Using machine learning to separate hadronic and electromagnetic interactions in the GlueX forward calorimeter

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Published 27 May 2020 © 2020 IOP Publishing Ltd and Sissa Medialab
, , Citation R. Barsotti and M.R. Shepherd 2020 JINST 15 P05021 DOI 10.1088/1748-0221/15/05/P05021

1748-0221/15/05/P05021

Abstract

The GlueX forward calorimeter is an array of 2800 lead glass modules that was constructed to detect photons produced in the decays of hadrons. A background to this process originates from hadronic interactions in the calorimeter, which, in some instances, can be difficult to distinguish from low energy photon interactions. Machine learning techniques were applied to the classification of particle interactions in the GlueX forward calorimeter. The algorithms were trained on data using decays of the ω meson, which contain both true photons and charged particles that interact with the calorimeter. Algorithms were evaluated on efficiency, rate of false positives, run time, and implementation complexity. An algorithm that utilizes a multi-layer perceptron neural net was deployed in the GlueX software stack and provides a signal efficiency of 85% with a background rejection of 60% for an inclusive π0 data sample for an intermediate quality constraint.

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10.1088/1748-0221/15/05/P05021