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Physics-informed, boundary-constrained Gaussian process regression for the reconstruction of fluid flow fields

Published: July 23, 2025 | arXiv ID: 2507.17582v1

By: Adrian Padilla-Segarra , Pascal Noble , Olivier Roustant and more

Potential Business Impact:

Makes computer models of air flow more real.

Business Areas:
Simulation Software

Gaussian process regression techniques have been used in fluid mechanics for the reconstruction of flow fields from a reduction-of-dimension perspective. A main ingredient in this setting is the construction of adapted covariance functions, or kernels, to obtain such estimates. In this paper, we derive physics-informed kernels for simulating two-dimensional velocity fields of an incompressible (divergence-free) flow around aerodynamic profiles. These kernels allow to define Gaussian process priors satisfying the incompressibility condition and the prescribed boundary conditions along the profile in a continuous manner. Such physical and boundary constraints can be applied to any pre-defined scalar kernel in the proposed methodology, which is very general and can be implemented with high flexibility for a broad range of engineering applications. Its relevance and performances are illustrated by numerical simulations of flows around a cylinder and a NACA 0412 airfoil profile, for which no observation at the boundary is needed at all.

Page Count
22 pages

Category
Physics:
Fluid Dynamics