DocumentCode :
8909
Title :
A Two-Level Genetic Algorithm for Large Optimization Problems
Author :
Pereira, Fabio Henrique ; Alves, Wonder A. L. ; Koleff, Lucas ; Nabeta, Silvio
Author_Institution :
Ind. Eng. Post Graduation Program, Univ. Nove de Julho, Sao Paulo, Brazil
Volume :
50
Issue :
2
fYear :
2014
fDate :
Feb. 2014
Firstpage :
733
Lastpage :
736
Abstract :
Many local two-level algorithms have been proposed for accelerating the electromagnetic optimization by stochastic algorithms. These algorithms use a combination of a coarse and a fine model in the optimization procedure. Despite the good results, the global convergence properties represent an important drawback of these approaches. A global two-level algorithm had been proposed to deal with the convergence problems, but the requirement to refine the global surrogate model in each step can demand high computational time. This paper introduces a global two-level genetic algorithm that uses single predefined coarse and fine surrogate models, which are defined as an artificial neural network nonlinear regression of a preliminary set of finite element simulations. The benchmark test problem, Hartmann 6, and the problem dealing with the eight-parameter design of superconducting magnetic energy storage have been analyzed..
Keywords :
convergence of numerical methods; electrical engineering computing; electromagnetic field theory; finite element analysis; genetic algorithms; neural nets; principal component analysis; regression analysis; stochastic programming; Hartmann 6 benchmark test problem; artificial neural network nonlinear regression; electromagnetic optimization; fine surrogate models; finite element simulations; global convergence property; global surrogate model; global two-level genetic algorithm; large optimization problems; principal component analysis; single predefined coarse surrogate models; stochastic algorithms; superconducting magnetic energy storage; Approximation methods; Biological neural networks; Computational modeling; Convergence; Electromagnetics; Genetic algorithms; Optimization; GAs; optimization; principal component analysis; two-level methods;
fLanguage :
English
Journal_Title :
Magnetics, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9464
Type :
jour
DOI :
10.1109/TMAG.2013.2285703
Filename :
6749151
Link To Document :
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