论文标题
使用相位预先扫描技术和完全连接的神经网络预测空间电荷主导梁的横向发射
Predicting the transverse emittance of space charge dominated beams using the phase advance scan technique and a fully connected neural network
论文作者
论文摘要
带电粒子梁的横向发射率是许多加速器应用的重要数字,例如超快速电子衍射,游离电子激光器以及新的紧凑型加速器概念的运行。确定横向发射率的最容易实现方法之一是使用聚焦元素和屏幕的相位前进扫描方法。该方法已被证明在热方案中效果很好。但是,在空间电荷主导的层流状态下,由于缺乏对梁信封的封闭描述,包括空间电荷效应,该方案变得难以应用。此外,必须满足某些数学和梁设计标准,以确保准确的结果。在这项工作中,我们表明,即使在不符合这些标准的设置中,也可以使用完全连接的神经网络(FCNN)来分析阶段提前扫描数据。在一项仿真研究中,我们通过基于光束包膜方程将FCNN与传统的拟合程序进行比较,评估了FCNN的完整性。随后,我们使用预先训练的FCNN来评估测得的相位扫描数据,最终与数值模拟产生了更好的一致性。为了解决确认偏差问题,我们采用了其他基于面具的发射率测量技术。
The transverse emittance of a charged particle beam is an important figure of merit for many accelerator applications, such as ultra-fast electron diffraction, free electron lasers and the operation of new compact accelerator concepts in general. One of the easiest to implement methods to determine the transverse emittance is the phase advance scan method using a focusing element and a screen. This method has been shown to work well in the thermal regime. In the space charge dominated laminar flow regime, however, the scheme becomes difficult to apply, because of the lack of a closed description of the beam envelope including space charge effects. Furthermore, certain mathematical, as well as beamline design criteria must be met in order to ensure accurate results. In this work we show that it is possible to analyze phase advance scan data using a fully connected neural network (FCNN), even in setups, which do not meet these criteria. In a simulation study, we evaluate the perfomance of the FCNN by comparing it to a traditional fit routine, based on the beam envelope equation. Subsequently, we use a pre-trained FCNN to evaluate measured phase advance scan data, which ultimately yields much better agreement with numerical simulations. To tackle the confirmation bias problem, we employ additional mask-based emittance measurement techniques.