Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE

IF 1.9 3区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Nuclear Science Pub Date : 2024-12-23 DOI:10.1109/TNS.2024.3521357
Michael H. L. S. Wang
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Abstract

One of the goals of the Deep Underground Neutrino Experiment (DUNE) is to use the massive underground liquid argon time projection chamber (LArTPC) detectors at its far site for multimessenger astronomy (MMA), in the detection of neutrinos from core-collapse supernovae (SNe). Its current baseline trigger strategy detects activity in the detector that is consistent with supernova (SN) neutrinos and saves the raw data for further offline analysis but provides no prompt pointing information crucial for optical follow-ups by other observatories. This approach is based on the assumption that prompt pointing determination using raw data is computationally prohibitive. In this article, we demonstrate a proof-of-concept based on applying extreme data reduction on the buffered SN data in the DUNE data acquisition (DAQ) system’s front-end computers using a machine learning (ML) workflow. This reduces the data by ~5 orders of magnitude, allowing a full track reconstruction to be carried out quickly on a single server. The total time to perform the ML-based data reduction and the full track reconstruction is less than the time to transfer the SN data back to Fermilab or a high-performance computing (HPC) center. This shows that prompt processing of raw SN data is possible and, in fact, trivial once the data have been reduced to reject radiological backgrounds, paving the way to a high-quality SN pointing trigger that is based on fully reconstructed data instead of trigger primitives (TPs).
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指向DUNE的提示超新星的基于机器学习的极端数据约简
深地下中微子实验(DUNE)的目标之一是在其远端使用大型地下液态氩时间投影室(LArTPC)探测器进行多信使天文学(MMA),以探测来自核心坍缩超新星(SNe)的中微子。它目前的基线触发策略检测到与超新星(SN)中微子一致的探测器活动,并保存原始数据以供进一步的离线分析,但没有为其他天文台的光学后续工作提供关键的提示指向信息。这种方法基于这样一个假设,即使用原始数据进行提示指向确定在计算上是禁止的。在本文中,我们使用机器学习(ML)工作流演示了基于对DUNE数据采集(DAQ)系统前端计算机中的缓冲SN数据应用极端数据约简的概念验证。这减少了约5个数量级的数据,允许在单个服务器上快速进行完整的轨道重建。执行基于ml的数据约简和全磁道重建的总时间少于将SN数据传回费米实验室或高性能计算(HPC)中心的时间。这表明对原始SN数据的快速处理是可能的,事实上,一旦数据被简化到拒绝放射背景,就很容易,为基于完全重构数据而不是触发原语(TPs)的高质量SN指向触发器铺平了道路。
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来源期刊
IEEE Transactions on Nuclear Science
IEEE Transactions on Nuclear Science 工程技术-工程:电子与电气
CiteScore
3.70
自引率
27.80%
发文量
314
审稿时长
6.2 months
期刊介绍: The IEEE Transactions on Nuclear Science is a publication of the IEEE Nuclear and Plasma Sciences Society. It is viewed as the primary source of technical information in many of the areas it covers. As judged by JCR impact factor, TNS consistently ranks in the top five journals in the category of Nuclear Science & Technology. It has one of the higher immediacy indices, indicating that the information it publishes is viewed as timely, and has a relatively long citation half-life, indicating that the published information also is viewed as valuable for a number of years. The IEEE Transactions on Nuclear Science is published bimonthly. Its scope includes all aspects of the theory and application of nuclear science and engineering. It focuses on instrumentation for the detection and measurement of ionizing radiation; particle accelerators and their controls; nuclear medicine and its application; effects of radiation on materials, components, and systems; reactor instrumentation and controls; and measurement of radiation in space.
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