Three dimensional Generative Adversarial Networks for fast simulation

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Abstract

We present the first application of three-dimensional convolutional Generative Adversarial Network to High Energy Physics simulation. We generate three-dimensional images of particles depositing energy in high granularity calorimeters. This is the first time such an approach is taken in HEP where most of data is three-dimensional in nature but it is customary to convert it into two-dimensional slices. The present work proves the success of using three dimensional convolutional GAN. Energy showers are well reproduced in all dimensions and show a good agreement with standard techniques (Geant4 detailed simulation). We also demonstrate the ability to condition training on several parameters such as particle type and energy. This work aims at proving that deep learning techniques represent a valid fast alternative to standard Monte Carlo approaches. It is part of the GeantV project.

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Carminati, F., Gheata, A., Khattak, G., Mendez Lorenzo, P., Sharan, S., & Vallecorsa, S. (2018). Three dimensional Generative Adversarial Networks for fast simulation. In Journal of Physics: Conference Series (Vol. 1085). IOP Publishing Ltd. https://doi.org/10.1088/1742-6596/1085/3/032016

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