Speakers
Description
Massive and deep underground detectors such as the future Deep Underground Neutrino Experiment (DUNE) will offer a great opportunity to search for rare, beyond-the-Standard-Model (BSM) physics signals including baryon number violating (BNV) processes. One such BNV process is nucleus-bound neutron-antineutron transition, followed by antineutron annihilation on a nearby neutron/proton that produces multiple final state pions, characterized by a unique, star-like topological signature. This signature should be easily recognizable within a fully active liquid argon time projection chamber (LArTPC) detector. While the future DUNE LArTPC can search for this signature with high sensitivity, existing data from the much-smaller MicroBooNE LArTPC can be used to demonstrate and validate the methodologies that can be used as part of the DUNE search. This poster presents a deep learning-based analysis of MicroBooNE data, making use of a sparse convolutional neural network (CNN) and event topology information to search for argon-bound neutron-antineutron transition-like signals in MicroBooNE. This analysis demonstrates LArTPCs’ capability, combined with deep-learning techniques, to search for such rare processes with high signal efficiency and strong background rejection.
Poster prize | No |
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Given name | Roxanne |
Surname | Guenette |
First affiliation | University of Manchester |
Institutional email | roxanne.guenette@manchester.ac.uk |
Gender | Female |
Collaboration (if any) | MicroBooNE |