Herrera Luis Javier, Todero Peixoto Carlos José, Baños Oresti, Carceller Juan Miguel, Carrillo Francisco, Guillén Alberto
Computer Architecture and Technology Department, University of Granada, 18071 Granada, Spain.
Department of Basic Science and Environment, University of São Paulo, Lorena - SP 12602-810, Brazil.
Entropy (Basel). 2020 Sep 7;22(9):998. doi: 10.3390/e22090998.
The study of cosmic rays remains as one of the most challenging research fields in Physics. From the many questions still open in this area, knowledge of the type of primary for each event remains as one of the most important issues. All of the cosmic rays observatories have been trying to solve this question for at least six decades, but have not yet succeeded. The main obstacle is the impossibility of directly detecting high energy primary events, being necessary to use Monte Carlo models and simulations to characterize generated particles cascades. This work presents the results attained using a simulated dataset that was provided by the Monte Carlo code CORSIKA, which is a simulator of high energy particles interactions with the atmosphere, resulting in a cascade of secondary particles extending for a few kilometers (in diameter) at ground level. Using this simulated data, a set of machine learning classifiers have been designed and trained, and their computational cost and effectiveness compared, when classifying the type of primary under ideal measuring conditions. Additionally, a feature selection algorithm has allowed for identifying the relevance of the considered features. The results confirm the importance of the electromagnetic-muonic component separation from signal data measured for the problem. The obtained results are quite encouraging and open new work lines for future more restrictive simulations.
宇宙射线研究仍然是物理学中最具挑战性的研究领域之一。在该领域众多尚未解决的问题中,确定每个事件的初级宇宙射线类型仍然是最重要的问题之一。至少六十年来,所有的宇宙射线观测站都一直在试图解决这个问题,但尚未成功。主要障碍在于无法直接探测高能初级事件,因此必须使用蒙特卡罗模型和模拟来描述产生的粒子级联。这项工作展示了使用由蒙特卡罗代码CORSIKA提供的模拟数据集所获得的结果,CORSIKA是一个高能粒子与大气相互作用的模拟器,会在地面产生直径达几公里的次级粒子级联。利用这些模拟数据,设计并训练了一组机器学习分类器,并在理想测量条件下对初级宇宙射线类型进行分类时,比较了它们的计算成本和有效性。此外,一种特征选择算法能够识别所考虑特征的相关性。结果证实了从测量的信号数据中分离电磁 - 缪子成分对于该问题的重要性。所获得的结果相当令人鼓舞,并为未来更严格的模拟开辟了新的工作方向。