2020
DOI: 10.2322/tastj.18.44
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Application of Machine Learning to the Particle Identification of GAPS

Abstract: GAPS is an international balloon-borne project that contributes to solving the dark-matter mystery through a highly sensitive survey of cosmic-ray antiparticles, especially undiscovered antideuterons. To achieve a sufficient sensitivity to rare antideuterons, a novel particle identification method based on exotic atom capture and decay has been d eveloped. In parallel to utilizing this unique event signature in a conventional likelihood-based event identification scheme, we have begun investigating a complemen… Show more

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