DocumentCode
1668371
Title
A neural network based generalized response surface multiobjective evolutionary algorithm
Author
Farina, M.
Author_Institution
Soft Comput. & Nano-Organics Oper., STMicroelectronics, Milan, Italy
Volume
1
fYear
2002
Firstpage
956
Lastpage
961
Abstract
The practical use of multiobjective optimization tools in industry is still an open issue. A strategy for the reduction of objective functions is often essential, at a fixed degree of Pareto optimal front (POF) approximation accuracy. An extension of single-objective NN-based generalized response surfaces (GRS) methods to POF approximation is proposed. Such an extension is not at all straightforward due to the complex relation between the POF and Pareto optimal set. As a consequence of such complexity, it is extremely difficult to identify a multiobjective analogue of the single-objective current optimum region. Consequently, the design domain search space zooming strategy, which is the core of the GRS method, is to be carefully reconsidered when POF approximation is concerned
Keywords
computational complexity; genetic algorithms; interpolation; mathematics computing; neural nets; search problems; Pareto optimal front; approximation; complexity; evolutionary algorithm; generalized response surfaces; interpolation; multiobjective optimization; neural network; search space; Algorithm design and analysis; Computational efficiency; Computer industry; Convergence; Design optimization; Evolutionary computation; Neural networks; Optimization methods; Response surface methodology; Shape control;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2002. CEC '02. Proceedings of the 2002 Congress on
Conference_Location
Honolulu, HI
Print_ISBN
0-7803-7282-4
Type
conf
DOI
10.1109/CEC.2002.1007054
Filename
1007054
Link To Document