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  4. A deep learning method for the gamma-ray identification with the DAMPE space mission
 
master thesis

A deep learning method for the gamma-ray identification with the DAMPE space mission

Niggli, Loïs
2023

This report describes a new Convolutional Neural Network (CNN) model developed for the identification of gamma rays with the calorimeter of the DArk Matter Particle Explorer (DAMPE) mission. Its architecture is optimized in order to enhance the gamma ray/proton separation in the Monte-Carlo (MC) simulation data. Then, the classification performance is analyzed and compared with previously used methods. It is shown that this method significantly outperforms all the existing algorithms, both in gamma-ray efficiency and proton rejection. Finally, the model is successfully tested with the flight data in order to validate its use for further data analyses.

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Type
master thesis
Author(s)
Niggli, Loïs

EPFL

Advisors
Perrina, Chiara  
•
Schneider, Olivier  
Date Issued

2023

Publisher

EPFL

Publisher place

Lausanne

Subjects

cosmic rays

•

gamma rays

•

CNN

•

deep learning

•

DAMPE

Written at

EPFL

EPFL units
LPHE-OS  
Faculty
SB  
Section
PH-S  
Available on Infoscience
October 15, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/241604
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