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A Neural Network Approach to Muon Triggering in ATLAS

The extremely high rate of events that will be produced in the future Large Hadron Collider requires the triggering mechanism to make precise decisions in a few nano-seconds. This poses a complicated inverse problem, arising from the inhomogeneous nature of the magnetic fields in ATLAS. This thesis...

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Autor principal: Livneh, Ran
Lenguaje:eng
Publicado: Tel-Aviv Univ. 2007
Materias:
Acceso en línea:http://cds.cern.ch/record/1024579
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author Livneh, Ran
author_facet Livneh, Ran
author_sort Livneh, Ran
collection CERN
description The extremely high rate of events that will be produced in the future Large Hadron Collider requires the triggering mechanism to make precise decisions in a few nano-seconds. This poses a complicated inverse problem, arising from the inhomogeneous nature of the magnetic fields in ATLAS. This thesis presents a study of an application of Artificial Neural Networks to the muon triggering problem in the ATLAS end-cap. A comparison with realistic results from the ATLAS first level trigger simulation was in favour of the neural network, but this is mainly due to superior resolution available off-line. Other options for applying a neural network to this problem are discussed.
id cern-1024579
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2007
publisher Tel-Aviv Univ.
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spelling cern-10245792019-09-30T06:29:59Zhttp://cds.cern.ch/record/1024579engLivneh, RanA Neural Network Approach to Muon Triggering in ATLASDetectors and Experimental TechniquesThe extremely high rate of events that will be produced in the future Large Hadron Collider requires the triggering mechanism to make precise decisions in a few nano-seconds. This poses a complicated inverse problem, arising from the inhomogeneous nature of the magnetic fields in ATLAS. This thesis presents a study of an application of Artificial Neural Networks to the muon triggering problem in the ATLAS end-cap. A comparison with realistic results from the ATLAS first level trigger simulation was in favour of the neural network, but this is mainly due to superior resolution available off-line. Other options for applying a neural network to this problem are discussed.Tel-Aviv Univ.CERN-THESIS-2007-029oai:cds.cern.ch:10245792007
spellingShingle Detectors and Experimental Techniques
Livneh, Ran
A Neural Network Approach to Muon Triggering in ATLAS
title A Neural Network Approach to Muon Triggering in ATLAS
title_full A Neural Network Approach to Muon Triggering in ATLAS
title_fullStr A Neural Network Approach to Muon Triggering in ATLAS
title_full_unstemmed A Neural Network Approach to Muon Triggering in ATLAS
title_short A Neural Network Approach to Muon Triggering in ATLAS
title_sort neural network approach to muon triggering in atlas
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/1024579
work_keys_str_mv AT livnehran aneuralnetworkapproachtomuontriggeringinatlas
AT livnehran neuralnetworkapproachtomuontriggeringinatlas