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Multiobjective genetic algorithm optimization of the beam dynamics in linac drivers for free electron lasers

机译:自由电子激光器直线加速器驱动器光束动力学的多目标遗传算法优化

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摘要

Linac driven free electron lasers (FELs) operating in the x-ray region require a high brightness electron beam in order to reach saturation within a reasonable distance in the undulator train or to enable sophisticated seeding schemes using external lasers. The beam dynamics optimization is usually a time consuming process in which many parameters of the accelerator and the compression system have to be controlled simultaneously. The requirements on the electron beam quality may also vary significantly with the particular application. For example, the beam dynamics optimization strategy for self-amplified spontaneous emission operation and seeded operation are rather different: seeded operation requires a more careful control of the beam uniformity over a relatively large portion of the longitudinal current distribution of the electron bunch and is therefore more challenging from an accelerator physics point of view. Multiobjective genetic algorithms are particularly well suited when the optimization of many parameters is targeting several objectives simultaneously, often with conflicting requirements. In this paper we propose a novel optimization strategy based on a combination of multiobjective optimization with a fast computation of the FEL performance. The application to the proposed UK's New Light Source is reported and the benefits of this method are highlighted. © 2012 American Physical Society.
机译:在X射线区域中运行的直线加速器驱动的自由电子激光器(FEL)需要高亮度的电子束,以在波状起伏器列中的合理距离内达到饱和,或使用外部激光器实现复杂的播种方案。射束动力学优化通常是一个耗时的过程,其中必须同时控制加速器和压缩系统的许多参数。对电子束质量的要求也可能随特定应用而显着变化。例如,用于自放大自发发射操作和种子操作的束动力学优化策略是完全不同的:种子操作需要在电子束纵向电流分布的相对较大的部分上更仔细地控制束均匀性,因此从加速器物理的角度来看更具挑战性。当许多参数的优化同时针对多个目标且经常有冲突的需求时,多目标遗传算法特别适合。在本文中,我们提出了一种基于多目标优化与FEL性能快速计算相结合的新颖优化策略。报告了在拟议的英国新光源中的应用,并强调了这种方法的好处。 ©2012美国物理学会。

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