Fast Data-Driven Simulation of Cherenkov Detectors Using Generative Adversarial Networks
May 28, 20196 pages
Published in:
- J.Phys.Conf.Ser. 1525 (2020) 1, 012097
Contribution to:
- Published: Jul 8, 2020
e-Print:
- 1905.11825 [physics.ins-det]
Experiments:
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Abstract: (arXiv)
The increasing luminosities of future Large Hadron Collider runs and next generation of collider experiments will require an unprecedented amount of simulated events to be produced. Such large scale productions are extremely demanding in terms of computing resources. Thus new approaches to event generation and simulation of detector responses are needed. In LHCb, the accurate simulation of Cherenkov detectors takes a sizeable fraction of CPU time. An alternative approach is described here, when one generates high-level reconstructed observables using a generative neural network to bypass low level details. This network is trained to reproduce the particle species likelihood function values based on the track kinematic parameters and detector occupancy. The fast simulation is trained using real data samples collected by LHCb during run 2. We demonstrate that this approach provides high-fidelity results.Note:
- Proceedings for 19th International Workshop on Advanced Computing and Analysis Techniques in Physics Research. (Fixed typos and added one missing reference in the revised version.)
- Cherenkov counter
- LHC-B
- neural network
- data analysis method
- statistical analysis
- performance
- numerical calculations
- programming
References(12)
Figures(9)