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A conditional generative models for phase spaces of Monte Carlo simulators of medical accelerators

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PhSpGAN

A conditional generative models for phase spaces of Monte Carlo simulators of medical accelerators

Script convertPHSPtoHDF5.py us used to prepare training data (in a hdf file) based on photons extracted from IAEA phase spaces generated by MC simulator (Primo in our case: https://primoproject.net/primo/). The hdf5 was prepared for 567 phase spaces and is quite big (about 0.5TB).

Script generateFromHDF5.py is used to test the process of particles generation from a hdf5 file created by convertPHSPtoHDF5.py

To train a RoCGAN, run: python3 trainCGAN.py

To generate photons from a trained model run e.g.: python3 testCGAN.py 5.65 1.25 2.25 3500

This will generate 3500 batches of 100000 photons corresponding to a phase space for primary electrons energy of 5.65 MeV, spot size of 1.25 mm, abd angular divergence of 2.25 degrees.

To train and test a CGAN, just replace imports in testCGAN.py and trainCGAN.py from "import libRoCGAN" to "import libCGAN"

The trained models and model parameters are in, respectively, *_model.pth and params.pkl files. Durin the testong phase only the generator model, saved in Gen_model.pth is used.

The normalization file normalizacja.dat is used only during the training, together with the hdf5 file with real photons.

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A conditional generative models for phase spaces of Monte Carlo simulators of medical accelerators

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