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Ocean Data Assimilation with Background Error Covariance Derived from OGCM Outputs 被引量:3

Ocean Data Assimilation with Background Error Covariance Derived from OGCM Outputs
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摘要 The background error covariance plays an important role in modern data assimilation and analysis systems by determining the spatial spreading of information in the data. A novel method based on model output is proposed to estimate background error covariance for use in Optimum Interpolation. At every model level, anisotropic correlation scales are obtained that give a more detailed description of the spatial correlation structure. Furthermore, the impact of the background field itself is included in the background error covariance. The methodology of the estimation is presented and the structure of the covariance is examined. The results of 20-year assimilation experiments are compared with observations from TOGA-TAO (The Tropical Ocean-Global Atmosphere-Tropical Atmosphere Ocean) array and other analysis data. The background error covariance plays an important role in modern data assimilation and analysis systems by determining the spatial spreading of information in the data. A novel method based on model output is proposed to estimate background error covariance for use in Optimum Interpolation. At every model level, anisotropic correlation scales are obtained that give a more detailed description of the spatial correlation structure. Furthermore, the impact of the background field itself is included in the background error covariance. The methodology of the estimation is presented and the structure of the covariance is examined. The results of 20-year assimilation experiments are compared with observations from TOGA-TAO (The Tropical Ocean-Global Atmosphere-Tropical Atmosphere Ocean) array and other analysis data.
出处 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2004年第2期181-192,共12页 大气科学进展(英文版)
基金 supported by the National Key Program for Developing Basic Sciences(G1999032801) the National Natural Science Foundation of China(Grant No.40005007,40233033,and 40221503)
关键词 data assimilation background error model output COVARIANCE data assimilation, background error, model output, covariance
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