In the present paper, a computationally efficient methodology to develop fast and reliable propeller selection procedures based on a fully automated optimization technique is described. To this aim, a comprehensive propeller hydrodynamics model is combined with performance prediction acceleration techniques based on Neural Networks. Under given operating conditions, screw characteristics and blade shape details are optimized around a baseline configuration via general-purpose numerical optimization software based on genetic algorithms and via a parametric model. Numerical applications concern the propulsion retrofitting of marine vessels. A off-design performance verification study is presented to evaluate the robustness of the identified optimal configurations.

Automated Marine Propeller Optimal Design Combining Hydrodynamics Models and Neural Networks

Calcagni Danilo;Salvatore Francesco
2012

Abstract

In the present paper, a computationally efficient methodology to develop fast and reliable propeller selection procedures based on a fully automated optimization technique is described. To this aim, a comprehensive propeller hydrodynamics model is combined with performance prediction acceleration techniques based on Neural Networks. Under given operating conditions, screw characteristics and blade shape details are optimized around a baseline configuration via general-purpose numerical optimization software based on genetic algorithms and via a parametric model. Numerical applications concern the propulsion retrofitting of marine vessels. A off-design performance verification study is presented to evaluate the robustness of the identified optimal configurations.
2012
Istituto di iNgegneria del Mare - INM (ex INSEAN)
Inglese
Conference on Computer Applications and Information Technology in the Maritime Industries, COMPIT 2012
15
978-3-89220-660-6
http://data.hiper-conf.info/compit2012_liege.pdf
No
16-18 April 2012
Liege, Belgium
Naval hydrodynamics - boundary element method
ducted propellers
numerical optimization - genetic algorithms; parametric mode
regression model - neural networks
2
none
Calcagni Danilo; Bernardini Giovanni; Salvatore Francesco
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/20.500.14243/404067
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