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Efficient Stochastic Optimization using Chaos Collocation Method with modeFRONTIER

Journal Article
ISSN: 1946-3979, e-ISSN: 1946-3987
Published April 14, 2008 by SAE International in United States
Efficient Stochastic Optimization using Chaos Collocation Method with modeFRONTIER
Citation: Pediroda, V., Parussini, L., Poloni, C., Parashar, S. et al., "Efficient Stochastic Optimization using Chaos Collocation Method with modeFRONTIER," SAE Int. J. Mater. Manf. 1(1):747-753, 2009,
Language: English


Robust Design Optimization (RDO) using traditional approaches such as Monte Carlo (MC) sampling requires tremendous computational expense. Performing a RDO for problems involving time consuming CAE analysis may not even be possible within time constraints. In this paper a new stochastic modeling technique based on chaos collocation method is used to measure the mean and standard deviation (σ) for uncertain output parameters. For a given accuracy, chaos collocation method requires far less sample evaluations compared to MC. The efficient evaluation of mean and std. deviation terms using chaos collocation method makes it quite attractive to be used with RDO methods. In this work the RDO of an automotive engine design is performed employing chaos collocation method. The solution strategy is implemented in commercial Process Integration and Design Optimization (PIDO) software tool modeFRONTIER. modeFRONTIER provides a very effective environment to apply multi-objective optimization algorithms to various CAE or in-house analysis and simulation tools. The engine design simulations were performed using GT-Power through modeFRONTIER. The chaos collocation method is coded in MATLAB scripts that are also invoked through modeFRONTIER. The rest of the paper covers an introduction describing the motivation and challenges. The chaos collocation method is described followed by a description of it's application through modeFRONTIER. The engine design optimization problem is explained followed by a discussion of RDO results.