European Physical Journal C: Particles and Fields (Jun 2024)

Reconstruction of electromagnetic showers in calorimeters using Deep Learning

  • Polina Simkina,
  • Fabrice Couderc,
  • Julie Malclès,
  • Mehmet Özgür Sahin

DOI
https://doi.org/10.1140/epjc/s10052-024-12978-1
Journal volume & issue
Vol. 84, no. 6
pp. 1 – 19

Abstract

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Abstract The precise reconstruction of properties of photons and electrons in modern high energy physics detectors, such as the CMS or ATLAS experiments, plays a crucial role in numerous physics results. Conventional geometrical algorithms are used to reconstruct the energy and position of these particles from the showers they induce in the electromagnetic calorimeter. Despite their accuracy and efficiency, these methods still suffer from several limitations, such as low-energy background and limited capacity to reconstruct close-by particles. This paper introduces an innovative machine-learning technique to measure the energy and position of photons and electrons based on convolutional and graph neural networks, taking the geometry of the CMS electromagnetic calorimeter as an example. The developed network demonstrates a significant improvement in resolution both for photon energy and position predictions compared to the algorithm used in CMS. Notably, one of the main advantages of this new approach is its ability to better distinguish between multiple close-by electromagnetic showers.