Strongly vs. Weakly Coupled Data Assimilation in Coupled Systems with
Various Cross-Domain Interactions
Abstract
Data assimilation methods in a coupled system, namely coupled data
assimilation (CDA), have been attracting researchers’ interests to
improve Earth system modeling. The CDA methods are classified into two;
weakly coupled data assimilation (wCDA), which considers cross-domain
interaction only in a model’s forecast phase, and strongly coupled data
assimilation (sCDA), which additionally uses other domain’s information
in an analysis phase. Although sCDA can theoretically provide better
estimates than wCDA since sCDA fully uses a cross-domain covariance, the
effectiveness of sCDA is still in debate. In this paper, we investigated
the conditions under which sCDA is effective by applying Local Ensemble
Transform Kalman Filter (LETKF) to the joint-Lorenz96 model. By
continuously changing the magnitude of the cross-domain interaction of
the joint-Lorenz96 model, we found that the superiority of sCDA against
wCDA is particularly evident when the cross-domain interaction is large,
albeit it does not contribute to increasing the chaoticity of the
system. In addition, the performance of sCDA is quite sensitive to the
LETKF’s hyperparameters (such as localization and inflation parameters)
especially when the ensemble size is small, and the insufficient
calibration of these parameters deteriorate the sCDA’s performance.
Furthermore, sCDA is more vulnerable to model bias than wCDA; both
cross-domain and intra-domain biases degrade the estimation skills.