12–23 Jul 2021
Online
Europe/Berlin timezone

Deep learning based event reconstruction for Limadou HEPD

16 Jul 2021, 18:00
1h 30m
TBA

TBA

Poster CRD | Cosmic Ray Direct Discussion

Speaker

Dr Francesco Maria Follega (University of Trento - INFN-TIFPA)

Description

Deep learning algorithms have gained importance in astroparticle physics in the last years. They have been shown to outperform traditional strategies in particle identification, tracking and energy reconstruction.
The attractive feature of these techniques is their ability to model large dimensionality inputs and catch non-trivial correlations among the variables, which could be hidden or not easy to model. This contribution focuses on the application of deep neural networks to the event reconstruction of the Limadou High-Energy Particle Detector on board of the China Seismo-Electromagnetic Satellite. We describe the model adopted for the neural network and report on the performance measured on simulated and real data.

Keywords

detector simulation; charged particles; cosmic ray; event reconstruction; deep learning

Subcategory Experimental Methods & Instrumentation
Collaboration other (fill field below)
other Collaboration CSES-Limadou

Primary authors

Dr Francesco Maria Follega (University of Trento - INFN-TIFPA) Roberto Iuppa (Trento University & INFN-TIFPA) Marco Cristoforetti (Fondazione Bruno Kessler - INFN-TIFPA) For the CSES-Limadou collaboration

Presentation materials