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Update smoothed projection function #2970
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Some MPI tests failing? |
Looks like those MPI failures are also on |
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Here we update the smoothed projection function (
meep.adjoint.smoothed_projection()
) to be smooth as the interface leaves the pixel. We update the variable nomenclature to match our paper too.I reran all the waveguide crossing and the diffraction grating experiments. All the results (e.g. optimization evolutions, final design topology) look exactly the same (and I confirmed the new projection function is indeed being used here). So the CCSA algorithm is indeed robust to that kink we accidentally introduced in the function.
@hammy4815 can you try this new projection function on your experiment with gridap?