论文标题

基于深度学习的基础运动重建沙丘

Deep-Learning-Based Kinematic Reconstruction for DUNE

论文作者

Liu, Junze, Ott, Jordan, Collado, Julian, Jargowsky, Benjamin, Wu, Wenjie, Bian, Jianming, Baldi, Pierre

论文摘要

在三活动中的混合框架中,电荷奇偶校验阶段,中微子质量排序和$θ_{23} $的八分之一仍然未知。深地下中微子实验(Dune)是下一代长基线中微子振荡实验,旨在通过测量$ν_μ/ν_e$和$ \ \barν_μ/\ bar的振动模式来解决这些问题。 Dune FAR检测器模块基于液体氩TPC(LARTPC)技术。 LARTPC提供了出色的空间分辨率,高中微子检测效率和出色的背景拒绝,而LAR​​TPC的重建则具有挑战性。特别是深度学习方法,尤其是卷积神经网络(CNN),在分类问题(例如沙丘中的粒子鉴定和其他中微子实验)中表现出成功。然而,对于完整的基于AI的重建链,使用深度学习方法对中微子能量和最终状态粒子动量的重建尚待开发。为了精确地重建在沙丘上检测到的相互作用的这些运动学特征,我们已经开发并将提出两种基于CNN的方法,即2-D和3-D,以重建最终状态粒子方向和能量以及中微子能量。可以获得最终状态颗粒的四摩托姆,将颗粒质量与动能和方向相结合。与两种情况的传统方法相比,我们的模型显示出可观的改进。

In the framework of three-active-neutrino mixing, the charge parity phase, the neutrino mass ordering, and the octant of $θ_{23}$ remain unknown. The Deep Underground Neutrino Experiment (DUNE) is a next-generation long-baseline neutrino oscillation experiment, which aims to address these questions by measuring the oscillation patterns of $ν_μ/ν_e$ and $\barν_μ/\barν_e$ over a range of energies spanning the first and second oscillation maxima. DUNE far detector modules are based on liquid argon TPC (LArTPC) technology. A LArTPC offers excellent spatial resolution, high neutrino detection efficiency, and superb background rejection, while reconstruction in LArTPC is challenging. Deep learning methods, in particular, Convolutional Neural Networks (CNNs), have demonstrated success in classification problems such as particle identification in DUNE and other neutrino experiments. However, reconstruction of neutrino energy and final state particle momenta with deep learning methods is yet to be developed for a full AI-based reconstruction chain. To precisely reconstruct these kinematic characteristics of detected interactions at DUNE, we have developed and will present two CNN-based methods, 2-D and 3-D, for the reconstruction of final state particle direction and energy, as well as neutrino energy. Combining particle masses with the kinetic energy and the direction reconstructed by our work, the four-momentum of final state particles can be obtained. Our models show considerable improvements compared to the traditional methods for both scenarios.

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