Coupling Techniques for Nonlinear Ensemble Filtering
Author(s)
Spantini, Alessio; Baptista, Ricardo; Marzouk, Youssef
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We consider filtering in high-dimensional non-Gaussian state-space models with intractable transition kernels, nonlinear and possibly chaotic dynamics, and sparse observations in space and time. We propose a novel filtering methodology that harnesses transportation of measures, convex optimization, and ideas from probabilistic graphical models to yield robust ensemble approximations of the filtering distribution in high dimensions. Our approach can be understood as the natural generalization of the ensemble Kalman filter (EnKF) to nonlinear updates, using stochastic or deterministic couplings. The use of nonlinear updates can reduce the intrinsic bias of the EnKF at a marginal increase in computational cost. We avoid any form of importance sampling and introduce non-Gaussian localization approaches for dimension scalability. Our framework achieves state-of-the-art tracking performance on challenging configurations of the Lorenz-96 model in the chaotic regime.
Date issued
2022-11Department
Massachusetts Institute of Technology. Department of Aeronautics and AstronauticsJournal
SIAM Review
Publisher
Society for Industrial & Applied Mathematics (SIAM)
Citation
Spantini, Alessio, Baptista, Ricardo and Marzouk, Youssef. 2022. "Coupling Techniques for Nonlinear Ensemble Filtering." SIAM Review, 64 (4).
Version: Final published version