On the stability and the uniform propagation of chaos properties of Ensemble Kalman-Bucy filters
Pierre Del Moral, Julian Tugaut

TL;DR
This paper studies the stability and long-term behavior of Ensemble Kalman-Bucy filters, introducing new theoretical tools to analyze their propagation of chaos and uniform convergence over time.
Contribution
It initiates the analysis of a new class of nonlinear diffusion models with interacting covariance matrices and provides the first uniform propagation of chaos results for these filters.
Findings
Established new functional inequalities for stability analysis
Proved uniform propagation of chaos for Ensemble Kalman-Bucy filters
Derived Lp-mean error estimates over time
Abstract
The Ensemble Kalman filter is a sophisticated and powerful data assimilation method for filtering high dimensional problems arising in fluid mechanics and geophysical sciences. This Monte Carlo method can be interpreted as a mean-field McKean-Vlasov type particle interpretation of the Kalman-Bucy diffusions. In contrast to more conventional particle filters and nonlinear Markov processes these models are designed in terms of a diffusion process with a diffusion matrix that depends on particle covariance matrices. Besides some recent advances on the stability of nonlinear Langevin type diffusions with drift interactions, the long-time behaviour of models with interacting diffusion matrices and conditional distribution interaction functions has never been discussed in the literature. One of the main contributions of the article is to initiate the study of this new class of models The…
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