© 2024 Author(s). Published under an exclusive license by AIP Publishing.
Published March 2024
| Published
Journal Article
Filtering dynamical systems using observations of statistics
Abstract
We consider the problem of filtering dynamical systems, possibly stochastic, using observations of statistics. Thus, the computational task is to estimate a time-evolving density ρ(v,t) given noisy observations of the true density ρ†; this contrasts with the standard filtering problem based on observations of the state v. The task is naturally formulated as an infinite-dimensional filtering problem in the space of densities ρ. However, for the purposes of tractability, we seek algorithms in state space; specifically, we introduce a mean-field state-space model, and using interacting particle system approximations to this model, we propose an ensemble method. We refer to the resulting methodology as the ensemble Fokker–Planck filter (EnFPF). Under certain restrictive assumptions, we show that the EnFPF approximates the Kalman–Bucy filter for the Fokker–Planck equation, which is the exact solution to the infinite-dimensional filtering problem. Furthermore, our numerical experiments show that the methodology is useful beyond this restrictive setting. Specifically, the experiments show that the EnFPF is able to correct ensemble statistics, to accelerate convergence to the invariant density for autonomous systems, and to accelerate convergence to time-dependent invariant densities for non-autonomous systems. We discuss possible applications of the EnFPF to climate ensembles and to turbulence modeling.
Copyright and License
Acknowledgement
E.B. was supported by the the Foster and Coco Stanback Postdoctoral Fellowship. A.S. was supported by the Office of Naval Research (ONR) through Grant No. N00014-17-1-2079. T.C. and A.S. acknowledge recent support through ONR Grant No. N00014-23-1-2654. E.B. and A.S. are also grateful for support from the Department of Defense Vannevar Bush Faculty Fellowship held by A.S. We thank Tapio Schneider, Dimitris Giannakis, and two anonymous referees for helpful comments.
Contributions
Eviatar Bach: Conceptualization (equal); Formal analysis (equal); Investigation (lead); Methodology (equal); Software (lead); Visualization (lead); Writing – original draft (lead); Writing – review & editing (equal). Tim Colonius: Conceptualization (supporting); Funding acquisition (equal); Supervision (supporting); Writing – review & editing (supporting). Isabel Scherl: Conceptualization (supporting); Investigation (supporting); Writing – review & editing (supporting). Andrew Stuart: Conceptualization (equal); Formal analysis (equal); Funding acquisition (equal); Investigation (equal); Methodology (equal); Supervision (equal); Writing – original draft (equal); Writing – review & editing (equal).
Data Availability
The data that support the findings of this study are available within the article.
Conflict of Interest
The authors have no conflicts to disclose.
Files
Additional details
- ISSN
- 1089-7682
- California Institute of Technology
- Foster and Coco Stanback Postdoctoral Fellowship
- Office of Naval Research
- N00014-17-1-2079
- Office of Naval Research
- N00014-23-1-2654
- United States Department of Defense
- Vannevar Bush Faculty Fellowship
- Caltech groups
- Center for Autonomous Systems and Technologies (CAST)