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Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector

A study of the robustness of the ATLAS pixel neural network clustering algorithm is presented. The sensitivity to variations to its input is evaluated. These variations are motivated by potential discrepancies between data and simulation due to uncertainties in the modelling of pixel clusters in sim...

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Autor principal: The ATLAS collaboration
Lenguaje:eng
Publicado: 2015
Materias:
Acceso en línea:http://cds.cern.ch/record/2116350
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author The ATLAS collaboration
author_facet The ATLAS collaboration
author_sort The ATLAS collaboration
collection CERN
description A study of the robustness of the ATLAS pixel neural network clustering algorithm is presented. The sensitivity to variations to its input is evaluated. These variations are motivated by potential discrepancies between data and simulation due to uncertainties in the modelling of pixel clusters in simulation, as well as uncertainties from the detector calibration. Within reasonable variation magnitudes, the neural networks prove to be robust to most variations. The neural network used to identify pixel clusters created by multiple charged particles, is most sensitive to variations affecting the total amount of charge collected in the cluster. Modifying the read-out threshold has the biggest effect on the clustering's ability to estimate the position of the particle's intersection with the detector.
id cern-2116350
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2015
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spelling cern-21163502021-04-18T19:40:47Zhttp://cds.cern.ch/record/2116350engThe ATLAS collaborationRobustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel DetectorParticle Physics - ExperimentA study of the robustness of the ATLAS pixel neural network clustering algorithm is presented. The sensitivity to variations to its input is evaluated. These variations are motivated by potential discrepancies between data and simulation due to uncertainties in the modelling of pixel clusters in simulation, as well as uncertainties from the detector calibration. Within reasonable variation magnitudes, the neural networks prove to be robust to most variations. The neural network used to identify pixel clusters created by multiple charged particles, is most sensitive to variations affecting the total amount of charge collected in the cluster. Modifying the read-out threshold has the biggest effect on the clustering's ability to estimate the position of the particle's intersection with the detector.ATL-PHYS-PUB-2015-052oai:cds.cern.ch:21163502015-12-17
spellingShingle Particle Physics - Experiment
The ATLAS collaboration
Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title_full Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title_fullStr Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title_full_unstemmed Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title_short Robustness of the Artificial Neural Networks Used for Clustering in the ATLAS Pixel Detector
title_sort robustness of the artificial neural networks used for clustering in the atlas pixel detector
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2116350
work_keys_str_mv AT theatlascollaboration robustnessoftheartificialneuralnetworksusedforclusteringintheatlaspixeldetector