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Reconstrução de Energia para Calorímetros Finamente Segmentados

This thesis presents data processing techniques of signal detection and energy estimation for high energy calorimetry. Modern calorimeters have thousands of readout channels and operate at high event rate conditions. Typically, the energy reconstruction involves both detection and estimation tasks,...

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Autor principal: Sotto-Maior Peralva, Bernardo
Lenguaje:por
Publicado: 2015
Materias:
Acceso en línea:http://cds.cern.ch/record/2066756
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author Sotto-Maior Peralva, Bernardo
author_facet Sotto-Maior Peralva, Bernardo
author_sort Sotto-Maior Peralva, Bernardo
collection CERN
description This thesis presents data processing techniques of signal detection and energy estimation for high energy calorimetry. Modern calorimeters have thousands of readout channels and operate at high event rate conditions. Typically, the energy reconstruction involves both detection and estimation tasks, and it is based on the amplitude estimation of the received digitized signal. The current methods employed by high energy experiments are based on variance minimization techniques, and the valid signals are selected based on the energy estimation. This work explores the use of a technique based on Matched Filter for signal detection, and it makes use of a calibration factor to estimate the energy. In the proposed approach, the stochastic parameters of the pulse (phase and deformation) and the statistics from the background are considered for the filter design in order to increase performance. In particular cases, where the signal pile-up is likely to occur, another promising technique, based on linear signal deconvolution is discussed. The techniques proposed in this thesis were implemented offline and applied on the ATLAS Tile Calorimeter (TileCal) at LHC. Both simulated signals and real data acquired during nominal LHC operation were used. The proposed estimators presented smaller error with respect to the methods currently used in modern calorimeter systems, and they have been extensively tested to be used in TileCal.
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institution Organización Europea para la Investigación Nuclear
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publishDate 2015
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spelling cern-20667562019-09-30T06:29:59Zhttp://cds.cern.ch/record/2066756porSotto-Maior Peralva, BernardoReconstrução de Energia para Calorímetros Finamente SegmentadosEngineeringDetectors and Experimental TechniquesThis thesis presents data processing techniques of signal detection and energy estimation for high energy calorimetry. Modern calorimeters have thousands of readout channels and operate at high event rate conditions. Typically, the energy reconstruction involves both detection and estimation tasks, and it is based on the amplitude estimation of the received digitized signal. The current methods employed by high energy experiments are based on variance minimization techniques, and the valid signals are selected based on the energy estimation. This work explores the use of a technique based on Matched Filter for signal detection, and it makes use of a calibration factor to estimate the energy. In the proposed approach, the stochastic parameters of the pulse (phase and deformation) and the statistics from the background are considered for the filter design in order to increase performance. In particular cases, where the signal pile-up is likely to occur, another promising technique, based on linear signal deconvolution is discussed. The techniques proposed in this thesis were implemented offline and applied on the ATLAS Tile Calorimeter (TileCal) at LHC. Both simulated signals and real data acquired during nominal LHC operation were used. The proposed estimators presented smaller error with respect to the methods currently used in modern calorimeter systems, and they have been extensively tested to be used in TileCal.CERN-THESIS-2015-198oai:cds.cern.ch:20667562015-11-11T03:31:43Z
spellingShingle Engineering
Detectors and Experimental Techniques
Sotto-Maior Peralva, Bernardo
Reconstrução de Energia para Calorímetros Finamente Segmentados
title Reconstrução de Energia para Calorímetros Finamente Segmentados
title_full Reconstrução de Energia para Calorímetros Finamente Segmentados
title_fullStr Reconstrução de Energia para Calorímetros Finamente Segmentados
title_full_unstemmed Reconstrução de Energia para Calorímetros Finamente Segmentados
title_short Reconstrução de Energia para Calorímetros Finamente Segmentados
title_sort reconstrução de energia para calorímetros finamente segmentados
topic Engineering
Detectors and Experimental Techniques
url http://cds.cern.ch/record/2066756
work_keys_str_mv AT sottomaiorperalvabernardo reconstrucaodeenergiaparacalorimetrosfinamentesegmentados