High Power Laser and Particle Beams, Volume. 35, Issue 10, 104005(2023)
Precise control of high-energy protons transport in space environment by using bayesian optimization
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Shiyu Shen, Xiaohu Yang, Guobo Zhang, Ziqi Zhao, Yanyun Ma. Precise control of high-energy protons transport in space environment by using bayesian optimization[J]. High Power Laser and Particle Beams, 2023, 35(10): 104005
Category: Particle Beams and Accelerator Technology
Received: Jul. 26, 2023
Accepted: Sep. 23, 2023
Published Online: Nov. 30, 2023
The Author Email: Yang Xiaohu (xhyang@nudt.edu.cn)