ML-assisted versatile approach to Calorimeter R&D
Advanced detector R&D for both new and ongoing experiments in HEP requires performing computationally intensive and detailed simulations as part of the detector-design optimisation process. We propose a versatile approach to this task that is based on machine learning and can substitute the most...
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Zusammenfassung: | Advanced detector R&D for both new and ongoing experiments in HEP requires
performing computationally intensive and detailed simulations as part of the
detector-design optimisation process. We propose a versatile approach to this
task that is based on machine learning and can substitute the most
computationally intensive steps of the process while retaining the GEANT4
accuracy to details. The approach covers entire detector representation from
the event generation to the evaluation of the physics performance. The approach
allows the use of arbitrary modules arrangement, different signal and
background conditions, tunable reconstruction algorithms, and desired physics
performance metrics. While combined with properties of detector and electronics
prototypes obtained from beam tests, the approach becomes even more versatile.
We focus on the Phase II Upgrade of the LHCb Calorimeter under the requirements
on operation at high luminosity. We discuss the general design of the approach
and particular estimations, including spatial and energy resolution for the
future LHCb Calorimeter setup at different pile-up conditions. |
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DOI: | 10.48550/arxiv.2005.07700 |