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Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information

This paper presents the last results from the Ringer algorithm, which is based on artificial neural networks for the electron identification at the online filtering system of the ATLAS particle detector, in the context of the LHC experiment at CERN. The algorithm performs topological feature extract...

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Detalles Bibliográficos
Autores principales: Ciodaro, T, Deva, D, Damazio, D, de Seixas, JM
Lenguaje:eng
Publicado: 2011
Materias:
Acceso en línea:http://cds.cern.ch/record/1402984
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author Ciodaro, T
Deva, D
Damazio, D
de Seixas, JM
author_facet Ciodaro, T
Deva, D
Damazio, D
de Seixas, JM
author_sort Ciodaro, T
collection CERN
description This paper presents the last results from the Ringer algorithm, which is based on artificial neural networks for the electron identification at the online filtering system of the ATLAS particle detector, in the context of the LHC experiment at CERN. The algorithm performs topological feature extraction over the ATLAS calorimetry information (energy measurements). Later, the extracted information is presented to a neural network classifier. Studies showed that the Ringer algorithm achieves high detection efficiency, while keeping the false alarm rate low. Optimizations, guided by detailed analysis, reduced the algorithm execution time in 59%. Also, the payload necessary to store the Ringer algorithm information represents less than 6.2 percent of the total filtering system amount
id cern-1402984
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2011
record_format invenio
spelling cern-14029842019-09-30T06:29:59Zhttp://cds.cern.ch/record/1402984engCiodaro, TDeva, DDamazio, Dde Seixas, JMOnline Particle Detection by Neural Networks Based on Topologic Calorimetry InformationDetectors and Experimental TechniquesThis paper presents the last results from the Ringer algorithm, which is based on artificial neural networks for the electron identification at the online filtering system of the ATLAS particle detector, in the context of the LHC experiment at CERN. The algorithm performs topological feature extraction over the ATLAS calorimetry information (energy measurements). Later, the extracted information is presented to a neural network classifier. Studies showed that the Ringer algorithm achieves high detection efficiency, while keeping the false alarm rate low. Optimizations, guided by detailed analysis, reduced the algorithm execution time in 59%. Also, the payload necessary to store the Ringer algorithm information represents less than 6.2 percent of the total filtering system amountATL-DAQ-PROC-2011-049oai:cds.cern.ch:14029842011-11-30
spellingShingle Detectors and Experimental Techniques
Ciodaro, T
Deva, D
Damazio, D
de Seixas, JM
Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title_full Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title_fullStr Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title_full_unstemmed Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title_short Online Particle Detection by Neural Networks Based on Topologic Calorimetry Information
title_sort online particle detection by neural networks based on topologic calorimetry information
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/1402984
work_keys_str_mv AT ciodarot onlineparticledetectionbyneuralnetworksbasedontopologiccalorimetryinformation
AT devad onlineparticledetectionbyneuralnetworksbasedontopologiccalorimetryinformation
AT damaziod onlineparticledetectionbyneuralnetworksbasedontopologiccalorimetryinformation
AT deseixasjm onlineparticledetectionbyneuralnetworksbasedontopologiccalorimetryinformation