Machine learning in experimental neutrino physics

N. Poonthottathil
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Abstract

Neutrino physics has entered into the era of precision measurements. Over the last two decades, significant efforts have been made to measure precise parameters of the PMNS matrix, which describes neutrino oscillation phenomena. The next generation neutrino experiment will prioritize measuring leptonic CP-violation, potentially revealing the matter–antimatter asymmetry of the universe. Technological advancements will enable faster and more precise measurements. This article describes how neutrino experiments, will utilize machine learning techniques to identify and reconstruct different neutrino event topology in detectors. This approach promises unprecedented measurements of neutrino oscillation parameters.

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中微子物理实验中的机器学习
中微子物理学已进入精确测量时代。在过去二十年里,人们为测量描述中微子振荡现象的 PMNS 矩阵的精确参数付出了巨大努力。下一代中微子实验将优先测量轻子 CP 破坏,从而揭示宇宙物质与反物质的不对称。技术进步将使测量更快、更精确。本文介绍了中微子实验将如何利用机器学习技术来识别和重建探测器中不同的中微子事件拓扑结构。这种方法有望对中微子振荡参数进行前所未有的测量。
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