利用机器学习方法分析荧光望远镜数据

IF 0.48 Q4 Physics and Astronomy
M. Yu. Zotov, P. D. Zakharov
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引用次数: 0

摘要

荧光望远镜是所有现代实验中用于研究超高能宇宙射线的关键仪器之一。本文利用小型地面望远镜EUSO-TA的模型数据,尝试使用机器学习和神经网络的方法来识别其数据中大量空气阵雨的轨迹,并重建初级粒子的能量和到达方向。我们还评论了将这种方法用于其他荧光望远镜的机会,并概述了进一步改进所建议方法性能的机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Analysis of Fluorescence Telescope Data Using Machine Learning Methods

Analysis of Fluorescence Telescope Data Using Machine Learning Methods

Fluorescence telescopes are among the key instruments used for studying ultra-high energy cosmic rays in all modern experiments. We use model data for a small ground-based telescope EUSO-TA to try some methods of machine learning and neural networks to recognize tracks of extensive air showers in its data and to reconstruct energy and arrival directions of primary particles. We also comment on the opportunities to use this approach for other fluorescence telescopes and outline opportunities to further improve the performance of the suggested methods.

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来源期刊
Bulletin of the Russian Academy of Sciences: Physics
Bulletin of the Russian Academy of Sciences: Physics Physics and Astronomy-Physics and Astronomy (all)
CiteScore
0.90
自引率
0.00%
发文量
251
期刊介绍: Bulletin of the Russian Academy of Sciences: Physics is an international peer reviewed journal published with the participation of the Russian Academy of Sciences. It presents full-text articles (regular,  letters  to  the editor, reviews) with the most recent results in miscellaneous fields of physics and astronomy: nuclear physics, cosmic rays, condensed matter physics, plasma physics, optics and photonics, nanotechnologies, solar and astrophysics, physical applications in material sciences, life sciences, etc. Bulletin of the Russian Academy of Sciences: Physics  focuses on the most relevant multidisciplinary topics in natural sciences, both fundamental and applied. Manuscripts can be submitted in Russian and English languages and are subject to peer review. Accepted articles are usually combined in thematic issues on certain topics according to the journal editorial policy. Authors featured in the journal represent renowned scientific laboratories and institutes from different countries, including large international collaborations. There are globally recognized researchers among the authors: Nobel laureates and recipients of other awards, and members of national academies of sciences and international scientific societies.
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