TU Darmstadt / ULB / TUprints

Reconstruction of Micropattern Detector Signals using Convolutional Neural Networks

Flekova, L. ; Schott, M. (2024)
Reconstruction of Micropattern Detector Signals using Convolutional Neural Networks.
In: Journal of Physics: Conference Series, 2017, 898 (3)
doi: 10.26083/tuprints-00020936
Article, Secondary publication, Publisher's Version

[img] Text
JPCS_898_3_032054.pdf
Copyright Information: CC BY 3.0 Unported - Creative Commons, Attribution.

Download (563kB)
Item Type: Article
Type of entry: Secondary publication
Title: Reconstruction of Micropattern Detector Signals using Convolutional Neural Networks
Language: English
Date: 14 May 2024
Place of Publication: Darmstadt
Year of primary publication: 2017
Place of primary publication: Bristol
Publisher: IOP Publishing
Journal or Publication Title: Journal of Physics: Conference Series
Volume of the journal: 898
Issue Number: 3
Collation: 6 Seiten
DOI: 10.26083/tuprints-00020936
Corresponding Links:
Origin: Secondary publication DeepGreen
Abstract:

Micropattern gaseous detector (MPGD) technologies, such as GEMs or MicroMegas, are particularly suitable for precision tracking and triggering in high rate environments. Given their relatively low production costs, MPGDs are an exemplary candidate for the next generation of particle detectors. Having acknowledged these advantages, both the ATLAS and CMS collaborations at the LHC are exploiting these new technologies for their detector upgrade programs in the coming years. When MPGDs are utilized for triggering purposes, the measured signals need to be precisely reconstructed within less than 200 ns, which can be achieved by the usage of FPGAs.

In this work, we present a novel approach to identify reconstructed signals, their timing and the corresponding spatial position on the detector. In particular, we study the effect of noise and dead readout strips on the reconstruction performance. Our approach leverages the potential of convolutional neural network (CNNs), which have recently manifested an outstanding performance in a range of modeling tasks. The proposed neural network architecture of our CNN is designed simply enough, so that it can be modeled directly by an FPGA and thus provide precise information on reconstructed signals already in trigger level.

Identification Number: Artikel-ID: 032054
Status: Publisher's Version
URN: urn:nbn:de:tuda-tuprints-209367
Additional Information:

Track 1: Online Computing

Classification DDC: 000 Generalities, computers, information > 004 Computer science
500 Science and mathematics > 530 Physics
Divisions: 20 Department of Computer Science > Ubiquitous Knowledge Processing
Date Deposited: 14 May 2024 09:52
Last Modified: 14 May 2024 09:52
SWORD Depositor: Deep Green
URI: https://tuprints.ulb.tu-darmstadt.de/id/eprint/20936
PPN:
Export:
Actions (login required)
View Item View Item