LYU Guokun, WANG Hui, ZHU Jiang, WANG Dakui, XIE Jiping, LIU Guimei. Assimilating the along-track sea level anomaly into the regional ocean modeling system using the ensemble optimal interpolation[J]. Acta Oceanologica Sinica, 2014, 33(7): 72-82. doi: 10.1007/s13131-014-0469-7
Citation: LYU Guokun, WANG Hui, ZHU Jiang, WANG Dakui, XIE Jiping, LIU Guimei. Assimilating the along-track sea level anomaly into the regional ocean modeling system using the ensemble optimal interpolation[J]. Acta Oceanologica Sinica, 2014, 33(7): 72-82. doi: 10.1007/s13131-014-0469-7

Assimilating the along-track sea level anomaly into the regional ocean modeling system using the ensemble optimal interpolation

doi: 10.1007/s13131-014-0469-7
  • Received Date: 2013-02-28
  • Rev Recd Date: 2013-05-22
  • The ensemble optimal interpolation (EnOI) is applied to the regional ocean modeling system (ROMS) with the ability to assimilate the along-track sea level anomaly (TSLA). This system is tested with an eddy-resolving system of the South China Sea (SCS). Background errors are derived from a running seasonal ensemble to account for the seasonal variability within the SCS. A fifth-order localization function with a 250 km localization radius is chosen to reduce the negative effects of sampling errors. The data assimilation system is tested from January 2004 to December 2006. The results show that the root mean square deviation (RMSD) of the sea level anomaly decreased from 10.57 to 6.70 cm, which represents a 36.6% reduction of error. The data assimilation reduces error for temperature within the upper 800 m and for salinity within the upper 200 m, although error degrades slightly at deeper depths. Surface currents are in better agreement with trajectories of surface drifters after data assimilation. The variance of sea level improves significantly in terms of both the amplitude and position of the strong and weak variance regions after assimilating TSLA. Results with AGE error (AGE) perform better than no AGE error (NoAGE) when considering the improvements of the temperature and the salinity. Furthermore, reasons for the extremely strong variability in the northern SCS in high resolution models are investigated. The results demonstrate that the strong variability of sea level in the high resolution model is caused by an extremely strong Kuroshio intrusion. Therefore, it is demonstrated that it is necessary to assimilate the TSLA in order to better simulate the SCS with high resolution models.
  • loading
  • Bueh C, Cubasch U, Hagemann S. 2003. Impacts of global warming on changes in the East Asian monsoon and the related river discharge in a global time-slice experiment. Climate Research, 24(1): 47-57
    Counillon F, Bertino L. 2009. Ensemble optimal interpolation: multivariate properties in the Gulf of Mexico. Tellus A, 61(2): 296-308
    Dibarboure G, Lauret O, Mertz F, et al. 2008. SSALTO/DUACS User Handbook:(M) SLA and (M) ADT Near-real Time and Delayed Time Products. Rep CLS-DOS-NT, Vol. 6 Ramonville St Agne: Centre National D'études Spatiales, 39
    Evensen G. 1994. Sequential data assimilation with a nonlinear quasigeostrophic model using Monte Carlo methods to forecast error statics. Journal of Geophysical Research: Oceans, 99(C5): 10143-10162
    Evensen G. 2003. The ensemble Kalman filter: theoretical formulation and practical implementation. Ocean Dynamics, 53(4): 343-367
    Fu Weiwei, Zhu Jiang, Yan Changxiang. 2009. A comparison between 3DVAR and EnOI techniques for satellite altimetry data assimilation. Ocean Modelling, 26(3): 206-216
    Gaspari G, Cohn S E. 1999. Construction of correlation functions in two and three dimensions. Quarterly Journal of the Royal Meteorological Society, 125(554): 723-757
    Hamill T M, Whitaker J S, Snyder C. 2001. Distance-dependent filtering of background error covariance estimates in an ensemble Kalman filter. Monthly Weather Review, 129(11): 2776-2790
    Huang Xiang-Yu, Morgensen K, Yang Xiaohua. 2002. First-guess at the appropriate time: the HIRLAM implementation and experiments. In: Proceedings of the HIRLAM Workshop on Variational Data Assimilation and Remote Sensing, Helsinki, Finland, 28-43
    Hurlburt H E, Brassington G B, Drillet Y, et al 2009. High-resolution global and basin-scale ocean analyses and forecasts. Oceanography, 22(3):110-127
    Nan Feng, Xue Huijie, Chai Fei, et al. 2011. Identification of different types of Kuroshio intrusion into the South China Sea. Ocean Dynamics, 61(9): 1291-1304
    Oke P R, Allen J S, Miller R N, et al. 2002. Assimilation of surface velocity data into a primitive equation coastal ocean model. Journal of Geophysical Research: Oceans, 107(C9): 3122
    Oke P R, Brassington G B, Griffin D A, et al. 2008. The Bluelink ocean data assimilation system (BODAS). Ocean Modelling, 21(1): 46-70
    Oke P R, Sakov P, Corney S. 2007. Impacts of localisation in the EnKF and EnOI: experiments with a small model. Ocean Dynamics, 57(1): 32-45
    Oke P R, Schiller A, Griffin D A, et al. 2005. Ensemble data assimilation for an eddy-resolving ocean model of the Australian region. Quarterly Journal of the Royal Meteorological Society, 131(613): 3301-3311
    Ott E, Hunt B R, Szunyogh I, et al. 2004. A local ensemble Kalman filter for atmospheric data assimilation. Tellus A, 56(5): 415-428
    Shchepetkin A F, McWilliams J C. 2005. The regional oceanic modeling system (ROMS): a split-explicit, free-surface, topography-following-coordinate oceanic model. Ocean Modelling, 9(4): 347-404
    Tang Liqun, Sheng Jinyu, Ji Xiaomei, et al. 2009. Investigation of threedimensional circulation and hydrography over the Pearl River Estuary of China using a nested-grid coastal circulation model. Ocean Dynamics, 59(6): 899-919
    Wang Guihua, Su Jilan, Chu P C. 2003. Mesoscale eddies in the South China Sea observed with altimeter data. Geophysical Research Letters, 30(21): 2121
    Wong LaiAh A, Chen Jay-Chung, Xue Huijie, et al. 2003. A model study of the circulation in the Pearl River Estuary (PRE) and its adjacent coastal waters. 1: Simulations and comparison with observations. Journal of Geophysical Research: Oceans, 108(C5): 3156
    Xie Jiping, Counillon F, Zhu Jiang, et al. 2011. An eddy resolving tidaldriven model of the South China Sea assimilating along-track SLA data using the EnOI. Ocean Science, 7(5): 609-627
    Xie Jiping, Zhu Jiang. 2010. Ensemble optimal interpolation schemes for assimilating Argo profiles into a hybrid coordinate ocean model. Ocean Modelling, 33(3): 283-298
  • 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 Metrics

    Article views (2046) PDF downloads(1155) Cited by()
    Proportional views
    Related

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return