Steady-state solution for system of parabolic PDEs?
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Eric Roden
am 2 Nov. 2022
Kommentiert: Torsten
am 5 Nov. 2022
Is there an established method for finding the steady-state solution for a system of parabolic PDEs? I know how to use the Matlab ODE solvers to obtain transient-state solultions via Method of Lines (MoL), but am wondering if someone has come up with a reliable, robust strategy for going directly to a steady-state solution. As an example, think of a system of two PDEs describing the diffusion/reaction behavior of two different solutes along a 1-dimensional axis. I have tried using fsolve to obtain such a solution for where all the dydt's in the MoL are set equal to zero. This approach worked in some cases, but failed in others. Any suggestions will be much appreciated.
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Torsten
am 3 Nov. 2022
Since this gives a system of second-order ODEs in general, the usual code to try would be "bvp4c".
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Torsten
am 5 Nov. 2022
Bearbeitet: Torsten
am 5 Nov. 2022
If so I would like to learn more about this, although I found the Sincovec & Madson (1975) paper pretty difficult to follow.
It's simply the implementation of formula (3.1(c)) for r>0 and (3.2(c)) for r=0.
Meanwhile, as another check on things, I implemented the test problem in pdepe (code attached), and it produced results identical to my ode15s implementation.
I get the same results from pdepe as from the two other codes (bvp4c and ode15s).
You always set the Dirichlet boundary condition at r=0 instead of r=R. This is not possible in a spherical coordinate system.
global nx npde neqn r dx x C1R C2R nu1 nu2 D K1 K2 IC1
r = 1;
nx = 100;
dx = r/nx;
x=linspace(dx,r,nx);
npde = 2;
neqn = npde*nx;
C1R = 4e-4;
C2R = 5e-4;
nu1 = 1.8e-4;
nu2 = 3.6e-5;
D = 0.054;
K1 = 1e-6;
K2 = 2e-4;
IC1 = 1e-6;
tspan=(0:1000);
options = odeset('RelTol',1e-3,'AbsTol',1e-9,'NormControl','off','InitialStep',1e-7);
u = pdepe(2,@pdefun,@pdeic,@pdebc,x,tspan,options);
C1 = u(:,:,1);
C2 = u(:,:,2);
figure
plot(x,C1(end,:),x,C2(end,:));
ylim([0 5.5e-4])
legend('C1','C2')
function [c,f,s] = pdefun(x,t,u,dudx)
global r nu1 nu2 D K1 K2 IC1
c(1)=1;
c(2)=1;
f(1) = D*dudx(1);
f(2) = D*dudx(2);
s(1) = - nu1*u(1)/(K1+u(1));
s(2) = - IC1/(IC1+u(1))*nu2*u(2)/(K2+u(2));
c=c';
f=f';
s=s';
end
function u0 = pdeic(x)
global C1R C2R
u0(1) = C1R;
u0(2) = C2R;
u0=u0';
end
function [pl,ql,pr,qr] = pdebc(xl,ul,xr,ur,t)
global C1R C2R
pr(1) = ur(1) - C1R;
pr(2) = ur(2) - C2R;
qr(1) = 0;
qr(2) = 0;
pl(1) = 0;
pl(2) = 0;
ql(1) = 1;
ql(2) = 1;
pl=pl';
ql=ql';
pr=pr';
qr=qr';
end
function [x,isterm,dir] = pdevents(m,t,xmesh,umesh)
du = fnss(t,y);
x = norm(dy) - 1e-9;
isterm = 1;
dir = 0;
end
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