TL;DR
This paper presents a novel deep graph neural network approach for segmenting overlapping electromagnetic showers in emulsion detectors, crucial for neutrino and dark matter experiments, achieving up to 87% identification accuracy.
Contribution
The work introduces a new GNN-based algorithm with a specialized EmulsionConv layer for shower segmentation in ECC bricks, addressing overlapping showers without prior particle information.
Findings
Achieves up to 87% shower identification accuracy.
Effectively segments overlapping electromagnetic showers.
Introduces EmulsionConv layer considering shower geometry.
Abstract
We introduce a first-ever algorithm for the reconstruction of multiple showers from the data collected with electromagnetic (EM) sampling calorimeters. Such detectors are widely used in High Energy Physics to measure the energy and kinematics of in-going particles. In this work, we consider the case when many electrons pass through an Emulsion Cloud Chamber (ECC) brick, initiating electron-induced electromagnetic showers, which can be the case with long exposure times or large input particle flux. For example, SHiP experiment is planning to use emulsion detectors for dark matter search and neutrino physics investigation. The expected full flux of SHiP experiment is about 10^20 particles over five years. To reduce the cost of the experiment associated with the replacement of the ECC brick and off-line data taking (emulsion scanning), it is decided to increase exposure time. Thus, we…
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Taxonomy
MethodsGraph Neural Network
