Using graph neural networks to reconstruct charged pion showers in the CMS High Granularity Calorimeter
Journal
Journal of Instrumentation
Journal Volume
19
Journal Issue
11
Start Page
P11025
ISSN
1748-0221
Date Issued
2024-11-01
Author(s)
Abstract
A novel method to reconstruct the energy of hadronic showers in the CMS High Granularity Calorimeter (HGCAL) is presented. The HGCAL is a sampling calorimeter with very fine transverse and longitudinal granularity. The active media are silicon sensors and scintillator tiles readout by SiPMs and the absorbers are a combination of lead and Cu/CuW in the electromagnetic section, and steel in the hadronic section. The shower reconstruction method is based on graph neural networks and it makes use of a dynamic reduction network architecture. It is shown that the algorithm is able to capture and mitigate the main effects that normally hinder the reconstruction of hadronic showers using classical reconstruction methods, by compensating for fluctuations in the multiplicity, energy, and spatial distributions of the shower's constituents. The performance of the algorithm is evaluated using test beam data collected in 2018 prototype of the CMS HGCAL accompanied by a section of the CALICE AHCAL prototype. The capability of the method to mitigate the impact of energy leakage from the calorimeter is also demonstrated.
Subjects
Calorimeters
Pattern recognition
cluster finding
calibration and fitting methods
Performance of High Energy Physics Detectors
Si microstrip and pad detectors
Publisher
IOP Publishing
Type
journal article