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Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments

Abstract: The Semi-Digital Hadronic CALorimeter (SDHCAL) is one of the two hadronic calorimeter options proposed by the International Large Detector (ILD) project for the future International Linear Collider (ILC) experiments. It is a sampling calorimeter with 48 active layers made of Glass Resistiv...

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Detalles Bibliográficos
Autores principales: Mannai, S, Manai, K, Cortina, E, Laktineh, I
Lenguaje:eng
Publicado: 2016
Materias:
Acceso en línea:https://dx.doi.org/10.1109/TNS.2016.2614946
http://cds.cern.ch/record/2276758
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author Mannai, S
Manai, K
Cortina, E
Laktineh, I
author_facet Mannai, S
Manai, K
Cortina, E
Laktineh, I
author_sort Mannai, S
collection CERN
description Abstract: The Semi-Digital Hadronic CALorimeter (SDHCAL) is one of the two hadronic calorimeter options proposed by the International Large Detector (ILD) project for the future International Linear Collider (ILC) experiments. It is a sampling calorimeter with 48 active layers made of Glass Resistive Plate Chambers (GRPCs) and their embedded electronics. A fine lateral segmentation is obtained thanks to pickup pads of 1 cm2. This ensures the high granularity required for the application of the Particle Flow Algorithm (PFA) in order to improve the jet energy resolution in the ILC experiments. The performance of the SDHCAL technological prototype was tested successfully in several beam tests at CERN. The main point to be discussed here concerns the energy reconstruction in SDHCAL. Based on Monte Carlo simulation of the SDHCAL prototype using the GEANT4 package, we present different energy reconstruction methods to study the energy linearity and resolution of the detector response to single hadrons. In particular, we highlight a new technique based on the Artificial Neural Network giving promising results compared to analytic methods.
id oai-inspirehep.net-1512888
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2016
record_format invenio
spelling oai-inspirehep.net-15128882019-09-30T06:29:59Zdoi:10.1109/TNS.2016.2614946http://cds.cern.ch/record/2276758engMannai, SManai, KCortina, ELaktineh, IEnergy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC ExperimentsDetectors and Experimental TechniquesAbstract: The Semi-Digital Hadronic CALorimeter (SDHCAL) is one of the two hadronic calorimeter options proposed by the International Large Detector (ILD) project for the future International Linear Collider (ILC) experiments. It is a sampling calorimeter with 48 active layers made of Glass Resistive Plate Chambers (GRPCs) and their embedded electronics. A fine lateral segmentation is obtained thanks to pickup pads of 1 cm2. This ensures the high granularity required for the application of the Particle Flow Algorithm (PFA) in order to improve the jet energy resolution in the ILC experiments. The performance of the SDHCAL technological prototype was tested successfully in several beam tests at CERN. The main point to be discussed here concerns the energy reconstruction in SDHCAL. Based on Monte Carlo simulation of the SDHCAL prototype using the GEANT4 package, we present different energy reconstruction methods to study the energy linearity and resolution of the detector response to single hadrons. In particular, we highlight a new technique based on the Artificial Neural Network giving promising results compared to analytic methods.The Semi-Digital Hadronic CALorimeter (SDHCAL) is one of the two hadronic calorimeter options proposed by the International Large Detector (ILD) project for the future International Linear Collider (ILC) experiments. It is a sampling calorimeter with 48 active layers made of Glass Resistive Plate Chambers (GRPCs) and their embedded electronics. A fine lateral segmentation is obtained thanks to pickup pads of 1 cm2. This ensures the high granularity required for the application of the Particle Flow Algorithm (PFA) in order to improve the jet energy resolution in the ILC experiments. The performance of the SDHCAL technological prototype was tested successfully in several beam tests at CERN. The main point to be discussed here concerns the energy reconstruction in SDHCAL. Based on Monte Carlo simulation of the SDHCAL prototype using the GEANT4 package, we present different energy reconstruction methods to study the energy linearity and resolution of the detector response to single hadrons. In particular, we highlight a new technique based on the Artificial Neural Network giving promising results compared to analytic methods.oai:inspirehep.net:15128882016
spellingShingle Detectors and Experimental Techniques
Mannai, S
Manai, K
Cortina, E
Laktineh, I
Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title_full Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title_fullStr Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title_full_unstemmed Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title_short Energy Reconstruction in a High Granularity Semi-Digital Hadronic Calorimeter for ILC Experiments
title_sort energy reconstruction in a high granularity semi-digital hadronic calorimeter for ilc experiments
topic Detectors and Experimental Techniques
url https://dx.doi.org/10.1109/TNS.2016.2614946
http://cds.cern.ch/record/2276758
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AT manaik energyreconstructioninahighgranularitysemidigitalhadroniccalorimeterforilcexperiments
AT cortinae energyreconstructioninahighgranularitysemidigitalhadroniccalorimeterforilcexperiments
AT laktinehi energyreconstructioninahighgranularitysemidigitalhadroniccalorimeterforilcexperiments