having a trainable parameter in the reference solution #1746
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Burhan3228
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Reference solution cannot have unknown variables. |
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Dear all, in the code below, i have the reference solution as:
` def fun_initnewTF(x):
Here, US_trainable is my trainable parameter , in other word the reference solution itself depends on the trainable parameter. When i use it the data as:
data = dde.data.TimePDE( geomtime, pde, [bc,ic,observe_y_t_vals_except_inits], num_domain=1024, num_boundary=16, num_initial=256, solution=reference_solutionTF, anchors=combine_except_inits, train_distribution="Sobol", num_test=10000 )
Apparently, it doesn't accept the reference solution in tensorflow environment and it asks its numpy version. Here is the problem: I d like to have US_trainable to be trained during training and the reference solution therefore also need to be adjusted accordingly during training. how can i achieve it? thanks in advance.
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