16–20 Jun 2025
THotel, Cagliari, Sardinia, Italy
Europe/Rome timezone

Hadron Identification Prospects With Granular Calorimeters

Not scheduled
20m
THotel, Cagliari, Sardinia, Italy

THotel, Cagliari, Sardinia, Italy

Via dei Giudicati, 66, 09131 Cagliari (CA), Italy
Poster + Flashtalk Simulations & Generative Models

Speaker

Andrea De Vita (Istituto Nazionale di Fisica Nucleare)

Description

In this work we consider the problem of determining the identity of hadrons at high energies based on the topology of their energy depositions in dense matter, along with the time of the interactions. Using GEANT4 simulations of a homogeneous lead tungstate calorimeter with high transverse and longitudinal segmentation, we investigated the discrimination of protons, positive pions, and positive kaons at 100 GeV. The analysis focuses on the impact of calorimeter granularity by progressively merging detector cells and extracting features like energy deposition patterns andtiming information. Two machine learning approaches, XGBoost and fully connected deep neural networks, were employed to assess the classification performance across particle pairs. The results indicate that fine segmentation improves particle discrimination, with higher granularity yielding more detailed characterization of energy showers. Additionally, the results highlight the importance of shower radius, energy fractions, and timing variables in distinguishing particle types. The XGBoost model demonstrated computational efficiency and interpretability advantages over deep learning for tabular data structures, while achieving similar classification performance. This motivates further work required to combine high- and low-level feature analysis, e.g., using convolutional and graph-based neural networks, and extending the study to a broader range of particle energies and types.

AI keywords XGBoost, Boosted Decision Trees, Deep Neural Network, Classification Task

Primary author

Andrea De Vita (Istituto Nazionale di Fisica Nucleare)

Co-authors

Dr Abhishek (National Institute of Science Education and Research, India) Alessandro Breccia (University of Padova) Dr Enrico Lupi (Istituto Nazionale di Fisica Nucleare) Federico Nardi (University of Padova, Laboratoire de Physique Clermont Auvergne) Fredrik Sandin (Luleå University of Technology, MODE Collaboration) Jan Kieseler (Karlsruhe Institute of Technology) Joseph Willmore (INFN Padova) Kylian Schmidt (Karlsruhe Institute of Technology) Long Chen (University of Kaiserslautern-Landau (RPTU), MODE Collaboration) Max Aehle (University of Kaiserslautern-Landau (RPTU), MODE Collaboration) Muhammad Awais (INFN Padova, Luleå University of Technology, MODE Collaboration) Nicholas Ralph Gauger (University of Kaiserslautern-Landau (RPTU), MODE Collaboration) Pietro Vischia (University of Oviedo, MODE Collaboration, Universal Scientific Education and Research Network) Ralf Keidel (Karlsruhe Institute of Technology, MODE Collaboration) Riccardo Carroccio (University of Padova) Tommaso Dorigo (INFN Padova, Luleå University of Technology, MODE Collaboration, Universal Scientific Education and Research Network) Xuan Tung Nguyen (INFN Padova, University of Kaiserslautern-Landau)

Presentation materials

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