Neural Networks for Separation of Cosmic Gamma Rays and Hadronic Cosmic Rays in Air Shower Observation with a Large Area Surface Detector Array

S. Okukawa, Kazuyuki Hara, K. Hibino, Y. Katayose, K. Kawata, M. Ohnishi, Takashi Sako, Takashi Sako, Makio Shibata, A. Shiomi, M. Takita
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Abstract

The Tibet ASγ experiment has been observing cosmic gamma rays and cosmic rays in the energy range from teraelectron volts to several tens of petaelectron volts with a surface detector array since 1990. The derivation of cosmic gamma-ray flux is made by finding the excess distribution of the arrival direction of air showers above background cosmic rays. In 2014, the underground water Cherenkov muon detector (MD) was added to separate cosmic gamma rays from the background on the basis of the muon-less feature of the air showers of gamma-ray origin; hybrid observations using these two detectors were started at this time. In the present study, we developed methods to separate gamma-ray-induced air showers and hadronic cosmic-ray-induced ones using the measured particle number density distribution to improve the sensitivity of cosmic gamma-ray measurements using the Tibet air shower array data alone before the installation of the MD. We tested two approaches based on neural networks. The first method used feature values representing the lateral spread of the secondary particles, and the second method used the shower image data. To compare the separation performance of each method, we analyzed Monte Carlo air shower events in the vertically incident direction with mono-initial-energy gamma rays and protons. When discriminated by a single feature, the feature with the highest separation performance has an area under the curve (AUC) value of 0.701 for a gamma-ray energy of 10 TeV and 0.808 for 100 TeV. A separation method with a multilayer perceptron (MLP) based on multiple features has AUC values of 0.761 for a gamma-ray energy of 10 TeV and 0.854 for 100 TeV, which represents an improvement of approximately 5 % in the AUC value compared with the single-feature case. We also found that the feature values that effectively contribute to the separation vary depending on the energy. A separation method with a convolutional neural network (CNN) using the shower image data has AUC values of 0.781 for a gamma-ray energy of 10 TeV and 0.901 for 100 TeV, which are approximately 5 % higher than those of the MLP method. We applied the CNN separation method to Monte Carlo gamma-ray and cosmic-ray events from the Crab Nebula in the energy range 10−100 TeV. The AUC values range from 0.753 to 0.879, and the significance of the observed gamma-ray excess is improved by 1.3 to 1.8 times compared with the case without the separation procedure.
利用大面积表面探测器阵列观测气流淋浴时分离宇宙伽马射线和强子宇宙射线的神经网络
自1990年以来,西藏ASγ实验一直在利用表面探测器阵列观测能量范围从太电子伏特到几十个小电子伏特的宇宙伽马射线和宇宙射线。宇宙伽马射线通量的推导是通过寻找空气阵列到达方向高于背景宇宙射线的过度分布来实现的。2014年,根据伽马射线源气阵的无μ介子特征,增加了地下水切伦科夫μ介子探测器(MD),将宇宙伽马射线从背景中分离出来。在本研究中,我们开发了利用测量到的粒子数密度分布来分离伽马射线引起的气流淋浴和强子宇宙射线引起的气流淋浴的方法,以提高在安装MD之前仅利用西藏气流淋浴阵列数据进行宇宙伽马射线测量的灵敏度。我们测试了两种基于神经网络的方法。第一种方法使用了代表二次粒子横向扩散的特征值,第二种方法使用了阵雨图像数据。为了比较每种方法的分离性能,我们分析了单初始能量伽马射线和质子垂直入射方向上的蒙特卡罗气雨事件。通过单一特征进行分辨时,分离性能最高的特征在伽马射线能量为 10 TeV 时的曲线下面积(AUC)值为 0.701,在 100 TeV 时为 0.808。基于多特征的多层感知器(MLP)分离方法在伽马射线能量为 10 TeV 时的 AUC 值为 0.761,在 100 TeV 时为 0.854,与单特征情况相比,AUC 值提高了约 5%。我们还发现,有效促进分离的特征值因能量而异。使用骤雨图像数据的卷积神经网络(CNN)分离方法在伽马射线能量为 10 TeV 和 100 TeV 时的 AUC 值分别为 0.781 和 0.901,比 MLP 方法高出约 5%。我们将 CNN 分离方法应用于来自蟹状星云的蒙地卡罗伽马射线和宇宙射线事件,能量范围为 10-100 TeV。AUC值从0.753到0.879不等,观测到的伽马射线过量的显著性比没有分离程序的情况提高了1.3到1.8倍。
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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