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Neural Networks for the Reconstruction and Separation of High Energy Particles in a Preshower Calorimeter

机译:神经网络用于淋浴前热量计中高能粒子的重建和分离

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Particle detectors have important applications in fields such as high energy physics and nuclear medicine. For instance, they are used in huge particles accelerators to study the elementary constituents of matter. The analysis of the data produced by these detectors requires powerful statistical and computational methods, and machine learning has become a key tool for that. We propose a reconstruction algorithm for a preshower detector. The reconstruction algorithm is in charge of identifying and classifying the particles spotted by the detector. More importantly, we propose to use a machine learning algorithm to solve the problem of particle identification in difficult cases for which the reconstruction algorithm fails. We show that our reconstruction algorithm together with the machine learning rejection method are able to identify most of the incident particles. Moreover, we found that machine learning methods greatly outperform cut based techniques that are commonly used in high energy physics.
机译:粒子探测器在高能物理和核医学等领域具有重要的应用。例如,它们被用于大粒子加速器中以研究物质的基本成分。这些检测器产生的数据的分析需要强大的统计和计算方法,而机器学习已成为实现此目的的关键工具。我们提出了一种用于淋浴前探测器的重建算法。重建算法负责对检测器点出的粒子进行识别和分类。更重要的是,我们提出使用机器学习算法来解决重构算法失败的困难情况下的粒子识别问题。我们表明,我们的重建算法与机器学习拒绝方法一起能够识别大多数入射粒子。此外,我们发现机器学习方法大大优于高能物理中常用的基于割的技术。

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