Strongly coupled data assimilation using leading averaged coupled covariance (LACC). Part II: CGCM experiments

Feiyu Lu, Zhengyu Liu, Shaoqing Zhang, Yun Liu, Robert Jacob

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30 Scopus citations

Abstract

This paper uses a fully coupled general circulation model (CGCM) to study the leading averaged coupled covariance (LACC) method in a strongly coupled data assimilation (SCDA) system. The previous study in a simple coupled climate model has shown that, by calculating the coupled covariance using the leading averaged atmospheric states, the LACC method enhances the signal-to-noise ratio and improves the analysis quality of the slow model component compared to both the traditional weakly coupled data assimilation without cross-component adjustments (WCDA) and the regular SCDA using the simultaneous coupled covariance (SimCC). Here in Part II, the LACC method is tested with a CGCM in a perfect-model framework. By adding the observational adjustments from the low-level atmosphere temperature to the sea surface temperature (SST), the SCDA using LACC significantly reduces the SST error compared to WCDA over the globe; it also improves from the SCDA using SimCC, which performs better than the WCDA only in the deep tropics. The improvement in SST analysis is a result of the enhanced signal-to-noise ratio in the LACC method, especially in the extratropical regions. The improved SST analysis also benefits the subsurface ocean temperature and low-level atmosphere temperature analyses through dynamic and statistical processes.

Original languageEnglish
Pages (from-to)4645-4659
Number of pages15
JournalMonthly Weather Review
Volume143
Issue number11
DOIs
StatePublished - 2015

Keywords

  • Coupled models
  • Data assimilation
  • Ensembles
  • Kalman filters
  • Mathematical and statistical techniques
  • Models and modeling

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