Toward the Application of Reinforcement Learning to the Intensity Control of a Seeded Free-Electron Laser

N. Bruchon, G. Fenu, G. Gaio, M. Lonza, F. A. Pellegrino, Erica Salvato
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引用次数: 8

Abstract

The optimization of particle accelerators is a challenging task, and many different approaches have been proposed in years, to obtain an optimal tuning of the plant and to keep it optimally tuned despite drifts or disturbances. Indeed, the classical model-free approaches (such as Gradient Ascent or Extremum Seeking algorithms) have intrinsic limitations. To overcome those limitations, Machine Learning techniques, in particular, the Reinforcement Learning, are attracting more and more attention in the particle accelerator community. The purpose of this paper is to apply a Reinforcement Learning model-free approach to the alignment of a seed laser, based on a rather general target function depending on the laser trajectory. The study focuses on the alignment of the lasers at FERMI, the free-electron laser facility at Elettra Sincrotrone Trieste. In particular, we employ Q-learning with linear function approximation and report experimental results obtained in two setups, which are the actual setups where the final application has to be deployed. Despite the simplicity of the approach, we report satisfactory preliminary results, that represent the first step toward a fully automatic procedure for seed laser to the electron beam. Such a superimposition is, at present, performed manually.
强化学习在自由电子激光器强度控制中的应用研究
粒子加速器的优化是一项具有挑战性的任务,多年来已经提出了许多不同的方法来获得植物的最佳调谐,并在漂移或干扰的情况下保持最佳调谐。事实上,经典的无模型方法(如梯度上升或极值搜索算法)具有内在的局限性。为了克服这些限制,机器学习技术,特别是强化学习,在粒子加速器界引起了越来越多的关注。本文的目的是基于依赖于激光轨迹的相当通用的目标函数,将一种无模型的强化学习方法应用于种子激光的对准。研究的重点是FERMI激光的对准,FERMI是位于Elettra Sincrotrone Trieste的自由电子激光设备。特别是,我们采用线性函数近似的Q-learning,并报告了在两个设置中获得的实验结果,这是必须部署最终应用程序的实际设置。尽管方法简单,但我们报告了令人满意的初步结果,这是迈向种子激光到电子束全自动过程的第一步。目前,这种叠加是手工进行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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