Determine locations struct used in PDE solver
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Hi,
I'm trying to solve a 2D PDE where the 'c' coefficient is a function of the (x,y) coordinate. In order to specify this coefficient, I'm trying to create a matrix that is of length N by M where N are the number of x points and M the number of y points used to solve the PDE. I can then pass this matrix to the PDE solver by calling a function that returns the value of the coefficient at (x,y).
Unfortunately I need to populate the matrix outside of the function call, since I am using the PDE solver to fit for some data so I need to be able to modify it in between function calls. Therefore, I need to know how many points I need to fit for.
I noticed I cannot access the locations struct before calling solvepde and that the number of (x,y) points is larger than the number of nodes in my mesh, so I can't form the matrix needed or find the value for the (x,y) pair for the C coefficient. Is it somehow possible to pre-compute the coordinates and number of points that will be used in the PDE solver?
Thanks in advance!
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Accepted Answer
Ravi Kumar
on 28 Aug 2019
You can write that code that you indented to use to "create a matrix that is of length N by M where ..." in the function itself. These points are Gauss point coordinates, you don't need to know them in advance, your funcion should use them to create the value of c at those points.
5 Comments
Ravi Kumar
on 29 Aug 2019
Edited: Ravi Kumar
on 29 Aug 2019
Thanks for the additional info.
The sample code indicates that you are solving a single PDE in 2-D domain. You are trying to find 'c' as a matrix in a pre-defined 2-D space (the geometric domain). That is, your final outcome would be a matrix of c at known x and y locations. If this is your goal, then the following approach might work for you.
For simplicity, lets say you are working with a unit square domain with original as one of its corner. Define in initial c value with, independent of PDE solvers call location. Say you have grid of 0.1, that is xg = 0:0.1:1, yg = 0:0.1:1, the define c0 as:
c0 = 5*ones(numel(xg));
The optimizer, fminsearch, calls simulatePDE with an updated cmat in each iteration, use this cmat and the KNOWN (xg,yg) to construct a gridded interpolant:
[xg,yg] = ndgrid(0:0.1:1);
cInterpolant = griddedInterpolant(xg,yg,cmat);
Then construct the c-coefficient function handle to interpolate and find the values of c at the points requested by solver (location.x,location.y):
c = @(locations,~) cInterpolant(location.x,location.y)
This should set up the problem the way you want.
Note 2: The way you have set the optimization problem might not be ideal, you have as many parameters as elements in cmat. I think a better option would be to define a function with undermined coefficient and optimize to determine the coefficient.
Regards,
Ravi
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