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A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector

We present a novel technique using a set of artificial neural networks to identify and split merged measurements created by multiple charged particles in the ATLAS pixel detector. Such merged measurements are a common feature of boosted physics objects such as tau leptons or strongly energetic jets...

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Autor principal: Leney, KJC
Lenguaje:eng
Publicado: 2013
Materias:
Acceso en línea:http://cds.cern.ch/record/1547261
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author Leney, KJC
author_facet Leney, KJC
author_sort Leney, KJC
collection CERN
description We present a novel technique using a set of artificial neural networks to identify and split merged measurements created by multiple charged particles in the ATLAS pixel detector. Such merged measurements are a common feature of boosted physics objects such as tau leptons or strongly energetic jets where particles get highly collimated. The neural networks are trained using Monte Carlo samples produced with a detailed detector simulation. The performance of the splitting technique is quantified using LHC data collected by the ATLAS detector in 2011 and Monte Carlo simulation. The number of shared hits per track is significantly reduced, particularly in boosted systems, which increases the reconstruction efficiency and quality. The improved position and error estimates of the measurements lead to a sizable improvement of the track and vertex resolution.
id cern-1547261
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2013
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spelling cern-15472612019-09-30T06:29:59Zhttp://cds.cern.ch/record/1547261engLeney, KJCA Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel DetectorDetectors and Experimental TechniquesWe present a novel technique using a set of artificial neural networks to identify and split merged measurements created by multiple charged particles in the ATLAS pixel detector. Such merged measurements are a common feature of boosted physics objects such as tau leptons or strongly energetic jets where particles get highly collimated. The neural networks are trained using Monte Carlo samples produced with a detailed detector simulation. The performance of the splitting technique is quantified using LHC data collected by the ATLAS detector in 2011 and Monte Carlo simulation. The number of shared hits per track is significantly reduced, particularly in boosted systems, which increases the reconstruction efficiency and quality. The improved position and error estimates of the measurements lead to a sizable improvement of the track and vertex resolution.ATL-SOFT-SLIDE-2013-237oai:cds.cern.ch:15472612013-05-15
spellingShingle Detectors and Experimental Techniques
Leney, KJC
A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title_full A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title_fullStr A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title_full_unstemmed A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title_short A Neural-Network Clusterisation Algorithm for the ATLAS Silicon Pixel Detector
title_sort neural-network clusterisation algorithm for the atlas silicon pixel detector
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/1547261
work_keys_str_mv AT leneykjc aneuralnetworkclusterisationalgorithmfortheatlassiliconpixeldetector
AT leneykjc neuralnetworkclusterisationalgorithmfortheatlassiliconpixeldetector