Feature Selection Techniques for CR Isotope Identification with the AMS-02 Experiment in Space

Particles Pub Date : 2024-04-20 DOI:10.3390/particles7020024
Marta Borchiellini, Leandro Mano, Fernando Barão, Manuela Vecchi
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Abstract

Isotopic composition measurements of singly charged cosmic rays (CR) provide essential insights into CR transport in the Galaxy. The Alpha Magnetic Spectrometer (AMS-02) can identify singly charged isotopes up to about 10 GeV/n. However, their identification presents challenges due to the small abundance of CR deuterons compared to the proton background. In particular, a high accuracy for the velocity measured by a ring-imaging Cherenkov detector (RICH) is needed to achieve a good isotopic mass separation over a wide range of energies. The velocity measurement with the RICH is particularly challenging for Z=1 isotopes due to the low number of photons produced in the Cherenkov rings. This faint signal is easily disrupted by noisy hits leading to a misreconstruction of the particles’ ring. Hence, an efficient background reduction process is needed to ensure the quality of the reconstructed Cherenkov rings and provide a correct measurement of the particles’ velocity. Machine learning methods, particularly boosted decision trees, are well suited for this task, but their performance relies on the choice of the features needed for their training phase. While physics-driven feature selection methods based on the knowledge of the detector are often used, machine learning algorithms for automated feature selection can provide a helpful alternative that optimises the classification method’s performance. We compare five algorithms for selecting the feature samples for RICH background reduction, achieving the best results with the Random Forest method. We also test its performance against the physics-driven selection method, obtaining better results.
利用 AMS-02 太空实验识别 CR 同位素的特征选择技术
对单电荷宇宙射线(CR)同位素组成的测量为了解银河系中的CR传输提供了重要信息。阿尔法磁谱仪(AMS-02)可以识别高达约10 GeV/n的单电荷同位素。然而,由于与质子背景相比,CR氘核的丰度较小,因此对它们的识别存在挑战。特别是,环成像切伦科夫探测器(RICH)测量的速度需要很高的精度,才能在很宽的能量范围内实现良好的同位素质量分离。由于切伦科夫环产生的光子数量较少,使用 RICH 对 Z=1 同位素进行速度测量尤其具有挑战性。这种微弱的信号很容易被噪声干扰,从而导致粒子环的错误构建。因此,需要一个有效的背景减少过程来确保重建切伦科夫环的质量,并提供粒子速度的正确测量。机器学习方法,尤其是增强决策树,非常适合这项任务,但其性能取决于训练阶段所需的特征选择。虽然基于探测器知识的物理驱动特征选择方法经常被使用,但自动特征选择的机器学习算法可以提供一种有用的替代方法,优化分类方法的性能。我们比较了五种为减少 RICH 背景而选择特征样本的算法,结果发现随机森林法效果最佳。我们还测试了物理驱动选择法的性能,结果更好。
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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CiteScore
3.20
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