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Three-dimensional variational data assimilation of separated flows using time-averaged experimental data

Three-dimensional variational data assimilation of separated flows using time-averaged experimental data
Three-dimensional variational data assimilation of separated flows using time-averaged experimental data
We present a novel framework for assimilating planar PIV experimental data using a variational approach to enhance the predictions of the Spalart–Allmaras RANS turbulence model. Our method applies three-dimensional constraints to the assimilation of mean velocity data, incorporating a corrective forcing term in the momentum equations. The advantages of this approach are highlighted through a direct comparison with traditional two-dimensional assimilation using the same experimental dataset. We demonstrate its efficacy by assimilating the deep stall flow over a NACA0012 airfoil at a $15^\circ$ angle of attack and a chord-based Reynolds number of $Re_c \approx 7.5 \times 10^4$. We find that in two-dimensional assimilation, the corrective forcing term compensates not only for physical modeling errors but also for the lack of divergence in the experimental data. This conflation makes it difficult to isolate the effects of measurement inconsistencies from deficiencies in the turbulence model. In contrast, three-dimensional assimilation allows the corrective forcing term to primarily address experimental setup errors while enabling the turbulence model to more accurately capture the flow physics. We establish the benefits of three-dimensional assimilation through its ability to account for the inherent three-dimensionality of the flow, thereby enabling more physically consistent reconstructions of key quantities such as pressure, lift force, and eddy viscosity.
2469-990X
Cadambi Padmanaban, Uttam
234ed0b7-6b0a-4582-b548-5fe9cf86c8fd
Ganapathisubramani, Bharath
5e69099f-2f39-4fdd-8a85-3ac906827052
Symon, Sean
2e1580c3-ba27-46e8-9736-531099f3d850
Cadambi Padmanaban, Uttam
234ed0b7-6b0a-4582-b548-5fe9cf86c8fd
Ganapathisubramani, Bharath
5e69099f-2f39-4fdd-8a85-3ac906827052
Symon, Sean
2e1580c3-ba27-46e8-9736-531099f3d850

Cadambi Padmanaban, Uttam, Ganapathisubramani, Bharath and Symon, Sean (2025) Three-dimensional variational data assimilation of separated flows using time-averaged experimental data. Physical Review Fluids. (doi:10.1103/q7sd-q3dn). (In Press)

Record type: Article

Abstract

We present a novel framework for assimilating planar PIV experimental data using a variational approach to enhance the predictions of the Spalart–Allmaras RANS turbulence model. Our method applies three-dimensional constraints to the assimilation of mean velocity data, incorporating a corrective forcing term in the momentum equations. The advantages of this approach are highlighted through a direct comparison with traditional two-dimensional assimilation using the same experimental dataset. We demonstrate its efficacy by assimilating the deep stall flow over a NACA0012 airfoil at a $15^\circ$ angle of attack and a chord-based Reynolds number of $Re_c \approx 7.5 \times 10^4$. We find that in two-dimensional assimilation, the corrective forcing term compensates not only for physical modeling errors but also for the lack of divergence in the experimental data. This conflation makes it difficult to isolate the effects of measurement inconsistencies from deficiencies in the turbulence model. In contrast, three-dimensional assimilation allows the corrective forcing term to primarily address experimental setup errors while enabling the turbulence model to more accurately capture the flow physics. We establish the benefits of three-dimensional assimilation through its ability to account for the inherent three-dimensionality of the flow, thereby enabling more physically consistent reconstructions of key quantities such as pressure, lift force, and eddy viscosity.

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Accepted/In Press date: 22 December 2025

Identifiers

Local EPrints ID: 508460
URI: http://eprints.soton.ac.uk/id/eprint/508460
ISSN: 2469-990X
PURE UUID: 2725e0d4-982c-4467-a0de-cdebd57a2995
ORCID for Bharath Ganapathisubramani: ORCID iD orcid.org/0000-0001-9817-0486

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Date deposited: 22 Jan 2026 17:42
Last modified: 23 Jan 2026 02:42

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Author: Uttam Cadambi Padmanaban
Author: Sean Symon

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