Litcius/Paper detail

Machine learning enabled fast evaluation of dynamic aperture for storage ring accelerators

Jinyu Wan, Yi Jiao

2022New Journal of Physics12 citationsDOIOpen Access PDF

Abstract

Abstract For any storage ring-based large-scale scientific facility, one of the most important performance parameters is the dynamic aperture (DA), which measures the motion stability of charged particles in a global manner. To date, long-term tracking-based simulation is regarded as the most reliable method to calculate DA. However, numerical tracking may become a significant issue, especially when a plethora of candidate designs of a storage ring need to be evaluated. In this paper, we present a novel machine learning-based method, which can reduce the computation cost of DA tracking by approximately one order of magnitude, while keeping sufficiently high evaluation accuracy. Moreover, we demonstrate that this method is independent of concrete physical models of a storage ring. This method has the potential to be applied to similar problems of identifying irregular motions in other complex dynamical systems.

Topics & Concepts

Dynamic apertureStorage ringPhysicsTracking (education)Stability (learning theory)Ring (chemistry)ComputationAperture (computer memory)Scale (ratio)Computational scienceComputer engineeringAlgorithmArtificial intelligenceMachine learningComputer scienceOpticsAcousticsQuantum mechanicsOrganic chemistryChemistryPsychologyPedagogyBeam (structure)Particle Accelerators and Free-Electron LasersParticle accelerators and beam dynamicsAstrophysics and Cosmic Phenomena
Machine learning enabled fast evaluation of dynamic aperture for storage ring accelerators | Litcius