7–12 May 2023
Venice, Italy
Europe/Zurich timezone

Bayesian Optimization for SASE Tuning at the European XFEL

THPL028
11 May 2023, 16:30
2h
Sala Laguna

Sala Laguna

Poster Presentation MC6.A27: Machine Learning and Digital Twin Modelling Thursday Poster Session

Speaker

Chenran Xu (Karlsruhe Institute of Technology)

Description

Parameter tuning is a regular task and takes considerable time for daily operations at FEL facilities. In this contribution, we demonstrate SASE pulse energy optimization at the European XFEL with Bayesian optimization (BO) as an alternative approach to the widely used simplex method. Preliminary experimental results show that BO could reach a comparable performance as the simplex method, even with an out-of-the-box implementation. Compared to previous attempts, our version of BO does not require setting hyperparameters via additional measurements, thus effectively reducing the required effort for machine operators to use it during operation. On the other hand, BO has the potential to be further improved by introducing prior physical knowledge about the task and fine-tuning the algorithm to specific tasks. This makes BO a promising candidate for routine tuning tasks at particle accelerators in the future.

Funding Agency

This work is supported by the Helmholtz Association (Autonomous Accelerator, ZT-I-PF-5-6) and the “Karlsruhe School of Elementary and Astroparticle Physics: Science and Technology”.

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Primary author

Chenran Xu (Karlsruhe Institute of Technology)

Co-authors

Erik Bründermann (Karlsruhe Institute of Technology) Anke-Susanne Mueller (Karlsruhe Institute of Technology) Sergey Tomin (Deutsches Elektronen-Synchrotron) Andrea Santamaria Garcia (Karlsruhe Institute of Technology)

Presentation materials

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