Abstract

General ocean circulation models are not perfect. Forced with observed atmospheric fluxes they gradually drift away from measured distributions of temperature and salinity. We suggest data assimilation of absolute dynamical ocean topography (DOT) observed from space geodetic missions as an option to reduce these differences. Sea surface information of DOT is transferred into the deep ocean by defining the analysed ocean state as a weighted average of an ensemble of fully consistent model solutions using an error-subspace ensemble Kalman filter technique. Success of the technique is demonstrated by assimilation into a global configuration of the ocean circulation model FESOM over 1 year. The dynamic ocean topography data are obtained from a combination of multi-satellite altimetry and geoid measurements. The assimilation result is assessed using independent temperature and salinity analysis derived from profiling buoys of the AGRO float data set. The largest impact of the assimilation occurs at the first few analysis steps where both the model ocean topography and the steric height (i.e. temperature and salinity) are improved. The continued data assimilation over 1 year further improves the model state gradually. Deep ocean fields quickly adjust in a sustained manner: A model forecast initialized from the model state estimated by the data assimilation after only 1 month shows that improvements induced by the data assimilation remain in the model state for a long time. Even after 11 months, the modelled ocean topography and temperature fields show smaller errors than the model forecast without any data assimilation.

Highlights

  • A major task in oceanography is the determination of currents and associated transports of mass and heat

  • ASSIM: In this experiment, the data assimilation system described in Sect. 4 is applied and the observations are assimilated each 10th day over 360 days

  • We distinguish between the analysis states directly after the observations at some time are assimilated and the forecast fields, i.e. the model fields obtained at the end of each 10-day model integration of the ensemble states

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Summary

Introduction

A major task in oceanography is the determination of currents and associated transports of mass and heat. It was difficult or even impossible to use the DOT for ocean studies to derive unmeasured quantities, e.g. by data assimilation and inverse modelling (Verron 1992). As previously stated in Skachko et al (2008), the predecessor version FEOM (Danilov et al 2004) of the FESOM model showed a significant sea surface level drift away from the observations This bias prevented the direct assimilation of the satellite DOT product. To improve the state estimation by assimilating DOT data in the present work, the current model version of FESOM (Wang et al 2014) is used with an increased resolution compared to the previous studies.

Model description
Observations
Configuration of assimilation system
Results
Dynamic ocean topography
Steric height
Impact of the data assimilation at different depths and the surface
Conclusion

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