Application of convolutional neural networks for data analysis in TAIGA-HiSCORE experiment

A. Vlaskina, A. Kryukov
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Abstract

The TAIGA experimental complex is a hybrid observatory for high-energy gamma-ray astronomy in the range from 10 TeV to several EeV. The complex consists of such installations as TAIGA- IACT, TAIGA-HiSCORE and a number of others. The TAIGA-HiSCORE facility is a set of wide-angle synchronized stations that detect Cherenkov radiation scattered over a large area. TAIGA-HiSCORE data provides an opportunity to reconstruct shower characteristics, such as shower energy, direction of arrival, and axis coordinates. The main idea of the work is to apply convolutional neural networks to analyze HiSCORE events, considering them as images. The distribution of registration times and amplitudes of events recorded by HiSCORE stations is used as input data. The paper presents the results of using convolutional neural networks to determine the characteristics of air showers. It is shown that even a simple model of convolutional neural network provides the accuracy of recovering EAS parameters comparable to the traditional method. Preliminary results of air shower parameters reconstruction obtained in a real experiment and their comparison with the results of traditional analysis are presented.
卷积神经网络在TAIGA-HiSCORE实验数据分析中的应用
TAIGA实验综合体是一个混合天文台,用于高能伽马射线天文学,范围从10 TeV到几EeV。该综合体由TAIGA- IACT、TAIGA- hiscore等装置组成。TAIGA-HiSCORE设施是一组广角同步站,用于探测大面积分散的切伦科夫辐射。TAIGA-HiSCORE数据提供了重建阵雨特征的机会,如阵雨能量、到达方向和轴坐标。这项工作的主要思想是应用卷积神经网络来分析HiSCORE事件,将它们视为图像。使用HiSCORE台站记录的事件的登记时间和振幅分布作为输入数据。本文介绍了用卷积神经网络确定风淋室特性的结果。结果表明,即使是一个简单的卷积神经网络模型,也能提供与传统方法相当的EAS参数恢复精度。给出了在实际试验中获得的风淋室参数重建的初步结果,并与传统分析结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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