Nonlinear least-squares fitting of curve described by PDEs

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Xen
Xen el 20 de Jul. de 2017
Editada: Torsten el 21 de Jul. de 2017
Hi people. I would like to fit a curve described by a system of two 2nd degree partial differential equations (PDEs) using lsqnonlin. While it is simple to write your anonymous function when you have a single equation for your model, how can you do it when you have a system of PDEs, which do not have an analytic solution for the parameter of interest (the one to be fitted on the experimental data)? The PDEs have a number of free variables for which I would like to get the values that best fit the data. I could also try a better method than lsqnonlin, if there is one. Thanks

Respuestas (1)

Torsten
Torsten el 20 de Jul. de 2017
Although the description here is for ODEs, it can easily be adopted for PDEs:
https://de.mathworks.com/matlabcentral/answers/43439-monod-kinetics-and-curve-fitting
Best wishes
Torsten.
  4 comentarios
Xen
Xen el 21 de Jul. de 2017
Despite that I can solve the PDEs for a random set of parameter values, I can't get it to work with lsqcurvefit. How can I pass my initial parameter estimates in the anonymous PDE function? I am thinking of just solve it for random parameters' combinations, compare with my experimental data and manually find the best solution...
Torsten
Torsten el 21 de Jul. de 2017
Editada: Torsten el 21 de Jul. de 2017
The "Anonymous Function" approach is the most flexible way to pass extra parameters to the PDE functions:
https://de.mathworks.com/help/optim/ug/passing-extra-parameters.html
Best wishes
Torsten.

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