Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning

The ARIANNA experiment is an Askaryan detector designed to record radio signals induced by neutrino interactions in the Antarctic ice. Because of the low neutrino flux at high energies, the ability to increase detector sensitivity and data analysis techniques is crucial to maximizing the number of n...

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Main Author: Anker, Astrid Lund
Other Authors: Barwick, Steven
Format: Other/Unknown Material
Language:English
Published: eScholarship, University of California 2023
Subjects:
Online Access:https://escholarship.org/uc/item/5bq04830
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spelling ftcdlib:oai:escholarship.org:ark:/13030/qt5bq04830 2023-06-11T04:06:54+02:00 Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning Anker, Astrid Lund Barwick, Steven 2023-01-01 application/pdf https://escholarship.org/uc/item/5bq04830 en eng eScholarship, University of California qt5bq04830 https://escholarship.org/uc/item/5bq04830 public Physics Particle physics Artificial intelligence ARIANNA Deep-Learning Neutrinos etd 2023 ftcdlib 2023-04-24T17:56:19Z The ARIANNA experiment is an Askaryan detector designed to record radio signals induced by neutrino interactions in the Antarctic ice. Because of the low neutrino flux at high energies, the ability to increase detector sensitivity and data analysis techniques is crucial to maximizing the number of neutrinos measured. In this work, deep learning techniques are explored to improve real-time data collection capabilities and offline neutrino searches. As an introduction, the broader field of multi-messenger astronomy is outlined, an overview of the ARIANNA experiment is provided, and deep learning techniques are detailed. Next, two projects utilizing deep learning to analyze ARIANNA data are presented. In the first project, the amplitudes of the trigger threshold are limited by the rate of triggering on unavoidable thermal noise fluctuations. Here, a real-time thermal noise rejection algorithm is created that enables the trigger thresholds to be lowered, increasing the sensitivity to neutrinos by up to a factor of two (depending on energy) compared to the current ARIANNA capabilities. A deep learning discriminator, based on a Convolutional Neural Network (CNN), is implemented to identify and remove thermal events in real time. This project demonstrated a CNN trained on Monte Carlo data can run on the current ARIANNA microcomputer; the CNN retained 95% of the neutrino signal at a thermal noise rejection factor of 100,000, compared to a template matching procedure which reached only 100 for the same signal efficiency. The results are verified by feeding in generated neutrino-like signal pulses and thermal noise directly into the ARIANNA data acquisition system. There are further studies of the CNN including deep learning network interpretability and hyperparameter optimization. Lastly, the CNN is used to classify cosmic rays events to confirm they are not rejected; the network properly classified 102 out of 104 cosmic ray events as signal. In the second project, deep learning is used in an offline analysis to classify ... Other/Unknown Material Antarc* Antarctic University of California: eScholarship Antarctic The Antarctic
institution Open Polar
collection University of California: eScholarship
op_collection_id ftcdlib
language English
topic Physics
Particle physics
Artificial intelligence
ARIANNA
Deep-Learning
Neutrinos
spellingShingle Physics
Particle physics
Artificial intelligence
ARIANNA
Deep-Learning
Neutrinos
Anker, Astrid Lund
Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
topic_facet Physics
Particle physics
Artificial intelligence
ARIANNA
Deep-Learning
Neutrinos
description The ARIANNA experiment is an Askaryan detector designed to record radio signals induced by neutrino interactions in the Antarctic ice. Because of the low neutrino flux at high energies, the ability to increase detector sensitivity and data analysis techniques is crucial to maximizing the number of neutrinos measured. In this work, deep learning techniques are explored to improve real-time data collection capabilities and offline neutrino searches. As an introduction, the broader field of multi-messenger astronomy is outlined, an overview of the ARIANNA experiment is provided, and deep learning techniques are detailed. Next, two projects utilizing deep learning to analyze ARIANNA data are presented. In the first project, the amplitudes of the trigger threshold are limited by the rate of triggering on unavoidable thermal noise fluctuations. Here, a real-time thermal noise rejection algorithm is created that enables the trigger thresholds to be lowered, increasing the sensitivity to neutrinos by up to a factor of two (depending on energy) compared to the current ARIANNA capabilities. A deep learning discriminator, based on a Convolutional Neural Network (CNN), is implemented to identify and remove thermal events in real time. This project demonstrated a CNN trained on Monte Carlo data can run on the current ARIANNA microcomputer; the CNN retained 95% of the neutrino signal at a thermal noise rejection factor of 100,000, compared to a template matching procedure which reached only 100 for the same signal efficiency. The results are verified by feeding in generated neutrino-like signal pulses and thermal noise directly into the ARIANNA data acquisition system. There are further studies of the CNN including deep learning network interpretability and hyperparameter optimization. Lastly, the CNN is used to classify cosmic rays events to confirm they are not rejected; the network properly classified 102 out of 104 cosmic ray events as signal. In the second project, deep learning is used in an offline analysis to classify ...
author2 Barwick, Steven
format Other/Unknown Material
author Anker, Astrid Lund
author_facet Anker, Astrid Lund
author_sort Anker, Astrid Lund
title Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
title_short Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
title_full Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
title_fullStr Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
title_full_unstemmed Improving the Sensitivity and Data Analysis Techniques of the ARIANNA Detector with Deep Learning
title_sort improving the sensitivity and data analysis techniques of the arianna detector with deep learning
publisher eScholarship, University of California
publishDate 2023
url https://escholarship.org/uc/item/5bq04830
geographic Antarctic
The Antarctic
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The Antarctic
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Antarctic
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