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Neural Networks for Modeling and Control of Particle Accelerators

机译:用于粒子加速器建模和控制的神经网络

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Particle accelerators are host to myriad nonlinear and complex physical phenomena. They often involve a multitude of interacting systems, are subject to tight performance demands, and should be able to run for extended periods of time with minimal interruptions. Often times, traditional control techniques cannot fully meet these requirements. One promising avenue is to introduce machine learning and sophisticated control techniques inspired by artificial intelligence, particularly in light of recent theoretical and practical advances in these fields. Within machine learning and artificial intelligence, neural networks are particularly well-suited to modeling, control, and diagnostic analysis of complex, nonlinear, and time-varying systems, as well as systems with large parameter spaces. Consequently, the use of neural network-based modeling and control techniques could be of significant benefit to particle accelerators. For the same reasons, particle accelerators are also ideal test-beds for these techniques. Many early attempts to apply neural networks to particle accelerators yielded mixed results due to the relative immaturity of the technology for such tasks. The purpose of this paper is to re-introduce neural networks to the particle accelerator community and report on some work in neural network control that is being conducted as part of a dedicated collaboration between Fermilab and Colorado State University (CSU). We describe some of the challenges of particle accelerator control, highlight recent advances in neural network techniques, discuss some promising avenues for incorporating neural networks into particle accelerator control systems, and describe a neural network-based control system that is being developed for resonance control of an RF electron gun at the Fermilab Accelerator Science and Technology (FAST) facility, including initial experimental results from a benchmark controller.
机译:粒子加速器是无数非线性和复杂物理现象的宿主。它们通常涉及大量的交互系统,需要严格的性能要求,并且应该能够长时间运行且中断最少。通常,传统的控制技术无法完全满足这些要求。一种有前途的途径是引入受人工智能启发的机器学习和复杂的控制技术,特别是考虑到这些领域的最新理论和实践进展。在机器学习和人工智能中,神经网络特别适合于复杂,非线性和时变系统以及具有大参数空间的系统的建模,控制和诊断分析。因此,基于神经网络的建模和控制技术的使用可能对粒子加速器有很大的好处。出于同样的原因,粒子加速器也是这些技术的理想测试平台。由于该技术相对不成熟,因此将神经网络应用于粒子加速器的许多早期尝试都产生了混合结果。本文的目的是将神经网络重新引入粒子加速器社区,并报告神经网络控制中的一些工作,这是费米实验室与科罗拉多州立大学(CSU)专门合作的一部分。我们描述了粒子加速器控制的一些挑战,重点介绍了神经网络技术的最新进展,讨论了将神经网络合并到粒子加速器控制系统中的一些有前途的途径,并描述了正在开发的基于神经网络的控制系统,用于共振控制。 Fermilab加速器科学与技术(FAST)设施中的RF电子枪,包括基准控制器的初步实验结果。

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