How to solve multiple ODEs to fit empirical observations by optimizing multiple constants?
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I have 3 ODEs and 2 parameters to be optimized to fit the ODE's to given data..
eg dA/dt = -(K1+K2)*A;
dB/dt = K1*A;
dC/dt = K2*A
where t= time and K1,K2 are constants
I have been given A,B and C vs time data..I must manipulate K1 and K2 to match the data. How do I go about doing this using optimization toolbox preferably fmincon? Please suggest a sample code if possible..
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Ryan G
le 31 Juil 2012
0 votes
I'm not sure how you would do this with MATLAB only but simulink design optimization would probably handle this fairly easy.
Bjorn Gustavsson
le 31 Juil 2012
0 votes
If the ODEs are that simple it should just be to integrate them analytically, then you'd simply end up with a well overdetermined least square fitting problem for K1 and K2 (perhaps you'd get A(0), B(0) and C(0) in there as unknowns too).
If the ODEs are a bit more complicated you could try a finite difference aproximation.
Star Strider
le 31 Juil 2012
Modifié(e) : Star Strider
le 31 Juil 2012
If you are looking for a way to use an ODE solver with an objective function, I have used this strategy:
function Y = objfun(B, t) % Objective function
[T,Ymtx] = ode45(@DifEq, t, x0); % Do the ODE integration
function dY = DifEq(t, x) % Function ode45 integrates DifEq
ydot(1) = . . .;
. . .
ydot(n) = . . .;
dY = ydot
end
Y = Ymtx(:,2); % If Ymtx has more than one column, return the one you want here
end
Note that you do not have to pass the parameter vector B specifically to DifEq, since DifEq can access the B vector since it is part of objfcn.
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