19–24 May 2024
Music City Center
US/Central timezone

Machine learning-based extraction of longitudinal beam parameters in the LHC

TUPS56
21 May 2024, 16:00
2h
Blues (MCC Exhibit Hall A)

Blues

MCC Exhibit Hall A

Poster Presentation MC6.D13 Machine Learning Tuesday Poster Session

Speaker

Michail Zampetakis (European Organization for Nuclear Research)

Description

Accurate knowledge of beam parameters is essential for optimizing the performance of particle accelerators like the Large Hadron Collider (LHC). An initial machine-learning (ML) model for the reconstruction of the longitudinal distribution has been extended to extract the main parameters of multiple bunches at LHC injection. The extended model utilizes an encoder-decoder architecture to analyze sets of longitudinal profile measurements. Its development was partially driven by the need of a real-time beam energy error estimate, which was not directly available in the past. The derived beam parameters moreover include injection phase error, bunch length and intensity in the LHC, as well as the RF voltages at extraction from the Super Proton Synchrotron (SPS) and at capture in the LHC. In this paper, we compare the results of the ML model with conventional measurements of bunch length and energy error, from the beam quality monitor (BQM) and the orbit acquisition system, respectively. These benchmarks demonstrate the potential of applying the ML model for operational exploitation in LHC.

Region represented Europe
Paper preparation format LaTeX

Primary author

Konstantinos Iliakis (European Organization for Nuclear Research)

Co-authors

Birk Emil Karlsen-Bæck (European Organization for Nuclear Research) Georges Trad (European Organization for Nuclear Research) Helga Timko (European Organization for Nuclear Research) Michail Zampetakis (European Organization for Nuclear Research) Theodoros Argyropoulos (European Organization for Nuclear Research)

Presentation materials

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