Point Cloud Deep Learning Methods for Particle Shower Reconstruction in the DHCAL
Precision measurement of hadronic final states presents complex experimental challenges. The study explores the concept of a gaseous Digital Hadronic Calorimeter (DHCAL) and discusses the potential benefits of employing Graph Neural Network (GNN) methods for future collider experiments. In particula...
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Zusammenfassung: | Precision measurement of hadronic final states presents complex experimental
challenges. The study explores the concept of a gaseous Digital Hadronic
Calorimeter (DHCAL) and discusses the potential benefits of employing Graph
Neural Network (GNN) methods for future collider experiments. In particular, we
use GNN to describe calorimeter clusters as point clouds or a collection of
data points representing a three-dimensional object in space. Combined with
Graph Attention Transformers (GATs) and DeepSets algorithms, this results in an
improvement over existing baseline techniques for particle identification and
energy resolution. We discuss the challenges encountered in implementing GNN
methods for energy measurement in digital calorimeters, e.g., the large variety
of hadronic shower shapes and the hyper-parameter optimization. We also discuss
the dependency of the measured performance on the angle of the incoming
particle and on the detector granularity. Finally, we highlight potential
future directions and applications of these techniques. |
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DOI: | 10.48550/arxiv.2412.11208 |