Assimilation of ice concentration into a coupled ice ocean model using the Ensemble Kalman Filter

An implementation of the Ensemble Kalman Filter (EnKF) with a coupled ice–ocean model is presented. The model system consists of a dynamic–thermodynamic ice model using the Elastic–Viscous–Plastic (EVP) rheology coupled with the HYbrid Coordinate Ocean Model (HYCOM). The observed variable is ice con...

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Bibliographic Details
Main Authors: Lisæter, Knut Arild, Rosanova, Julia, Evensen, Geir
Format: Report
Language:English
Published: 2003
Subjects:
Online Access:https://zenodo.org/record/7612265
https://doi.org/10.5281/zenodo.7612265
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Summary:An implementation of the Ensemble Kalman Filter (EnKF) with a coupled ice–ocean model is presented. The model system consists of a dynamic–thermodynamic ice model using the Elastic–Viscous–Plastic (EVP) rheology coupled with the HYbrid Coordinate Ocean Model (HYCOM). The observed variable is ice concentration from passive microwave sensor data (SSM/I). The assimilation of ice concentration has the desired effect of reducing the difference between observations and model. Comparison of the assimilation experiment with a free–run experiment, shows that there are large differences, especially in summer. In winter the differences are relatively small, partly because the atmospheric forcing used to run the model depends upon SSM/I data. The assimilation has the strongest impact close to the ice edge, where it ensures a correct location of the ice edge throughout the simulation. An inspection of the model ensemble statistics reveals that the error estimates of the model are too small in winter, a result of too low model ice concentration variance in the central ice pack. It is found that the ensemble covariance between ice concentration and sea surface temperature in the same grid cell is of the same sign (negative) throughout the year. The ensemble covariance between ice concentration and salinity is more dependent upon the physical mechanisms involved, with ice transport and freeze/melt giving different signs of the covariances. The ice transport and ice melt mechanisms also impact the ice concentration variance and the covariance between ice concentration and ice thickness. The ensemble statistics show a high degree of complexity, which to some extent merits the use of computationally expensive assimilation methods, such as the Ensemble Kalman Filter. The present study focuses on the assimilation of ice concentration, but it is understood that assimilation of other data sets, such as sea surface temperature, would be beneficial. NERSC Technical report no. 220. Funded by the European Space Agency through Contract ...