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Machine learning for beam dynamics studies at the CERN Large Hadron Collider

Authors :
Rogelio Tomás
M. Schenk
Giuseppe Bregliozzi
Xavier Buffat
Roberto Prevete
M. Solfaroli Camillocci
Massimo Giovannozzi
F. Blanc
Stefano Redaelli
B. Salvant
F. Giordano
Tatiana Pieloni
Gabriella Azzopardi
Elena Fol
Gianluca Valentino
Belen Salvachua
F. F. Van der Veken
L. Coyle
Pasquale Arpaia
Jorg Wenninger
Arpaia, P.
Azzopardi, G.
Blanc, F.
Bregliozzi, G.
Buffat, X.
Coyle, L.
Fol, E.
Giordano, F.
Giovannozzi, M.
Pieloni, T.
Prevete, R.
Redaelli, S.
Salvachua, B.
Salvant, B.
Schenk, M.
Camillocci, M. S.
Tomas, R.
Valentino, G.
Van der Veken, F. F.
Wenninger, J.
Publication Year :
2021

Abstract

Machine learning entails a broad range of techniques that have been widely used in Science and Engineering since decades. High-energy physics has also profited from the power of these tools for advanced analysis of colliders data. It is only up until recently that Machine Learning has started to be applied successfully in the domain of Accelerator Physics, which is testified by intense efforts deployed in this domain by several laboratories worldwide. This is also the case of CERN, where recently focused efforts have been devoted to the application of Machine Learning techniques to beam dynamics studies at the Large Hadron Collider (LHC). This implies a wide spectrum of applications from beam measurements and machine performance optimisation to analysis of numerical data from tracking simulations of non-linear beam dynamics. In this paper, the LHC-related applications that are currently pursued are presented and discussed in detail, paying also attention to future developments.<br />peer-reviewed

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....fe968c455ff006a3bf8f0d47119d9ef7