This work presents a Simulation Based Design environment based on a Global Optimization (GO) algorithm for the solution of optimum ship design problems. The procedure, illustrated in the framework of multiobjective optimization problems, make use of high-fidelity, CPU time expensive computational models, including a free surface capturing RANSE solver. The use of GO prevents the optimizer to be trapped into local minima. The optimization is composed by global and local phases. In the global stage of the search, a few computationally expensive simulations are needed for creating surrogate models (metamodels) of the objective functions. Tentative design, created to explore the design variable space are evaluated with these inexpensive analytical approximations. The more promising designs are clustered, then locally minimised and eventually verified with high-fidelity simulations. New exact values are used to improve the metamodels and repeated cycles of the algorithm are performed. A Decision Maker strategy is finally adopted to select the more promising design.

High fidelity Models in Global Optimization

2003

Abstract

This work presents a Simulation Based Design environment based on a Global Optimization (GO) algorithm for the solution of optimum ship design problems. The procedure, illustrated in the framework of multiobjective optimization problems, make use of high-fidelity, CPU time expensive computational models, including a free surface capturing RANSE solver. The use of GO prevents the optimizer to be trapped into local minima. The optimization is composed by global and local phases. In the global stage of the search, a few computationally expensive simulations are needed for creating surrogate models (metamodels) of the objective functions. Tentative design, created to explore the design variable space are evaluated with these inexpensive analytical approximations. The more promising designs are clustered, then locally minimised and eventually verified with high-fidelity simulations. New exact values are used to improve the metamodels and repeated cycles of the algorithm are performed. A Decision Maker strategy is finally adopted to select the more promising design.
2003
Istituto di iNgegneria del Mare - INM (ex INSEAN)
Inglese
Christophe JERMANN, Djamila SAM-HAROUD
2nd International Workshop on Global Constrained Optimization and Constraint Satisfaction - COCOS 03
22
http://icwww.epfl.ch/~sam/Cocos03/
Sì, ma tipo non specificato
November 18-21, 2003
Lausanne, Switzerland
The paper, presented at the Second International Workshop on Global Optimization and Constraint Satisfaction, COCOS 2003, held in Lausanne, Switzerland in November 2003, will be revised and selected for the publication on "Global Optimization and Constraint Satisfaction" volume 3478 LNCS Springer Verlag, 2005.
1
none
Daniele PeriEmilio, F Campana
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/115539
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