论文标题
与间隙中卷积神经网络的新粒子识别方法
New Particle Identification Approach with Convolutional Neural Networks in GAPS
论文作者
论文摘要
一般的反粒子光谱仪(GAP)是一个气球传播的实验,旨在测量低能宇宙射线反粒子。 Gaps基于入射颗粒引起的外来原子形成开发了一种新的反颗粒鉴定技术,该技术是由十层Si(Li)检测器跟踪器在间隙中实现的。常规分析使用重建入射和二级颗粒的物理量。与此同时,我们开发了一种基于深神经网络的互补方法。本文提出了一种新的卷积神经网络(CNN)技术。三维的CNN将能量沉积作为三维输入,并学会确定其位置/能量相关性。还研究了物理量和CNN技术的组合。研究结果表明,新技术在粒子识别中的表现优于现有的基于机器学习的方法。
The General Antiparticle Spectrometer (GAPS) is a balloon-borne experiment that aims to measure low-energy cosmic-ray antiparticles. GAPS has developed a new antiparticle identification technique based on exotic atom formation caused by incident particles, which is achieved by ten layers of Si(Li) detector tracker in GAPS. The conventional analysis uses the physical quantities of the reconstructed incident and secondary particles. In parallel with this, we have developed a complementary approach based on deep neural networks. This paper presents a new convolutional neural network (CNN) technique. A three-dimensional CNN takes energy depositions as three-dimensional inputs and learns to identify their positional/energy correlations. The combination of the physical quantities and the CNN technique is also investigated. The findings show that the new technique outperforms existing machine learning-based methods in particle identification.