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Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques

This master’s thesis starts with an introduction to particle physics. Thereby, the basic operating principles of high-gradient linear accelerators are explained. One of the main limitations in these devices is the occurrence of breakdowns, which is investigated in the experimental accelerating struc...

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Autor principal: Fischl, Lorenz
Lenguaje:eng
Publicado: Obermair Christoph 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2809339
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author Fischl, Lorenz
author_facet Fischl, Lorenz
author_sort Fischl, Lorenz
collection CERN
description This master’s thesis starts with an introduction to particle physics. Thereby, the basic operating principles of high-gradient linear accelerators are explained. One of the main limitations in these devices is the occurrence of breakdowns, which is investigated in the experimental accelerating structure XBox-2 located at CERN. An adaptable framework for data analysis using machine learning is created with the goal of deriving analysis results from raw experimental data. A strong focus lies on its optimized implementation, which is described in detail. The framework is applied to the data of the XBox-2 accelerator with unsupervised and supervised machine learning techniques. A hypothesis for breakdown indicators is derived from the trained models and tested in the lab. However, further testing on accelerating structures is required before the results of the analysis can be validated.
id cern-2809339
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
publisher Obermair Christoph
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spelling cern-28093392022-05-23T19:21:14Zhttp://cds.cern.ch/record/2809339engFischl, LorenzData Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning TechniquesAccelerators and Storage RingsThis master’s thesis starts with an introduction to particle physics. Thereby, the basic operating principles of high-gradient linear accelerators are explained. One of the main limitations in these devices is the occurrence of breakdowns, which is investigated in the experimental accelerating structure XBox-2 located at CERN. An adaptable framework for data analysis using machine learning is created with the goal of deriving analysis results from raw experimental data. A strong focus lies on its optimized implementation, which is described in detail. The framework is applied to the data of the XBox-2 accelerator with unsupervised and supervised machine learning techniques. A hypothesis for breakdown indicators is derived from the trained models and tested in the lab. However, further testing on accelerating structures is required before the results of the analysis can be validated.Obermair ChristophCERN-THESIS-2022-042oai:cds.cern.ch:28093392022-05-12
spellingShingle Accelerators and Storage Rings
Fischl, Lorenz
Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title_full Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title_fullStr Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title_full_unstemmed Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title_short Data Analysis of the XBox-2 Radiofrequency Cavity at CERN using Machine Learning Techniques
title_sort data analysis of the xbox-2 radiofrequency cavity at cern using machine learning techniques
topic Accelerators and Storage Rings
url http://cds.cern.ch/record/2809339
work_keys_str_mv AT fischllorenz dataanalysisofthexbox2radiofrequencycavityatcernusingmachinelearningtechniques