Autores
Martínez Castro Jesús Alberto
Título Use of Machine Learning for gamma/hadron separation with HAWC
Tipo Congreso
Sub-tipo Memoria
Descripción 37th International Cosmic Ray Conference, ICRC 2021
Resumen Background showers triggered by hadrons represent over 99.9% of all particles arriving at ground-based gamma-ray observatories. An important stage in the data analysis of these observatories, therefore, is the removal of hadron-triggered showers. Currently, the High-Altitude Water Cherenkov (HAWC) gamma-ray observatory employs an algorithm based on a single cut in two variables, unlike other ground-based gamma-ray observatories (e.g. H.E.S.S., VERITAS), which employ a large number of variables to separate the primary particles. In this work, we explore machine learning techniques (Boosted Decision Trees and Neural Networks) to identify the primary particles detected by HAWC. Our new gamma/hadron separation techniques were tested on data from the Crab nebula, the standard reference in Very High Energy astronomy, showing an improvement compared to the standard HAWC background rejection method. © Copyright owned by the author(s) under the terms of the Creative Commons.
Observaciones Proceedings of Science, v. 395
Lugar Virtual, online
País Indefinido
No. de páginas Article number 745
Vol. / Cap.
Inicio 2021-07-12
Fin 2021-07-23
ISBN/ISSN