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First Deep Learning based Event Reconstruction for Low-Energy Excess Searches with MicroBooNE

Research output: Working paperPreprint

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  • MicroBooNE Collaboration
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Publication date9/07/2018
<mark>Original language</mark>English

Abstract

This paper describes algorithms developed to isolate and accurately reconstruct two-track νµ-like events that are contained within the MicroBooNE detector. This reconstruction has applications to searches for neutrino oscillations and measurements of cross sections using events that are chargedcurrent quasi-elastic-like, among other applications. The algorithms we discuss will be applicable to all detectors running in Fermilab’s SBN program, and any future LArTPC experiment with beam energies ∼ 1 GeV