1–6 Jun 2025
Taipei International Convention Center (TICC)
Asia/Taipei timezone

Application of Bayesian optimization for the TLS booster extraction

THPM026
5 Jun 2025, 15:30
2h
Exhibiton Hall A _Magpie (TWTC)

Exhibiton Hall A _Magpie

TWTC

Poster Presentation MC6.D13 Machine Learning Thursday Poster Session

Speaker

Zong-Kai Liu (National Synchrotron Radiation Research Center)

Description

Bayesian optimization is a method for performing global optimization on black-box functions using Gaussian processes and an acquisition function. In accelerator parameter tuning, when the number of adjustable parameters is large, finding the global optimal parameters can be time-consuming and often relies on the operator’s experience. Bayesian optimization is well-suited for such scenarios. In this report, we take the booster extraction of the Taiwan Light Source (TLS) as an example, selecting six key adjustable parameters to optimize the extraction efficiency from the booster ring to the transport line. The preliminary test results and implementation details will be discussed in this paper.

Region represented Asia
Paper preparation format Word

Author

Zong-Kai Liu (National Synchrotron Radiation Research Center)

Co-authors

Mr Mau-Sen Chiu (National Synchrotron Radiation Research Center) Hung-Chiao Chen (National Synchrotron Radiation Research Center) Szu-Jung Huang (National Synchrotron Radiation Research Center) Meng-Shu Yeh (National Synchrotron Radiation Research Center) Chaoen Wang (National Synchrotron Radiation Research Center)

Presentation materials

There are no materials yet.