Performance of a proposed event-type based analysis for the Cherenkov Telescope Array
- the CTA Consortium,
- T. Hassanbd(Author),
- H. Abdallaaw(Author),
- H. Abeu(Author),
- S. Abeu(Author),
- A. Abuslemead(Author)
- aYale University,
- bUniversidad Nacional Autónoma de México,
- cUniversidad de Chile,
- dUniversity of Innsbruck,
- eDublin Institute for Advanced Studies,
- fUniversity of Jaén
Resumen
The Cherenkov Telescope Array (CTA) will be the next-generation observatory in the field of very-high-energy (20 GeV to 300 TeV) gamma-ray astroparticle physics. Classically, data analysis in the field maximizes sensitivity by applying quality cuts on the data acquired. These cuts, optimized using Monte Carlo simulations, select higher quality events from the initial dataset. Subsequent steps of the analysis typically use the surviving events to calculate one set of instrument response functions (IRFs). An alternative approach is the use of event types, as implemented in experiments such as the Fermi-LAT. In this approach, events are divided into sub-samples based on their reconstruction quality, and a set of IRFs is calculated for each sub-sample. The sub-samples are then combined in a joint analysis, treating them as independent observations. This leads to an improvement in performance parameters such as sensitivity, angular and energy resolution. Data loss is reduced since lower quality events are included in the analysis as well, rather than discarded. In this study, machine learning methods will be used to classify events according to their expected angular reconstruction quality. We will report the impact on CTA high-level performance when applying such an event-type classification, compared to the classical procedure.
Información de Publicación
Tipo de resultado
Idioma original
EnglishNúmero de artículo
752Revista (Volumen, Número de Edición)
Proceedings of Science (Volumen 395)Hitos de publicación
- Published- 18/03/2022
Estado de publicación
ID de publicación externa
- Scopus: 85145022346
