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Influence of the Arctic on the Predictability of Eurasian Winter Extreme Weather Events

Fund Project:

National Natural Science Foundation of China (Grant No. 41790475)


doi: 10.1007/s00376-019-9222-7

  • The linkage between the Arctic and midlatitudes has received much attention recently due to the rapidly changing climate. Many investigations have been conducted to reveal the relationship between the Arctic and Eurasian extreme events from the perspective of climatological statistics. As a prediction source for extreme events in Eurasia, Arctic conditions are crucial for extreme event predictions. Therefore, it is urgent to explore the Arctic influence on the predictability of Eurasian extreme events due to the large uncertainties in Arctic conditions. Considering the sensitivity and nonlinearity of the atmospheric circulations in midlatitude to Arctic conditions, it is necessary to investigate the Arctic influences on Eurasian extreme weather events in case studies at weather time scales. Previous studies indicate that only perturbations in specific patterns have fast growth. Thus, the conditional nonlinear optimal perturbation approach is recommended for exploring the uncertainties in Arctic initial and boundary conditions and their synergistic effect on Eurasian extreme events. Moreover, the mechanism for extreme event formation may differ in different cases. Therefore, more extreme cases should be investigated to reach robust conclusions.
    摘要: 近年来,随着气候的快速变化,北极与中纬度地区之间的联系得到了广泛的关注,许多研究从气候统计的角度研究了北极与欧亚极端事件的关系。作为欧亚极端天气事件预报的一个因子,北极的状态对极端事件的预报有着重要的影响。然而,观测资料的稀少导致北极状态存在着较大的不确定性,这也促使我们去研究北极状态的不确定性对欧亚极端事件可预报性的影响。鉴于中纬度大气环流对北极状态的敏感性和非线性,需要在天气时间尺度上进行个例分析,以研究北极对欧亚极端天气事件的影响。前人的工作表明,具有特定结构的扰动会快速地发展。因此,我们推荐使用条件非线性最优扰动方法来研究北极初始条件和边界条件的不确定性以及二者协同效应对欧亚极端事件的影响。另外,极端事件形成的机制在不同的个例间可能存在差异,为此,需要研究尽可能多的个例以获得可靠的结论。
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  • Figure 1.  Monthly mean SICs in December 2018 from the NSIDC (units: 1): (a) derived from the bootstrap algorithm (high accuracy but not in real time); (b) derived from the NASA team algorithm (low accuracy but in real time for operations); (c) difference between (a) and (b), i.e., (b) minus (a).

    Figure 2.  As in Fig. 1, but for the SICs on 1 December 2018.

    Figure 3.  (a) SITs on 1 December 2018 obtained from the SMOS satellite (units: m). (b) Corresponding SIT uncertainty (units: m), in which the dotted area indicates where the SIT uncertainty is larger than the SIT.

    Figure 4.  Monthly mean atmospheric ensemble spread in December 2018 from ERA5: (a) mean sea level pressure (units: Pa); (b) 2-m temperature (units: °C); (c, d) temperature uncertainties at 850 hPa and 200 hPa, respectively (units: °C); (e, f) geopotential uncertainties at 850 hPa and 200 hPa, respectively (units: m2 s−2).

  • Andersen, S., R. Tonboe, L. Kaleschke, G. Heygster, and L. T. Pedersen, 2007: Intercomparison of passive microwave sea ice concentration retrievals over the high-concentration Arctic sea ice. J. Geophys. Res., 112, C08004, https://doi.org/10.1029/2006JC003543.
    Argence, S., D. Lambert, E. Richard, J. P. Chaboureau, and N. Söhne, 2008: Impact of initial condition uncertainties on the predictability of heavy rainfall in the Mediterranean: A case study. Quart. J. Roy. Meteorol. Soc., 134(636), 1775−1788, https://doi.org/10.1002/qj.314.
    Barnes, E. A., 2013: Revisiting the evidence linking Arctic amplification to extreme weather in midlatitudes. Geophys. Res. Lett., 40(17), 4734−4739, https://doi.org/10.1002/grl.50880.
    Barthélemy A, Goosse H, Fichefet T, and O. Lecomte, 2018: On the sensitivity of Antarctic sea ice model biases to atmospheric forcing uncertainties. Climate Dyn., 51(4), 1585−1603, https://doi.org/10.1007/s00382-017-3972-7.
    Brunet, G., and Coauthors, 2010: Collaboration of the weather and climate communities to advance subseasonal-to-seasonal prediction. Bull. Amer. Meteorol. Soc., 91(10), 1397−1406, https://doi.org/10.1175/2010BAMS3013.1.
    Budikova, D., 2009: Role of Arctic sea ice in global atmospheric circulation: A review. Global and Planetary Change, 68(3), 149−163, https://doi.org/10.1016/j.gloplacha.2009.04.001.
    Buizza, R., and M. Leutbecher, 2015: The forecast skill horizon. Quart. J. Roy. Meteorol. Soc., 141(693), 3366−3382, https://doi.org/10.1002/qj.2619.
    Cavalieri, D. J., P. Gloersen, and W. J. Campbell, 1984: Determination of sea ice parameters with the NIMBUS 7 SMMR. J. Geophys. Res., 89, 5355−5369, https://doi.org/10.1029/JD089iD04p05355.
    Cheung, H. H. N., W. Zhou, M. Y. T. Leung, C. M. Shun, S. M. Lee, and H. W. Tong, 2016: A strong phase reversal of the Arctic Oscillation in midwinter 2015/2016: Role of the stratospheric polar vortex and tropospheric blocking. J. Geophys. Res., 121(22), 13,443−13:457, https://doi.org/10.1002/2016JD025288.
    Cohen, J., and Coauthors, 2014: Recent Arctic amplification and extreme mid-latitude weather. Nature Geoscience, 7(9), 627−637, https://doi.org/10.1038/ngeo2234.
    Comiso, J. C., 1986: Characteristics of Arctic winter sea ice from satellite multispectral microwave observations. J. Geophys. Res., 91, 975−994, https://doi.org/10.1029/JC091iC01p00975.
    Coumou, D., and S. Rahmstorf, 2012: A decade of weather extremes. Nat. Clim. Change, 2(7), 491−496, https://doi.org/10.1038/nclimate1452.
    Dai, G. K., M. Mu, and Z. N. Jiang, 2016: Relationships between optimal precursors triggering NAO onset and optimally growing initial errors during NAO prediction. J. Atmos. Sci., 73(1), 293−317, https://doi.org/10.1175/JAS-D-15-0109.1.
    Day, J. J., I. Sandu, L. Magnusson, M. J. Rodwell, H. Lawrence, N. Bormann, and T. Jung, 2019: Increased Arctic influence on the midlatitude flow during Scandinavian Blocking episodes. Quart. J. Roy. Meteorol. Soc., 145, 3846−3862, https://doi.org/10.1002/qj.3673.
    Deser, C., R. A. Tomas, and S. L. Peng, 2007: The transient atmospheric circulation response to North Atlantic SST and Sea Ice Anomalies. J. Climate, 20(18), 4751−4767, https://doi.org/10.1175/JCLI4278.1.
    Duan, W. S., and F. F. Zhou, 2013: Non-linear forcing singular vector of a two-dimensional quasi-geostrophic model. Tellus A: Dynamic Meteorology and Oceanography, 65, 18452, https://doi.org/10.3402/tellusa.v65i0.18452.
    Francis, J. A., and S. J. Vavrus, 2012: Evidence linking Arctic amplification to extreme weather in mid-latitudes. Geophys. Res. Lett., 39, L06801, https://doi.org/10.1029/2012GL051000.
    Gao, Y., and Coauthors, 2015: Arctic sea ice and Eurasian climate: A review. Adv. Atmos. Sci., 32(1), 92−114, https://doi.org/10.1007/s00376-014-0009-6.
    Guan, H., Y. J. Zhu, E. Sinsky, W. Li, X. Q. Zhou, D. C. Hou, C. Melhauser, and R. Wobus, 2019: Systematic Error Analysis and Calibration of 2-m Temperature for the NCEP GEFS Reforecast of the Subseasonal Experiment (SubX) Project. Wea. Forecasting, 34(2), 361−376, https://doi.org/10.1175/WAF-D-18-0100.1.
    Hersbach, H., and Coauthors, 2018: Operational global reanalysis: Progress, future directions and synergies with NWP. ERA Report Series 27.
    Inoue, J., A. Yamazaki, J. Ono, K. Dethloff, M. Maturilli, R. Neuber, P. Edwards, and H. Yamaguchi, 2015: Additional Arctic observations improve weather and sea-ice forecasts for the Northern Sea Route. Scientific Reports, 5, 16868, https://doi.org/10.1038/srep16868.
    Inoue, J., E. H. Masatake, T. Enomoto, and T. Kikuchi, 2011: Intercomparison of surface heat transfer near the arctic marginal ice zone for multiple reanalyses: A case study of September 2009. SOLA, 7, 57−60, https://doi.org/10.2151/sola.2011-015.
    Inoue, J., M. E. Hori, and K. Takaya, 2012: The role of Barents Sea ice in the wintertime cyclone track and emergence of a warm-Arctic cold-Siberian anomaly. J. Climate, 25(7), 2561−2568, https://doi.org/10.1175/JCLI-D-11-00449.1.
    Inoue, J., T. Enomoto, T. Miyoshi, and S. Yamane, 2009: Impact of observations from Arctic drifting buoys on the reanalysis of surface fields. Geophys. Res. Lett., 36, L08501, https://doi.org/10.1029/2009GL037380.
    Jaiser, R., K. Dethloff, D. Handorf, A. Rinke and J. Cohen, 2012: Impact of sea ice cover changes on the Northern Hemisphere atmospheric winter circulation. Tellus A: Dynamic Meteorology and Oceanography, 64(1), 11595, https://doi.org/10.3402/tellusa.v64i0.11595.
    Jaiser, R., K. Dethloff, and D. Handorf, 2013: Stratospheric response to Arctic sea ice retreat and associated planetary wave propagation changes. Tellus A: Dynamic Meteorology and Oceanography, 65(1), 19375, https://doi.org/10.3402/tellusa.v65i0.19375.
    Jiang, Z. N., M. Mu, and D. H. Luo, 2013: A study of the North Atlantic oscillation using conditional nonlinear optimal perturbation. J. Atmos. Sci., 70(3), 855−875, https://doi.org/10.1175/JAS-D-12-0148.1.
    Jung, T., M. A. Kasper, T. Semmler, and S. Serrar, 2014: Arctic influence on subseasonal midlatitude prediction. Geophys. Res. Lett., 41, 3676−3680, https://doi.org/10.1002/2014GL059961.
    Kaleschke, L., X. Tian-Kunze, N. Maaß, M. Mäkynen, and M. Drusch, 2012: Sea ice thickness retrieval from SMOS brightness temperatures during the Arctic freeze-up period. Geophys. Res. Lett., 39, L05501, https://doi.org/10.1029/2012GL050916.
    Kaleschke, L., X. Tian-Kunze, N. Maaß, R. Ricker, S. Hendricks, M. Drusch, 2015: Improved retrieval of sea ice thickness from SMOS and CryoSat-2. IEEE International Geoscience and Remote Sensing Symposium, IEEE, 5232−5235, https://doi.org/10.1109/IGARSS.2015.7327014.
    Kattsov, V. M., V. E. Ryabinin, J. E. Overland, M. C. Serreze, M. Visbeck, J. E. Walsh, W. Meier, and X. D. Zhang, 2010: Arctic sea-ice change: A grand challenge of climate science. J. Glaciol., 56, 1115−1121, https://doi.org/10.3189/002214311796406176.
    Kennedy, J., and R. Eberhart, 1995: Particle swarm optimization. Proc. IEEE International Conference on Neural Networks, Perth, Australia, IEEE, 1942−1948, https://doi.org/10.1109/ICNN.1995.488968.
    Krinner, G., A. Rinke, K. Dethloff, and I. V. Gorodetskaya, 2010: Impact of prescribed Arctic sea ice thickness in simulations of the present and future climate. Climate Dyn., 35(4), 619−633, https://doi.org/10.1007/s00382-009-0587-7.
    Kwok, R., and D. A. Rothrock, 2009: Decline in Arctic sea ice thickness from submarine and ICESat records: 1958-2008. Geophys. Res. Lett., 36(15), L15501, https://doi.org/10.1029/2009GL039035.
    Labe, Z., G. Magnusdottir, and H. Stern, 2018: Variability of Arctic sea ice thickness using PIOMAS and the CESM Large Ensemble. J. Climate, 31(8), 3233−3247, https://doi.org/10.1175/JCLI-D-17-0436.1.
    Lee, S., T. T. Gong, N. Johnson, S. B. Feldstein, and D. Pollard, 2011: On the possible link between tropical convection and the Northern Hemisphere Arctic surface air temperature change between 1958 and 2001. J. Climate, 24, 4350−4367, https://doi.org/10.1175/2011JCLI4003.1.
    Li, Q. P., S. Yang, T. W. Wu, and X. W. Liu, 2017: Subseasonal dynamical prediction of East Asian cold surges. Wea. Forecasting, 32(4), 1675−1694, https://doi.org/10.1175/WAF-D-16-0209.1.
    Lin, H., and Z. W. Wu, 2012: Contribution of Tibetan Plateau snow cover to the extreme winter conditions of 2009/10. Atmosphere-Ocean, 50(1), 86−94, https://doi.org/10.1080/07055900.2011.649036.
    Lindsay, R., and A. Schweiger, 2015: Arctic sea ice thickness loss determined using subsurface, aircraft, and satellite observations. The Cryosphere, 9(1), 269−283, https://doi.org/10.5194/tc-9-269-2015.
    Ling, T. J., M. Xu, X. Z. Liang, J. X. L. Wang, and Y. Noh, 2015: A multilevel ocean mixed layer model resolving the diurnal cycle: Development and validation. Journal of Advances in Modeling Earth Systems, 7, 1680−1692, https://doi.org/10.1002/2015MS000476.
    Liu, J. P., J. A. Curry, H. Wang, M. R. Song, and R. M. Horton, 2012: Impact of declining Arctic sea ice on winter snowfall. Proceedings of the National Academy of Sciences of the United States of America, 109(11), 4074−4079, https://doi.org/10.1073/pnas.1114910109.
    Liu, X., and Coauthors, 2016: MJO prediction using the sub-seasonal to seasonal forecast model of Beijing Climate Center. Climate Dyn., 48(9-10), 3283−3307, https://doi.org/10.1007/s00382-016-3264-7.
    Lorenz, E. N., 1963: Deterministic nonperiodic flow. J. Atmos. Sci., 20(2), 130−141, https://doi.org/10.1175/1520-0469(1963)020<0130:DNF>2.0.CO;2.
    Lorenz, E. N., 1965: A study of the predictability of a 28-variable atmospheric model. Tellus, 17, 321−333, https://doi.org/10.1111/j.2153-3490.1965.tb01424.x.
    Lorenz, E. N., 1969: The predictability of a flow which possesses many scales of motion. Tellus, 21(3), 289−307, https://doi.org/10.1111/j.2153-3490.1969.tb00444.x.
    Lorenz, E. N., 1982: Atmospheric predictability experiments with a large numerical model. Tellus, 34(6), 505−513, https://doi.org/10.1111/j.2153-3490.1982.tb01839.x.
    Luo, D. H., Y. Yao, and S. B. Feldstein, 2014: Regime transition of the North Atlantic oscillation and the extreme cold event over Europe in January-February 2012. Mon. Wea. Rev., 142(12), 4735−4757, https://doi.org/10.1175/MWR-D-13-00234.1.
    Luo, D. H., Y. Yao, and A. G. Dai, 2015: Decadal relationship between European blocking and the North Atlantic oscillation during 1978−2011. Part I: Atlantic conditions. J. Atmos. Sci., 72(3), 1152−1173, https://doi.org/10.1175/JAS-D-14-0039.1.
    Luo, D. H., Y. Q. Xiao, Y. Yao, A. G. Dai, I. Simmonds, and C. L. E. Franzke, 2016: Impact of Ural blocking on winter warm Arctic-cold Eurasian anomalies. Part I: Blocking-induced amplification. J. Climate, 29, 3925−3947, https://doi.org/10.1175/JCLI-D-15-0611.1.
    Matsumura, S., and Y. Kosaka, 2019: Arctic-Eurasian climate linkage induced by tropical ocean variability. Nature Communications, 10(1), 3441, https://doi.org/10.1038/s41467-019-11359-7.
    Mori, M., M. Watanabe, H. Shiogama, J. Inoue, and M. Kimoto, 2014: Robust Arctic sea-ice influence on the frequent Eurasian cold winters in past decades. Nature Geoscience, 7(12), 869−873, https://doi.org/10.1038/ngeo2277.
    Mu, M., 2013: Methods, current status, and prospect of targeted observation. Science China Earth Sciences, 56, 1997−2005, https://doi.org/10.1007/s11430-013-4727-x.
    Mu, M., and Z. N. Jiang, 2008: A method to find perturbations that trigger blocking onset: Conditional nonlinear optimal perturbations. J. Atmos. Sci., 65(12), 3935−3946, https://doi.org/10.1175/2008JAS2621.1.
    Mu, M., W. S. Duan, and B. Wang, 2003: Conditional nonlinear optimal perturbation and its applications. Nonlinear Processes in Geophysics, 10, 493−501, https://doi.org/10.5194/npg-10-493-2003.
    Mu, M., W. S. Duan, Q. Wang, and R. Zhang, 2010: An extension of conditional nonlinear optimal perturbation approach and its applications. Nonlinear Processes in Geophysics, 17, 211−220, https://doi.org/10.5194/npg-17-211-2010.
    Overland, J. E., K. R. Wood, and M. Y. Wang, 2011: Warm Arctic—cold continents: Climate impacts of the newly open Arctic Sea. Polar Research, 30(1), 15787, https://doi.org/10.3402/polar.v30i0.15787.
    Pedersen, R. A., I. Cvijanovic, P. L. Langen, and B. M. Vinther, 2016: The impact of regional Arctic sea ice loss on atmospheric circulation and the NAO. J. Climate, 29(2), 889−902, https://doi.org/10.1175/JCLI-D-15-0315.1.
    Petoukhov, V., S. Rahmstorf, S. Petri, and H. J. Schellnhuber, 2013: Quasiresonant amplification of planetary waves and recent Northern Hemisphere weather extremes. Proceedings of the National Academy of Sciences of the United States of America, 110(14), 5336−5341, https://doi.org/10.1073/pnas.1222000110.
    Ricker, R., S. Hendricks, L. Kaleschke, X. Tian-Kunze, J. King, and C. Haas, 2017: A weekly Arctic sea-ice thickness data record from merged CryoSat-2 and SMOS satellite data. The Cryosphere, 11(4), 1607−1623, https://doi.org/10.5194/tc-11-1607-2017.
    Rinke, A., W. Maslowski, K. Dethloff, and J. Clement, 2006: Influence of sea ice on the atmosphere: A study with an Arctic atmospheric regional climate model. J. Geophys. Res., 111(D16), https://doi.org/10.1029/2005JD006957.
    Sato, K., J. Inoue, and M. Watanabe, 2014: Influence of the Gulf Stream on the Barents Sea ice retreat and Eurasian coldness during early winter. Environmental Research Letters, 9, 084009, https://doi.org/10.1088/1748-9326/9/8/084009.
    Sato, K., J. Inoue, A. Yamazaki, J. H. Kim, M. Maturilli, K. Dethloff, S. R. Hudson, and M. A. Granskog, 2017: Improved forecasts of winter weather extremes over midlatitudes with extra Arctic observations. J. Geophys. Res., 122, 775−787, https://doi.org/10.1002/2016JC012197.
    Screen, J. A., and I. Simmonds, 2011: Erroneous Arctic temperature trends in the ERA-40 reanalysis: A closer look. J. Climate, 24(10), 2620−2627, https://doi.org/10.1175/2010JCLI4054.1.
    Screen, J. A., and I. Simmonds, 2014: Amplified mid-latitude planetary waves favour particular regional weather extremes. Nat. Clim. Change, 4(8), 704−709, https://doi.org/10.1038/nclimate2271.
    Semmler, T., T. Jung, and S. Serrar, 2016: Fast atmospheric response to a sudden thinning of Arctic sea ice. Climate Dyn., 46(3−4), 1015−1025, https://doi.org/10.1007/s00382-015-2629-7.
    Semmler, T., T. Jung, M. A. Kasper, and S. Serrar, 2018: Using NWP to assess the influence of the Arctic atmosphere on midlatitude weather and climate. Adv. Atmos. Sci., 34(12), 5−13, https://doi.org/10.1007/s00376-017-6290-4.
    Shepherd, T. G., 2016: Effects of a warming Arctic. Science, 353(6303), 989−990, https://doi.org/10.1126/science.aag2349.
    Simmons, A. J., and A. Hollingsworth, 2002: Some aspects of the improvement in skill of numerical weather prediction. Quart. J. Roy. Meteorol. Soc., 128, 647−677, https://doi.org/10.1256/003590002321042135.
    Storn, R., and K. Price, 1997: Differential evolution−A simple and efficient heuristic for global optimization over continuous spaces. Journal of Global Optimization, 11, 341−359, https://doi.org/10.1023/A:1008202821328.
    Stroeve, J. C., M. C. Serreze, M. M. Holland, J. E. Kay, J. Malanik, and A. P. Barrett, 2012: The Arctic's rapidly shrinking sea ice cover: A research synthesis. Climatic Change, 110(3−4), 1005−1027, https://doi.org/10.1007/s10584-011-0101-1.
    Sun, L. T., D. Allured, M. Hoerling, L. Smith, J. Perlwitz, D. Murray, and J. Eischeid, 2018: Drivers of 2016 record Arctic warmth assessed using climate simulations subjected to Factual and Counterfactual forcing. Weather and Climate Extremes, 19, 1−9, https://doi.org/10.1016/j.wace.2017.11.001.
    Takaya, Y., F. Vitart, G. Balsamo, M. Balmaseda, M. Leutbecher, and F. Molteni, 2010: Implementation of an ocean mixed layer model in IFS. Proc. ECMWF Technical Memorandum No. 622.
    Tao, S. Y., and J. Wei, 2008: Severe snow and freezing-rain in January 2008 in the southern China. Climatic and Environmental Research, 13, 337−350, https://doi.org/10.3878/j.issn.1006-9585.2008.04.01. (in Chinese)
    Vihma, T., 2014: Effects of arctic sea ice decline on weather and climate: A review. Surveys in Geophysics, 35(5), 1175−1214, https://doi.org/10.1007/s10712-014-9284-0.
    Wang, M. Y., and J. E. Overland, 2009: A sea ice free summer Arctic within 30 years? Geophys. Res. Lett., 36(7), L07502, https://doi.org/10.1029/2009GL037820.
    Wang, Q., and M. Mu, 2015: A new application of conditional nonlinear optimal perturbation approach to boundary condition uncertainty. J. Geophys. Res., 120, 7979−7996, https://doi.org/10.1002/2015JC011095.
    Wang, Q., M. Mu, and G. D. Sun, 2019: A useful approach to sensitivity and predictability studies in geophysical fluid dynamics: Conditional non-linear optimal perturbation. National Science Review, 2019, https://doi.org/10.1093/nsr/nwz039.
    Wu, A. M., W. W. Hsieh, G. J. Boer, and F. W. Zwiers, 2007: Changes in the Arctic Oscillation under increased atmospheric greenhouse gases. Geophys. Res. Lett., 34(12), L12701, https://doi.org/10.1029/2007GL029344.
    Wu, B. Y., K. Yang and J. A. Francis, 2017: A cold event in Asia during January-February 2012 and its possible association with Arctic Sea Ice Loss. J. Climate, 30(19), 7971−7990, https://doi.org/10.1175/JCLI-D-16-0115.1.
    Xie, J. B., M. H. Zhang and H. L. Liu, 2019: Role of Arctic Sea Ice in the 2014-2015 Eurasian warm winter. Geophys. Res. Lett., 46(1), 337−345, https://doi.org/10.1029/2018GL080793.
    Yao, Y., and D. H. Luo, 2015: Do European blocking events precede North Atlantic Oscillation events? Adv. Atmos. Sci., 32(8), 1106−1118, https://doi.org/10.1007/s00376-015-4209-5.
    Yao, Y., D. H. Luo, A. G. Dai, and I. Simmonds, 2017: Increased quasi stationarity and persistence of winter Ural blocking and Eurasian extreme cold events in response to arctic warming. Part I: Insights from observational analyses. J. Climate, 30(10), 3549−3568, https://doi.org/10.1175/JCLI-D-16-0261.1.
    Ye, K. H., T. Jung, and T. Semmler, 2018: The influences of the Arctic troposphere on the midlatitude climate variability and the recent Eurasian cooling. J. Geophys. Res., 123, 10 162−10 184, https://doi.org/10.1029/2018JD028980.
    Zhang, J. L., and D. A. Rothrock., 2003: Modeling global sea ice with a thickness and enthalpy distribution model in generalized curvilinear coordinates. Mon. Wea. Rev., 131(11), 845−861, https://doi.org/10.1175/1520-0493(2003)131<0845:MGSIWA>2.0.CO;2.
    Zhou, W., J. C. L. Chan, W. Chen, J. Ling, J. G. Pinto, and Y. P. Shao, 2009: Synoptic-scale controls of persistent low temperature and icy weather over southern China in January 2008. Mon. Wea. Rev., 137(11), 3978−3991, https://doi.org/10.1175/2009MWR2952.1.
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    [2] QU Yu, AN Junling, LI Jian, CHEN Yong, LI Ying, LIU Xingang, and HU Min, 2014: Effects of NOx and VOCs from Five Emission Sources on Summer Surface O3 over the Beijing-Tianjin-Hebei Region, ADVANCES IN ATMOSPHERIC SCIENCES, 31, 787-800.  doi: 10.1007/s00376-013-3132-x
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    [4] Jianping LI, Fei ZHENG, Cheng SUN, Juan FENG, Jing WANG, 2019: Pathways of Influence of the Northern Hemisphere Mid-high Latitudes on East Asian Climate: A Review, ADVANCES IN ATMOSPHERIC SCIENCES, 36, 902-921.  doi: 10.1007/s00376-019-8236-5
    [5] FANG Changluan, ZHENG Qin, WU Wenhua, DAI Yi, 2009: Intelligent Optimization Algorithms to VDA of Models with on/off Parameterizations, ADVANCES IN ATMOSPHERIC SCIENCES, 26, 1181-1197.  doi: 10.1007/s00376-009-8084-9
    [6] Hoffman H. N. CHEUNG, Noel KEENLYSIDE, Nour-Eddine OMRANI, Wen ZHOU, 2018: Remarkable Link between Projected Uncertainties of Arctic Sea-Ice Decline and Winter Eurasian Climate, ADVANCES IN ATMOSPHERIC SCIENCES, 35, 38-51.  doi: 10.1007/s00376-017-7156-5
    [7] Yun QIAN, TC CHAKRABORTY, Jianfeng LI, Dan LI, Cenlin HE, Chandan SARANGI, Fei CHEN, Xuchao YANG, L. Ruby LEUNG, 2022: Urbanization Impact on Regional Climate and Extreme Weather: Current Understanding, Uncertainties, and Future Research Directions, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 819-860.  doi: 10.1007/s00376-021-1371-9
    [8] Yun QIAN, TC CHAKRABORTY, Jianfeng LI, Dan LI, Cenlin HE, Chandan SARANGI, Fei CHEN, Xuchao YANG, L. Ruby LEUNG, 2023: Correction to: Urbanization Impact on Regional Climate and Extreme Weather: Current Understanding, Uncertainties, and Future Research Directions, ADVANCES IN ATMOSPHERIC SCIENCES, 40, 333-333.  doi: 10.1007/s00376-022-2007-4
    [9] Xiangdong ZHANG, Thomas JUNG, Muyin WANG, Yong LUO, Tido SEMMLER, Andrew ORR, 2018: Preface to the Special Issue: Towards Improving Understanding and Prediction of Arctic Change and Its Linkage with Eurasian Mid-latitude Weather and Climate, ADVANCES IN ATMOSPHERIC SCIENCES, 35, 1-4.  doi: 10.1007/s00376-017-7004-7
    [10] Wu Jindong, Wang Shili, 2001: Incorporating Stochastic Weather Generators into Studies on Climate Impacts: Methods and Uncertainties, ADVANCES IN ATMOSPHERIC SCIENCES, 18, 937-949.
    [11] GAO Yongqi, SUN Jianqi, LI Fei, HE Shengping, Stein SANDVEN, YAN Qing, ZHANG Zhongshi, Katja LOHMANN, Noel KEENLYSIDE, Tore FUREVIK, SUO Lingling, 2015: Arctic Sea Ice and Eurasian Climate: A Review, ADVANCES IN ATMOSPHERIC SCIENCES, 32, 92-114.  doi: 10.1007/s00376-014-0009-6
    [12] Guanshun ZHANG, Jiangyu MAO, Wei HUA, Xiaofei WU, Ruizao SUN, Ziyu YAN, Yimin LIU, Guoxiong WU, 2023: Synergistic Effect of the Planetary-scale Disturbance, Typhoon and Meso-β-scale Convective Vortex on the Extremely Intense Rainstorm on 20 July 2021 in Zhengzhou, ADVANCES IN ATMOSPHERIC SCIENCES, 40, 428-446.  doi: 10.1007/s00376-022-2189-9
    [13] Fei ZHENG, Ji-Ping LIU, Xiang-Hui FANG, Mi-Rong SONG, Chao-Yuan YANG, Yuan YUAN, Ke-Xin LI, Ji WANG, Jiang ZHU, 2022: The Predictability of Ocean Environments that Contributed to the 2020/21 Extreme Cold Events in China: 2020/21 La Niña and 2020 Arctic Sea Ice Loss, ADVANCES IN ATMOSPHERIC SCIENCES, 39, 658-672.  doi: 10.1007/s00376-021-1130-y
    [14] DUAN Wansuo, LUO Haiying, 2010: A New Strategy for Solving a Class of Constrained Nonlinear Optimization Problems Related to Weather and Climate Predictability, ADVANCES IN ATMOSPHERIC SCIENCES, 27, 741-749.  doi: 10.1007/s00376-009-9141-0
    [15] Kazutoshi SATO, Jun INOUE, Akira YAMAZAKI, Naohiko HIRASAWA, Konosuke SUGIURA, Kyohei YAMADA, 2020: Antarctic Radiosonde Observations Reduce Uncertainties and Errors in Reanalyses and Forecasts over the Southern Ocean: An Extreme Cyclone Case, ADVANCES IN ATMOSPHERIC SCIENCES, 37, 431-440.  doi: 10.1007/s00376-019-8231-x
    [16] Wang Yunfeng, Wu Rongsheng, Wang Yuan, Pan Yinong, 1999: Application of Variational Algorithms in Semi-Lagrangian Framework, ADVANCES IN ATMOSPHERIC SCIENCES, 16, 419-430.  doi: 10.1007/s00376-999-0020-5
    [17] Tido SEMMLER, Thomas JUNG, Marta A. KASPER, Soumia SERRAR, 2018: Using NWP to Assess the Influence of the Arctic Atmosphere on Midlatitude Weather and Climate, ADVANCES IN ATMOSPHERIC SCIENCES, 35, 5-13.  doi: 10.1007/s00376-017-6290-4
    [18] Ni Yunqi, Zhang Qin, Li Yuedong, 1991: A Numerical Study of the Mechanism for the Effect of Northern Winter Arctic Ice Cover on the Global Short-Range Climate Evolution, ADVANCES IN ATMOSPHERIC SCIENCES, 8, 489-498.  doi: 10.1007/BF02919271
    [19] Yanting LIU, Yang ZHANG, Sen GU, Xiu-Qun YANG, Lujun ZHANG, 2023: A Cross-Seasonal Linkage between Arctic Sea Ice and Eurasian Summertime Temperature Fluctuations, ADVANCES IN ATMOSPHERIC SCIENCES, 40, 2195-2210.  doi: 10.1007/s00376-023-2313-5
    [20] Qian YANG, Shichang KANG, Haipeng YU, Yaoxian YANG, 2023: Impact of the Shrinkage of Arctic Sea Ice on Eurasian Snow Cover Changes in 1979–2021, ADVANCES IN ATMOSPHERIC SCIENCES, 40, 2183-2194.  doi: 10.1007/s00376-023-2272-x

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Manuscript received: 12 October 2019
Manuscript revised: 19 December 2019
Manuscript accepted: 26 December 2019
通讯作者: 陈斌, bchen63@163.com
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Influence of the Arctic on the Predictability of Eurasian Winter Extreme Weather Events

    Corresponding author: Mu MU, mumu@fudan.edu.cn
  • Department of Atmospheric and Oceanic Sciences and Institute of Atmospheric Sciences, Fudan University, Shanghai 200438, China

Abstract: The linkage between the Arctic and midlatitudes has received much attention recently due to the rapidly changing climate. Many investigations have been conducted to reveal the relationship between the Arctic and Eurasian extreme events from the perspective of climatological statistics. As a prediction source for extreme events in Eurasia, Arctic conditions are crucial for extreme event predictions. Therefore, it is urgent to explore the Arctic influence on the predictability of Eurasian extreme events due to the large uncertainties in Arctic conditions. Considering the sensitivity and nonlinearity of the atmospheric circulations in midlatitude to Arctic conditions, it is necessary to investigate the Arctic influences on Eurasian extreme weather events in case studies at weather time scales. Previous studies indicate that only perturbations in specific patterns have fast growth. Thus, the conditional nonlinear optimal perturbation approach is recommended for exploring the uncertainties in Arctic initial and boundary conditions and their synergistic effect on Eurasian extreme events. Moreover, the mechanism for extreme event formation may differ in different cases. Therefore, more extreme cases should be investigated to reach robust conclusions.

摘要: 近年来,随着气候的快速变化,北极与中纬度地区之间的联系得到了广泛的关注,许多研究从气候统计的角度研究了北极与欧亚极端事件的关系。作为欧亚极端天气事件预报的一个因子,北极的状态对极端事件的预报有着重要的影响。然而,观测资料的稀少导致北极状态存在着较大的不确定性,这也促使我们去研究北极状态的不确定性对欧亚极端事件可预报性的影响。鉴于中纬度大气环流对北极状态的敏感性和非线性,需要在天气时间尺度上进行个例分析,以研究北极对欧亚极端天气事件的影响。前人的工作表明,具有特定结构的扰动会快速地发展。因此,我们推荐使用条件非线性最优扰动方法来研究北极初始条件和边界条件的不确定性以及二者协同效应对欧亚极端事件的影响。另外,极端事件形成的机制在不同的个例间可能存在差异,为此,需要研究尽可能多的个例以获得可靠的结论。

1.   Introduction
  • Predictability is a basic problem for numerical weather and climate prediction (Lorenz, 1963; Mu, 2013; Buizza and Leutbecher, 2015). The variability of Eurasian temperatures and the number of extreme cold events are increasing under the current climate situation (Shepherd, 2016). It is urgent to investigate the predictability of extreme weather and climate events and improve their forecast skill to reduce the impact and losses caused by these extreme events.

  • The study of atmospheric predictability can be traced back to Lorenz (1963). Utilizing a three-variable ordinary differential equation, he found that the solutions are unstable and nonperiodic. After that, he studied the growth rate of the small initial errors and found that the error growth is strongly dependent on the background circulation patterns and varies from a few days to a few weeks (Lorenz, 1965). Later, he investigated the predictability of a flow containing different scales of motion by utilizing a two-dimensional barotropic vorticity equation and estimated that the atmospheric predictability was 16.8 days (Lorenz, 1969). His results also suggested that motions in small (large) scales have shorter (longer) saturation times.

    In addition to the simple atmospheric circulation model, Lorenz (1982) investigated predictability with the European Centre for Medium-Range Weather Forecasts (ECMWF) operational products from 1 December 1980 to 10 March 1981. He suggested that forecasts of instantaneous weather patterns nearly two weeks in advance appeared to be possible. Moreover, Simmons and Hollingsworth (2002) discussed the forecast skill of the ECMWF operational forecasts with its products from 1980 to 2001. Their results showed that forecasts still had the ability to be predicted in the three-week range, and these benefits mainly came from improvements in data assimilation, modeling and observing systems. With the reforecasts from July 2012 to July 2013, Buizza and Leutbecher (2015) found that the predictability of instantaneous grid points is approximately 17.0 days for the Northern Hemisphere and 21.5 days for the Southern Hemisphere. Furthermore, a considerably longer effective forecast time could be achieved with temporal and spatial filtering, which implies that the forecast time for different phenomena may differ.

    The predictability sources for atmospheric motions come not only from the atmosphere itself, but also land, ocean and sea-ice conditions. For short-range forecasts, the atmospheric initial conditions and model parameterizations dominate the result. As the forecast lead time increases, external forcings such as land, ocean and sea ice have non-negligible impacts on the predictions (Liu et al., 2016). This is primarily related to the external thermodynamic processes and the external dynamic processes, which play secondary roles (Takaya et al., 2010; Ling et al., 2015). Thus, both the initial and boundary conditions are of importance for extended-range forecasts, particularly for high-impact weather events (Brunet et al., 2010).

    In addition to the forecasting of general circulation patterns, forecasts of 2-m temperature are also important for midlatitude regions. Numerical results show that the 2-m temperature errors over the Northern Hemisphere start to saturate after two weeks during boreal winter. However, some forecast skill remains in weeks three and four after calibration (Guan et al., 2019). Moreover, Li et al. (2017) noted that numerical models can capture the features of cold surges, such as the frequency, intensity and location, with a lead time of about two weeks. Therefore, it is necessary to rethink the prediction limit of two weeks in numerical weather prediction.

  • Due to rapid Arctic sea-ice loss and Arctic surface temperature warming, the linkage between the Arctic and the midlatitudes has received much attention in recent years (Budikova, 2009; Vihma, 2014; Gao et al., 2015). In conjunction with Arctic changes, Eurasia has experienced many extreme cold weather events over the past few decades, exhibiting extremely cold winters (Coumou and Rahmstorf, 2012; Cohen et al., 2014; Mori et al., 2014). The coincidence between Arctic changes and increased Eurasian extreme event occurrence has inspired many discussions on the possible linkage (Stroeve et al., 2012; Wang and Overland, 2009). It is probable that meridional temperature gradients have decreased due to Arctic warming, and have thereby weakened zonal winds. This change further leads to a wavier jet stream and slower-moving synoptic systems, which favors the occurrence of extreme events (Francis and Vavrus, 2012; Petoukhov et al., 2013; Screen and Simmonds, 2014).

    However, the linkage between the Arctic and midlatitudes is also modulated by the tropical oceans. Lee et al. (2011) noted that the Arctic surface air temperature is influenced by tropical convection, which further regulates midlatitude atmospheric circulations. Moreover, the Gulf Stream can affect ice in the Barents Sea, thus modulating the temperature in Eurasia (Sato et al., 2014). Matsumura and Kosaka (2019) showed that frequent Eurasian cold winters can be attributed not only to Arctic sea-ice loss, but also tropical Pacific cooling. Their results suggest that the Arctic and Eurasian climate anomalies are roughly in opposite phase at the surface during recent El Niño and La Niña-decay years.

    Along with the retreat in the sea-ice extent, the sea-ice thickness (SIT) has also become thinner (Kwok and Rothrock, 2009). Both reconstructed observations (Lindsay and Schweiger, 2015) and reanalysis data (Zhang and Rothrock, 2003) have shown a great SIT reduction in the Arctic since 1979. There are much stronger upward heat fluxes and warmer temperatures with a thinner Arctic SIT, which further induce a significant negative sea level pressure in Eurasia and a negative North Atlantic Oscillation (NAO) response at 500 hPa (Rinke et al., 2006; Krinner et al., 2010; Sun et al., 2018). Further investigation revealed that warming from SIT loss is as large as one-third of the response from the sea-ice concentration (SIC) loss (Labe et al., 2018).

    In addition to the linkage from the perspective of climatology, weather in the midlatitudes could be affected by the Arctic within two weeks. Relaxation experiments with the Integrated Forecasting System (IFS) from the ECMWF have been conducted to explore the influence of the Arctic on midlatitude weather prediction (Jung et al., 2014). They found that improved Arctic forecasts during wintertime have a positive influence on the accuracy of both medium- and extended-range predictions of the midlatitude geopotential height at 500 hPa in the Northern Hemisphere. This linkage between the Arctic and midlatitudes is also flow dependent, in which anomalous northerly winds lead to a stronger Arctic influence. The linkage in boreal winter is stronger than that in summer, which highlights the potential midlatitude forecast benefits from improved Arctic conditions in winter (Semmler et al., 2018). Specifically, the linkage between the Arctic and North Asia is strong during Scandinavian blocking episodes (Day et al., 2019). Moreover, the interannual variability of the Eurasian atmospheric circulation and temperature can be impacted by the Arctic troposphere via modifying large-scale atmospheric circulations, heat transport over the continent, and synoptic variations. Specifically, the Siberian high plays an important role in the linkage between the Arctic troposphere and variability in East Asia (Ye et al., 2018).

    In addition to the role of the Arctic atmosphere, boundary conditions in the Arctic also play important roles in midlatitude atmospheric circulation evolution. Numerical results show that atmospheric circulation could respond to sea surface temperature and SIC variations within several days (Deser et al., 2007). Utilizing the IFS numerical model, Semmler et al. (2016) investigated the fast atmospheric response to sudden Arctic sea-ice thinning by introducing a 10-K sea-ice surface temperature warming. They found that the boundary layer turbulence is the most significant process that distributes anomalous vertical heat and that the quasi-equilibrium response is two months. Their work indicates that atmospheric circulation forecasts are affected by Arctic boundary conditions, especially for forecasts longer than 10 days.

  • Extreme weather events are usually associated with anomalous atmospheric circulation patterns such as blockings and the NAO. Due to the connection between the Arctic and midlatitudes, blocking can guide cold air from polar regions to the mid−low latitudes. For instance, the long persistent Ural blocking was the key process for severe snow and freezing rain in southern China during January 2008 (Tao and Wei, 2008; Zhou et al., 2009), and Asian blocking was an important factor for severe cold surges in eastern China during January 2016 (Cheung et al., 2016). In addition to blocking, the NAO can also trigger extreme cold events. For example, the extreme cold event in Europe during the winter of 2011/12, which was mainly caused by an atmospheric circulation transformation from positive NAO to eastern negative NAO (Luo et al., 2014), and the blizzard in the Middle East in December 2013, which was due to the atmospheric circulation associated with a positive NAO decay phase (Luo et al., 2015). Moreover, a blocking formation is usually associated with the positive NAO decay stage because energy disperses from the North Atlantic sectors to downstream areas (Yao and Luo, 2015). Numerical results indicate that the poor forecast skill of extreme events can be attributed to the difficulty in blocking and NAO event prediction (Lin and Wu, 2012).

    Previous studies have noted that the frequency of blocking in the midlatitudes is closely related to Arctic sea-ice loss (Liu et al., 2012; Barnes, 2013). However, blockings have different responses to the sea-ice anomalies in different regions. Specifically, sea-ice loss in the Barents and Kara seas can increase the frequency of Ural blocking events and their durations, thereby favoring cold surge occurrences in Eurasia (Luo et al., 2016; Yao et al., 2017).

    The NAO has had a negative trend during past decades, which is probably caused by Arctic sea-ice loss (Wu et al., 2007; Overland et al., 2011; Cohen et al., 2014; Inoue et al., 2012). The increased baroclinicity induced by sea-ice loss and the interaction between the troposphere and stratosphere may be a possible mechanism (Jaiser et al., 2012, 2013). Moreover, the north center of the NAO exhibits clear shifts in response to different levels of sea-ice reduction, which shows that the NAO is sensitive to Arctic sea ice (Pedersen et al., 2016). The above results indicate that anomalous midlatitude atmospheric circulations, such as blocking and the NAO, which are modulated by Arctic sea ice, may be the linkage between Arctic changes and midlatitude responses.

    Considering that the Arctic is a source of predictability for midlatitude weather forecasts and the tight linkage between the Arctic and midlatitudes, it is important to explore the Arctic influence on the predictability of Eurasian winter extreme weather events at weather time scales using case studies. This can help us understand the mechanism of extreme weather event formation and determine Arctic sensitive areas for Eurasian winter extreme weather event predictions. The determination of Arctic sensitive areas is helpful for capturing the Arctic signal of extreme weather events. On the other hand, it is also helpful to reduce the initial and boundary errors in extreme event forecasts to achieve improved forecast skill, not only for deterministic forecast skill improvement by reducing uncertainties in Arctic sensitive areas, but also for ensemble forecast skill improvement by providing better perturbed members.

2.   Method
  • In earth system numerical models, uncertainties in the initial and boundary conditions have a great impact on the results. Thus, it is important to estimate the influence of both the initial and boundary uncertainties on the numerical results. The most common method is to integrate the numerical model with different initial and boundary conditions and compare the results of the different integrations. For example, Argence et al. (2008) utilized a set of perturbed atmospheric states to investigate the sensitivity of initial uncertainties on the predictability of heavy rainfall in the Mediterranean. Barthélemy et al. (2018) investigated the sensitivity of Antarctic sea-ice model bias to atmospheric forcing uncertainties by using three different atmospheric reanalysis datasets. It is intuitive to evaluate the influences caused by different perturbations. However, finite perturbation samples cannot cover all possible patterns and amplitudes. Therefore, it is crucial to estimate the largest influence caused by initial and boundary uncertainties. Many methods have been proposed to solve this problem, and conditional nonlinear optimal perturbation (CNOP) is one that fully considers nonlinear processes. The CNOP approach was originally proposed to solve the uncertainty in the initial condition (Mu et al., 2003), and further extended to the uncertainties in the model parameters (Mu et al., 2010), model tendency (Duan and Zhou, 2013) and boundary condition (Wang and Mu, 2015). The CNOP approach is well summarized by Wang et al. (2019), and so we just briefly introduce the application of CNOP in estimating the initial and boundary condition uncertainties.

  • Generally, the equations governing atmospheric motions can be written as

    where U is the atmospheric state, F is the nonlinear operator and B is the boundary condition operator. x represents the location while t represents time. $\Omega $ is the integration region, and $\Gamma $ is the corresponding boundary. U0 and G represent the initial and boundary conditions, respectively.

    Supposing there are some perturbations u0 in the initial condition and some perturbations g in the boundary condition. Then, the corresponding governing equations become

    where u represents the difference from the reference state U caused by the perturbations in the initial and boundary conditions. The following optimization problem is used to assess the maximal influences of the initial and boundary perturbations, which can be written as

    where J is the cost function defined by the considered problems. Usually, the perturbations are limited with certain constraints, i.e., ${u_0} \in {C_\delta }$ and $g\left({x,t} \right) \in {C_\sigma }$. $\left({{u_{0,\delta }},{g_\sigma }\left({x,t} \right)} \right)$ is the solution of Eq. (3), which is called the CNOP, and represents the optimal synergistic initial and boundary perturbations under the constraint.

    Specifically, if only the initial perturbation is under discussion, the solution of Eq. (3) becomes $\left({{u_{0,\delta }},0} \right)$, which represents the optimal initial perturbation under certain boundary conditions. Otherwise, if only the boundary perturbation is taken into account, the solution of Eq. (3) becomes $\left({0,{g_\sigma }\left({x,t} \right)} \right)$, which is the optimal boundary perturbation under certain initial conditions. However, if we take both the initial and boundary perturbations into consideration, the solution of Eq. (3) is $\left({{u_{0,\delta }},{g_\sigma }\left({x,t} \right)} \right)$, representing the optimal synergistic initial and boundary perturbations.

  • The CNOP method has been applied in atmospheric and oceanic studies. Utilizing a quasi-geostrophic global spectral model with 21 truncations, the optimal precursors in the initial conditions are obtained with the CNOP method (Mu and Jiang, 2008). With this numerical model, Jiang et al. (2013) investigated the initial perturbations for triggering NAO onsets by the CNOP method. Dai et al. (2016) further discussed the relationship between the optimal precursors and the corresponding optimally growing initial errors obtained by the CNOP method. Their results indicated that random initial perturbations cannot develop and that only perturbations in specific patterns exhibit fast growth.

    In addition to initial perturbations, optimal boundary perturbations have been investigated in an ocean ecosystem model (Wang and Mu, 2015). The results revealed that nonlinear processes play important roles in the phytoplankton evolution caused by nutrient perturbations at the bottom boundary. These studies discussed the optimal initial and boundary perturbations respectively. However, for the optimal synergistic initial and boundary perturbations on weather and climate events, no investigations have been performed so far.

    Moreover, the above investigations were conducted with relatively simple numerical models whose adjoint modules are accessible. Thus, the corresponding CNOP can be obtained easily. However, most complicated models in large dimensions have no accessible adjoint modules, so that CNOP computation could be a problem. Some intelligent algorithms, such as differential evolution (Storn and Price, 1997) and particle swarm optimization (Kennedy and Eberhart, 1995), should be utilized to solve the optimal problems.

3.   Uncertainties in Arctic data
  • Data for driving numerical models come from observations. However, there are few in-situ observations in the Arctic due to small populations. Most observations in the Arctic come from indirect measurements, such as those from satellite, radar, lidar, and these retrievals could introduce additional errors into the data. In this section, we briefly introduce some uncertainties in Arctic data.

  • Sea ice is the unique characteristic in the Arctic. However, the SIC is estimated from the passive microwave brightness temperature, and two widely used SIC products are derived from the NASA team (Cavalieri et al., 1984) and bootstrap (Comiso, 1986) algorithms, respectively. A previous study noted that the SICs derived from different algorithms have consistent variability in interannual time scales but yield different absolute SIC and sea-ice extent values (Kattsov et al., 2010). Specifically, Andersen et al. (2007) found that the NASA team algorithm underestimates ice cover by 4.4% in the central Arctic during winter, when passive microwave algorithms are considered the most reliable.

    However, SICs from bootstrap have high accuracy but they cannot be calculated in real time, and SICs from the NASA team algorithm are utilized in operational forecasts, although they have low accuracy. Figure 1 shows the monthly mean SIC in December 2018 derived from the National Snow and Ice Data Center (NSIDC). The monthly mean SICs derived from bootstrap and the NASA team algorithm are highly similar (Figs. 1a and b). However, the monthly mean SIC derived from the NASA team algorithm is underestimated in marginal seas, and these underestimations can be as large as 20% (Fig. 1c). As for daily SICs, the underestimations can be larger (Fig. 2). Therefore, an investigation of the influence of the SIC bias derived from different algorithms on weather forecasts and climate predictions is needed.

    Figure 1.  Monthly mean SICs in December 2018 from the NSIDC (units: 1): (a) derived from the bootstrap algorithm (high accuracy but not in real time); (b) derived from the NASA team algorithm (low accuracy but in real time for operations); (c) difference between (a) and (b), i.e., (b) minus (a).

    Figure 2.  As in Fig. 1, but for the SICs on 1 December 2018.

  • In addition to the SIC, the SIT is another important characteristic of Arctic sea ice. There are fewer SIT data than SIC data due to the difficulties in SIT observations. However, the SIT is crucial for climate predictions because it affects the upward heat fluxes in the Arctic.

    SITs retrieved from the Soil Moisture and Ocean Salinity (SMOS) satellite are considered to have high quality for thin sea ice; however, they still have large uncertainties (Ricker et al., 2017). As noted by Kaleschke et al. (2012, 2015), the SMOS SITs retrieved from brightness temperatures are highly accurate over thin sea ice (< 1 m) but lose sensitivity over thick ice (> 1 m). Figure 3 shows the SITs and their corresponding uncertainties on 1 December 2018, which were retrieved from the SMOS satellite. As shown in Fig. 3, uncertainties in thin sea-ice regions can reach as large as the SITs there (dotted areas in Fig. 3b). Whether SIT uncertainties influence weather and climate predictions in the midlatitudes is unknown and should be further investigated.

    Figure 3.  (a) SITs on 1 December 2018 obtained from the SMOS satellite (units: m). (b) Corresponding SIT uncertainty (units: m), in which the dotted area indicates where the SIT uncertainty is larger than the SIT.

  • Previous studies show that there are large uncertainties in Arctic atmospheric reanalysis data due to few observations in polar regions (Inoue et al., 2011; Screen and Simmonds, 2011; Jung et al., 2014). Figure 4 shows the monthly mean atmospheric ensemble spread in December 2018 from the fifth generation ECMWF reanalysis (ERA5) data, which can somewhat represent the uncertainties in atmospheric data (Hersbach et al., 2018). The ensemble spread in the Arctic is obviously larger than that in the midlatitudes for surface variables such as the mean sea level pressure and 2-m temperature (Figs. 4a and b). For the temperature and geopotential at 850 hPa, the spread in midlatitudes has large values, which suggests large uncertainties there (Figs. 4c and e). However, for the temperature and geopotential at 200 hPa, the uncertainties in the tropics are larger (Figs. 4d and f).

    Figure 4.  Monthly mean atmospheric ensemble spread in December 2018 from ERA5: (a) mean sea level pressure (units: Pa); (b) 2-m temperature (units: °C); (c, d) temperature uncertainties at 850 hPa and 200 hPa, respectively (units: °C); (e, f) geopotential uncertainties at 850 hPa and 200 hPa, respectively (units: m2 s−2).

    Inoue et al. (2009) assimilated additional buoy data from the Arctic and found that the variability in the sea level pressure has been reduced significantly. The linkage between the Arctic and midlatitudes revealed by Jung et al. (2014) and Semmler et al. (2018) indicates that weather forecasts in the midlatitudes will be improved with more accurate Arctic initial conditions, especially for extreme weather events. Furthermore, Day et al. (2019) demonstrated by conducting observing system experiments that weather forecasts in North Asia can benefit from accurate Arctic initial conditions. Therefore, the influence of the initial uncertainty in the Arctic on midlatitude extreme weather events forecasts may be larger and should be further discussed.

4.   Pioneering studies
  • Many studies have been conducted to reveal the linkage between the Arctic and extreme events in the midlatitudes occurring during the past few decades. Most of these studies investigated the linkage from the perspective of climatological statistics. Moreover, several recent investigations have discussed the influence of the Arctic on extreme weather and climate events from the perspective of case studies.

  • Ensemble atmospheric forecasts with different initial datasets revealed that additional Arctic radiosonde observations are beneficial for persistent strong wind forecasts (Inoue et al., 2015). Furthermore, ensemble forecast experiments for the two winter storms over eastern Asia and North America in February 2015 show that errors and uncertainties in the upper troughs in the midlatitudes would be reduced by assimilating additional radiosonde observations from the Arctic, so that the forecast skills of these two storms are improved (Sato et al., 2017). Their results highlight the importance of Arctic initial conditions in Eurasian extreme event prediction. However, their work focused on a relatively short time period (i.e., 5.5 days) and the mid−high latitudes. For extreme events in mid−low latitudes with longer forecast time periods, whether their prediction could benefit from a better Arctic initial condition is unknown and should be investigated.

  • The linkage between Arctic SIC anomalies and Eurasian extreme events has recently been a point of discussion. Many investigations have focused on the statistical relationship between SIC anomalies and Eurasian extreme event frequency. Moreover, some investigations have been performed to reveal the role of Arctic sea-ice anomalies in Eurasian extreme events.

    There was a persistent cold event in Asia during late January to early February 2012. Wu et al. (2017) investigated the possible association between Arctic sea-ice loss and Arctic atmospheric circulations during the preceding summer. They noted that the sea level pressure in the Aleutian region played a critical role in this cold event by strengthening the Siberian high. Further numerical model simulation experiments illustrated that the combined impacts of both Arctic sea-ice anomalies and atmospheric initial conditions in the preceding summer favored the persistent cold winter weather.

    Moreover, Xie et al. (2019) discussed the role of Arctic sea ice in the 2014/15 warm Eurasian winter. They found that the SIC has a large impact on winter temperature and pressure probability distribution functions by using two groups of large ensemble atmospheric model simulations under different SIC boundary conditions. Their results highlight the important role of the Barents SIC in favoring the occurrence of a warm winter in Eurasia.

    However, there is something that we have to consider. These extreme events last only for several days. Therefore, background conditions, such as the SIC and sea surface temperature, can only increase the occurrence probability of extreme events. For individual extreme events, atmospheric circulation is the direct factor triggering their onsets.

5.   Discussion and prospects
  • As a source of predictability for weather in the midlatitudes, Arctic conditions have great influences on Eurasian weather forecasts. Investigations on the current linkage between the Arctic and midlatitudes are presented in this paper. Many studies have been conducted to reveal the relationship between Arctic sea-ice loss and midlatitude extreme events from the perspective of climatological statistics. However, considering the sensitivity and nonlinearity of atmospheric circulations in the midlatitudes to Arctic conditions, it is necessary to investigate the Arctic influences on the Eurasian extreme weather events at weather time scales using case studies. Moreover, we prefer investigating the influence of Arctic initial and boundary conditions with optimization algorithms rather than integrations with finite perturbation samples.

    Inspired by previous investigations, we believe that only Arctic perturbations in specific patterns have large impacts on extreme weather in the midlatitudes, while random perturbations have little impact on them. Therefore, the determination of the specific Arctic perturbation patterns can help us further understand the linkage between the Arctic and midlatitudes and the mechanism for Eurasian extreme event formation. However, the mechanism for extreme event formation may differ in different cases. Therefore, the role of the Arctic in these cases may differ as well. Thus, additional extreme cases should be investigated to reach common conclusions.

    In addition, most studies have individually discussed the role of Arctic initial and boundary conditions. As different characteristics of the Arctic, we believe that the synergistic effect of Arctic initial and boundary perturbations could have a greater impact on weather in the midlatitudes. Therefore, we suggest that the Arctic synergistic effect should be used to describe the linkage between the Arctic and extreme weather events in the midlatitudes. These investigations can help improve the forecast skill of Eurasian extreme weather events, not only in deterministic forecasts by reducing uncertainties in Arctic sensitive areas, but also in ensemble forecasts by providing better perturbation members.

    Acknowledgements. The authors are grateful to the anonymous reviewers and the Executive Editor-in-Chief for their insightful comments, which have helped improve the paper. This work was supported by the National Natural Science Foundation of China (Grant No. 41790475).

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