Okay, good morning. We started dealing with the Navier-Stokes equation and the Navier-Stokes
equation is now our first real nonlinear problem in some sense and it's actually not so easy
to deal with so we have to go through a bit of technical considerations. So what are the
major problems? Let's first start with a stationary version and then later on extended to the
in-stationary version. We have seen, so what do we need? As we have found out with dealing
with linear problems, we need approximate solutions where we can be sure that those
solutions exist. Linear problems are basically either problems we know already or even more
simple finite dimensional problems and because of the linearity existence was no problem.
So also there we have now a sort of a problem. We will finally then deal with finite dimensional
nonlinear problems and have to see which guarantees us an existence for this problem but this
is a minor point. Then we need convergence and typically we get convergence by a priori
bounds. We had already a little bit of a look in this direction and we saw as far as spatial
regularity is required, that is if we aim for H1 regularity and H1 bounds, this seems
not to be so difficult because there the nonlinear convective part goes away. So we are basically
in the linear Stokes equation. On the other hand, what about the time derivative? We saw
also that apparently it is not so easy to test with the time derivative and to get an
estimate for the time derivative which is L2 in time. So this we will not get. Okay,
that is the side of the a priori estimates. Now what about convergence? Up to now we only
argued with weak convergence and we could do this because our formulations were linear
formulations for formulation in terms of functionals. But now we have a nonlinear term and the whole
thing. Nonlinear convergence times nonlinear convergence does not lead to anything as you
might remember from functional analysis. So we need at some place strong convergence.
So we need compact embeddings of spaces which gives us a strong convergence. We had had
one theorem, the one of Aubin-Léonce which gives us such a result which tells us if we
have a Gelfand triple and we are in L2, the function is L2 in time in the good space and
the time derivative is L2 in time in the larger space then we can get a compact embedding
in between, a spatial space in between. But we do not have an L2 estimate for the time
derivative. So we need weaker notions of time derivatives. So we need fractional time derivatives.
That is one technical point and then we need more refined compact embedding theorems. That
is the technical program we would like to look at today. So we start with a stationary
equation as I said. So the stationary equation and if we now, so y is our underlying space,
so in our case is the H1, 0, omega, Rn. So we have Dirichlet boundary conditions vector
field V equals to 0 at the boundary and what we look at, we look at the divergence free
vector fields. So V is the subspace of those vector fields for which the divergence is
0 and we know already if we work within those tests, so that is the space where we are looking
for, that is the space where the solution lives in, we are looking for and if we take
the same space as a test function then we get the pressure free stationary Navier-Stokes
equation in the sense now our time derivative is gone, now I test with a test function phi
from this space, the vector Laplacian becomes gradient times gradient. Now we get here as
we defined last time the nonlinear term coming from the convective part where we have V
giving the vector field which drives the quantity and the quantity is the vector field and here
we get the test function. So actually we have a tri-linear form, a product of three terms
including the fact that written point wise we have a product form that is we have a nonlinear
term and then of course the right hand side with some f phi and the pressure term, the
gradient P term is gone by partial integration taking advantage of the divergence freeness
of the test function. So if we can solve this problem this is quite ok because then most
of the further work we did already in conjunction with the Stokes problem, namely what does
that mean if we now define let's say a functional which is just minus Laplacian of u, so let's
call the solution of this problem u. Now assume we have a solution and we look at minus Laplacian
of u and so this is then something in a this is in the dual space of y and correspondingly
Presenters
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Offener Zugang
Dauer
01:17:32 Min
Aufnahmedatum
2018-05-17
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2018-05-17 15:38:37
Sprache
de-DE