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Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning

At the Large Hadron Collider (LHC), the stability of the beams is one of the most important characteristic that has to be ensured in order to not compromise the accelerator performances. The motion of high energetic particle beams in accelerators is influenced by their interactions with the accelera...

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Autor principal: Vicentini, Giulio
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2781945
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author Vicentini, Giulio
author_facet Vicentini, Giulio
author_sort Vicentini, Giulio
collection CERN
description At the Large Hadron Collider (LHC), the stability of the beams is one of the most important characteristic that has to be ensured in order to not compromise the accelerator performances. The motion of high energetic particle beams in accelerators is influenced by their interactions with the accelerator environment through electromagnetic fields induced by the particle passages. Traveling with a speed close to the speed of light, the particles induce image charge and currents in the surroundings generating wakefields that act back on the beams. The chromaticity plays an important role in the developement of the beam instabilities, its control is crucial especially in view of the High-Luminosity upgrade (HL-LHC) that aims to increase the performance of the LHC, notably by doubling the beam intensity. The purpose of this project is to investigate and find the best class of algorithms that allows to extract the chromaticity from Beam Transfer Function (BTF) measurements. It is shown that neural networks outperform non-linear fitting method based on analytical expressions of the beam transfer functions. An accuracy below the unit could be achieved, even in the presence of strong wakefields.
id cern-2781945
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
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spelling cern-27819452021-09-23T20:08:34Zhttp://cds.cern.ch/record/2781945engVicentini, GiulioChromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep LearningAccelerators and Storage RingsAt the Large Hadron Collider (LHC), the stability of the beams is one of the most important characteristic that has to be ensured in order to not compromise the accelerator performances. The motion of high energetic particle beams in accelerators is influenced by their interactions with the accelerator environment through electromagnetic fields induced by the particle passages. Traveling with a speed close to the speed of light, the particles induce image charge and currents in the surroundings generating wakefields that act back on the beams. The chromaticity plays an important role in the developement of the beam instabilities, its control is crucial especially in view of the High-Luminosity upgrade (HL-LHC) that aims to increase the performance of the LHC, notably by doubling the beam intensity. The purpose of this project is to investigate and find the best class of algorithms that allows to extract the chromaticity from Beam Transfer Function (BTF) measurements. It is shown that neural networks outperform non-linear fitting method based on analytical expressions of the beam transfer functions. An accuracy below the unit could be achieved, even in the presence of strong wakefields.CERN-STUDENTS-Note-2021-171oai:cds.cern.ch:27819452021-09-23
spellingShingle Accelerators and Storage Rings
Vicentini, Giulio
Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title_full Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title_fullStr Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title_full_unstemmed Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title_short Chromaticity Measurement based on Beam Transfer Function: Non-Linear Fits and Deep Learning
title_sort chromaticity measurement based on beam transfer function: non-linear fits and deep learning
topic Accelerators and Storage Rings
url http://cds.cern.ch/record/2781945
work_keys_str_mv AT vicentinigiulio chromaticitymeasurementbasedonbeamtransferfunctionnonlinearfitsanddeeplearning