Author:
Kalashev O.,Kharuk I.,Kuznetsov M.,Rubtsov G.,Sako T.,Tsunesada Y.,Zhezher Ya.
Abstract
AbstractWe introduce a novel method for identifying the mass composition of ultra-high-energy cosmic rays using deep learning. The key idea of the method is to use a chain of two neural networks. The first network predicts the type of a primary particle for individual events, while the second infers the mass composition of an ensemble of events. We apply this method to the Monte-Carlo data for the Telescope Array Surface Detectors readings, on which it yields an unprecedented low error of 7% for 4-component approximation. We also discuss the problems of applying the developed method to the experimental data, and the way they can be resolved.
Subject
Mathematical Physics,Instrumentation
Cited by
3 articles.
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