论文标题
多目标贝叶斯优化加速器调整
Multi-Objective Bayesian Optimization for Accelerator Tuning
论文作者
论文摘要
粒子加速器在操作过程中需要持续调整,以满足光束质量,总电荷和粒子能量需求,以在多种物理,化学和生物学实验中使用。最大化加速器设施的性能通常需要进行多目标优化,在这种情况下,操作员必须同时使用有限的,临时昂贵的光束观测来平衡多个目标之间的权衡。通常,使用高级梁线模拟和并行的优化方法(NSGA-II,群体优化),在实际操作之前,在实际操作之前脱离了加速器优化问题。不幸的是,使用这些方法进行在线多目标优化是不可行的,因为光束测量只能以串行方式进行,这些优化方法需要大量的测量来收敛到有用的解决方案。加速器中的多目标优化。该方法使用一组高斯过程替代模型以及多目标的获取函数,减少了至少与当前方法相比,通过至少一定的数量级收敛的观察次数,我们可以将此方法定义为如何求解该方法的优化范围,以构建优化的挑战,以构建优化的质疑,以启用目标,以使目标构成ACCELSIS的启用。更改加速器参数。
Particle accelerators require constant tuning during operation to meet beam quality, total charge and particle energy requirements for use in a wide variety of physics, chemistry and biology experiments. Maximizing the performance of an accelerator facility often necessitates multi-objective optimization, where operators must balance trade-offs between multiple objectives simultaneously, often using limited, temporally expensive beam observations. Usually, accelerator optimization problems are solved offline, prior to actual operation, with advanced beamline simulations and parallelized optimization methods (NSGA-II, Swarm Optimization). Unfortunately, it is not feasible to use these methods for online multi-objective optimization, since beam measurements can only be done in a serial fashion, and these optimization methods require a large number of measurements to converge to a useful solution.Here, we introduce a multi-objective Bayesian optimization scheme, which finds the full Pareto front of an accelerator optimization problem efficiently in a serialized manner and is thus a critical step towards practical online multi-objective optimization in accelerators.This method uses a set of Gaussian process surrogate models, along with a multi-objective acquisition function, which reduces the number of observations needed to converge by at least an order of magnitude over current methods.We demonstrate how this method can be modified to specifically solve optimization challenges posed by the tuning of accelerators.This includes the addition of optimization constraints, objective preferences and costs related to changing accelerator parameters.