机器学习在间隙粒子识别中的应用

T. Wada, H. Fuke, Y. Shimizu, T. Yoshida
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引用次数: 2

摘要

gap是一个国际气球运载项目,通过对宇宙射线反粒子,特别是未发现的反氘核进行高度敏感的调查,有助于解开暗物质之谜。为了获得对稀有反氘核足够的灵敏度,提出了一种基于外来原子捕获和衰变的新型粒子识别方法。在传统的基于似然的事件识别方案中利用这种独特的事件签名的同时,我们已经开始研究一种使用机器学习技术的补充方法。在这种新方法中,深度学习包通过多层神经网络对来自模拟反粒子事件的大量输入数据进行训练。通过应用这种无偏方法,我们期望挖掘未知模式并对传统方法进行反馈。在本文中,我们报告了探索性调查的结果,说明了这种新方法的前景。
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Application of Machine Learning to the Particle Identification of GAPS
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 developed. In parallel to utilizing this unique event signature in a conventional likelihood-based event identification scheme, we have begun investigating a complementary approach using a machine learning technique. In this new approach, a deep-learning package is trained on a large amount of input data from simulated antiparticle events through a multi-layered neural network. By applying this unbiased approach, we expect to mine unknown patterns and give feedback to the conventional method. In this paper, we report results from exploratory investigations that illustrate the promise of this new approach.
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