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Pré-Publication, Document De Travail Année : 2009

Global Regularity for the Navier-Stokes equations with large, slowly varying initial data in the vertical direction

Résumé

In a recent article, J.-Y. Chemin, I. Gallagher and M. Paicu obtained a class of large initial data generating a global smooth solution to the three dimensional, incompressible Navier-Stokes equations. This data varies slowly in the vertical direction (is a function on $\epsilon x_3$) and has a norm which blows up as the small parameter goes to zero. This type of initial data can be seen as the ``ill prepared" case (in opposite with the ``well prepared" case which was treated previously by J.-Y. Chemin and I. Gallagher). In that paper, the fluid evolves in a special domain, namely $\Omega=T^2_h\times\R_v$. The choice of a periodic domain in the horizontal variable plays an important role. The aim of this article is to study the case where the fluid evolves in the full spaces $\R^3$, case where we need to overcome the difficulties coming from very low horizontal frequencies. We consider in this paper an intermediate situation between the ``well prepared" case and ``ill prepared'' situation (the norms of the horizontal components of initial data are small but the norm of the vertical component blows up as the small parameter goes to zero). The proof uses the analytical-type estimates and the special structure of the nonlinear term of the equation.
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Dates et versions

hal-00371487 , version 1 (28-03-2009)

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Marius Paicu, Zhifei Zhang. Global Regularity for the Navier-Stokes equations with large, slowly varying initial data in the vertical direction. 2009. ⟨hal-00371487⟩
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