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Convolutional feature-enhanced physics-informed neural networks for the spatio-temporal reconstruction of two-phase flows

Dreisbach, Maximilian ORCID iD icon 1; Kiani, Elham; Kriegseis, Jochen ORCID iD icon 1; Karniadakis, George; Stroh, Alexander ORCID iD icon 1
1 Institut für Strömungsmechanik (ISTM), Karlsruher Institut für Technologie (KIT)

Abstract (englisch):

Two-phase flow phenomena play a key role in numerous technical processes, including hydrogen fuel cells, spray cooling techniques and combustion. Optical measurement techniques, such as shadowgraphy and particle image velocimetry, provide insight through the measurement of the gas-liquid interface and internal velocity fields, respectively. However, these experiments are constrained to planar measurements, whereas the dynamics of the flow are generally three-dimensional (3D). Deep learning techniques based on convolutional neural networks offer a pathway for volumetric reconstruction of the experiments by leveraging spatial structure in the images and context-rich feature extraction. Physics-informed neural networks (PINNs) emerge as a promising alternative, as they incorporate prior knowledge encoded in the networks by training on governing equations, allowing for accurate predictions even from limited data. We propose a novel approach for convolutional feature-enhanced PINNs for the spatio-temporal reconstruction of two-phase flows from shadowgraphy images. The capability of the novel method is demonstrated by the accurate reconstruction of the 3D gas-liquid interface, velocity and pressure fields for an impinging droplet based on planar experimental data.


Zugehörige Institution(en) am KIT Institut für Strömungsmechanik (ISTM)
Publikationstyp Vortrag
Publikationsdatum 25.11.2024
Sprache Englisch
Identifikator KITopen-ID: 1000182570
Veranstaltung 77th Annual Meeting of the Division of Fluid Dynamics (2024), Salt Lake City, UT, USA, 24.11.2024 – 26.11.2024
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