Machine Learning: Science and Technology (Jan 2024)

TomOpt: differential optimisation for task- and constraint-aware design of particle detectors in the context of muon tomography

  • Giles C Strong,
  • Maxime Lagrange,
  • Aitor Orio,
  • Anna Bordignon,
  • Florian Bury,
  • Tommaso Dorigo,
  • Andrea Giammanco,
  • Mariam Heikal,
  • Jan Kieseler,
  • Max Lamparth,
  • Pablo Martínez Ruíz del Árbol,
  • Federico Nardi,
  • Pietro Vischia,
  • Haitham Zaraket

DOI
https://doi.org/10.1088/2632-2153/ad52e7
Journal volume & issue
Vol. 5, no. 3
p. 035002

Abstract

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We describe a software package, TomOpt, developed to optimise the geometrical layout and specifications of detectors designed for tomography by scattering of cosmic-ray muons. The software exploits differentiable programming for the modeling of muon interactions with detectors and scanned volumes, the inference of volume properties, and the optimisation cycle performing the loss minimisation. In doing so, we provide the first demonstration of end-to-end-differentiable and inference-aware optimisation of particle physics instruments. We study the performance of the software on a relevant benchmark scenario and discuss its potential applications. Our code is available on Github (Strong et al 2024 available at: https://github.com/GilesStrong/tomopt ).

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