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Estimating divergence‐free flows via neural networks

Kabanov, Dmitry I.; Espath, Luis; Kiessling, Jonas; Tempone, Raul F.

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Authors

Dmitry I. Kabanov

Jonas Kiessling

Raul F. Tempone



Abstract

We apply neural networks to the problem of estimating divergence-free velocity flows from given sparse observations. Following the modern trend of combining data and models in physics-informed neural networks, we reconstruct the velocity flow by training a neural network in such a manner that the network not only matches the observations but also approximately satisfies the divergence-free condition. The assumption is that the balance between the two terms allows to obtain the model that has better prediction performance than a usual data-driven neural network. We apply this approach to the reconstruction of truly divergence-free flow from the noiseless synthetic data and to the reconstruction of wind velocity fields over Sweden.

Citation

Kabanov, D. I., Espath, L., Kiessling, J., & Tempone, R. F. (2022, August). Estimating divergence‐free flows via neural networks. Presented at 92nd Annual Meeting of the International Association of Applied Mathematics and Mechanics (GAMM), Virtual conference

Presentation Conference Type Conference Paper (published)
Conference Name 92nd Annual Meeting of the International Association of Applied Mathematics and Mechanics (GAMM)
Start Date Aug 15, 2022
End Date Aug 19, 2022
Acceptance Date Dec 14, 2021
Online Publication Date Dec 14, 2021
Publication Date 2021-12
Deposit Date Dec 6, 2022
Publicly Available Date Dec 8, 2022
Journal PAMM
Electronic ISSN 1617-7061
Publisher Wiley-VCH Verlag
Peer Reviewed Peer Reviewed
Volume 21
Issue 1
Article Number e202100173
DOI https://doi.org/10.1002/pamm.202100173
Keywords Electrical and Electronic Engineering; Atomic and Molecular Physics, and Optics
Public URL https://nottingham-repository.worktribe.com/output/7711301
Publisher URL https://onlinelibrary.wiley.com/doi/10.1002/pamm.202100173

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