English

Bayesian Optimization Algorithms for Accelerator Physics

Accelerator Physics 2024-04-09 v2

Abstract

Accelerator physics relies on numerical algorithms to solve optimization problems in online accelerator control and tasks such as experimental design and model calibration in simulations. The effectiveness of optimization algorithms in discovering ideal solutions for complex challenges with limited resources often determines the problem complexity these methods can address. The accelerator physics community has recognized the advantages of Bayesian optimization algorithms, which leverage statistical surrogate models of objective functions to effectively address complex optimization challenges, especially in the presence of noise during accelerator operation and in resource-intensive physics simulations. In this review article, we offer a conceptual overview of applying Bayesian optimization techniques towards solving optimization problems in accelerator physics. We begin by providing a straightforward explanation of the essential components that make up Bayesian optimization techniques. We then give an overview of current and previous work applying and modifying these techniques to solve accelerator physics challenges. Finally, we explore practical implementation strategies for Bayesian optimization algorithms to maximize their performance, enabling users to effectively address complex optimization challenges in real-time beam control and accelerator design.

Keywords

Cite

@article{arxiv.2312.05667,
  title  = {Bayesian Optimization Algorithms for Accelerator Physics},
  author = {Ryan Roussel and Auralee L. Edelen and Tobias Boltz and Dylan Kennedy and Zhe Zhang and Fuhao Ji and Xiaobiao Huang and Daniel Ratner and Andrea Santamaria Garcia and Chenran Xu and Jan Kaiser and Angel Ferran Pousa and Annika Eichler and Jannis O. Lubsen and Natalie M. Isenberg and Yuan Gao and Nikita Kuklev and Jose Martinez and Brahim Mustapha and Verena Kain and Weijian Lin and Simone Maria Liuzzo and Jason St. John and Matthew J. V. Streeter and Remi Lehe and Willie Neiswanger},
  journal= {arXiv preprint arXiv:2312.05667},
  year   = {2024}
}