A dynamical Gaussian, lognormal, and reverse lognormal Kalman filter

Author:

Van Loon Senne1ORCID,Fletcher Steven J.1ORCID

Affiliation:

1. Cooperative Institute for Research in the Atmosphere Colorado State University Fort Collins Colorado USA

Abstract

AbstractWe derive a generalization of the Kalman filter that allows for non‐Gaussian background and observation errors. The Gaussian assumption is replaced by considering that the errors come from a mixed distribution of Gaussian, lognormal, and reverse lognormal random variables. We detail the derivation for reverse lognormal errors and extend the results to mixed distributions, where the number of Gaussian, lognormal, and reverse lognormal state variables can change dynamically every analysis time. We test the dynamical mixed Kalman filter robustly on two different systems based on the Lorenz 1963 model, and demonstrate that non‐Gaussian techniques generally improve the analysis skill if the observations are sparse and uncertain, compared with the Gaussian Kalman filter.

Funder

National Science Foundation

Publisher

Wiley

Subject

Atmospheric Science

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1. Foundations for Universal Non‐Gaussian Data Assimilation;Geophysical Research Letters;2023-12-02

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