Optica Open
Browse

AutoFocus: AI/ML-driven real-time wavefront diagnostics to autonomously align and optimize X-ray optics

Version 5 2025-06-11, 07:00
Version 4 2025-06-10, 07:41
Version 3 2025-05-16, 05:19
Version 2 2025-05-15, 05:46
Version 1 2025-05-14, 08:03
preprint
posted on 2025-06-11, 07:00 authored by Luca Rebuffi, Runyu Zhang, Xianbo Shi, Yu-Chung Lin, Jiyong Zhao, Micheal Hu, Thomas Toellner, Mathew Cherukara, Lahsen Assoufid
We present an integrated system that combines advanced wavefront diagnostics with artificial intelligence (AI) to automate and optimize X-ray optics at synchrotron beamlines. This system couples real-time wavefront sensing with AI-driven control algorithms to achieve precise beam alignment, stabilization, and performance optimization. A key feature is the use of multi-fidelity transfer learning, which enables knowledge gained from both real-world beamline optimizations and ultra-realistic digital twin simulations to be effectively applied to in situ optimization. By leveraging Multi-Objective Bayesian Optimization, the system continuously refines its performance, reducing optimization time and minimizing the need for manual adjustments. Designed for seamless deployment, it operates with existing beamline hardware and provides an intuitive graphical interface. Initial deployments at the Advanced Photon Source beamlines have demonstrated its ability to enhance beam stability, improve reproducibility, and significantly streamline alignment procedures. This AI-enhanced control framework represents a significant step toward fully autonomous beamline operation in next-generation synchrotron facilities.

History

Funder Name

Department of Energy, Office of Science, Office of Basic Energy Sciences (DE-AC02-06CH11357)

Preprint ID

122869

Usage metrics

    Categories

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC