DocumentCode
752033
Title
A Neural Networks Inversion-Based Algorithm for Multiobjective Design of a High-Field Superconducting Dipole Magnet
Author
Cau, F. ; Mauro, M. ; Fanni, Alessandra ; Montisci, A. ; Testoni, P.
Author_Institution
Cagliari Univ.
Volume
43
Issue
4
fYear
2007
fDate
4/1/2007 12:00:00 AM
Firstpage
1557
Lastpage
1560
Abstract
In this paper, an original algorithm to solve multiobjective design problems, which makes use of a neural network (NN) inversion method, is presented. The proposed approach allows us to explore the solutions directly in the objectives space, rather than in the parameters space, with a great saving of computation time in the reconstruction of the Pareto front. A multilayer perceptron NN is first trained to solve the analysis design problem. The inversion of the neural model allows us to obtain the design parameters, starting from the desired requirements on all the conflicting multiple objectives. The performance of the method is demonstrated by its application to the design of a high-field superconducting dipole magnet, where a tradeoff between the superconductors volumes is required in order to obtain a prescribed magnetic field value in the dipole axis
Keywords
Pareto analysis; electrical engineering computing; multilayer perceptrons; superconducting magnets; Pareto front reconstruction; high-field superconducting dipole magnet; multilayer perceptron; multiobjective design; neural networks inversion-based algorithm; parameter space; Algorithm design and analysis; Conductors; Constraint optimization; Hafnium; Magnetic analysis; Magnetic fields; Neural networks; Superconducting coils; Superconducting magnets; Testing; Inversion algorithms; Pareto front; multiobjective design; neural networks (NNs); superconducting dipole;
fLanguage
English
Journal_Title
Magnetics, IEEE Transactions on
Publisher
ieee
ISSN
0018-9464
Type
jour
DOI
10.1109/TMAG.2006.892096
Filename
4137686
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