Model-independent particle accelerator tuning

We present a new model-independent dynamic feedback technique, rotation rate tuning, for automatically and simultaneously tuning coupled components of uncertain, complex systems. The main advantages of the method are: (1) it has the ability to handle unknown, time-varying systems, (2) it gives known...

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Main Authors: Alexander Scheinker, Xiaoying Pang, Larry Rybarcyk
Format: Article
Language:English
Published: American Physical Society 2013-10-01
Series:Physical Review Special Topics. Accelerators and Beams
Online Access:http://doi.org/10.1103/PhysRevSTAB.16.102803
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spelling doaj-6f2ccafd5cdb4946823683bf15e98fb22020-11-25T02:46:35ZengAmerican Physical SocietyPhysical Review Special Topics. Accelerators and Beams1098-44022013-10-01161010280310.1103/PhysRevSTAB.16.102803Model-independent particle accelerator tuningAlexander ScheinkerXiaoying PangLarry RybarcykWe present a new model-independent dynamic feedback technique, rotation rate tuning, for automatically and simultaneously tuning coupled components of uncertain, complex systems. The main advantages of the method are: (1) it has the ability to handle unknown, time-varying systems, (2) it gives known bounds on parameter update rates, (3) we give an analytic proof of its convergence and its stability, and (4) it has a simple digital implementation through a control system such as the experimental physics and industrial control system (EPICS). Because this technique is model independent it may be useful as a real-time, in-hardware, feedback-based optimization scheme for uncertain and time-varying systems. In particular, it is robust enough to handle uncertainty due to coupling, thermal cycling, misalignments, and manufacturing imperfections. As a result, it may be used as a fine-tuning supplement for existing accelerator tuning/control schemes. We present multiparticle simulation results demonstrating the scheme’s ability to simultaneously adaptively adjust the set points of 22 quadrupole magnets and two rf buncher cavities in the Los Alamos Neutron Science Center (LANSCE) Linear Accelerator’s transport region, while the beam properties and rf phase shift are continuously varying. The tuning is based only on beam current readings, without knowledge of particle dynamics. We also present an outline of how to implement this general scheme in software for optimization, and in hardware for feedback-based control/tuning, for a wide range of systems.http://doi.org/10.1103/PhysRevSTAB.16.102803
collection DOAJ
language English
format Article
sources DOAJ
author Alexander Scheinker
Xiaoying Pang
Larry Rybarcyk
spellingShingle Alexander Scheinker
Xiaoying Pang
Larry Rybarcyk
Model-independent particle accelerator tuning
Physical Review Special Topics. Accelerators and Beams
author_facet Alexander Scheinker
Xiaoying Pang
Larry Rybarcyk
author_sort Alexander Scheinker
title Model-independent particle accelerator tuning
title_short Model-independent particle accelerator tuning
title_full Model-independent particle accelerator tuning
title_fullStr Model-independent particle accelerator tuning
title_full_unstemmed Model-independent particle accelerator tuning
title_sort model-independent particle accelerator tuning
publisher American Physical Society
series Physical Review Special Topics. Accelerators and Beams
issn 1098-4402
publishDate 2013-10-01
description We present a new model-independent dynamic feedback technique, rotation rate tuning, for automatically and simultaneously tuning coupled components of uncertain, complex systems. The main advantages of the method are: (1) it has the ability to handle unknown, time-varying systems, (2) it gives known bounds on parameter update rates, (3) we give an analytic proof of its convergence and its stability, and (4) it has a simple digital implementation through a control system such as the experimental physics and industrial control system (EPICS). Because this technique is model independent it may be useful as a real-time, in-hardware, feedback-based optimization scheme for uncertain and time-varying systems. In particular, it is robust enough to handle uncertainty due to coupling, thermal cycling, misalignments, and manufacturing imperfections. As a result, it may be used as a fine-tuning supplement for existing accelerator tuning/control schemes. We present multiparticle simulation results demonstrating the scheme’s ability to simultaneously adaptively adjust the set points of 22 quadrupole magnets and two rf buncher cavities in the Los Alamos Neutron Science Center (LANSCE) Linear Accelerator’s transport region, while the beam properties and rf phase shift are continuously varying. The tuning is based only on beam current readings, without knowledge of particle dynamics. We also present an outline of how to implement this general scheme in software for optimization, and in hardware for feedback-based control/tuning, for a wide range of systems.
url http://doi.org/10.1103/PhysRevSTAB.16.102803
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