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Enhancement of PIV measurements via physics-informed neural networks
Brandenburg Tech Univ Cottbus, Dept Aerodynam & Fluid Mech, Senftenberg, Germany..
KTH, School of Engineering Sciences (SCI), Centres, Linné Flow Center, FLOW. KTH, School of Engineering Sciences (SCI), Engineering Mechanics.ORCID iD: 0000-0003-3650-4107
Brandenburg Tech Univ Cottbus, Dept Aerodynam & Fluid Mech, Senftenberg, Germany..
Brandenburg Tech Univ Cottbus, Dept Aerodynam & Fluid Mech, Senftenberg, Germany..
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2023 (English)In: Measurement science and technology, ISSN 0957-0233, E-ISSN 1361-6501, Vol. 34, no 4, article id 044002Article in journal (Refereed) Published
Abstract [en]

Physics-informed neural networks (PINN) are machine-learning methods that have been proved to be very successful and effective for solving governing equations of fluid flow. In this work we develop a robust and efficient model within this framework and apply it to a series of two-dimensional three-component stereo particle-image velocimetry (PIV) datasets, to reconstruct the mean velocity field and correct measurements errors in the data. Within this framework, the PINNs-based model solves the Reynolds-averaged-Navier-Stokes equations for zero-pressure-gradient turbulent boundary layer (ZPGTBL) without a prior assumption and only taking the data at the PIV domain boundaries. The turbulent boundary layer (TBL) data has different flow conditions upstream of the measurement location due to the effect of an applied flow control via uniform blowing. The developed PINN model is very robust, adaptable and independent of the upstream flow conditions due to different rates of wall-normal blowing while predicting the mean velocity quantities simultaneously. Hence, this approach enables improving the mean-flow quantities by reducing errors in the PIV data. For comparison, a similar analysis has been applied to numerical data obtained from a spatially-developing ZPGTBL and an adverse-pressure-gradient TBL over a NACA4412 airfoil geometry. The PINNs-predicted results have less than 1% error in the streamwise velocity and are in excellent agreement with the reference data. This shows that PINNs has potential applicability to shear-driven turbulent flows with different flow histories, which includes experiments and numerical simulations for predicting high-fidelity data.

Place, publisher, year, edition, pages
IOP Publishing , 2023. Vol. 34, no 4, article id 044002
Keywords [en]
deep learning, physics-informed neural networks, particle image velocimetry, turbulence, flow control
National Category
Fluid Mechanics
Identifiers
URN: urn:nbn:se:kth:diva-324059DOI: 10.1088/1361-6501/aca9ebISI: 000919199100001Scopus ID: 2-s2.0-85145877831OAI: oai:DiVA.org:kth-324059DiVA, id: diva2:1738521
Note

QC 20230222

Available from: 2023-02-22 Created: 2023-02-22 Last updated: 2025-02-09Bibliographically approved

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Eivazi, HamidrezaVinuesa, Ricardo

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