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An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger

High-speed online pattern recognition has been a fundamental challenge for triggering in High Energy Physics (HEP) experiments. The Associative Memory (AM) approach has been developed and used in the HEP experiments for online track-finding with silicon detectors. We intend to extend the AM approach...

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Autores principales: He, Yunjian, Okumura, Yasuyuki, Kodama, Takafumi, Kuze, Masahiro, Yamaguchi, Yohei, Ishino, Masaya
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:https://dx.doi.org/10.1109/NSS/MIC42677.2020.9508066
http://cds.cern.ch/record/2747005
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author He, Yunjian
Okumura, Yasuyuki
Kodama, Takafumi
Kuze, Masahiro
Yamaguchi, Yohei
Ishino, Masaya
author_facet He, Yunjian
Okumura, Yasuyuki
Kodama, Takafumi
Kuze, Masahiro
Yamaguchi, Yohei
Ishino, Masaya
author_sort He, Yunjian
collection CERN
description High-speed online pattern recognition has been a fundamental challenge for triggering in High Energy Physics (HEP) experiments. The Associative Memory (AM) approach has been developed and used in the HEP experiments for online track-finding with silicon detectors. We intend to extend the AM approach to tracking with a drift-tube detector, using the drift-time as a “new dimension” of observables in addition to spatial information. Our benchmark study demonstrates the feasibility of the extended AM concept, aiming at the online muon reconstruction with the ATLAS Monitored Drift-Tube (MDT) detector for the Phase-II Level-0 muon trigger system. The online muon reconstruction will consist of two parts: (1) a fast track- segment finding, and (2) the following track reconstruction to estimate the momentum of the muons. It is found that that timing information can be integrated into the AM approach in a natural way, and the AM approach can fit the needs for the fast track segment finding. In terms of hardware specifications expected for the Phase-II Level-0 muon trigger system, an optimal pattern training scheme is developed to prepare an effective set of AM patterns that provide high efficiency in the track-segment finding while keeping a good resolution. Based on the system-level design of electronics, an optimal algorithm chain has been developed to minimise the latency for the track segment finding. The detailed design and performance study shows that the AM approach has the capability of a high-speed and high-performance track-finding with drift-tube detectors.
id cern-2747005
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
record_format invenio
spelling cern-27470052022-02-04T19:50:57Zdoi:10.1109/NSS/MIC42677.2020.9508066http://cds.cern.ch/record/2747005engHe, YunjianOkumura, YasuyukiKodama, TakafumiKuze, MasahiroYamaguchi, YoheiIshino, MasayaAn extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon triggerParticle Physics - ExperimentHigh-speed online pattern recognition has been a fundamental challenge for triggering in High Energy Physics (HEP) experiments. The Associative Memory (AM) approach has been developed and used in the HEP experiments for online track-finding with silicon detectors. We intend to extend the AM approach to tracking with a drift-tube detector, using the drift-time as a “new dimension” of observables in addition to spatial information. Our benchmark study demonstrates the feasibility of the extended AM concept, aiming at the online muon reconstruction with the ATLAS Monitored Drift-Tube (MDT) detector for the Phase-II Level-0 muon trigger system. The online muon reconstruction will consist of two parts: (1) a fast track- segment finding, and (2) the following track reconstruction to estimate the momentum of the muons. It is found that that timing information can be integrated into the AM approach in a natural way, and the AM approach can fit the needs for the fast track segment finding. In terms of hardware specifications expected for the Phase-II Level-0 muon trigger system, an optimal pattern training scheme is developed to prepare an effective set of AM patterns that provide high efficiency in the track-segment finding while keeping a good resolution. Based on the system-level design of electronics, an optimal algorithm chain has been developed to minimise the latency for the track segment finding. The detailed design and performance study shows that the AM approach has the capability of a high-speed and high-performance track-finding with drift-tube detectors.High-speed online pattern recognition has been a fundamental challenge for triggering in High Energy Physics (HEP) experiments. The Associative Memory (AM) approach has been developed and used in the HEP experiments for online track-finding with silicon detectors. We intend to extend the AM approach to tracking with a drift-tube detector, using the drift-time as a “new dimension” of observables in addition to spatial information. Our benchmark study demonstrates the feasibility of the extended AM concept, aiming at the online muon reconstruction with the ATLAS Monitored Drift-Tube (MDT) detector for the Phase-II Level-0 muon trigger system. The online muon reconstruction will consist of two parts: (1) a fast track- segment finding, and (2) the following track reconstruction to estimate the momentum of the muons. It is found that that timing information can be integrated into the AM approach in a natural way, and the AM approach can fit the needs for the fast track segment finding. In terms of hardware specifications expected for the Phase-II Level-0 muon trigger system, an optimal pattern training scheme is developed to prepare an effective set of AM patterns that provide high efficiency in the track-segment finding while keeping a good resolution. Based on the system-level design of electronics, an optimal algorithm chain has been developed to minimise the latency for the track segment finding. The detailed design and performance study shows that the AM approach has the capability of a high-speed and high-performance track-finding with drift-tube detectors.ATL-DAQ-PROC-2020-027oai:cds.cern.ch:27470052020-12-09
spellingShingle Particle Physics - Experiment
He, Yunjian
Okumura, Yasuyuki
Kodama, Takafumi
Kuze, Masahiro
Yamaguchi, Yohei
Ishino, Masaya
An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title_full An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title_fullStr An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title_full_unstemmed An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title_short An extension of Associative Memory approach to tracking with a drift-tube detector using timing information and its demonstration for HL-LHC ATLAS muon trigger
title_sort extension of associative memory approach to tracking with a drift-tube detector using timing information and its demonstration for hl-lhc atlas muon trigger
topic Particle Physics - Experiment
url https://dx.doi.org/10.1109/NSS/MIC42677.2020.9508066
http://cds.cern.ch/record/2747005
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