15–17 Jan 2020
Kimmel Center for University Life
America/New_York timezone

Fast Calorimeter Simulation in ATLAS with DNNs

15 Jan 2020, 17:05
20m
KC 802 (Kimmel Center for University Life)

KC 802

Kimmel Center for University Life

60 Washington Square S, New York, NY 10012

Speaker

Dalila Salamani (Universite de Geneve (CH))

Description

The ATLAS physics program relies on very large samples of GEANT4 simulated events, which provide a highly detailed and accurate simulation of the ATLAS detector. But this accuracy comes with a high price in CPU, predominantly caused by the calorimeter simulation. The sensitivity of many physics analyses is already limited by the available Monte Carlo statistics and will be even more so in the future. Therefore, sophisticated fast simulation tools are developed. Prototypes are being developed using cutting edge machine learning approaches to learn the appropriate calorimeter response, which are expected to improve modeling of correlations within showers. Two different approaches, using Variational Auto-Encoders or Generative Adversarial Networks, are trained to model the shower simulation. These new tools are described and first results presented.

Author

Dalila Salamani (Universite de Geneve (CH))

Co-authors

Tobias Golling (Universite de Geneve (CH)) Graeme A Stewart (CERN) Michael Duehrssen-Debling (CERN) Johnny Raine (Universite de Geneve (CH))

Presentation materials