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Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC
The Time Projection Chamber (TPC) of the ALICE experiment at the CERN LHC was upgraded for Run 3 and Run 4. Readout chambers based on Gas Electron Multiplier (GEM) technology and a new readout scheme allow continuous data taking at the highest interaction rates expected in Pb-Pb collisions. Due to t...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , |
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Lenguaje: | eng |
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2021
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1051/epjconf/202125103020 http://cds.cern.ch/record/2813812 |
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author | Gorbunov, Sergey Hellbär, Ernst Innocenti, Gian Michele Ivanov, Marian Kabus, Maja Kleiner, Matthias Riaz, Haris Rohr, David Sadikin, Rifki Schweda, Kai Sekihata, Daiki Shahoyan, Ruben Völkel, Benedikt Wiechula, Jens Zampolli, Chiara Appelshäuser, Harald Büsching, Henner Graczykowski, Łukasz Grosse-Oetringhaus, Jan Fiete Hristov, Peter Gunji, Taku Masciocchi, Silvia |
author_facet | Gorbunov, Sergey Hellbär, Ernst Innocenti, Gian Michele Ivanov, Marian Kabus, Maja Kleiner, Matthias Riaz, Haris Rohr, David Sadikin, Rifki Schweda, Kai Sekihata, Daiki Shahoyan, Ruben Völkel, Benedikt Wiechula, Jens Zampolli, Chiara Appelshäuser, Harald Büsching, Henner Graczykowski, Łukasz Grosse-Oetringhaus, Jan Fiete Hristov, Peter Gunji, Taku Masciocchi, Silvia |
author_sort | Gorbunov, Sergey |
collection | CERN |
description | The Time Projection Chamber (TPC) of the ALICE experiment at the CERN LHC was upgraded for Run 3 and Run 4. Readout chambers based on Gas Electron Multiplier (GEM) technology and a new readout scheme allow continuous data taking at the highest interaction rates expected in Pb-Pb collisions. Due to the absence of a gating grid system, a significant amount of ions created in the multiplication region is expected to enter the TPC drift volume and distort the uniform electric field that guides the electrons to the readout pads. Analytical calculations were considered to correct for space-charge distortion fluctuations but they proved to be too slow for the calibration and reconstruction workflow in Run 3. In this paper, we discuss a novel strategy developed by the ALICE Collaboration to perform distortion-fluctuation corrections with machine learning and convolutional neural network techniques. The results of preliminary studies are shown and the prospects for further development and optimization are also discussed. |
id | cern-2813812 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2021 |
record_format | invenio |
spelling | cern-28138122022-08-17T19:43:05Zdoi:10.1051/epjconf/202125103020http://cds.cern.ch/record/2813812engGorbunov, SergeyHellbär, ErnstInnocenti, Gian MicheleIvanov, MarianKabus, MajaKleiner, MatthiasRiaz, HarisRohr, DavidSadikin, RifkiSchweda, KaiSekihata, DaikiShahoyan, RubenVölkel, BenediktWiechula, JensZampolli, ChiaraAppelshäuser, HaraldBüsching, HennerGraczykowski, ŁukaszGrosse-Oetringhaus, Jan FieteHristov, PeterGunji, TakuMasciocchi, SilviaDeep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPCComputing and ComputersThe Time Projection Chamber (TPC) of the ALICE experiment at the CERN LHC was upgraded for Run 3 and Run 4. Readout chambers based on Gas Electron Multiplier (GEM) technology and a new readout scheme allow continuous data taking at the highest interaction rates expected in Pb-Pb collisions. Due to the absence of a gating grid system, a significant amount of ions created in the multiplication region is expected to enter the TPC drift volume and distort the uniform electric field that guides the electrons to the readout pads. Analytical calculations were considered to correct for space-charge distortion fluctuations but they proved to be too slow for the calibration and reconstruction workflow in Run 3. In this paper, we discuss a novel strategy developed by the ALICE Collaboration to perform distortion-fluctuation corrections with machine learning and convolutional neural network techniques. The results of preliminary studies are shown and the prospects for further development and optimization are also discussed.oai:cds.cern.ch:28138122021 |
spellingShingle | Computing and Computers Gorbunov, Sergey Hellbär, Ernst Innocenti, Gian Michele Ivanov, Marian Kabus, Maja Kleiner, Matthias Riaz, Haris Rohr, David Sadikin, Rifki Schweda, Kai Sekihata, Daiki Shahoyan, Ruben Völkel, Benedikt Wiechula, Jens Zampolli, Chiara Appelshäuser, Harald Büsching, Henner Graczykowski, Łukasz Grosse-Oetringhaus, Jan Fiete Hristov, Peter Gunji, Taku Masciocchi, Silvia Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title | Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title_full | Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title_fullStr | Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title_full_unstemmed | Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title_short | Deep neural network techniques in the calibration of space-charge distortion fluctuations for the ALICE TPC |
title_sort | deep neural network techniques in the calibration of space-charge distortion fluctuations for the alice tpc |
topic | Computing and Computers |
url | https://dx.doi.org/10.1051/epjconf/202125103020 http://cds.cern.ch/record/2813812 |
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