Design of Detectors at the Electron Ion Collider with Artificial
Intelligence
- URL: http://arxiv.org/abs/2203.04530v1
- Date: Wed, 9 Mar 2022 05:27:37 GMT
- Title: Design of Detectors at the Electron Ion Collider with Artificial
Intelligence
- Authors: Cristiano Fanelli
- Abstract summary: ECCE has explored the possibility of using multi-objective optimization to design the tracking system of the EIC detector.
This document provides an overview of these techniques and recent progress made during the EIC proposal.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Artificial Intelligence (AI) for design is a relatively new but active area
of research across many disciplines. Surprisingly when it comes to designing
detectors with AI this is an area at its infancy. The Electron Ion Collider is
the ultimate machine to study the strong force. The EIC is a large-scale
experiment with an integrated detector that extends for about $\pm$35 meters to
include the central, far-forward, and far-backward regions. The design of the
central detector is made by multiple sub-detectors, each in principle
characterized by a multidimensional design space and multiple design criteria
also called objectives. Simulations with Geant4 are typically compute
intensive, and the optimization of the detector design may include
non-differentiable terms as well as noisy objectives. In this context, AI can
offer state of the art solutions to solve complex combinatorial problems in an
efficient way. In particular, one of the proto-collaborations, ECCE, has
explored during the detector proposal the possibility of using multi-objective
optimization to design the tracking system of the EIC detector. This document
provides an overview of these techniques and recent progress made during the
EIC detector proposal. Future high energy nuclear physics experiments can
leverage AI-based strategies to design more efficient detectors by optimizing
their performance driven by physics criteria and minimizing costs for their
realization.
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