Cargando…

REMOTE: Applications of computer vision and forecasting to the CERN accelerators

<!--HTML--><p><span><span><strong>Abstract: </strong></span></span></p> <p><span><span><strong>​​​​​​​</strong>The recent progress in computing and ad-hoc software has significantly simplified the access to machine...

Descripción completa

Detalles Bibliográficos
Autor principal: Velotti, Francesco Maria
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:http://cds.cern.ch/record/2808782
_version_ 1780973115898068992
author Velotti, Francesco Maria
author_facet Velotti, Francesco Maria
author_sort Velotti, Francesco Maria
collection CERN
description <!--HTML--><p><span><span><strong>Abstract: </strong></span></span></p> <p><span><span><strong>​​​​​​​</strong>The recent progress in computing and ad-hoc software has significantly simplified the access to machine learning techniques and numerical optimisation. In the LHC and its injector complex, a very diverse and inhomogeneous set of problems present the right observables types to be addressed with the classic or most cutting edge machine learning algorithms. In this talk, we introduce a set of techniques that have been applied to the CERN accelerator complex to solve problems that would have been otherwise impossible or very complicated to solve classically. Specifically, we will introduce the usage of computer vision techniques, time series analysis and physics aware neural networks. For all these algorithms and principles, we will present real applications to the LHC and its injectors.</span></span></p> <p><strong><span><span>Short bio Francesco Maria Velotti</span></span></strong></p> <p>Francesco obtained his MSc at Universita' del Sannio in Electronic engineering and his PhD at Ecole Polytechnique Fédérale de Lausanne in 2017 in accelerator physics with studies regarding the HL-LHC injection system and crystal-shadowing slow extraction. He is now a CERN staff member in the SY department and ABT group. Since 2018 he is one of the SPS supervisors and directly involved in the operation of the SPS. His research topics include slow extraction losses and spill quality optimisation, as well as machine learning applications to ABT and accelerator systems in general.&nbsp;</p>
id cern-2808782
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28087822022-11-03T08:15:16Zhttp://cds.cern.ch/record/2808782engVelotti, Francesco MariaREMOTE: Applications of computer vision and forecasting to the CERN acceleratorsREMOTE: Applications of computer vision and forecasting to the CERN acceleratorsAcademic Training Lecture Regular Programme<!--HTML--><p><span><span><strong>Abstract: </strong></span></span></p> <p><span><span><strong>​​​​​​​</strong>The recent progress in computing and ad-hoc software has significantly simplified the access to machine learning techniques and numerical optimisation. In the LHC and its injector complex, a very diverse and inhomogeneous set of problems present the right observables types to be addressed with the classic or most cutting edge machine learning algorithms. In this talk, we introduce a set of techniques that have been applied to the CERN accelerator complex to solve problems that would have been otherwise impossible or very complicated to solve classically. Specifically, we will introduce the usage of computer vision techniques, time series analysis and physics aware neural networks. For all these algorithms and principles, we will present real applications to the LHC and its injectors.</span></span></p> <p><strong><span><span>Short bio Francesco Maria Velotti</span></span></strong></p> <p>Francesco obtained his MSc at Universita' del Sannio in Electronic engineering and his PhD at Ecole Polytechnique Fédérale de Lausanne in 2017 in accelerator physics with studies regarding the HL-LHC injection system and crystal-shadowing slow extraction. He is now a CERN staff member in the SY department and ABT group. Since 2018 he is one of the SPS supervisors and directly involved in the operation of the SPS. His research topics include slow extraction losses and spill quality optimisation, as well as machine learning applications to ABT and accelerator systems in general.&nbsp;</p>oai:cds.cern.ch:28087822022
spellingShingle Academic Training Lecture Regular Programme
Velotti, Francesco Maria
REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title_full REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title_fullStr REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title_full_unstemmed REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title_short REMOTE: Applications of computer vision and forecasting to the CERN accelerators
title_sort remote: applications of computer vision and forecasting to the cern accelerators
topic Academic Training Lecture Regular Programme
url http://cds.cern.ch/record/2808782
work_keys_str_mv AT velottifrancescomaria remoteapplicationsofcomputervisionandforecastingtothecernaccelerators