Author/Authors :
M. ZUPANSKI، نويسنده , , S. J. FLETCHER، نويسنده , , I. M. Navon، نويسنده , , B. UZUNOGLU، نويسنده , , R. P. HEIKES، نويسنده , , D. A. R، نويسنده , , ALL، نويسنده , , T. D. RINGLER ، نويسنده , , D. DAESCU، نويسنده ,
Abstract :
The specification of the initial ensemble for ensemble data assimilation is addressed. The presented work examines the
impact of ensemble initiation in the Maximum Likelihood Ensemble Filter (MLEF) framework, but is also applicable
to other ensemble data assimilation algorithms. Two methods are considered: the first is based on the use of the Kardar-
Parisi-Zhang (KPZ) equation to form sparse random perturbations, followed by spatial smoothing to enforce desired
correlation structure, while the second is based on the spatial smoothing of initially uncorrelated random perturbations.
Data assimilation experiments are conducted using a global shallow-water model and simulated observations. The
two proposed methods are compared to the commonly used method of uncorrelated random perturbations. The results
indicate that the impact of the initial correlations in ensemble data assimilation is beneficial. The root-mean-square
error rate of convergence of the data assimilation is improved, and the positive impact of initial correlations is notable
throughout the data assimilation cycles. The sensitivity to the choice of the correlation length scale exists, although it is
not very high. The implied computational savings and improvement of the results may be important in future realistic
applications of ensemble data assimilation