Deep machine learning for the PANDA software trigger

Author:

Jiang PeiyongORCID,Götzen KlausORCID,Kliemt Ralf,Nerling FrankORCID,Peters Klaus,

Abstract

AbstractDeep machine learning methods have been studied for the software trigger of the future PANDA experiment at FAIR, using Monte Carlo simulated data from the GEANT-based detector simulation framework PandaRoot. Ten physics channels that cover the main physics topics, including electromagnetic, exotic, charmonium, open charm, and baryonic reaction channels, have been investigated at four different anti-proton beam momenta. Different classification concepts and network architectures have been studied. Finally a residual convolutional neural network with four residual blocks in a binary classification scheme has been chosen due to its extendability, performance and stability. The presented study represents a feasibility study of a completely software-based trigger system. Compared to a conventional selection method, the deep machine learning approach achieved a significant efficiency gain of up to 200%, while keeping the background reduction factor at the required level of 1/1000. Furthermore, it is shown that the use of additional input variables can improve the data quality for subsequent analysis. This study shows that the PANDA software trigger can benefit greatly from the deep machine learning methods.

Funder

Helmholtz – OCPC Postdoc Program and the Office of China Postdoc Council, Ministry of Human Resources and Social Security, China

Bundesministerium für Bildung und Forschung (BMBF), Germany

Helmholtz Forschungsakademie Hessen für FAIR (HFHF), Germany

Publisher

Springer Science and Business Media LLC

Subject

Physics and Astronomy (miscellaneous),Engineering (miscellaneous)

Reference38 articles.

1. P. Spiller, G. Franchetti, The FAIR accelerator project at GSI. NIMA 556, 305–309 (2006)

2. M. Destefanis for the PANDA Collaboration, The PANDA experiment at FAIR. Nucl. Phys. B (Proc. Suppl.) 245, 199–206 (2013)

3. A. Belias, FAIR status and the PANDA experiment. JINST 15, C10001 (2020)

4. PANDA Collaboration, Physics Performance Report for PANDA: Strong Interaction Studies with anti-protons, FAIR/PANDA/Physics Book, pp. 28–30 (2009)

5. G. Barucca, F. Davì, G. Lancioni et al., PANDA phase one. Eur. Phys. J. A 57, 184 (2021)

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