SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST - SITIO DE TEST
 

Extraction of the muon signals recorded with the surface detector of the Pierre Auger Observatory using recurrent neural networks

Fecha

2021-07-12

Título de la revista

ISSN de la revista

Título del volumen

Editor

IOP Publishing
Resumen
The Pierre Auger Observatory, at present the largest cosmic-ray observatory ever built, is instrumented with a ground array of 1600 water-Cherenkov detectors, known as the Surface Detector (SD). The SD samples the secondary particle content (mostly photons, electrons, positrons and muons) of extensive air showers initiated by cosmic rays with energies ranging from 1017 eV up to more than 1020 eV. Measuring the independent contribution of the muon component to the total registered signal is crucial to enhance the capability of the Observatory to estimate the mass of the cosmic rays on an event-by-event basis. However, with the current design of the SD, it is difficult to straightforwardly separate the contributions of muons to the SD time traces from those of photons, electrons and positrons. In this paper, we present a method aimed at extracting the muon component of the time traces registered with each individual detector of the SD using Recurrent Neural Networks. We derive the performances of the method by training the neural network on simulations, in which the muon and the electromagnetic components of the traces are known. We conclude this work showing the performance of this method on experimental data of the Pierre Auger Observatory. We find that our predictions agree with the parameterizations obtained by the AGASA collaboration to describe the lateral distributions of the electromagnetic and muonic components of extensive air showers.

Palabras clave

Analysis and statistical methods, Cherenkov detectors, Large detector systems for particle and astroparticle physics, Pattern recognition, cluster finding, calibration and fitting methods

Citación