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Main Authors: Bao, Feng, Chipilski, Hristo G., Liang, Siming, Zhang, Guannan, Whitaker, Jeffrey S.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.00844
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author Bao, Feng
Chipilski, Hristo G.
Liang, Siming
Zhang, Guannan
Whitaker, Jeffrey S.
author_facet Bao, Feng
Chipilski, Hristo G.
Liang, Siming
Zhang, Guannan
Whitaker, Jeffrey S.
contents The intersection between classical data assimilation methods and novel machine learning techniques has attracted significant interest in recent years. Here we explore another promising solution in which diffusion models are used to formulate a robust nonlinear ensemble filter for sequential data assimilation. Unlike standard machine learning methods, the proposed \textit{Ensemble Score Filter (EnSF)} is completely training-free and can efficiently generate a set of analysis ensemble members. In this study, we apply the EnSF to a surface quasi-geostrophic model and compare its performance against the popular Local Ensemble Transform Kalman Filter (LETKF), which makes Gaussian assumptions on the posterior distribution. Numerical tests demonstrate that EnSF maintains stable performance in the absence of localization and for a variety of experimental settings. We find that EnSF achieves competitive performance relative to LETKF in the case of linear observations, but leads to significant advantages when the state is nonlinearly observed and the numerical model is subject to unexpected shocks. A spectral decomposition of the analysis results shows that the largest improvements over LETKF occur at large scales (small wavenumbers) where LETKF lacks sufficient ensemble spread. Overall, this initial application of EnSF to a geophysical model of intermediate complexity is very encouraging, and motivates further developments of the algorithm for more realistic problems.
format Preprint
id arxiv_https___arxiv_org_abs_2404_00844
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Nonlinear ensemble filtering with diffusion models: Application to the surface quasi-geostrophic dynamics
Bao, Feng
Chipilski, Hristo G.
Liang, Siming
Zhang, Guannan
Whitaker, Jeffrey S.
Mathematical Physics
The intersection between classical data assimilation methods and novel machine learning techniques has attracted significant interest in recent years. Here we explore another promising solution in which diffusion models are used to formulate a robust nonlinear ensemble filter for sequential data assimilation. Unlike standard machine learning methods, the proposed \textit{Ensemble Score Filter (EnSF)} is completely training-free and can efficiently generate a set of analysis ensemble members. In this study, we apply the EnSF to a surface quasi-geostrophic model and compare its performance against the popular Local Ensemble Transform Kalman Filter (LETKF), which makes Gaussian assumptions on the posterior distribution. Numerical tests demonstrate that EnSF maintains stable performance in the absence of localization and for a variety of experimental settings. We find that EnSF achieves competitive performance relative to LETKF in the case of linear observations, but leads to significant advantages when the state is nonlinearly observed and the numerical model is subject to unexpected shocks. A spectral decomposition of the analysis results shows that the largest improvements over LETKF occur at large scales (small wavenumbers) where LETKF lacks sufficient ensemble spread. Overall, this initial application of EnSF to a geophysical model of intermediate complexity is very encouraging, and motivates further developments of the algorithm for more realistic problems.
title Nonlinear ensemble filtering with diffusion models: Application to the surface quasi-geostrophic dynamics
topic Mathematical Physics
url https://arxiv.org/abs/2404.00844