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Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning

The operation of synchrotron light sources with short electron bunches increases the emitted CSR power in the THz frequency range. However, the spatial compression leads to complex longitudinal dynamics, causing the formation of micro-structures in the longitudinal bunch profiles. The fast temporal...

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Autores principales: Boltz, Tobias, Brosi, Miriam, Bründermann, Erik, Müller, Anke-Susanne, Schwarz, Markus, Schönfeldt, Patrik, Yan, Minjie
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:https://dx.doi.org/10.18429/JACoW-IPAC2018-THPAK030
http://cds.cern.ch/record/2672002
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author Boltz, Tobias
Brosi, Miriam
Bründermann, Erik
Müller, Anke-Susanne
Schwarz, Markus
Schönfeldt, Patrik
Yan, Minjie
author_facet Boltz, Tobias
Brosi, Miriam
Bründermann, Erik
Müller, Anke-Susanne
Schwarz, Markus
Schönfeldt, Patrik
Yan, Minjie
author_sort Boltz, Tobias
collection CERN
description The operation of synchrotron light sources with short electron bunches increases the emitted CSR power in the THz frequency range. However, the spatial compression leads to complex longitudinal dynamics, causing the formation of micro-structures in the longitudinal bunch profiles. The fast temporal variation and small scale of these micro-structures put challenging demands on their observation. At the KIT storage ring KARA (KArlsruhe Research Accelerator), diagnostics have been developed allowing direct observation of the dynamics by an electro-optical setup, and indirect observation by measuring the fluctuation of the emitted CSR. In this contribution, we present studies of the micro-structure dynamics on simulated data, obtained using the numerical Vlasov-Fokker-Planck solver Inovesa, and first applications on measured data. To deal with generated data sets in the order of terabytes in size, we apply the machine learning technique k-means to identify the dominant micro-structures in the longitudinal bunch profiles. Following this approach, new insights on the correlation of the CSR power fluctuation to the underlying longitudinal dynamics can be gained.
id oai-inspirehep.net-1690290
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2018
record_format invenio
spelling oai-inspirehep.net-16902902019-09-30T06:29:59Zdoi:10.18429/JACoW-IPAC2018-THPAK030http://cds.cern.ch/record/2672002engBoltz, TobiasBrosi, MiriamBründermann, ErikMüller, Anke-SusanneSchwarz, MarkusSchönfeldt, PatrikYan, MinjieStudies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine LearningAccelerators and Storage RingsThe operation of synchrotron light sources with short electron bunches increases the emitted CSR power in the THz frequency range. However, the spatial compression leads to complex longitudinal dynamics, causing the formation of micro-structures in the longitudinal bunch profiles. The fast temporal variation and small scale of these micro-structures put challenging demands on their observation. At the KIT storage ring KARA (KArlsruhe Research Accelerator), diagnostics have been developed allowing direct observation of the dynamics by an electro-optical setup, and indirect observation by measuring the fluctuation of the emitted CSR. In this contribution, we present studies of the micro-structure dynamics on simulated data, obtained using the numerical Vlasov-Fokker-Planck solver Inovesa, and first applications on measured data. To deal with generated data sets in the order of terabytes in size, we apply the machine learning technique k-means to identify the dominant micro-structures in the longitudinal bunch profiles. Following this approach, new insights on the correlation of the CSR power fluctuation to the underlying longitudinal dynamics can be gained.oai:inspirehep.net:16902902018
spellingShingle Accelerators and Storage Rings
Boltz, Tobias
Brosi, Miriam
Bründermann, Erik
Müller, Anke-Susanne
Schwarz, Markus
Schönfeldt, Patrik
Yan, Minjie
Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title_full Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title_fullStr Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title_full_unstemmed Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title_short Studies of Longitudinal Dynamics in the Micro-Bunching Instability Using Machine Learning
title_sort studies of longitudinal dynamics in the micro-bunching instability using machine learning
topic Accelerators and Storage Rings
url https://dx.doi.org/10.18429/JACoW-IPAC2018-THPAK030
http://cds.cern.ch/record/2672002
work_keys_str_mv AT boltztobias studiesoflongitudinaldynamicsinthemicrobunchinginstabilityusingmachinelearning
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AT mullerankesusanne studiesoflongitudinaldynamicsinthemicrobunchinginstabilityusingmachinelearning
AT schwarzmarkus studiesoflongitudinaldynamicsinthemicrobunchinginstabilityusingmachinelearning
AT schonfeldtpatrik studiesoflongitudinaldynamicsinthemicrobunchinginstabilityusingmachinelearning
AT yanminjie studiesoflongitudinaldynamicsinthemicrobunchinginstabilityusingmachinelearning