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Development of machine learning analyses with graph neural network for the WASA-FRS experiment.

Authors :
Ekawa, H.
Dou, W.
Gao, Y.
He, Y.
Kasagi, A.
Liu, E.
Muneem, A.
Nakagawa, M.
Rappold, C.
Saito, N.
Saito, T. R.
Taki, M.
Tanaka, Y. K.
Wang, H.
Yoshida, J.
Source :
European Physical Journal A -- Hadrons & Nuclei. May2023, Vol. 59 Issue 5, p1-13. 13p.
Publication Year :
2023

Abstract

The WASA-FRS experiment aims to reveal the nature of light Λ hypernuclei with heavy-ion beams. The lifetimes of hypernuclei are measured precisely from their decay lengths and kinematics. To reconstruct a π - track emitted from hypernuclear decay, track finding is an important issue. In this study, a machine learning analysis method with a graph neural network (GNN), which is a powerful tool for deducing the connection between data nodes, was developed to obtain track associations from numerous combinations of hit information provided in detectors based on a Monte Carlo simulation. An efficiency of 98% was achieved for tracking π - mesons using the developed GNN model. The GNN model can also estimate the charge and momentum of the particles of interest. More than 99.9% of the negative charged particles were correctly identified with a momentum accuracy of 6.3%. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
14346001
Volume :
59
Issue :
5
Database :
Academic Search Index
Journal :
European Physical Journal A -- Hadrons & Nuclei
Publication Type :
Academic Journal
Accession number :
164369394
Full Text :
https://doi.org/10.1140/epja/s10050-023-01016-5