CERN Detector Optimization (Co-design)

DEVELOPED FOR
International particle physics collaborations and research instrumentation labs (CERN, FAIR, DESY; detector co-design)

The challenge

  • The CERN SHiP straw spectrometer tracker has 32 tunable design variables.
  • Classical reconstruction and loss are non-differentiable, forcing slow black-box optimization.
  • Model-free Bayesian optimization (GP) scales poorly beyond ~10 dims, and full-simulation geometry evaluation is costly.

The Solution

  • Surrogate-based detector co-design, using neural networks to make the optimization loop differentiable end-to-end.
  • Joint training of a reconstruction NN + a generative model of detector response (VAE/diffusion).
  • Stochastic gradient optimization over geometry parameters, validated against FairShip full simulation.

Core innovations:

  • Differentiable surrogates: Reconstruction + generative NNs replace black-box simulators with gradient-aware proxies.
  • Distribution-aware loss: Captures both distribution shifts and reconstruction quality in one gradient.
  • 30+ dimensional scaling: Tractable co-design where classical GP/BBO fails, with multi-start for local minima.

Impact

Industrial Directions

  • High-energy physics experiments (CERN, FAIR, DESY) — detector design and co-design.
  • Scientific instrumentation R&D (imaging, spectrometry, medical physics).
  • Neural-surrogate-based engineering design (differentiable co-design toolchains).

Research Team

Meet Our PIs

Discover the principal investigators behind this project and the expertise that made it possible.

Prof. Dr. Andrey Ustyuzhanin

Open Vacancies

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