A neural network clustering algorithm for the ATLAS silicon pixel detector

2014 | journal article. A publication with affiliation to the University of Göttingen.

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​A neural network clustering algorithm for the ATLAS silicon pixel detector​
Aad, G.; Abbott, B.; Abdallah, J.; Abdinov, O.; Aben, R.; Abolins, M. & AbouZeid, O. S. et al.​ (2014) 
Journal of Instrumentation9 art. P09009​.​ DOI: https://doi.org/10.1088/1748-0221/9/09/P09009 

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Authors Group
ATLAS Collaboration
The authors list is uncomplete:
Authors
Aad, G.; Abbott, B.; Abdallah, J.; Abdinov, O.; Aben, R.; Abolins, M.; AbouZeid, O. S.; Abramowicz, H.; Abreu, H.; Abreu, R.; Zwalinski, L.
Abstract
A novel technique to identify and split clusters created by multiple charged particles in the ATLAS pixel detector using a set of artificial neural networks is presented. Such merged clusters are a common feature of tracks originating from highly energetic objects, such as jets. Neural networks are trained using Monte Carlo samples produced with a detailed detector simulation. This technique replaces the former clustering approach based on a connected component analysis and charge interpolation. The performance of the neural network splitting technique is quantified using data from proton-proton collisions at the LHC collected by the ATLAS detector in 2011 and from Monte Carlo simulations. This technique reduces the number of clusters shared between tracks in highly energetic jets by up to a factor of three. It also provides more precise position and error estimates of the clusters in both the transverse and longitudinal impact parameter resolution.
Issue Date
2014
Journal
Journal of Instrumentation 
Project
info:eu-repo/grantAgreement/EC/FP7/246806/EU/European Particle physics Latin American NETwork/EPLANET
Organization
Fakultät für Physik 
ISSN
1748-0221
Extent
35
Language
English

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