Abstract
In data assimilation, observations are fused with simulations to obtain an accurate estimate of the state and parameters for a given physical system. Combining data with a model, however, while accurately estimating uncertainty, is computationally expensive and infeasible to run in real-time for complex systems. Here, we present a novel particle filter methodology, the Deep Latent Space Particle filter or D-LSPF, that uses neural network-based surrogate models to overcome this computational challenge. The D-LSPF enables filtering in the low-dimensional latent space obtained using Wasserstein AEs with modified vision transformer layers for dimensionality reduction and transformers for parameterized latent space time stepping. As we demonstrate on three test cases, including leak localization in multi-phase pipe flow and seabed identification for fully nonlinear water waves, the D-LSPF runs orders of magnitude faster than a high-fidelity particle filter and 3-5 times faster than alternative methods while being up to an order of magnitude more accurate. The D-LSPF thus enables real-time data assimilation with uncertainty quantification for the test cases demonstrated in this paper.
Original language | English |
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Article number | 19447 |
Journal | Scientific Reports |
Volume | 14 |
Issue number | 1 |
DOIs | |
Publication status | Published - 21 Aug 2024 |
Bibliographical note
Publisher Copyright:© The Author(s) 2024.
Funding
This work is supported by the Dutch National Science Foundation NWO under the grant number 629.002.213. The authors also acknowledge Oracle for providing compute credits for their cloud platform, Oracle Cloud Infrastructure. The authors furthermore acknowledge the help and code provided by Associate professor Allan Peter Engsig-Karup for the results related to the harmonic wave generation over a submerged bar test case.
Funders | Funder number |
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Oracle | |
Dutch National Science Foundation NWO | 629.002.213 |
Keywords
- Data assimilation
- Partial differential equations
- Particle filter
- Transformers
- Wasserstein autoencoders