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Assimilating operational SST and sea ice analysis data into an operational circulation model for the coastal seas of China

机译:将SST业务和海冰分析数据同化为中国沿海海域的业务环流模型

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摘要

The prediction of sea surface temperature (SST) is an essential task for an operational ocean circulation model. A sea surface heat flux, an initial temperature field, and boundary conditions directly affect the accuracy of a SST simulation. Here two quick and convenient data assimilation methods are employed to improve the SST simulation in the domain of the Bohai Sea, the Yellow Sea and the East China Sea (BYECS). One is based on a surface net heat flux correction, named as Qcorrection (QC), which nudges the flux correction to the model equation; the other is ensemble optimal interpolation (EnOI), which optimizes the model initial field. Based on such two methods, the SST data obtained from the operational SST and sea ice analysis (OSTIA) system are assimilated into an operational circulation model for the coastal seas of China. The results of the simulated SST based on four experiments, in 2011, have been analyzed. By comparing with the OSTIA SST, the domain averaged root mean square error (RMSE) of the four experiments is 1.74, 1.16, 1.30 and 0.91°C, respectively; the improvements of assimilation experiments Exps 2, 3 and 4 are about 33.3%, 25.3%, and 47.7%, respectively. Although both two methods are effective in assimilating the SST, the EnOI shows more advantages than the QC, and the best result is achieved when the two methods are combined. Comparing with the observational data from coastal buoy stations, show that assimilating the high-resolution satellite SST products can effectively improve the SST prediction skill in coastal regions.
机译:海面温度(SST)的预测是操作性海洋环流模型的基本任务。海面热通量,初始温度场和边界条件直接影响SST模拟的准确性。在此,采用两种快速便捷的数据同化方法来改进渤海,黄海和东海(BYECS)区域的SST模拟。一种是基于称为Qcorrection(QC)的表面净热通量校正,它将通量校正推到模型方程中。另一个是整体最优插值(EnOI),它可以优化模型的初始场。基于这两种方法,将从运行SST和海冰分析(OSTIA)系统获得的SST数据同化为中国沿海海域的运行环流模型。分析了2011年基于四个实验的SST模拟结果。通过与OSTIA SST进行比较,这四个实验的域平均均方根误差(RMSE)分别为1.74、1.16、1.30和0.91°C;同化实验Exps 2、3和4的改进分别约为33.3%,25.3%和47.7%。尽管两种方法都可以有效地吸收SST,但EnOI的优势要比QC多,并且两种方法结合使用时可以达到最佳效果。通过与沿海浮标站的观测数据进行比较,可以看出,将高分辨率卫星海表温度产品同化可以有效提高沿海地区海表温度的预测能力。

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  • 来源
    《海洋学报(英文版)》 |2015年第7期|54-64|共11页
  • 作者单位

    Key Laboratory of Ministry of Education for Coastal Disaster and Defence, Hohai University, Nanjing 210098, China;

    Key Laboratory of Research on Marine Hazards Forecasting, National Marine Environmental Forecasting Center, State 0ceanic Administration, Beijing 100081, China;

    Key Laboratory of Ministry of Education for Coastal Disaster and Defence, Hohai University, Nanjing 210098, China;

    Key Laboratory of Research on Marine Hazards Forecasting, National Marine Environmental Forecasting Center, State 0ceanic Administration, Beijing 100081, China;

    Key Laboratory of Research on Marine Hazards Forecasting, National Marine Environmental Forecasting Center, State 0ceanic Administration, Beijing 100081, China;

    Key Laboratory of Research on Marine Hazards Forecasting, National Marine Environmental Forecasting Center, State 0ceanic Administration, Beijing 100081, China;

    Key Laboratory of Ministry of Education for Coastal Disaster and Defence, Hohai University, Nanjing 210098, China;

  • 收录信息 中国科学引文数据库(CSCD);
  • 原文格式 PDF
  • 正文语种 eng
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