Development of FPGA-based neural network regression models for the ATLAS Phase-II barrel muon trigger upgrade

19 May 2021, 11:42
13m
Short Talk Online Computing Artificial Intelligence

Speaker

Rustem Ospanov (University of Science and Technology of China)

Description

Effective selection of muon candidates is the cornerstone of the LHC physics programme. The ATLAS experiment uses the two-level trigger system for real-time selections of interesting events. The first-level hardware trigger system uses the Resistive Plate Chamber detector (RPC) for selecting muon candidates in the central (barrel) region of the detector. With the planned upgrades, the entirely new FPGA-based muon trigger system will be installed in 2025-2026. In this paper, neural network regression models are studied for potential applications in the new RPC trigger system. A simple simulation model of the current detector is developed for training and testing neural network regression models. Effects from additional cluster hits and noise hits are evaluated. Efficiency of selecting muon candidates is estimated as a function of the transverse muon momentum. Several models are evaluated and their performance is compared to that of the current detector, showing promising potential to improve on current algorithms for the ATLAS Phase-II barrel muon trigger upgrade.

Primary authors

Rustem Ospanov (University of Science and Technology of China) Changqing Feng (University and Science and Technology of China) Mr Shining Yang (University of Science and Technology of China) Mr Wenhao Feng (University of Science and Technology of China) Wenhao Dong (dwh912@mail.ustc.edu.cn)

Presentation materials

Proceedings

Paper