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Title: Data-driven chaos indicator for nonlinear dynamics and applications on storage ring lattice design

Journal Article · · Nuclear Instruments and Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment

A data-driven chaos indicator concept is introduced to characterize the degree of chaos for nonlinear dynamical systems. The indicator is represented by the prediction accuracy of surrogate models established purely from data. It provides a metric for the predictability of nonlinear motions in a given system. When using the indicator to implement a tune-scan for a quadratic Hénon map, the main resonances and their asymmetric stop-band widths can be identified. When applied to particle transportation in a storage ring, as particle motion becomes more chaotic, its surrogate model prediction accuracy decreases correspondingly. So, the prediction accuracy, acting as a chaos indicator, can be used directly as the objective for nonlinear beam dynamics optimization. This method provides a different perspective on nonlinear beam dynamics and an efficient method for nonlinear lattice optimization. Applications in dynamic aperture optimization are demonstrated as real world examples.

Research Organization:
Brookhaven National Laboratory (BNL), Upton, NY (United States)
Sponsoring Organization:
USDOE Office of Science (SC), Basic Energy Sciences (BES)
Grant/Contract Number:
SC0012704
OSTI ID:
1842015
Alternate ID(s):
OSTI ID: 1836597
Report Number(s):
BNL-222651-2022-JAAM; TRN: US2301339
Journal Information:
Nuclear Instruments and Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment, Vol. 1024; ISSN 0168-9002
Publisher:
ElsevierCopyright Statement
Country of Publication:
United States
Language:
English

References (15)

Machine learning for orders of magnitude speedup in multiobjective optimization of particle accelerator systems journal April 2020
Detection of nonlinear dynamics in short, noisy time series journal May 1996
Efficient Surrogate Modelling of Nonlinear Aerodynamics in Aerostructural Coupling Schemes journal September 2014
Multi-objective dynamic aperture optimization for storage rings journal November 2016
Multiobjective optimization of the dynamic aperture using surrogate models based on artificial neural networks journal January 2021
Surrogate analysis for detecting nonlinear dynamics in normal vowels journal December 2001
A tutorial on support vector regression journal August 2004
Theory of the alternating-gradient synchrotron journal January 1958
Improved Surrogate Data for Nonlinearity Tests journal July 1996
Accurate prediction of X-ray pulse properties from a free-electron laser using machine learning journal June 2017
Fast dynamic aperture optimization with forward-reversal integration
  • Li, Yongjun; Hao, Yue; Hwang, Kilean
  • Nuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment, Vol. 988 https://doi.org/10.1016/j.nima.2020.164936
journal February 2021
Neural network-based multiobjective optimization algorithm for nonlinear beam dynamics journal August 2020
High-Fidelity Prediction of Megapixel Longitudinal Phase-Space Images of Electron Beams Using Encoder-Decoder Neural Networks journal August 2021
Genetic algorithm enhanced by machine learning in dynamic aperture optimization journal May 2018
A fast and elitist multiobjective genetic algorithm: NSGA-II journal April 2002