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arxiv: 2206.14904 · v1 · pith:DIFV7APUnew · submitted 2022-06-29 · ✦ hep-ex · physics.ins-det

Neutrino Characterisation using Convolutional Neural Networks in CHIPS water Cherenkov detectors

classification ✦ hep-ex physics.ins-det
keywords detectoreventsneuralneutrinoapproachcherenkovclassificationconvolutional
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This work presents a novel approach to water Cherenkov neutrino detector event reconstruction and classification. Three forms of a Convolutional Neural Network have been trained to reject cosmic muon events, classify beam events, and estimate neutrino energies, using only a slightly modified version of the raw detector event as input. When evaluated on a realistic selection of simulated CHIPS-5kton prototype detector events, this new approach significantly increases performance over the standard likelihood-based reconstruction and simple neural network classification.

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