Journal of Synchrotron Radiation (Jul 2024)

Nonlinear optimization for a low-emittance storage ring

  • Bonghoon Oh,
  • Jinjoo Ko,
  • Seunghwan Shin,
  • Jaehyun Kim,
  • Jaeyu Lee,
  • Gyeongsu Jang

DOI
https://doi.org/10.1107/S1600577524004569
Journal volume & issue
Vol. 31, no. 4
pp. 804 – 809

Abstract

Read online

A multi-objective genetic algorithm (MOGA) is a powerful global optimization tool, but its results are considerably affected by the crossover parameter ηc. Finding an appropriate ηc demands too much computing time because MOGA needs be run several times in order to find a good ηc. In this paper, a self-adaptive crossover parameter is introduced in a strategy to adopt a new ηc for every generation while running MOGA. This new scheme has also been adopted for a multi-generation Gaussian process optimization (MGGPO) when producing trial solutions. Compared with the existing MGGPO and MOGA, the MGGPO and MOGA with the new strategy show better performance in nonlinear optimization for the design of low-emittance storage rings.

Keywords