation of the tropical variability from the Beijing Climate Center's real-time operational global Ocean Data Assimilation System. Adv. Atmos. Sci., 33, 208-220, .https://doi.org/10.1007/s00376-015-4282-9
    Zhu J. S.,J. Shukla, 2013: The role of air-sea coupling in seasonal prediction of Asia-Pacific summer monsoon rainfall. J. Climate, 26, 5689-5697, .https://doi.org/10.1175/jcli-d-13-00190.1
  • [1] LI Shan, RONG Xingyao, LIU Yun, LIU Zhengyu, Klaus FRAEDRICH, 2013: Dynamic Analogue Initialization for Ensemble Forecasting, ADVANCES IN ATMOSPHERIC SCIENCES, 30, 1406-1420.  doi: 10.1007/s00376-012-2244-z
    [2] Yazhou ZHANG, Zhijie LIAO, Yaocun ZHANG, Feng NIE, 2016: Characteristics of the Asian-Pacific Oscillation in Boreal Summer Simulated by BCC_CSM with Different Horizontal Resolutions, ADVANCES IN ATMOSPHERIC SCIENCES, 33, 1401-1412.  doi: 10.1007/s00376-016-5266-0
    [3] DENG Shumei, CHEN Yuejuan, LUO Tao, BI Yun, ZHOU Houfu, 2008: The Possible Influence of Stratospheric Sudden Warming on East Asian Weather, ADVANCES IN ATMOSPHERIC SCIENCES, 25, 841-846.  doi: 10.1007/s00376-008-0841-7
    [4] ZUO Qunjie, GAO Shouting, LU Daren, 2012: Kinetic and Available Potential Energy Transport during the Stratospheric Sudden Warming in January 2009, ADVANCES IN ATMOSPHERIC SCIENCES, 29, 1343-1359.  doi: 10.1007/s00376-012-1198-5
    [5] Yingxian ZHANG, Dong SI, Yihui DING, Dabang JIANG, Qingquan LI, Guofu WANG, 2022: Influence of Major Stratospheric Sudden Warming on the Unprecedented Cold Wave in East Asia in January 2021, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 576-590.  doi: 10.1007/s00376-022-1318-9
    [6] DENG Shumei, CHEN Yuejuan, HUANG Yong, LUO Tao, BI Yun, 2011: Transient Characteristics of Residual Meridional Circulation during Stratospheric Sudden Warming, ADVANCES IN ATMOSPHERIC SCIENCES, 28, 551-563.  doi: 10.1007/s00376-010-0010-7
    [7] ZHU Jiang, LIN Caiyan, WANG Zifa, 2009: Dust Storm Ensemble Forecast Experiments in East Asia, ADVANCES IN ATMOSPHERIC SCIENCES, 26, 1053-1070.  doi: 10.1007/s00376-009-8218-0
    [8] T. N. Krishnamurti, Mukul Tewari, Ed Bensman, Wei Han, Zhan Zhang, William K. M. Lau, 1999: An Ensemble Forecast of the South China Sea Monsoon, ADVANCES IN ATMOSPHERIC SCIENCES, 16, 159-182.  doi: 10.1007/BF02973080
    [9] LIU Yi, LIU Chuanxi, Xuexi TIE, GAO Shouting, 2011: Middle Stratospheric Polar Vortex Ozone Budget during the Warming Arctic Winter, 2002--2003, ADVANCES IN ATMOSPHERIC SCIENCES, 28, 985-996.  doi: 10.1007/s00376-010-0045-9
    [10] Guo DENG, Xueshun SHEN, Jun DU, Jiandong GONG, Hua TONG, Liantang DENG, Zhifang XU, Jing CHEN, Jian SUN, Yong WANG, Jiangkai HU, Jianjie WANG, Mingxuan CHEN, Huiling YUAN, Yutao ZHANG, Hongqi LI, Yuanzhe WANG, Li GAO, Li SHENG, Da LI, Li LI, Hao WANG, Ying ZHAO, Yinglin LI, Zhili LIU, Wenhua GUO, 2024: Scientific Advances and Weather Services of the China Meteorological Administration’s National Forecasting Systems during the Beijing 2022 Winter Olympics, ADVANCES IN ATMOSPHERIC SCIENCES, 41, 767-776.  doi: 10.1007/s00376-023-3206-3
    [11] Yuejian ZHU, 2005: Ensemble Forecast: A New Approach to Uncertainty and Predictability, ADVANCES IN ATMOSPHERIC SCIENCES, 22, 781-788.  doi: 10.1007/BF02918678
    [12] Saleh AMINYAVARI, Bahram SAGHAFIAN, Majid DELAVAR, 2018: Evaluation of TIGGE Ensemble Forecasts of Precipitation in Distinct Climate Regions in Iran, ADVANCES IN ATMOSPHERIC SCIENCES, 35, 457-468.  doi: 10.1007/s00376-017-7082-6
    [13] Zhenhua HUO, Wansuo DUAN, Feifan ZHOU, 2019: Ensemble Forecasts of Tropical Cyclone Track with Orthogonal Conditional Nonlinear Optimal Perturbations, ADVANCES IN ATMOSPHERIC SCIENCES, 36, 231-247.  doi: 10.1007/s00376-018-8001-1
    [14] Jihang LI, Zhiyan ZHANG, Lu LIU, Xubin ZHANG, Jingxuan QU, Qilin WAN, 2021: The Simulation of Five Tropical Cyclones by Sample Optimization of Ensemble Forecasting Based on the Observed Track and Intensity, ADVANCES IN ATMOSPHERIC SCIENCES, 38, 1763-1777.  doi: 10.1007/s00376-021-0353-2
    [15] Jiangshan ZHU, Fanyou KONG, Xiao-Ming HU, Yan GUO, Lingkun RAN, Hengchi LEI, 2018: Impact of Soil Moisture Uncertainty on Summertime Short-range Ensemble Forecasts, ADVANCES IN ATMOSPHERIC SCIENCES, 35, 839-852.  doi: 10.1007/s00376-017-7107-1
    [16] Lili LEI, Yangjinxi GE, Zhe-Min TAN, Yi ZHANG, Kekuan CHU, Xin QIU, Qifeng QIAN, 2022: Evaluation of a Regional Ensemble Data Assimilation System for Typhoon Prediction, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 1816-1832.  doi: 10.1007/s00376-022-1444-4
    [17] Yueyue YU, Yafei LI, Rongcai REN, Ming CAI, Zhaoyong GUAN, Wei HUANG, 2022: An Isentropic Mass Circulation View on the Extreme Cold Events in the 2020/21 Winter, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 643-657.  doi: 10.1007/s00376-021-1289-2
    [18] Wu Aiming, Ni Yunqi, 1999: A Hybrid Coupled Ocean-Atmosphere Model and ENSO Prediction Study, ADVANCES IN ATMOSPHERIC SCIENCES, 16, 405-418.  doi: 10.1007/s00376-999-0019-y
    [19] Weiwei WANG, Song YANG, Tuantuan ZHANG, Qingquan LI, Wei WEI, 2022: Sub-seasonal Prediction of the South China Sea Summer Monsoon Onset in the NCEP Climate Forecast System Version 2, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 1969-1981.  doi: 10.1007/s00376-022-1403-0
    [20] Mengchu TAO, Yi LIU, Yuli ZHANG, 2017: Variation in Brewer-Dobson Circulation During Three Sudden Stratospheric Major Warming Events in the 2000s, ADVANCES IN ATMOSPHERIC SCIENCES, 34, 1415-1425.  doi: 10.1007/s00376-017-6321-1

Get Citation+

Export:  

Share Article

Manuscript History

Manuscript received: 13 August 2018
Manuscript revised: 30 November 2018
Manuscript accepted: 27 December 2018
通讯作者: 陈斌, bchen63@163.com
  • 1. 

    沈阳化工大学材料科学与工程学院 沈阳 110142

  1. 本站搜索
  2. 百度学术搜索
  3. 万方数据库搜索
  4. CNKI搜索

Sub-seasonal to Seasonal Hindcasts of Stratospheric Sudden Warming by BCC_CSM1.1(m): A Comparison with ECMWF

    Corresponding author: Jian RAO, raojian@nuist.edu.cn
  • 1. Key Laboratory of Meteorological Disaster, Ministry of Education/Joint International Research Laboratory of Climate and Environment Change/Collaborative Innovation Center on Forecast and Evaluation of Meteorological Disasters, Nanjing University of Information Science and Technology, Nanjing 210044, China
  • 2. State Key Laboratory of Numerical Modeling for Atmospheric Sciences and Geophysical Fluid Dynamics, Institute of Atmospheric Physics, Chinese Academy of Sciences, Beijing 100029, China
  • 3. Climate Model Division, National Climate Center, China Meteorological Administration, Beijing 100081, China
  • 4. Institute of Urban Meteorology, China Meteorological Administration, Beijing 100089, China
  • 5. Fredy and Nadine Herrmann Institute of Earth Sciences, The Hebrew University of Jerusalem, Edmond J. Safra Campus, Givat Ram Jerusalem 91904, Israel

Abstract: This study focuses on model predictive skill with respect to stratospheric sudden warming (SSW) events by comparing the hindcast results of BCC_CSM1.1(m) with those of the ECMWF's model under the sub-seasonal to seasonal prediction project of the World Weather Research Program and World Climate Research Program. When the hindcasts are initiated less than two weeks before SSW onset, BCC_CSM and ECMWF show comparable predictive skill in terms of the temporal evolution of the stratospheric circumpolar westerlies and polar temperature up to 30 days after SSW onset. However, with earlier hindcast initialization, the predictive skill of BCC_CSM gradually decreases, and the reproduced maximum circulation anomalies in the hindcasts initiated four weeks before SSW onset replicate only 10% of the circulation anomaly intensities in observations. The earliest successful prediction of the breakdown of the stratospheric polar vortex accompanying SSW onset for BCC_CSM (ECMWF) is the hindcast initiated two (three) weeks earlier. The predictive skills of both models during SSW winters are always higher than that during non-SSW winters, in relation to the successfully captured tropospheric precursors and the associated upward propagation of planetary waves by the model initializations. To narrow the gap in SSW predictive skill between BCC_CSM and ECMWF, ensemble forecasts and error corrections are performed with BCC_CSM. The SSW predictive skill in the ensemble hindcasts and the error corrections are improved compared with the previous control forecasts.

摘要: 本文使用了国家气候中心的BCC_CSM模式和欧洲中期天气预报中心的ECMWF模式的次季节到季节尺度的数值预报结果,研究了平流层爆发性增温(SSW)事件的潜在预报性. BCC_CSM模式和ECMWF模式都参与了由世界天气研究计划(WWRP)和世界气候研究计划(WCRP)发起的次季节到季节预测研究项目. 在SSW发生前两周以内的起报试验中,BCC_CSM模式和ECMWF模式对SSW期间的平流层绕极西风和极区温度两个指标表现出相当的预报技巧. 然而,随着起报时间的不断提前,BCC_CSM模式对SSW的预测技能逐渐降低. 在SSW爆发前四周的起报试验中,BCC_CSM模式预测的最大环流异常明显偏小,仅仅是观测的10%左右. BCC_CSM模式和ECMWF最模式最早且较好地预测出极区强东风异常的试验分别是起报两周和三周的预报. 比较而言,两个模式在有SSW发生的冬季的预报技巧比没有SSW发生的冬季高一些,这主要与预报初始化时的对流层的先兆信号和行星上传有关. 为了进一步缩小BCC_CSM模式与ECMWF模式之间的差距,本文也使用了BCC_CSM的集合试验结果,并对BCC_CSM模式系统误差进行订正. 与先前的试验相比,集合预报和误差订正都可以有效地改善BCC_CSM模式对SSW的预测技能.

1. Introduction
  • Weather forecasting mainly focuses on synoptic weather conditions within two weeks, whereas climate prediction is mainly concerned with climate conditions beyond one or two months. A time gap exists in the prediction of circulation between these two time scales (Hurrell et al., 2009; Brunet et al., 2010), which is the so-called sub-seasonal to seasonal (S2S) time scale. S2S time-scale prediction is still a great challenge for both the research and the operational communities, because it is beyond the extended range of weather forecasting that can be realized mainly based on the atmospheric "memory" of initial conditions and is also out of the time range of climate prediction in which the influence of boundary conditions can be included. The influence of both the initial conditions and the boundary forcing needs to be considered in S2S predictions (Vitart et al., 2017). Sub-seasonal forecasts are of particular importance for society and economies because of their critically determinative value for proactive disaster mitigation. In recent years, with improvements in the description of boundary conditions (e.g., resolutions and parameterized processes) and their interactions with the atmosphere, as well as that of initial conditions in numerical models, the skill of seasonal forecasts has improved significantly (Kug et al., 2008; Kim et al., 2012; Jiang et al., 2013a, b; Zhu and Shukla, 2013; Yang and Jiang, 2014).

    In 2013, the World Climate Research Program and the World Weather Research Program initiated an S2S prediction project to bridge the gap between weather forecasts and climate predictions (Hurrell et al., 2009; Brunet et al., 2010; Liu et al., 2017). There are 11 operational centers or research institutes providing S2S hindcast products, which are collected by the European Centre for Medium-Range Weather Forecasts (ECMWF; http://apps.ecmwf.int/datasets/data/s2s/) and China Meteorological Administration (CMA; http://s2s.cma.cn/dataset/) (Vitart et al., 2017).

    The latest research has identified several important potential sources of S2S time-scale predictability, with a special emphasis on stratosphere-troposphere interactions (Vitart et al., 2017). There seems to be a consensus that the stratospheric variability contributes largely to the tropospheric predictability in the extratropics and that stratosphere-resolving numeral weather forecast systems might improve weather forecasts (Smith et al., 2012; Tripathi et al., 2015, Tripathi et al., 2016). Ample evidence already indicates the possible application prospects of the stratosphere, because stratospheric processes evolve much slower than those in the troposphere (Ren and Cai, 2007; Rao et al., 2015; Yu et al., 2015; Hu et al., 2017). Perturbations in the troposphere can act as a potential source for stratospheric changes by modulating planetary wave activity, the circumpolar westerly, and the polar vortex in the stratosphere (e.g., Rao and Ren, 2016c, Rao and Ren, 2017; Ren et al., 2017). However, the signals of the stratospheric change related to the stratospheric northern annular mode (Baldwin and Dunkerton, 1999), the polar vortex oscillation (Cai and Ren, 2006; Ren and Cai, 2007), or stratospheric sudden warming (SSW) events (Charlton and Polvani, 2007; Hu et al., 2014), can propagate downward and influence tropospheric circulation. The occurrence of SSW events is one of the most distinct and radical troposphere-stratosphere coupling phenomena, and the effects of SSW events on tropospheric circulation usually persist for several weeks (Baldwin and Dunkerton, 2001; Polvani and Waugh, 2004; Ren and Cai, 2007; Rao et al., 2015).

    Understanding and producing reliable predictions of extreme stratospheric events is of vital importance, since the signal from the middle atmosphere is one of the main sources for the S2S predictability of the extratropical climate (Yu et al., 2015; Cai et al., 2016). Fortunately, the variability of the northern winter stratospheric polar vortex, the stratosphere-troposphere interaction, and even the stratospheric Quasi-Biennial Oscillation-like circulation variation, can be represented or reproduced by an increasing number of state-of-the-art climate models (Wu et al., 2014; Rao et al., 2015; Ren et al., 2017).

    After participating in phase 5 of the Coupled Model Intercomparison Project (Taylor et al., 2012; Rao et al., 2015; Liu et al., 2017), the Beijing Climate Center Climate System Model (BCC_CSM; Wu et al., 2014; Liu et al., 2017) has changed from 26 levels to 40 levels in the atmosphere and has been used to conduct comprehensive S2S hindcast experiments. Based on the fact that the stratosphere is a vitally important source for S2S prediction in the troposphere, the present study focuses on the prediction skill of the BCC model in the stratosphere——in particular, the model's skill in forecasting stratospheric extreme events, such as SSW events. Using parallel comparisons of its S2S products with those of the ECMWF's model (hereafter referred to simply as ECMWF), we also propose possible approaches to improving the prediction skill of BCC_CSM.

    Following this introduction, the remainder of the paper is designed as follows: Section 2 introduces the data, model and methods employed in the study. Section 3 presents a parallel comparison of SSW events in the BCC_CSM and ECMWF S2S hindcast systems. Section 4 provides ensemble prediction and error correction results for SSW events. A summary and discussion are provided in section 5.

2. Model, data and methods
  • The moderate-resolution version of BCC_CSM [BCC_ CSM1.1(m)] has been used in seasonal prediction, exhibiting reliable performance (Liu et al., 2017). This moderate-resolution version of BCC_CSM is used to conduct the S2S prediction in this study. The atmospheric component of this model is BCC_AGCM, version 2, which uses the T106 horizontal resolution and has 40 levels in the vertical direction (Wu et al., 2010, 2014). The land component of BCC_CSM is the Atmosphere and Vegetation Interaction Model, version 1.0, with the T106 horizontal resolution (Ji et al., 2008). The ocean component uses the Modular Ocean Model, version 4 (Griffies et al., 2005), and the sea-ice component is the GFDL Sea Ice Simulator (Winton, 2000). The ocean and sea-ice components have a tripolar horizontal grid, with the resolution changing from 1°× 1° at the poles to 1°× 1/3° at the equator. The length of the BCC_CSM sub-seasonal forecast is 60 days. For a comparison with BCC_CSM, the ECMWF sub-seasonal integrations are also used. The length of the sub-seasonal forecast for this model has increased from 32 to 46 days since May 2015. More details about the ECMWF model can be found in (Vitart, 2014) and references therein.

    The S2S hindcast is performed by BCC_CSM every day from January 1994 to December 2014. Every hindcast experiment is continuously integrated for 60 days. The atmospheric initial fields are from the six-hourly (four times daily) data of NCEP-1 (Kalnay et al., 1996). The atmospheric initialization uses a fast nudging strategy (Jie et al., 2014; Liu et al., 2017). The BCC Global Ocean Data Assimilation System assimilates multi-source observational data (Zhou et al., 2016) and provides oceanic initial fields for the S2S experiments. No land and sea-ice initializations are performed.

    To reduce the uncertainty in the initial fields, every hindcast experiment also uses an ensemble running scheme with a six-hour interval of atmospheric initial conditions ahead. Taking the forecast on 1 August as an example, the initial conditions at 0000 UTC 1 August, 1800 UTC 31 July, 1200 UTC 31 July, and 0600 UTC 31 July, are used for each of the four ensemble members, respectively. The first hindcast member initiated at 0000 UTC on the hindcast day is denoted as the control hindcast, and the other three initiated at 1800, 1200, and 0600 UTC on the previous day are denoted as the perturbed hindcast. Unless stated otherwise, this study mainly assesses the control hindcast.

  • Because the atmospheric initializations use NCEP-1 (Kalnay et al., 1996), this reanalysis dataset is used to represent the real atmosphere in the observations. The prediction skill of the stratospheric circulation in BCC_CSM is calculated using this reanalysis. ERA-Interim (Dee et al., 2011) is also used, and we find that the results are insensitive to the choice of data criteria. To compare the prediction skill in different models, the control hindcast from ECMWF is also assessed. Because a hindcast from this model is performed twice a week in the last 20 years relative to 2015, 2016 and 2017——for example, in 2015/2016/2017, the model version was updated and the hindcast was performed twice a week from 1 January 1995/1996/1997 to 31 December 2014/2015/2016——we mainly focus on the common period (1995-2014). We have assumed that the effect of the ECMWF model version update can be negligible. All hindcasts considered, the ECMWF model has an equivalent frequency of six (6=2 times weekly in 2015, 2016, and 2017× 3 years) times weekly. This study mainly assesses the hindcasts initialized 0-4 weeks before the SSW onset dates, which are all available from BCC_CSM. Three SSW events (February 2007, January 2009, and January 2013) did not onset on the hindcast initialization dates, so hindcasts initialized one day earlier are considered as the D-0, D-7, D-14, D-21, and D-28 forecasts. The ECMWF initialization time for the 11 SSW events is listed in Table S1 in electronic supplementary material.

  • An SSW is defined when the westerly winds at 60°N and 10 hPa reverse direction and become easterly, and the meridional temperature gradients at 10 hPa change sign from 60°N to the North Pole (Charlton and Polvani, 2007; Hu et al., 2014). When an SSW occurs in the polar stratosphere, the polar vortex is completely disrupted: the vortex is either split into two separate vortices or displaced from the North Pole. We mainly focus on major SSW events with a more radical circulation change.

    It has been reported that extratropical stratospheric warming is preceded by the western Pacific (WP) Oscillation (Dai and Tan, 2016) and the Pacific-North America (PNA) teleconnection (Hu et al., 2017; Ren et al., 2017; Rao and Ren, 2018). Large zonal mean circulation anomalies associated with SSW descend from the stratosphere to the upper troposphere and are followed by a negative tropospheric North Atlantic Oscillation (NAO; Baldwin and Dunkerton, 1999; 2001). To analyze the tropospheric precursor and "follower", we calculate several teleconnection indices, including for the WP, the PNA, and the NAO. Their definitions (Wallace and Gutzler, 1981) are as follows: \begin{eqnarray} {\rm WP}&=&\dfrac{1}{2}(Z_{60{\rm N},155{\rm E}}-Z_{30{\rm N},155{\rm E}}) ; \ \ (1)\\ {\rm PNA}&=&\dfrac{1}{4}(Z_{60{\rm N},160{\rm W}}-Z_{45{\rm N},165{\rm W}}+Z_{55{\rm N},115{\rm W}}-Z_{30{\rm N},85{\rm W}}) ; \ \ (2)\\ {\rm NAO}&=&\dfrac{1}{2}(Z_{35{\rm N},0}-Z_{65{\rm N},20{\rm W}}) . \ \ (3)\end{eqnarray} In in Eqs. (1)-(3), Z is the height anomaly and the subscript is the latitude (°N) and longitude (°E, °W). We also use the two-dimensional Eliassen-Palm (EP) flux and its divergence in spherical coordinates to diagnose the propagation of planetary waves (Andrews et al., 1987).

    To improve the prediction skill from the forecast outputs, a direct error correction method is applied for winter (December, January, February, and March) hindcasts in this study. The mean squared error between model predictions and observations can be expressed as \begin{eqnarray} \dfrac{1}{N}\sum_{i=1}^N(S_i-O_i)^2&=&\dfrac{1}{N}\sum_{i=1}^N(S_i^*-O_i)^2+\dfrac{1}{N}\sum_{i=1}^N(S_i-S_i^*)^2 , \ \ (4)\quad\\ S_i^*&=&aO_i+b ,\quad \varepsilon_i=S_i-S_i^* , \ \ (5)\end{eqnarray} where i is the prediction index sorted by hindcast dates chronologically, Oi is the observation, Si is the model prediction, and Si* is the corrected prediction. Namely, both Oi and Si are the same variable, but the former is taken from observations and the latter from model predictions. The first term on the right-hand-side of Eq. (4), 1/N∑i=1N(Si*-Oi)2, is the systematic error determined by the model performance. The second term, 1/N∑i=1N(Si-Si*)2, is the random error. For simplicity, the least squares method is adopted to construct the relationship between the corrected prediction (Si*) and the observation (Oi) on a linear assumption (a is the slope and b is the intercept).

3. Parallel comparison of S2S hindcasts of SSW events between BCC_CSM and ECMWF
  • There are 11 SSW events during 1995-2014 in the NCEP-1 reanalysis: 15 December 1998, 25 February 1999, 16 February 2001, 7 January 2004, 21 January 2006, 24 February 2007, 22 February 2008, 24 January 2009, 9 February 2010, 24 March 2010, and 6 January 2013. Based on the composite result of 11 major SSWs relative to the onset day (i.e., day 0) during 1995-2014 (e.g., Charlton and Polvani, 2007; Hu et al., 2014), the circumpolar westerlies in the upper stratosphere reverse to easterlies (Fig. 1a), and the westerlies in the lower stratosphere are also greatly decelerated after SSW onsets. Based on the evolution of the circumpolar wind anomalies, the easterly anomalies form on day -12, and reach maxima on day 3 (-30 m s-1; Fig. 1a). In contrast, stronger circumpolar westerly anomalies are observed before day -15 (8 m s-1). According to the principle of the thermal wind balance, the stratospheric polar cap warms suddenly after day -5 (212 K) and reaches its warmest temperature (232 K) on day 2, with an abrupt increase of 20 K in one week (Fig. 1b). Accordingly, positive anomalies of the polar cap temperature begin to form on day -12 and reach maxima on day 3 (18 K).

    Figure 1.  (a) Composite pressure-time evolution of the zonal mean zonal wind (uwnd, shadings; units: m s-1) at 60°N and its anomaly (contours; units: m s-1; interval: 2) from day -30 to day 30 relative to the SSW onset date in NCEP-1. (b) As in (a) but for the polar cap temperature (shading; units: K) area-averaged over 60°-90°N and its anomaly (contours; units: K; interval: 2).

    After SSW onset, the stratospheric circulation and temperature signals show remarkable downward propagation. For example, the 8 m s-1 isotach in Fig. 1a and the 220 K isotherm in Fig. 1b are located in the upper stratosphere (10 hPa) on day -4 and gradually descend, reaching 200 hPa on day 10. The downward-propagating signals can be more clearly verified by the circulation and temperature anomalies (contours in Fig. 1).

    Figure 2 displays the composite evolution of the 10-day running mean temperature (shading) and its anomalies (contours) at 50-hPa during SSW onset in the observations. The stratospheric polar vortex is anomalously cold on day -25 to -15 (-6 K), and southern Alaska and western Canada are covered by an initiation of warm anomalies (1 K; Fig. 2a). As the polar cold center deviates from the pole to Eurasia on day -15 to -5 (Fig. 2b), a wavenumber-1 pattern of temperature forms in the mid-to-high latitudes, with a cold center (-4 K) over Arctic Eurasia and a warm center (4 K) over Arctic Canada. The strengthened warm anomaly (12 K) arrives over the North Pole (Fig. 2c), with the stratospheric polar vortex collapsing and largely deviating from the North Pole on day -5 to 5. As warm anomalies intensify (16 K) and expand over the Arctic (Fig. 2d), the cold center disappears, indicating a complete breakdown of the stratospheric polar vortex on day 5 to 15. In addition to the stratospheric warming over the Arctic, the midlatitude stratosphere is anomalously cold following SSW onset (-2 K). The positive temperature anomalies in the extratropical stratosphere can last for several weeks (14 K; Fig. 2e), accompanied by persistent reversed meridional temperature gradients. Next, we assess the prediction skill of the two models based on the evolution of circulation and temperature during SSW events in the observations.

    Figure 2.  Composite 50-hPa temperature (shading; units: K) and its anomaly (contours; units: K; interval: 2) during (a) day -25 to -15, (b) day -15 to -5, (c) day -5 to 5, (d) day 5 to 15, and (e) day 15 to 25, relative to the onset of SSW events in NCEP-1.

  • The hindcasts initialized at different lead times relative to SSW onset dates from the two models are compared. In Figs. 3 and 4, the circulation and temperature fields before the initialization time are shown as blank. Comparing BCC_CSM and ECMWF in Figs. 3 and 4 (shading), we can see that the evolution of the circumpolar westerlies and the polar cap temperatures are fairly realistically predicted by both BCC_CSM and ECMWF when the initialization time is set on the SSW onset day (labeled as D-0; Figs. 3a and 4a) or one week earlier (labeled as D-7; Figs. 3b and 4b). Specifically, as in the observations (Fig. 1), the maximum easterly anomalies occur at 10 hPa on day 3 in the D-0 and D-7 hindcasts. Furthermore, the observed easterlies in the upper stratosphere during days 0-12 only persist for approximately 8 (10) days in BCC_CSM (ECMWF). In other words, the predicted westerlies are biased to recover more rapidly in the D-0 hindcasts (Fig. 3a). If the initialization time is set earlier, i.e., one to four weeks before SSW onset (labeled as D-7, D-14, D-21, and D-28; Figs. 3b-3e), the circumpolar easterly anomalies are not predicted to be large enough to reverse the polar night jet (Figs. 3b-e).

    Figure 3.  Composite pressure-time evolution of the zonal mean zonal wind at 60°N (shading; units: m s-1) and its anomaly (contours; units: m s-1; interval: 2) in the (left column) BCC_CSM and (right column) ECMWF hindcast initiated (a) on the SSW onset day, and (b) one week before, (c) two weeks before, (d) three weeks before, and (e) four weeks before the SSW onset date.

    In the D-0 and D-7 hindcasts, the evolution of the circumpolar wind anomaly (contours) after SSW onset is successfully reproduced by both BCC_CSM and ECMWF (Figs. 3a and b). Although the polar jet does not reverse to easterly flow in the D-7 hindcast by BCC_CSM, the westerlies are fairly close to zero on days 0-5 (Fig. 3b1). In the D-14 hindcast, the prediction skill of BCC_CSM becomes lower than that of ECMWF (Fig. 3c). The maximum easterly anomaly in the observations can be as large as -30 m s-1, while that in the D-14 hindcast is -4 m s-1 (Fig. 3c1) and -22 m s-1 (Fig. 3c2; Tripathi et al., 2016). As a result, BCC_CSM only reproduces 13% of the maximum anomalies in the D-14 hindcast, while ECMWF reproduces 73% of the observational anomalies.

    The prediction skill decreases rapidly once the initialization time is fixed more than two weeks before SSW onset (Figs. 3d and e). The circumpolar westerlies are still fairly strong on days 0-10 in both BCC_CSM (Figs. 3d1 and e1) and ECMWF (Figs. 3d2 and e2). However, the sign of the anomalous wind in both BCC_CSM and ECMWF is successfully predicted (Figs. 3d and e). The maximum easterly anomalies on days 0-10 can be as large as -4 m s-1 (-10 m s-1) in BCC_CSM (ECMWF), reproducing only 13% (33%) of the total easterly anomalies in the observations.

    An SSW is always characterized by rapid warming of the stratospheric polar cap. Similar to that of circumpolar wind, the evolution of polar cap temperature is most accurately predicted in the D-0, D-7 and D-14 hindcasts (Figs. 4a-c). Specifically, as in the observations, the predicted Arctic stratosphere warms up to 228-232 K (shading) at 10 hPa on day 2 in the D-0 and D-7 hindcasts (Figs. 4a and b). The polar cap temperature anomalies (contours) reach maxima (12-16 K) at 10 hPa on day 2, and then the warm center gradually descends as the central value (e.g., 8-16 K isotherms) gradually diminishes. The warm anomalies develop fairly deep (e.g., 500-200 hPa) into the Arctic troposphere, exhibiting downward propagation. In the D-14 hindcast, the maximum temperature anomaly predicted by BCC_CSM is only 4 K (Fig. 4c1), whereas that reproduced by ECMWF is as high as 12 K (Fig. 4c2). Compared with the warm anomalies that can reach as high as 18 K in the observations (Fig. 2), 22% (67%) of the total anomalies are reproduced by BCC_CSM (ECMWF).

    Figure 4.  As in Fig. 3, but for the composite pressure-time evolution of the polar cap temperature area-averaged over 60°-90°N (shading; units: K) and its anomaly (contours; units: K; interval: 2).

    In the D-21 and D-28 hindcasts, the polar warm center occurring on day 2 is also not realistically reproduced by BCC_CSM and ECMWF (Figs. 4d and e). Compared with ECMWF, the initial information in the Arctic stratosphere is excessively "memorized" by BCC_CSM. For example, the anomalously stronger polar vortex on days -30 to -20 in the observations is seldom disturbed in the D-21 and D-28 hindcasts, and the polar warming on day -5 is barely predicted. Fortunately, the sign of the warm anomalies in the Arctic stratosphere is reproduced well by both models. The maximum warm anomalies are only 2 K (8 K) in the Arctic upper stratosphere on day 2 in BCC_CSM (ECMWF), which is about 11% (44%) of that in the observations.

    Figures 5 and 6 present the evolutions of the 50-hPa temperature distribution in different hindcasts to clearly demonstrate the prediction of stratospheric temperature during SSW. The earlier the initialization time is, the stronger the Arctic stratospheric cold center on days -5 to 5 is predicted by BCC_CSM (Fig. 5c) and ECMWF (Fig. 6c). The cold and strong stratospheric polar vortex is hardly disturbed in both models, and the prediction biases are gradually amplified. In contrast, the weakened cold center and its deviation from the North Pole are almost realistically reproduced in the D-0 and D-7 hindcasts by both BCC_CSM and ECMWF (first and second rows in Figs. 5 and 6). The warming anomaly (contours) begins earliest in the Pacific sector as the stratospheric polar cold center (shading) deviates to the Atlantic sector and Scandinavia on days -15 to -5 (Figs. 5c1 and c2; Figs. 6c1 and c2). The cold center disappears on days 5-15, indicating the reversal of the meridional temperature gradient from middle to high latitudes, as well as the collapse of the stratosphere polar vortex. The warm center over Northeast Asia is fairly well predicted in the D-0 and D-7 hindcasts on days -5 to 5 (226 K) and on days 5-15 (224 K). The collapse of the shifted vortex cold center is successfully predicted on days 5-15 and 15-25. Comparing BCC_CSM and ECMWF, it is apparent that ECMWF still has a relatively higher prediction skill level than BCC_CSM in the D-14 hindcast (cf. Figs. 5a3-e3 and 6a3-e3). The cold center of the stratospheric polar vortex is stable and remains nearly stationary after days -15 to -5 (Figs. 5b3-e3) in BCC_CSM, although the cold center over Scandinavia warms up gradually from 200 K (Fig. 5b3) to 208 K (Fig. 5e3). In contrast, ECMWF predicts that the cold center develops equatorward as the warm center over the Pacific sector moves poleward, extending its coverage area (Figs. 6b3-e3). It denotes that the heat exchange between the midlatitudes and the Arctic region in the D-14 hindcast is better reproduced by ECMWF than by BCC_CSM.

    Figure 5.  Composite 50-hPa temperature distribution (shading; units: K) and its anomaly (contours; units: K; interval: 2) during day (a) -25 to -15, (b) -15 to -5, (c) -5 to 5, (d) 5 to 15, and (e) 15 to 25, relative to the onset of SSW events in BCC_CSM hindcasts initiated (a1-e1) on the SSW onset day, and (a2-e2) one week before, (a3-e3) two weeks before, (a4-e4) three weeks before, and (a5-e5) four weeks before the SSW onset date.

    Figure 6.  As in Fig. 5, but for ECMWF hindcasts.

    In the D-21 and D-28 hindcasts, the predicted polar vortex by BCC_CSM evolves fairly slowly, centered over the North Pole (Figs. 5a4-e4; Figs. 5a5-e5). Unlike in the observations, the predicted cold center over the Arctic and a relatively warm band in the midlatitude stratosphere never reverse the meridional temperature gradient, which indicates an unrealistic warming event. BCC_CSM and ECMWF still possess limited prediction skill for SSW events up to three to four weeks in advance. Given that the polar vortex cold center weakens continuously from 198 K (Figs. 5a4 and a5; Figs. 6a4 and a5) to 206 K (Figs. 5e4 and e5; Figs. 6e4 and e5), the central temperature is predicted to be 10 K smaller than that in the observations.

  • From the above analysis, it is clear that the closer the initialization time is to SSW onset, the more realistically the stratospheric evolution is forecast. In fact, the prediction skill of the models for the stratospheric circumpolar westerly varies from year to year for a prediction lead time ranging from 1 to 30 days (Fig. 7). Specifically, the anomaly correlation coefficients (ACCs) are larger during some winters, such as 1998 and 2004, even at lead times that exceed three weeks (Figs. 7a and c). Furthermore, the ACCs between hindcasts and observations also differ for different lead times, and even from model to model. In general, the prediction skill of BCC_CSM for the circumpolar westerly is a little lower than that of ECMWF, and the ACC in BCC_CSM decreases much faster with lead time than that in ECMWF (Figs. 7b and d).

    Figure 7.  Prediction skill of the daily circumpolar westerly at 60°N and 10 hPa in each winter (November-March) during 1995-2014, denoted as the anomaly correlation coefficient between the observation and hindcast, with a lead time ranging from 1 to 30 days relative to the hindcast initialization time in (a) BCC_CSM and (c) ECMWF. (b, d) Prediction skill in all winters (dashed line), in SSW winters (thin solid line), and in non-SSW winters (thick solid line).

    As shown in Figs. 7b and d, the circumpolar westerly ACC during SSW winters (thin solid line) and during non-SSW winters (thick solid line) are also calculated, separately. The prediction skill during SSW winters is clearly higher than that during non-SSW winters when the lead time of the BCC_CSM hindcasts ranges from 1-18 days (Fig. 7b). The ACC decreases slowly from 1.0 to 0.6 with the lead time increasing from 1-17 days in BCC_CSM. However, with the lead time increasing from 17-30 days in BCC_CSM, the ACC for non-SSW winters remains nearly constant, while that for the SSW winters decreases gradually to below 0.4. In contrast, ECMWF has a relatively stable prediction skill: the ACC fluctuates above 0.9 with the lead time increasing from 1-10 days, and then decreases gradually. The prediction skill also depends on the occurrence of SSWs in ECMWF: the ACC in SSW winter is generally higher than that in non-SSW winter when the lead time falls between one week and four weeks (cf. Figs. 7b and d).

  • The weakening and shifting of the stratospheric polar vortex is closely associated with planetary wave activity originating from the extratropical troposphere (Garfinkel and Hartmann, 2007; Rao and Ren, 2016a, b; Hu et al., 2017). On different time scales, the tropospheric precursor for the variability of the stratospheric polar vortex also changes. On the interannual timescale, the tropospheric PNA pattern in its positive phase is an important teleconnection bridging El NiÑo-Southern Oscillation (ENSO) and the extratropical stratosphere, which modulates the upward propagation of planetary waves (Ren et al., 2012, Ren et al., 2017; Xie et al., 2012; Hu et al., 2017; Rao and Ren, 2018). However, on the S2S time scale, the extratropical stratospheric warming is preceded by the WP Oscillation (Dai and Tan, 2016), which is projected to an enhanced wavenumber-1. The day-to-day evolution of the three tropospheric teleconnection indices that are closely related with stratospheric variability is shown in Fig. 8. Based on the observations, the PNA teleconnection is fairly weak and generally in its negative phase before SSW onset (Fig. 8a), which is contrary to the well-established relationship between the PNA teleconnection and stratospheric polar vortex on the interannual time scale (Garfinkel and Hartmann, 2007; Rao and Ren, 2016c). However, WP persists in its negative phase on day -25 to 2 and reaches its climax on day -10, indicating the persistent deepening of the North Pacific low before SSW onset (Fig. 8b). Following SSW onset, the zonal mean height and westerly signals propagate downward (Baldwin and Dunkerton, 1999; Cai and Ren, 2006; Ren and Cai, 2007), favoring a long-lasting NAO in its negative phase (Fig. 8c).

    Figure 8.  Day-to-day evolution of the (a) PNA, (b) WP and (c) NAO indices on day -30 to 30 in (left column) BCC_CSM and (right column) ECMWF hindcasts. Black (colored) curves represent evolutions from observations (hindcasts).

    The evolution of the tropospheric teleconnection (especially the WP) in the D-0, D-7 and D-14 hindcasts is reproduced well in both models. Specifically, the persistent negative WP before SSW onset is realistically forecast by both models (Fig. 8b). In the observations, the WP begins to develop toward its positive phase on day 3, indicating a successful upward propagation of the extratropical waves. The phase transition of WP is also predicted by ECMWF, but fairly limitedly reproduced by BCC_CSM. The negative WP persists too long in BCC_CSM (Fig. 8b1), and the potential of the upward propagation of the strengthened planetary waves to perturb the stratosphere is limited. The negative NAO is inaccurately and limitedly predicted, indicating weak stratosphere-troposphere coupling in BCC_CSM (Fig. 8c).

    Next, we show the evolution of the upward-propagating waves in the circumpolar region in Fig. 9 to verify the critical importance of tropospheric variations for the stratospheric prediction. In the observations, the upward propagation of planetary waves is anomalously large from day -20 when the polar vortex is still fairly strong (Fig. 9a). It is then gradually strengthened until SSW onset on day 0. Accompanying the increase of planetary waves penetrating into the stratosphere, persistent convergence of anomalous EP flux occurs in the circumpolar region during day -20 to 0 between 200 and 10 hPa, accounting for the reversal in the direction of the westerlies and the negative zonal wind anomalies.

    Because the anomalous upward propagation of planetary waves begins on day -20, the D-0, D-7 and D-14 hindcasts can still incorporate the tropospheric precursor fairly well (Figs. 9b-d). However, there is a time shift for the EP flux convergence center, especially in the D-7 hindcast (Fig. 9c), where the maximum convergence is biased to appear on day 8 (4) in BCC_CSM (ECMWF). In the D-21 and D-28 hindcasts, the absence of significant upward propagating waves largely restricts a realistic SSW onset (Figs. 9e and f), indicating the critical importance of upward propagating waves in predicting SSW onset.

    Figure 9.  Spatiotemporal evolution of EP flux anomalies (vectors; m3 s-2; normalized by local air density) and their divergence (shading; m s-1 d-1) in the subpolar regions (60°-80°N) on day -30 to 30 from (a) observations and hindcasts initiated (b) on the SSW onset day, and (c) one week before, (d) two weeks before, (e) three weeks before, and (f) four weeks before the SSW onset date, in (b1-f1) BCC_CSM and (b2-f2) ECMWF. The contours are the circumpolar westerly anomalies.

4. Ensemble hindcasts and error corrections for BCC_CSM
  • Figure 10 displays the evolution of the predicted circumpolar westerlies in BCC_CSM by ensemble forecasts (one control hindcast and three perturbed hindcasts). The predicted zonal wind evolution, especially by the D-14 hindcasts is greatly improved when compared with that in the control hindcasts (cf. Figs. 10c1 and 3c1). The maximum easterly anomaly in Fig. 10c1 is below -8 m s-1, reproducing nearly 27% of the observational anomalies. Improvement in the D-0, D-7, D-21 and D-28 hindcasts is relatively small (Figs. 10a-e). As in the control hindcasts, the wind anomaly sign in the stratospheric circumpolar region is correctly predicted by the ensemble hindcasts, although the anomaly value is weaker than that in the observations.

    Figure 10.  As in Fig. 3, but in (left column) BCC_CSM ensemble hindcasts and (right column) BCC_CSM hindcasts with error corrections.

    The evolution of polar cap temperature is displayed in Fig. S1 in electronic supplementary material. The temperature evolution——in particular in the D-14 hindcast——is also slightly improved when compared with the control hindcast set (cf. Figs. S1c1 and 4c1). In addition, the cold bias over the Arctic after days 5-15 in Fig. S2 is also reduced.

  • Because the ensemble hindcasts initiated more than two weeks before SSW onset still have very limited prediction skill, we apply an error correction to the control hindcasts. Figure 10 displays the evolution of the circumpolar zonal wind in the control hindcasts by BCC_CSM with error correction. Comparing Figs. 3 and 10, the hindcasts with error corrections have the highest skill in predicting the zonal wind evolution. For example, the maximum easterly anomaly on day 30 in the right-hand column of Fig. 10 is 12, 12, 10, 10 and 10 m s-1 in the five hindcasts, accounting for 75%, 75%, 62.5%, 50% and 50% of the observed anomaly (16 s-1; Fig. 1a), respectively. With the improvement in the circumpolar wind anomalies, a deceleration of the polar night jet is observed in Figs. 10a2-e2, although the westerly fails to reverse to an easterly. Similarly, the predicted polar cap temperature anomalies also evolve in a more reasonable way if the system errors are corrected (refer to Figs. S1 and S3), compared with those in the one-member (Fig. 4) and the ensemble (Fig. S1) hindcasts.

5. Summary and discussion
  • This study explores the SSW prediction skill of BCC_CSM in reference to S2S hindcast results. Composite analysis of the evolution of the 11 SSW events during 1995-2014 shows that all the hindcasts initialized 0-4 weeks before SSW onset have certain prediction skill to forecast the circumpolar westerly and polar cap temperature during days 0-30 after SSW onset. From D-0 to D-28, as the hindcasts are initialized increasingly earlier, the prediction skill of SSW evolution slowly decreases for both BCC_CSM and ECMWF. In general, the evolution of the stratospheric polar night jet and polar cap temperature are relatively realistically predicted by BCC_CSM in the D-0 and D-7 hindcasts. ECMWF still has fairly high prediction skill in the D-14 hindcast, and it can reproduce more than 50% (-16 m s-1, 12 K) of the observed circumpolar easterly anomalies (-30 m s-1) and the polar cap temperature anomalies (16 K). For the D-21 and D-28 hindcasts, the circumpolar westerly (polar cap temperature) anomalies reproduced by ECMWF reduce to about -8 m s-1 (8 K), at 27% (50%) of those in the observations. In contrast, the reproduced anomalies in the D-28 hindcasts by BCC_CSM reduce to only 10% of that in the observations, although the signs of the easterly anomalies and the polar cap temperature anomalies are correctly forecast in the hindcasts within 2-4 weeks before SSW onset.

    The breakdown of the stratospheric cold polar vortex after SSW onset is predicted successfully in the D-0 and D-7 hindcasts by BCC_CSM and in the D-0, D-7, and D-14 hindcasts by ECMWF. If the initialization time is set any earlier than SSW onset, a cold bias in the Arctic stratosphere is observed in both hindcast systems. Further diagnosis of the prediction skill of the two hindcast systems in the northern winter stratosphere indicates that their prediction skills are both relatively higher during SSW winters than during non-SSW winters when the lead time is less than 18 (28) days for BCC_CSM (ECMWF). This can be attributed to the tropospheric precursors captured by the model initial conditions. Specifically, the negative WP teleconnection during day -25 to 2 is captured well by BCC_CSM (ECMWF) in the D-0 and D-7 (D-0, D-7 and D-14) hindcasts, which is related to an enhancement of the upward propagation of planetary waves in the hindcasts.

    To narrow the gap in SSW prediction between BCC_CSM and ECMWF, ensemble forecasts and error corrections are applied to BCC_CSM. Compared with the control forecasts, the prediction skill of SSW is indeed improved, with the predicted maximum wind (temperature) anomalies increasing from -4 m s-1 (4 K) by the one-member hindcast to -8 m s-1 (6 K) by the ensemble hindcasts and in the error corrections in D-21 and D-28.

  • Because the stratosphere has a longer "memory" than the troposphere, effort has been devoted to performing extended-range forecasts based on the long-lasting signals related to stratospheric variability. Such statistical models can successfully predict tropospheric cold-air outbreaks more than a week in advance if the preceding meridional mass circulation associated with the changes in the stratospheric polar vortex is correctly observed (Yu et al., 2015; Cai et al., 2016). To extend weather prediction to more than two weeks, additional work is still needed to construct a robust troposphere-stratosphere relationship at a longer lead time. BCC_CSM has reliable prediction skill for stratospheric extreme events when the lead time does not exceed two weeks. A combination of model predictions and a robust statistical relationship between the stratosphere and tropospheric cold-air outbreaks may further extend the effective time span of weather prediction on the S2S timescale.

    Error corrections performed on the control forecasts and ensemble forecasts can improve the SSW prediction skill, especially in experiments initiated more than two weeks in advance. However, improvement in the prediction skill from a one-member control forecast to multiple control and perturbed members is still fairly limited. The error correction method also has limited prediction skill, especially for hindcasts initiated more than two weeks before warming-event onset. The prediction skill in the stratosphere-resolving ECMWF model is relatively higher, indicating the vital importance of stratospheric processes in SSW forecasts. It is expected that the next version of BCC_CSM, which will have a higher horizontal resolution and higher model top that includes the mesosphere and will incorporate more complex physical parameterizations, will perform better in predicting SSW onset more than two weeks in advance. Because 11 models have participated in the S2S project, a comprehensive assessment and comparison is also required to explore the predictability in theory, and the maximum effective predictive time span in practice.

Reference

Catalog

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return