Efficient optimization of plasma surface high harmonic generation by an improved Bayesian strategy
Abstract
Plasma surface high-order harmonics generation (SHHG) driven by intense laser pulses on plasma targets enables a high-quality extreme ultraviolet source with high pulse energy and outstanding spatiotemporal coherence. Optimizing the performance of SHHG is important for its applications in single-shot imaging and absorption spectroscopy. In this work, we demonstrate the optimization of laser-driven SHHG by an improved Bayesian strategy in conjunction with particle-in-cell simulations. A traditional Bayesian algorithm is first employed to optimize the SHHG intensity in a two-dimensional space of parameter. Then an improved Bayesian strategy, using the Latin hypercube sampling technique and a dynamic acquisition strategy, is developed to overcome the curse of dimensionality and the risk of local optima in a high-dimensional space optimization. The improved Bayesian optimization approach is efficient and robust in three-dimensionally optimizing the harmonic ellipticity, paving the way for the upcoming SHHG experiments with a considerable repetition rate.
Cite
@article{arxiv.2410.24051,
title = {Efficient optimization of plasma surface high harmonic generation by an improved Bayesian strategy},
author = {Lili Fan and Ziwei Wang and Chenfei Liao and Jingwei Wang},
journal= {arXiv preprint arXiv:2410.24051},
year = {2024}
}
Comments
7 pages, 6 figures