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A Priori Convergence Estimates for a Rough Poisson-Dirichlet Problem with Natural Vertical Boundary Conditions

In: Advances in Mathematical Fluid Mechanics

Author

Listed:
  • Eric Bonnetier

    (LJK-IMAG, UMR 5523 CNRS)

  • Didier Bresch

    (LAMA, UMR 5127 CNRS, Université de Savoie)

  • Vuk Milišić

    (LJK-IMAG, UMR 5523 CNRS)

Abstract

Stents are medical devices designed to modify blood flow in aneurysm sacs, in order to prevent their rupture. Some of them can be considered as a locally periodic rough boundary. In order to approximate blood flow in arteries and vessels of the cardio-vascular system containing stents, we use multi-scale techniques to construct boundary layers and wall laws. Simplifying the flow we turn to consider a 2-dimensional Poisson problem that conserves essential features related to the rough boundary. Then, we investigate convergence of boundary layer approximations and the corresponding wall laws in the case of Neumann type boundary conditions at the inlet and outlet parts of the domain. The difficulty comes from the fact that correctors, for the boundary layers near the rough surface, may introduce error terms on the other portions of the boundary. In order to correct these spurious oscillations, we introduce a vertical boundary layer. Trough a careful study of its behavior, we prove rigorously decay estimates.We then construct complete boundary layers that respect the macroscopic boundary conditions. We also derive error estimates in terms of the roughness size ε either for the full boundary layer approximation and for the corresponding averaged wall law.

Suggested Citation

  • Eric Bonnetier & Didier Bresch & Vuk Milišić, 2010. "A Priori Convergence Estimates for a Rough Poisson-Dirichlet Problem with Natural Vertical Boundary Conditions," Springer Books, in: Rolf Rannacher & Adélia Sequeira (ed.), Advances in Mathematical Fluid Mechanics, pages 105-134, Springer.
  • Handle: RePEc:spr:sprchp:978-3-642-04068-9_7
    DOI: 10.1007/978-3-642-04068-9_7
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