Multivariate localization functions for strongly coupled data assimilation in the bivariate Lorenz 96 system

Autor: Z. Stanley, I. Grooms, W. Kleiber
Jazyk: angličtina
Rok vydání: 2021
Předmět:
Zdroj: Nonlinear Processes in Geophysics, Vol 28, Pp 565-583 (2021)
Druh dokumentu: article
ISSN: 1023-5809
1607-7946
DOI: 10.5194/npg-28-565-2021
Popis: Localization is widely used in data assimilation schemes to mitigate the impact of sampling errors on ensemble-derived background error covariance matrices. Strongly coupled data assimilation allows observations in one component of a coupled model to directly impact another component through the inclusion of cross-domain terms in the background error covariance matrix. When different components have disparate dominant spatial scales, localization between model domains must properly account for the multiple length scales at play. In this work, we develop two new multivariate localization functions, one of which is a multivariate extension of the fifth-order piecewise rational Gaspari–Cohn localization function; the within-component localization functions are standard Gaspari–Cohn with different localization radii, while the cross-localization function is newly constructed. The functions produce positive semidefinite localization matrices which are suitable for use in both Kalman filters and variational data assimilation schemes. We compare the performance of our two new multivariate localization functions to two other multivariate localization functions and to the univariate and weakly coupled analogs of all four functions in a simple experiment with the bivariate Lorenz 96 system. In our experiments, the multivariate Gaspari–Cohn function leads to better performance than any of the other multivariate localization functions.
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