首页> 中文期刊> 《海洋学报:英文版》 >The impact of ocean data assimilation on seasonal predictions based on the National Climate Center climate system model

The impact of ocean data assimilation on seasonal predictions based on the National Climate Center climate system model

         

摘要

An ensemble optimal interpolation(EnOI)data assimilation method is applied in the BCCCSM1.1 to investigate the impact of ocean data assimilations on seasonal forecasts in an idealized twin experiment framework.Pseudoobservations of sea surface temperature(SST),sea surface height(SSH),sea surface salinity(SSS),temperature and salinity(T/S)profiles were first generated in a free model run.Then,a series of sensitivity tests initialized with predefined bias were conducted for a one-year period;this involved a free run(CTR)and seven assimilation runs.These tests allowed us to check the analysis field accuracy against the"truth".As expected,data assimilation improved all investigated quantities;the joint assimilation of all variables gave more improved results than assimilating them separately.One-year predictions initialized from the seven runs and CTR were then conducted and compared.The forecasts initialized from joint assimilation of surface data produced comparable SST root mean square errors to that from assimilation of T/S profiles,but the assimilation of T/S profiles is crucial to reduce subsurface deficiencies.The ocean surface currents in the tropics were better predicted when initial conditions produced by assimilating T/S profiles,while surface data assimilation became more important at higher latitudes,particularly near the western boundary currents.The predictions of ocean heat content and mixed layer depth are significantly improved initialized from the joint assimilation of all the variables.Finally,a central Pacific El Ni?o was well predicted from the joint assimilation of surface data,indicating the importance of joint assimilation of SST,SSH,and SSS for ENSO predictions.

著录项

  • 来源
    《海洋学报:英文版》 |2021年第5期|58-70|共13页
  • 作者单位

    Equipment Public Service Center;

    South China Sea Institute of Oceanology;

    Chinese Academy of Sciences;

    Guangzhou 510301;

    China;

    Southern Marine Science and Engineering Guangdong Laboratory(Guangzhou);

    Guangzhou 511458;

    China;

    Ministry of Education Key Laboratory for Earth System Modeling;

    Department of Earth System Science;

    Tsinghua University;

    Beijing 100084;

    China;

    State Key Laboratory of Tropical Oceanography;

    South China Sea Institute of Oceanology;

    Chinese Academy of Sciences;

    Guangzhou 510301;

    China;

  • 原文格式 PDF
  • 正文语种 chi
  • 中图分类 海洋基础科学;
  • 关键词

    global ocean data assimilation; EnOI; twin experiments;

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