English

Using Machine Learning for Particle Identification in ALICE

Nuclear Experiment 2022-04-15 v1 High Energy Physics - Experiment Machine Learning

Abstract

Particle identification (PID) is one of the main strengths of the ALICE experiment at the LHC. It is a crucial ingredient for detailed studies of the strongly interacting matter formed in ultrarelativistic heavy-ion collisions. ALICE provides PID information via various experimental techniques, allowing for the identification of particles over a broad momentum range (from around 100 MeV/cc to around 50 GeV/cc). The main challenge is how to combine the information from various detectors effectively. Therefore, PID represents a model classification problem, which can be addressed using Machine Learning (ML) solutions. Moreover, the complexity of the detector and richness of the detection techniques make PID an interesting area of research also for the computer science community. In this work, we show the current status of the ML approach to PID in ALICE. We discuss the preliminary work with the Random Forest approach for the LHC Run 2 and a more advanced solution based on Domain Adaptation Neural Networks, including a proposal for its future implementation within the ALICE computing software for the upcoming LHC Run 3.

Keywords

Cite

@article{arxiv.2204.06900,
  title  = {Using Machine Learning for Particle Identification in ALICE},
  author = {Łukasz Kamil Graczykowski and Monika Jakubowska and Kamil Rafał Deja and Maja Kabus},
  journal= {arXiv preprint arXiv:2204.06900},
  year   = {2022}
}

Comments

11 pages, 4 figures, proceedings from the Workshop: AI4EIC-Exp - Experimental Applications of Artificial Intelligence for the Electron Ion Collider, accepted for publication in JINST

R2 v1 2026-06-24T10:48:02.392Z