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Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction
The optimization of the Beetle readout ASIC and the performance of the software for the signal processing based on machine learning methods are presented. The Beetle readout chip was developed for the LHCb (Large Hadron Collider beauty) tracking detectors and was used in the VELO (Vertex Locator) du...
Autores principales: | , , , , , , , , , , , , , , , |
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Lenguaje: | eng |
Publicado: |
2021
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.3390/s21186075 http://cds.cern.ch/record/2800473 |
_version_ | 1780972635896676352 |
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author | Kopciewicz, Pawel Akiba, Kazu Szumlak, Tomasz Sitko, Sebastian Piotr Barter, William Buytaert, Jan Eklund, Lars Hennessy, Karol Koppenburg, Patrick Latham, Thomas Edward Majewski, Maciej Witold Oblakowska-Mucha, Agnieszka Parkes, Chris Qian, Wenbin Velthuis, Johannes Williams, Mark Richard James |
author_facet | Kopciewicz, Pawel Akiba, Kazu Szumlak, Tomasz Sitko, Sebastian Piotr Barter, William Buytaert, Jan Eklund, Lars Hennessy, Karol Koppenburg, Patrick Latham, Thomas Edward Majewski, Maciej Witold Oblakowska-Mucha, Agnieszka Parkes, Chris Qian, Wenbin Velthuis, Johannes Williams, Mark Richard James |
author_sort | Kopciewicz, Pawel |
collection | CERN |
description | The optimization of the Beetle readout ASIC and the performance of the software for the signal processing based on machine learning methods are presented. The Beetle readout chip was developed for the LHCb (Large Hadron Collider beauty) tracking detectors and was used in the VELO (Vertex Locator) during Run 1 and 2 of LHC data taking. The VELO, surrounding the LHC beam crossing region, was a leading part of the LHCb tracking system. The Beetle chip was used to read out the signal from silicon microstrips, integrating and amplifying it. The studies presented in this paper cover the optimization of its electronic configuration to achieve the lower power consumption footprint and the lower operational temperature of the sensors, while maintaining a good condition of the analogue response of the whole chip. The studies have shown that optimizing the operational temperature is possible and can be beneficial when the detector is highly irradiated. Even a single degree drop in silicon temperature can result in a significant reduction in the leakage current. Similar studies are being performed for the future silicon tracker, the Upstream Tracker (UT), which will start operating at LHC in 2021. It is expected that the inner part of the UT detector will suffer radiation damage similar to the most irradiated VELO sensors in Run 2. In the course of analysis we also developed a general approach for the pulse shape reconstruction using an ANN approach. This technique can be reused in case of any type of front-end readout chip. |
id | cern-2800473 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2021 |
record_format | invenio |
spelling | cern-28004732022-01-27T22:54:31Zdoi:10.3390/s21186075http://cds.cern.ch/record/2800473engKopciewicz, PawelAkiba, KazuSzumlak, TomaszSitko, Sebastian PiotrBarter, WilliamBuytaert, JanEklund, LarsHennessy, KarolKoppenburg, PatrickLatham, Thomas EdwardMajewski, Maciej WitoldOblakowska-Mucha, AgnieszkaParkes, ChrisQian, WenbinVelthuis, JohannesWilliams, Mark Richard JamesSimulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape ReconstructionParticle Physics - ExperimentAccelerators and Storage RingsThe optimization of the Beetle readout ASIC and the performance of the software for the signal processing based on machine learning methods are presented. The Beetle readout chip was developed for the LHCb (Large Hadron Collider beauty) tracking detectors and was used in the VELO (Vertex Locator) during Run 1 and 2 of LHC data taking. The VELO, surrounding the LHC beam crossing region, was a leading part of the LHCb tracking system. The Beetle chip was used to read out the signal from silicon microstrips, integrating and amplifying it. The studies presented in this paper cover the optimization of its electronic configuration to achieve the lower power consumption footprint and the lower operational temperature of the sensors, while maintaining a good condition of the analogue response of the whole chip. The studies have shown that optimizing the operational temperature is possible and can be beneficial when the detector is highly irradiated. Even a single degree drop in silicon temperature can result in a significant reduction in the leakage current. Similar studies are being performed for the future silicon tracker, the Upstream Tracker (UT), which will start operating at LHC in 2021. It is expected that the inner part of the UT detector will suffer radiation damage similar to the most irradiated VELO sensors in Run 2. In the course of analysis we also developed a general approach for the pulse shape reconstruction using an ANN approach. This technique can be reused in case of any type of front-end readout chip.LHCb-PUB-2022-002CERN-LHCb-PUB-2022-002oai:cds.cern.ch:28004732021-09-10 |
spellingShingle | Particle Physics - Experiment Accelerators and Storage Rings Kopciewicz, Pawel Akiba, Kazu Szumlak, Tomasz Sitko, Sebastian Piotr Barter, William Buytaert, Jan Eklund, Lars Hennessy, Karol Koppenburg, Patrick Latham, Thomas Edward Majewski, Maciej Witold Oblakowska-Mucha, Agnieszka Parkes, Chris Qian, Wenbin Velthuis, Johannes Williams, Mark Richard James Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title | Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title_full | Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title_fullStr | Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title_full_unstemmed | Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title_short | Simulation and Optimization Studies of the LHCb Beetle Readout ASIC and Machine Learning Approach for Pulse Shape Reconstruction |
title_sort | simulation and optimization studies of the lhcb beetle readout asic and machine learning approach for pulse shape reconstruction |
topic | Particle Physics - Experiment Accelerators and Storage Rings |
url | https://dx.doi.org/10.3390/s21186075 http://cds.cern.ch/record/2800473 |
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