In shape optimization, design improvements significantly depend on the dimension and variability of the design space. High dimensional and variability spaces are more difficult to explore, but also usually allow for more significant improvements. The assessment and breakdown of design-space dimensionality and variability are therefore key elements to shape optimization. A linear method based on the principal component analysis (PCA) has been developed in earlier research to build a reduced-dimensionality design-space, resolving the 95% of the original geometric variance. The present work introduces an extension to more efficient nonlinear approaches. Specifically the use of Kernel PCA, Local PCA, and Deep Autoencoder (DAE) is discussed. The methods are demonstrated for the design-space dimensionality reduction of the hull form of a USS Arleigh Burke-class destroyer. Nonlinear methods are shown to be more effective than linear PCA. DAE shows the best performance overall.

Nonlinear Methods for Design-Space Dimensionality Reduction in Shape Optimization

Serani Andrea;Campana Emilio F;Diez Matteo
2018

Abstract

In shape optimization, design improvements significantly depend on the dimension and variability of the design space. High dimensional and variability spaces are more difficult to explore, but also usually allow for more significant improvements. The assessment and breakdown of design-space dimensionality and variability are therefore key elements to shape optimization. A linear method based on the principal component analysis (PCA) has been developed in earlier research to build a reduced-dimensionality design-space, resolving the 95% of the original geometric variance. The present work introduces an extension to more efficient nonlinear approaches. Specifically the use of Kernel PCA, Local PCA, and Deep Autoencoder (DAE) is discussed. The methods are demonstrated for the design-space dimensionality reduction of the hull form of a USS Arleigh Burke-class destroyer. Nonlinear methods are shown to be more effective than linear PCA. DAE shows the best performance overall.
2018
Istituto di iNgegneria del Mare - INM (ex INSEAN)
Inglese
Nicosia G.,Giuffrida G.,Pardalos P.,Umeton R.
MOD 2017: Machine Learning, Optimization, and Big Data
121
132
12
978-3-319-72925-1
Springer
Cham, Heidelberg, New York, Dordrecht, London
SVIZZERA
Sì, ma tipo non specificato
Shape optimization
Hull-form design Nonlinear dimensionality reduction
Kernel methods Deep autoencoder
3rd International Conference on Machine Learning, Optimization, and Big Data, MOD 2017; Volterra; Italy; 14 September 2017 through 17 September 2017;
4
02 Contributo in Volume::02.01 Contributo in volume (Capitolo o Saggio)
268
none
D'Agostino, Danny; Serani, Andrea; Campana Emilio, F; Diez, Matteo
info:eu-repo/semantics/bookPart
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/369597
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