Strongly coupled data assimilation using leading averaged coupled covariance (LACC). Part III: Assimilation of real world reanalysis

Jingzhe Sun, Zhengyu Liu, Feiyu Lu, Weimin Zhang, Shaoqing Zhang

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Recent studies proposed leading averaged coupled covariance (LACC) as an effective strongly coupled data assimilation (SCDA) method to improve the coupled state estimation over weakly coupled data assimilation (WCDA) in a coupled general circulation model (CGCM). This SCDA method, however, has been previously evaluated only in the perfect model scenario. Here, as a further step toward evaluating LACC for real world data assimilation, LACC is evaluated for the assimilation of reanalysis data in a CGCM. Several criteria are used to evaluate LACC against the benchmark WCDA. It is shown that despite significant model bias, LACC can improve the coupled state estimation over WCDA. Compared to WCDA, LACC increases the globally averaged anomaly correlation coefficients (ACCs) of sea surface temperature (SST) by 0.036 and atmosphere temperature at the bottom level (Ts) by 0.058. However, there also exist regions where WCDA outperforms LACC. Although the reduction in the anomaly root-mean-square error (RMSE) is not as consistently clear as the increase in ACC, LACC can largely correct the biased model climatology.

Original languageEnglish
Pages (from-to)2351-2364
Number of pages14
JournalMonthly Weather Review
Volume148
Issue number6
DOIs
StatePublished - Jun 1 2020

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