DOE PAGES title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Multipoint-BAX: a new approach for efficiently tuning particle accelerator emittance via virtual objectives

Journal Article · · Machine Learning: Science and Technology

Abstract Although beam emittance is critical for the performance of high-brightness accelerators, optimization is often time limited as emittance calculations, commonly done via quadrupole scans, are typically slow. Such calculations are a type of multipoint query , i.e. each query requires multiple secondary measurements. Traditional black-box optimizers such as Bayesian optimization are slow and inefficient when dealing with such objectives as they must acquire the full series of measurements, but return only the emittance, with each query. We propose a new information-theoretic algorithm, Multipoint-BAX , for black-box optimization on multipoint queries, which queries and models individual beam-size measurements using techniques from Bayesian Algorithm Execution (BAX). Our method avoids the slow multipoint query on the accelerator by acquiring points through a virtual objective , i.e. calculating the emittance objective from a fast learned model rather than directly from the accelerator. We use Multipoint-BAX to minimize emittance at the Linac Coherent Light Source (LCLS) and the Facility for Advanced Accelerator Experimental Tests II (FACET-II). In simulation, our method is 20× faster and more robust to noise compared to existing methods. In live tests, it matched the hand-tuned emittance at FACET-II and achieved a 24% lower emittance than hand-tuning at LCLS. Our method represents a conceptual shift for optimizing multipoint queries, and we anticipate that it can be readily adapted to similar problems in particle accelerators and other scientific instruments.

Research Organization:
SLAC National Accelerator Laboratory (SLAC), Menlo Park, CA (United States)
Sponsoring Organization:
USDOE; USDOE Office of Science (SC), Basic Energy Sciences (BES)
Grant/Contract Number:
AC02-76SF00515
OSTI ID:
2280736
Journal Information:
Machine Learning: Science and Technology, Journal Name: Machine Learning: Science and Technology Journal Issue: 1 Vol. 5; ISSN 2632-2153
Publisher:
IOP PublishingCopyright Statement
Country of Publication:
United Kingdom
Language:
English

References (33)

COMBO: An efficient Bayesian optimization library for materials science journal June 2016
Flat electron beam sources for DLA accelerators
  • Ody, A.; Musumeci, P.; Maxson, J.
  • Nuclear Instruments and Methods in Physics Research Section A: Accelerators, Spectrometers, Detectors and Associated Equipment, Vol. 865 https://doi.org/10.1016/j.nima.2016.10.041
journal September 2017
Black-Box Optimization for Automated Discovery journal February 2021
Efficient Global Optimization of Expensive Black-Box Functions journal January 1998
First lasing and operation of an ångstrom-wavelength free-electron laser journal August 2010
Automation and control of laser wakefield accelerators using Bayesian optimization journal December 2020
Turn-key constrained parameter space exploration for particle accelerators using Bayesian active learning journal September 2021
SciPy 1.0: fundamental algorithms for scientific computing in Python journal February 2020
Machine learning accelerates MD-based binding pose prediction between ligands and proteins journal October 2017
A Simplex Method for Function Minimization journal January 1965
Robust simplex algorithm for online optimization journal October 2018
Online storage ring optimization using dimension-reduction and genetic algorithms journal May 2019
Model-independent tuning for maximizing free electron laser pulse energy journal August 2019
FACET-II facility for advanced accelerator experimental tests journal October 2019
Longitudinal phase space reconstruction for a heavy ion accelerator journal November 2020
Multiobjective Bayesian optimization for online accelerator tuning journal June 2021
Physics model-informed Gaussian process for online optimization of particle accelerators journal July 2021
Online Bayesian optimization for a recoil mass separator journal April 2022
Bayesian Optimization of a Free-Electron Laser journal March 2020
Crystal structure prediction accelerated by Bayesian optimization journal January 2018
Review of x-ray free-electron laser theory journal March 2007
Commissioning the Linac Coherent Light Source injector journal March 2008
Model-independent particle accelerator tuning journal October 2013
Online optimization of storage ring nonlinear beam dynamics journal August 2015
Optimizing integrated luminosity of future hadron colliders journal October 2015
A low emittance, flat-beam electron source for linear colliders journal May 2001
Photoinjector generation of a flat electron beam with transverse emittance ratio of 100 journal March 2006
Three-dimensional quasistatic model for high brightness beam dynamics simulation journal April 2006
Design optimization for an X-ray free electron laser driven by SLAC linac conference January 1995
Beam Emittance Measurement By Pepper-pot Method conference January 1991
Minimization of Betatron Oscillations of Electron Beam Injected Into a Time-Varying Lattice via Extremum Seeking journal January 2018
Emittance formula for slits and pepper-pot measurement report October 1996
Multimission Aircraft Fuel-Burn Minimization via Multipoint Aerostructural Optimization journal January 2015