2024
DOI: 10.1088/1748-0221/19/06/p06002
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The optimal use of segmentation for sampling calorimeters

Fernando Torales Acosta,
Bishnu Karki,
Piyush Karande
et al.

Abstract: One of the key design choices of any sampling calorimeter is how fine to make the longitudinal and transverse segmentation. To inform this choice, we study the impact of calorimeter segmentation on energy reconstruction. To ensure that the trends are due entirely to hardware and not to a sub-optimal use of segmentation, we deploy deep neural networks to perform the reconstruction. These networks make use of all available information by representing the calorimeter as a point cloud. To demonst… Show more

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