Machine learning for orbit steering in the presence of nonlinearities.

IF 2.5 3区 物理与天体物理
Journal of Synchrotron Radiation Pub Date : 2025-05-01 Epub Date: 2025-04-11 DOI:10.1107/S1600577525002334
Simona Bettoni, Jonas Kallestrup, Güney Erin Tekin, Michael Böge, Romana Boiger
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引用次数: 0

Abstract

Circular particle accelerators require precise beam orbit correction to maintain the beam's trajectory close to the ideal `golden orbit', which is centered within all magnetic elements of the ring, except for slight deviations due to installed experiments. Traditionally, this correction is achieved using methodologies based on the response matrix (RM). The RM elements remain constant when the accelerator's lattice includes solely linear elements or when a linear approximation is valid for small perturbations, allowing for the calculation of corrector strengths to steer the beam. However, most circular accelerators contain nonlinear magnets, leading to variations in RM elements when the beam experiences large perturbations, rendering traditional methods less effective and necessitating multiple iterations for convergence. To address these challenges, a machine learning (ML)-based approach is explored for beam orbit correction. This approach, applied to synchrotron SLS 2.0 under construction at the Paul Scherrer Institut, is evaluated against and in combination with the standard RM-based method under various conditions. A possible limitation of ML for this application is the potential change in the dimensionality of the ML model after optimization, which could affect performance. A solution to this issue is proposed, improving the robustness and appeal of the ML-based method for efficient beam orbit steering.

非线性情况下轨道转向的机器学习。
圆形粒子加速器需要精确的粒子束轨道校正,以保持粒子束的轨道接近理想的“黄金轨道”,即在环的所有磁性元素的中心,除了由于安装的实验而产生的轻微偏差。传统上,这种修正是使用基于响应矩阵(RM)的方法来实现的。当加速器的晶格只包含线性元素时,或者当线性近似对小扰动有效时,RM元素保持不变,允许计算校正器强度来引导光束。然而,大多数圆形加速器都含有非线性磁体,当束流受到较大扰动时,会导致RM单元的变化,使得传统方法不太有效,并且需要多次迭代才能收敛。为了解决这些挑战,我们探索了一种基于机器学习(ML)的波束轨道校正方法。该方法应用于Paul Scherrer研究所正在建设的同步加速器SLS 2.0,并在各种条件下与基于rm的标准方法进行了对比和结合。对于这个应用程序,ML的一个可能的限制是优化后ML模型的维度可能发生变化,这可能会影响性能。针对这一问题提出了一种解决方案,提高了基于ml的波束轨道有效导向方法的鲁棒性和吸引力。
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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来源期刊
Journal of Synchrotron Radiation
Journal of Synchrotron Radiation INSTRUMENTS & INSTRUMENTATIONOPTICS&-OPTICS
CiteScore
5.60
自引率
12.00%
发文量
289
审稿时长
1 months
期刊介绍: Synchrotron radiation research is rapidly expanding with many new sources of radiation being created globally. Synchrotron radiation plays a leading role in pure science and in emerging technologies. The Journal of Synchrotron Radiation provides comprehensive coverage of the entire field of synchrotron radiation and free-electron laser research including instrumentation, theory, computing and scientific applications in areas such as biology, nanoscience and materials science. Rapid publication ensures an up-to-date information resource for scientists and engineers in the field.
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