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An improved method using radial basis function neural networks to speed up optimization algorithms

The paper presents a method using radial basis function (RBF) neural networks to speed up deterministic search algorithms used for the optimization of superconducting magnets for the LHC accelerator project at CERN. The optimization of the iron yoke of the main LHC dipoles requires a number of numer...

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Detalles Bibliográficos
Autores principales: Bazan, M, Aleksa, Martin, Russenschuck, Stephan
Lenguaje:eng
Publicado: 2002
Materias:
Acceso en línea:https://dx.doi.org/10.1109/20.996277
http://cds.cern.ch/record/560344
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author Bazan, M
Aleksa, Martin
Russenschuck, Stephan
author_facet Bazan, M
Aleksa, Martin
Russenschuck, Stephan
author_sort Bazan, M
collection CERN
description The paper presents a method using radial basis function (RBF) neural networks to speed up deterministic search algorithms used for the optimization of superconducting magnets for the LHC accelerator project at CERN. The optimization of the iron yoke of the main LHC dipoles requires a number of numerical field computations per trial solution as the field quality depends on the excitation and local iron saturation in the yoke. This results in computation times of about 30 min for each objective function evaluation (on DEC-Alpha 600 /333). In this paper, we present a method for constructing an RBF neural network for a local approximation of the objective function. The computational time required for such a construction is negligible compared to the deterministic function evaluation, and, thus, yields a speed-up of the overall search process. The effectiveness of this method is demonstrated by means of two- and three-parametric optimization examples. The achieved speed-up of the search routine is up to 30%. (12 refs).
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institution Organización Europea para la Investigación Nuclear
language eng
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spelling cern-5603442019-09-30T06:29:59Zdoi:10.1109/20.996277http://cds.cern.ch/record/560344engBazan, MAleksa, MartinRussenschuck, StephanAn improved method using radial basis function neural networks to speed up optimization algorithmsAccelerators and Storage RingsThe paper presents a method using radial basis function (RBF) neural networks to speed up deterministic search algorithms used for the optimization of superconducting magnets for the LHC accelerator project at CERN. The optimization of the iron yoke of the main LHC dipoles requires a number of numerical field computations per trial solution as the field quality depends on the excitation and local iron saturation in the yoke. This results in computation times of about 30 min for each objective function evaluation (on DEC-Alpha 600 /333). In this paper, we present a method for constructing an RBF neural network for a local approximation of the objective function. The computational time required for such a construction is negligible compared to the deterministic function evaluation, and, thus, yields a speed-up of the overall search process. The effectiveness of this method is demonstrated by means of two- and three-parametric optimization examples. The achieved speed-up of the search routine is up to 30%. (12 refs).oai:cds.cern.ch:5603442002
spellingShingle Accelerators and Storage Rings
Bazan, M
Aleksa, Martin
Russenschuck, Stephan
An improved method using radial basis function neural networks to speed up optimization algorithms
title An improved method using radial basis function neural networks to speed up optimization algorithms
title_full An improved method using radial basis function neural networks to speed up optimization algorithms
title_fullStr An improved method using radial basis function neural networks to speed up optimization algorithms
title_full_unstemmed An improved method using radial basis function neural networks to speed up optimization algorithms
title_short An improved method using radial basis function neural networks to speed up optimization algorithms
title_sort improved method using radial basis function neural networks to speed up optimization algorithms
topic Accelerators and Storage Rings
url https://dx.doi.org/10.1109/20.996277
http://cds.cern.ch/record/560344
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