NA61/SHINE online noise filtering using machine learning methods
Paper in proceeding, 2023

The NA61/SHINE is a high-energy physics experiment operating at the SPS accelerator at CERN. The physics program of the experiment was recently extended, requiring a significant upgrade of the detector setup. The main goal of the upgrade is to increase the event flow rate from 80Hz to 1kHz by exchanging the read-out electronics of the NA61/SHINE main tracking detectors (Time-Projection-Chambers - TPCs). As the amount of collected data will increase significantly, a tool for online noise filtering is needed. The standard method is based on the reconstruction of tracks and removal of clusters which do not belong to any particle trajectory. However, this method takes a substantial amount of time and resources. A novel approach based on machine learning methods is presented in this proceedings.

Author

Anna Kawecka

Chalmers, Physics, Subatomic, High Energy and Plasma Physics

Warsaw University of Technology

Wojciech Bryliński

Warsaw University of Technology

Manjunath Omana Kuttan

Frankfurt Institute for Advanced Studies

Goethe University Frankfurt

Olena Linnyk

Justus Liebig University Giessen

Frankfurt Institute for Advanced Studies

Milch&zucker AG

Janik Pawlowski

Philipps University Marburg

Frankfurt Institute for Advanced Studies

Katarzyna Schmidt

University of Silesia in Katowice

Marcin Słodkowski

Warsaw University of Technology

Oskar Wyszyński

Akademia Swietokrzyska im. Jana Kochanowskiego w Kielcach

Jakub Zieliński

Warsaw University of Technology

Journal of Physics: Conference Series

17426588 (ISSN) 17426596 (eISSN)

Vol. 2438 1 012104

20th International Workshop on Advanced Computing and Analysis Techniques in Physics Research, ACAT 2021
Daejeon, Virtual, South Korea,

Subject Categories

Accelerator Physics and Instrumentation

Subatomic Physics

Other Physics Topics

DOI

10.1088/1742-6596/2438/1/012104

More information

Latest update

3/27/2023