z-logo
open-access-imgOpen Access
An Optimal Linear Transformation for Data Assimilation
Author(s) -
Snyder Chris,
Hakim Gregory J.
Publication year - 2022
Publication title -
journal of advances in modeling earth systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.03
H-Index - 58
ISSN - 1942-2466
DOI - 10.1029/2021ms002937
Subject(s) - data assimilation , covariance , kalman filter , ensemble kalman filter , curse of dimensionality , computer science , transformation (genetics) , covariance intersection , mathematics , linear map , algorithm , covariance matrix , estimation of covariance matrices , extended kalman filter , statistics , artificial intelligence , meteorology , biochemistry , physics , chemistry , gene , pure mathematics
Linear transformations are widely used in data assimilation for covariance modeling, for reducing dimensionality (such as averaging dense observations to form “superobs”), and for managing sampling error in ensemble data assimilation. Here we describe a linear transformation that is optimal in the sense that, in the transformed space, the state variables and observations have uncorrelated errors, and a diagonal gain matrix in the update step. We conjecture, and provide numerical evidence, that the transformation is the best possible to precede covariance localization in an ensemble Kalman filter. A central feature of this transformation in the update step are scalars, which we term canonical observation operators (COOs), that relate pairs of transformed observations and state variables and rank‐order those pairs by their influence in the update. We show for an idealized problem that sample‐based estimates of the COOs, in conjunction with covariance localization for the sample covariance, can approximate well the true values, but a practical implementation of the transformation for high‐dimensional applications remains a subject for future research. The COOs also completely describe important properties of the update step, such as observation‐state mutual information, signal‐to‐noise and degrees of freedom for signal, and so give new insights, including relations among reduced‐rank approximations to variational schemes, particle‐filter weight degeneracy, and the local ensemble transform Kalman filter.

The content you want is available to Zendy users.

Already have an account? Click here to sign in.
Having issues? You can contact us here