Inverse problem with "hidden" unknown parameter #973
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gcappellini
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Can you use a simple example to demonstrate your question "the unknown parameter doesn't appear in the PDE formulation, but in a previous step."? |
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Dear all,
I am trying to implement a Time-dependent PDE inverse problem, where the unknown parameter doesn't appear in the PDE formulation, but in a previous step.
The equation is the Okajima's adimensionalized version of Pennes' Bioheat Eq (eq. 22 with n=0).
I want to import a dataset of thermal measurements, then adimensionalize it using certain Ci coefficients that depend on the variable ωb.
The thermal measurements dataset is generated from a similar Time-dependent (direct) PDE problem, with a constant, arbitrary value of ωb.
In the inverse problem, the variable ωb is initialized with a different value.
I want the network to recover the arbitrary value imposed in the direct problem for the generation of thermal measurements, but when I run the code, the variable value doesn't change.
Here you can find the code and the pretrained direct model.
Is there a way for the gradient to reach ωb only, or do I have to initialize other variables?
Hope it is all clear.
Thanks,
Guglielmo
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