Message Board

Respected readers, authors and reviewers, you can add comments to this page on any questions about the contribution, review, editing and publication of this journal. We will give you an answer as soon as possible. Thank you for your support!

Full name
E-mail
Phone number
Title
Message
Verification Code
Shen Feifei, Xu Dongmei, Min Jinzhong, Zhang Bing, Li Chao. Assimilation of radar observations with En3DVAR at cloud-resolving scale for the prediction of Typhoon Saomai[J]. Haiyang Xuebao, 2018, 40(5): 48-61. doi: 10.3969/j.issn.0253-4193.2018.05.005
Citation: Shen Feifei, Xu Dongmei, Min Jinzhong, Zhang Bing, Li Chao. Assimilation of radar observations with En3DVAR at cloud-resolving scale for the prediction of Typhoon Saomai[J]. Haiyang Xuebao, 2018, 40(5): 48-61. doi: 10.3969/j.issn.0253-4193.2018.05.005

Assimilation of radar observations with En3DVAR at cloud-resolving scale for the prediction of Typhoon Saomai

doi: 10.3969/j.issn.0253-4193.2018.05.005
  • Received Date: 2017-09-10
  • Rev Recd Date: 2017-12-10
  • The impacts of assimilation of radar radial velocity data (Vr) using ensemble-variational (En3DVAR) data assimilation system based on the Weather Research and Forecasting model (WRF) data assimilation system (WRFDA) for the application of analyses and forecasts for Typhoon Saomai (2006) are investigated. The Vr data at 30-min intervals are assimilated into the WRF model at a cloud-resolving scale using the three-dimensional variational data assimilation (3DVAR) and En3DVAR respectively, over a 3 hour before its landfall. The root-mean-square errors of the Vr data by the En3DVAR were smaller than those by the 3DVAR for Typhoon Saomai. Experiments showed that such improvements were due to the use of the flow-dependent ensemble covariance provided by En3DVAR system. Positive temperature increments are found in Hybrid-En3DVAR experiments, indicating a warming of the inner core with a more realistic thermal structure throughout the depth of the hurricane. In contrast, 3DVAR experiment produces much weaker and smoother increments with negative values at the vortex center at lower levels. In additional, it was found that the En3DVAR, using the flow-dependent covariance that gave the hurricane-specific error covariance estimates, was able to systematically adjust the position of the hurricane during the assimilation whereas the 3DVAR was not. Overall, the analysis and forecasts of the En3DVAR scheme are superior to the 3DVAR scheme assimilating the same Vr Observations.
  • loading
  • Rogers R, Aberson S, Black M, et al. The intensity forecasting experiment:a NOAA multiyear field program for improving tropical cyclone intensity forecasts[J]. Bulletin of the American Meteorological Society, 2006, 87(11):1523-1537.
    Houze R A Jr, Chen S S, Smull B F, et al. Hurricane intensity and eyewall replacement[J]. Science, 2007, 315(5816):1235-1239.
    Rappaport E N, Franklin J L, Avila L A, et al. Advances and challenges at the National Hurricane Center[J]. Weather and Forecasting, 2009, 24(2):395-419.
    Zhang Fuqing, Weng Yonghui, Sippel J A, et al. Cloud-resolving hurricane initialization and prediction through assimilation of Doppler radar observations with an ensemble kalman filter[J]. Monthly Weather Review, 2009, 137(7):2105-2125.
    Wang Yuqing. Vortex Rossby waves in a numerically simulated tropical cyclone. Part Ⅱ:the role in tropical cyclone structure and intensity changes[J]. Journal of the Atmospheric Sciences, 2002, 59(7):1239-1262.
    Liu Zhiquan, Schwartz C S, Snyder C, et al. Impact of assimilating AMSU-A radiances on forecasts of 2008 atlantic tropical cyclones initialized with a limited-area ensemble Kalman filter[J]. Monthly Weather Review, 2012, 140(12):4017-4034.
    Xu Dongmei, Liu Zhiquan, Huang Xiangyu, et al. Impact of assimilating IASI radiance observations on forecasts of two tropical cyclones[J]. Meteorology and Atmospheric Physics, 2013, 122(1/2):1-18.
    Gall R, Franklin J, Marks F, et al. The hurricane forecast improvement project[J]. Bulletin of the American Meteorological Society, 2013, 94(3):329-343.
    Zhao Qingyun, Jin Yi. High-resolution radar data assimilation for hurricane Isabel (2003) at landfall[J]. Bulletin of the American Meteorological Society, 2008, 89(9):1355-1372.
    Zhao Kun, Xue Ming. Assimilation of coastal Doppler radar data with the ARPS 3DVAR and cloud analysis for the prediction of Hurricane Ike (2008)[J]. Geophysical Research Letters, 2009, 36(12):L12803.
    Xue Ming, Wang Donghai, Gao Jidong, et al. The advanced regional prediction system (ARPS), storm-scale numerical weather prediction and data assimilation[J]. Meteorology and Atmospheric Physics, 2003, 82(1/4):139-170.
    李新峰, 赵坤, 王明筠, 等. 多普勒雷达资料循环同化在台风"鲇鱼"预报中的应用[J]. 气象科学, 2013, 33(3):255-263. Li Xinfeng, Zhao Kun, Wang Mingyun, et al. Short-term forecasting of super typhoon Megi at landfall through cycling assimilation of China coastal radar data[J]. Journal of the Meteorological Sciences,2013,33(3):255-263.
    余贞寿, 周功铤, 赵放, 等. 雷达资料对0414号台风"云娜"数值预报的改进[J]. 热带气象学报, 2008, 24(1):59-66. Yu Zhenshou, Zhou Gongting, Zhao Fang, et al. Imporvement of numerical simulation of typhoon Rananim (0414) by using doppler radar data[J]. Journal of Tropical Meteorology,2008,24(1):59-66.
    沈菲菲, 闵锦忠, 陈鹏, 等. 多普勒雷达资料同化在台风"桑美"预报中的应用研究[J]. 海洋学报, 2015, 37(3):25-36. Shen Feifei, Min Jinzhong, Chen Peng, et al. Experiments of assimilating Doppler radar data in forecasts of typhoon Saomai[J]. Haiyang Xuebao, 2015, 37(3):25-36.
    Zhu Lei, Wan Qilin, Shen Xinyong, et al. Prediction and predictability of high-impact western Pacific landfalling tropical cyclone vicente (2012) through convection-permitting ensemble assimilation of doppler radar velocity[J]. Monthly Weather Review, 2016, 144(1):21-43.
    Wang Xuguang, Hamill T M, Whitaker J S, et al. A comparison of hybrid ensemble transform Kalman filter-optimum interpolation and ensemble square root filter analysis schemes[J]. Monthly Weather Review, 2007, 135(3):1055-1076.
    Buehner M, Houtekamer P L, Charette C, et al. Intercomparison of variational data assimilation and the ensemble Kalman filter for global deterministic NWP. Part Ⅱ:one-month experiments with real observations[J]. Monthly Weather Review, 2010, 138(5):1567-1586.
    Lorenc A C. The potential of the ensemble Kalman filter for NWP-a comparison with 4D-Var[J]. Quarterly Journal of Royal Meteorological Society, 2003, 129(595):3183-3203.
    Shen Feifei, Min Jinzhong. Assimilating AMSU-a radiance data with the WRF hybrid En3DVAR system for track predictions of typhoon Megi (2010)[J]. Advances in Atmospheric Sciences, 2015, 32(9):1231-1243.
    Brewster K, Hu M, Xue M, et al. Efficient assimilation of radar data at high resolution for short-range numerical weather prediction[C]//World Weather Research Program Symposium on Nowcasting and Very Short-Range Forecasting. Toulouse, France:WMO, 2005.
    Oye R, Mueller C, Smith C. Software for radar translation, visualization, editing, and interpolation[C]//Preprints, 27th Conference on Radar Meteorology, Vail, CO:American Meteorological Society, 1995:359-361.
    Skamarock W C, Klemp J B, Dudhin J, et al. A description of the Advanced Research WRF version 3[R]. NCAR Tech Note NCAR/TN-475+STR. Boulder, Colorado, USA:NCAR, 2008:113.
    Janji Z I. The step-mountain eta coordinate model-further developments of the convection, viscous sublayer, and turbulence closure schemes[J]. Monthly Weather Review, 1994, 122(5):927-945.
    Hong Songyou, Dudhia J, Chen Shuhua. A revised approach to ice microphysical processes for the bulk parameterization of clouds and precipitation[J]. Monthly Weather Review, 2004, 132(1):103-120.
    Parrish D F, Derber J C. Derber the national meteorological center's spectral statistical-interpolation analysis system[J]. Monthly Weather Review, 1992, 120(8):1747-1763.
    Barker D, Huang Xiangyu, Liu Zhiquan, et al. The weather research and forecasting model's community variational/ensemble data assimilation system:WRFDA[J]. Bulletin of the American Meteorological Society, 2012, 93(6):831-843.
    Torn R D, Hakim G J, Snyder C. Boundary conditions for limited-area ensemble Kalman filters[J]. Monthly Weather Review, 2006, 134(9):2490-2502.
    Li Yongzuo, Wang Xuguang, Xue Ming. Assimilation of radar radial velocity data with the WRF Hybrid ensemble-3DVAR system for the prediction of hurricane Ike (2008)[J]. Monthly Weather Review, 2012, 140(11):3507-3524.
    Xie Yuanfu, Macdonald A E. Selection of momentum variables for a three-dimensional variational analysis[J]. Pure and Applied Geophysics, 2012, 169(3):335-351.
    Sun Juanzhen, Wang Hongli. WRF-ARW variational storm-scale data assimilation:current capabilities and future developments[J]. Advances in Meteorology, 2013, 2013:815910.
    Gao Jidong, Xue Ming, Brewster K, et al. A three-dimensional variational data analysis method with recursive filter for Doppler radars[J]. Journal of Atmospheric and Oceanic Technology, 2004, 21(3):457-469.
    Zhao Kun, Xue Ming, Lee W C. Assimilation of GBVTD-retrieved winds from single-Doppler radar for short-term forecasting of super typhoon Saomai (0608) at landfall[J]. Quarterly Journal of the Royal Meteorological Society, 2012, 138(665):1055-1071.
    Wang Xuguang. Application of the WRF hybrid ETKF-3DVAR data assimilation system for hurricane track forecasts[J]. Weather and Forecasting, 2011, 26(6):868-884.
    Chang Shaofan, Sun Juanzhen, Liou Y C, et al. The influence of erroneous background, beam-blocking and microphysical non-linearity on the application of a four-dimensional variational Doppler radar data assimilation system for quantitative precipitation forecasts[J]. Meteorological Applications, 2014, 21(2):444-458.
    Xiao Qingnong, Zhang Xiaoyan, Davis C, et al. Experiments of hurricane initialization with airborne Doppler radar data for the Advanced Research Hurricane WRF (AHW) model[J]. Monthly Weather Review, 2009, 137(9):2758-2777.
  • 加载中

Catalog

    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
    Article views (774) PDF downloads(358) Cited by()
    Proportional views
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return