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Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept

We investigate the feasibility of using deep learning techniques, in the form of a one-dimensional convolutional neural network (1D-CNN), for the extraction of signals from the raw waveforms produced by the individual channels of liquid argon time projection chamber (LArTPC) detectors. A minimal gen...

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Detalles Bibliográficos
Autores principales: Uboldi, Lorenzo, Ruth, David, Andrews, Michael, Wang, Michael H.L.S., Wenzel, Hans Joachim, Wu, Wanwei, Yang, Tingjun
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:https://dx.doi.org/10.1016/j.nima.2022.166371
http://cds.cern.ch/record/2773634
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author Uboldi, Lorenzo
Ruth, David
Andrews, Michael
Wang, Michael H.L.S.
Wenzel, Hans Joachim
Wu, Wanwei
Yang, Tingjun
author_facet Uboldi, Lorenzo
Ruth, David
Andrews, Michael
Wang, Michael H.L.S.
Wenzel, Hans Joachim
Wu, Wanwei
Yang, Tingjun
author_sort Uboldi, Lorenzo
collection CERN
description We investigate the feasibility of using deep learning techniques, in the form of a one-dimensional convolutional neural network (1D-CNN), for the extraction of signals from the raw waveforms produced by the individual channels of liquid argon time projection chamber (LArTPC) detectors. A minimal generic LArTPC detector model is developed to generate realistic noise and signal waveforms used to train and test the 1D-CNN, and evaluate its performance on low-level signals. We demonstrate that our approach overcomes the inherent shortcomings of traditional cut-based methods by extending sensitivity to signals with ADC values below their imposed thresholds. This approach exhibits great promise in enhancing the capabilities of future generation neutrino experiments like DUNE to carry out their low-energy neutrino physics programs.
id cern-2773634
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-27736342023-01-31T03:57:07Zdoi:10.1016/j.nima.2022.166371http://cds.cern.ch/record/2773634engUboldi, LorenzoRuth, DavidAndrews, MichaelWang, Michael H.L.S.Wenzel, Hans JoachimWu, WanweiYang, TingjunExtracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concepthep-exParticle Physics - Experimentphysics.ins-detDetectors and Experimental TechniquesWe investigate the feasibility of using deep learning techniques, in the form of a one-dimensional convolutional neural network (1D-CNN), for the extraction of signals from the raw waveforms produced by the individual channels of liquid argon time projection chamber (LArTPC) detectors. A minimal generic LArTPC detector model is developed to generate realistic noise and signal waveforms used to train and test the 1D-CNN, and evaluate its performance on low-level signals. We demonstrate that our approach overcomes the inherent shortcomings of traditional cut-based methods by extending sensitivity to signals with ADC values below their imposed thresholds. This approach exhibits great promise in enhancing the capabilities of future generation neutrino experiments like DUNE to carry out their low-energy neutrino physics programs.We investigate the feasibility of using deep learning techniques, in the form of a one-dimensional convolutional neural network (1D-CNN), for the extraction of signals from the raw waveforms produced by the individual channels of liquid argon time projection chamber (LArTPC) detectors. A minimal generic LArTPC detector model is developed to generate realistic noise and signal waveforms used to train and test the 1D-CNN, and evaluate its performance on low-level signals. We demonstrate that our approach overcomes the inherent shortcomings of traditional cut-based methods by extending sensitivity to signals with ADC values below their imposed thresholds. This approach exhibits great promise in enhancing the capabilities of future generation neutrino experiments like DUNE to carry out their low-energy neutrino physics programs.We describe the use of a 1DCNN to recognize signals in the raw waveforms generated from individual channels of LArTPC detectors used in neutrino experiments. In addition, this method also identifies the region-of-interest (ROI) localizing the position of this signal within the full waveform.arXiv:2106.09911FERMILAB-PUB-21-030-ND-SCDoai:cds.cern.ch:27736342021-06-18
spellingShingle hep-ex
Particle Physics - Experiment
physics.ins-det
Detectors and Experimental Techniques
Uboldi, Lorenzo
Ruth, David
Andrews, Michael
Wang, Michael H.L.S.
Wenzel, Hans Joachim
Wu, Wanwei
Yang, Tingjun
Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title_full Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title_fullStr Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title_full_unstemmed Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title_short Extracting low energy signals from raw LArTPC waveforms using deep learning techniques — A proof of concept
title_sort extracting low energy signals from raw lartpc waveforms using deep learning techniques — a proof of concept
topic hep-ex
Particle Physics - Experiment
physics.ins-det
Detectors and Experimental Techniques
url https://dx.doi.org/10.1016/j.nima.2022.166371
http://cds.cern.ch/record/2773634
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