The paper presents the application of nonlinear dimensionality reduction methods to shape and physical data in the context of hull-form design. These methods provide a reduced-dimensionality representation of the shape modification vector and associated physical parameters, allowing for an efficient and effective augmented design-space exploration. The data set is formed by shape coordinates and hydrodynamic performance (based on potential flow simulations) obtained by Monte Carlo sampling of a 27-dimensional design space. Nonlinear extensions of the principal component analysis (PCA) are applied, namely kernel PCA, local PCA and a deep autoencoder. The application presented is a naval destroyer sailing in calm water. The reduced-dimensionality representation of shape and physical parameters is set to provide a normalized mean square error smaller than 5%. Nonlinear methods outperform the standard PCA, indicating significant nonlinear interactions in the data structure. The present work is an extension of the authors' research [1] where only shape data were considered.

Augmented design-space exploration by nonlinear dimensionality reduction methods

Serani Andrea;Campana Emilio Fortunato;Diez Matteo
2019

Abstract

The paper presents the application of nonlinear dimensionality reduction methods to shape and physical data in the context of hull-form design. These methods provide a reduced-dimensionality representation of the shape modification vector and associated physical parameters, allowing for an efficient and effective augmented design-space exploration. The data set is formed by shape coordinates and hydrodynamic performance (based on potential flow simulations) obtained by Monte Carlo sampling of a 27-dimensional design space. Nonlinear extensions of the principal component analysis (PCA) are applied, namely kernel PCA, local PCA and a deep autoencoder. The application presented is a naval destroyer sailing in calm water. The reduced-dimensionality representation of shape and physical parameters is set to provide a normalized mean square error smaller than 5%. Nonlinear methods outperform the standard PCA, indicating significant nonlinear interactions in the data structure. The present work is an extension of the authors' research [1] where only shape data were considered.
2019
Istituto di iNgegneria del Mare - INM (ex INSEAN)
Inglese
Giuseppe Nicosia, Panos Pardalos, Giovanni Giuffrida, Renato Umeton, Vincenzo Sciacca
Machine Learning, Optimization, and Data Science. 4th International Conference, LOD 2018. Volterra, Italy, September 13-16, 2018. Revised Selected Papers
The 4th International Conference on machine Learning, Optimization and Data science - LOD 2018
11331 LNCS
154
165
12
9783030137083
http://www.scopus.com/record/display.url?eid=2-s2.0-85063570525&origin=inward
Sì, ma tipo non specificato
13-16/09/2018
Volterra, Italy
Deep autoencoder
Hull-form design
Kernel methods
Nonlinear dimensionality reduction
Shape optimization
4
none
D'Agostino, Danny; Serani, Andrea; Campana, EMILIO FORTUNATO; Diez, Matteo
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/20.500.14243/366869
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