Beam-based Identification of Magnetic Field Errors in a Synchrotron using Deep Lie Map Networks
Conrad Caliari, Adrian Oeftiger, Oliver Boine-Frankenheim

TL;DR
This paper validates the Deep Lie Map Network (DLMN) approach for accurately identifying linear and non-linear magnetic field errors in a synchrotron using limited beam position data, enhancing accelerator modeling and diagnostics.
Contribution
It introduces the first experimental validation of DLMN for synchrotron optics reconstruction, integrating machine learning with particle dynamics for detailed magnetic error analysis.
Findings
DLMN accurately recovers linear optics and magnetic errors.
The method requires minimal trajectory measurements, demonstrating efficiency.
DLMN effectively identifies non-linear optics within current system capabilities.
Abstract
We present the first experimental validation of the Deep Lie Map Network (DLMN) approach for recovering both linear and non-linear optics in a synchrotron. The DLMN facilitates the construction of a detailed accelerator model by integrating charged particle dynamics with machine learning methodology in a data-driven framework. The primary observable is the centroid motion over a limited number of turns, captured by beam position monitors. The DLMN produces an updated description of the accelerator in terms of magnetic multipole components, which can be directly utilized in established accelerator physics tools and tracking codes for further analysis. In this study, we apply the DLMN to the SIS18 hadron synchrotron at GSI for the first time. We discuss the validity of the recovered linear and non-linear optics, including quadrupole and sextupole errors, and compare our results with…
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Taxonomy
TopicsNon-Destructive Testing Techniques · Particle Accelerators and Free-Electron Lasers
