Frontiers in Physics (Jul 2023)

Bayesian optimization for design of high-repetition-rate laser-driven muon source

  • Rong Sha,
  • Bing-Lin Wang,
  • Jie Zhao,
  • Xiao-Jun Duan,
  • Liang Yan,
  • Guo-Xing Xia,
  • Tong-Pu Yu

DOI
https://doi.org/10.3389/fphy.2023.1233733
Journal volume & issue
Vol. 11

Abstract

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With the increasing repetition rate of ultra-intense laser pulses, ion beams accelerated by these lasers show great potential for achieving high-repetition-rate, high-average-flux muon sources. Nonetheless, generating high-quality ion beams is a challenging feat as it demands a careful balance among numerous physical effects. In this study, we utilize Bayesian optimization to fine-tune laser and plasma parameters to produce high-charge energetic ion beams, consequently leading to a high-yield muon source via pitcher-catcher scheme. Beginning with initial points steered by Latin hypercube sampling, Bayesian optimization conducts an adaptive, multi-parameter exploration of input parameter space, significantly faster than univariate uniform scans, and results in a mm-scale ps-duration laser-ion-based muon source scheme providing 106π± and 104μ+ at a 10 Hz frequency, using only several tens of simulations.

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