An efficient computational framework for naval shape design and optimization problems by means of data-driven reduced order modeling techniques

被引:0
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作者
Nicola Demo
Giulio Ortali
Gianluca Gustin
Gianluigi Rozza
Gianpiero Lavini
机构
[1] Mathematics Area,Department of Mathematical Sciences
[2] mathLab,Fincantieri
[3] SISSA,Divisione Navi Mercantili e Passeggeri
[4] International School of Advanced Studies,undefined
[5] Politecnico di Torino,undefined
[6] FINCANTIERI SpA,undefined
关键词
Finite volume method; Computational fluid dynamics; Data-driven reduced order modeling; Free form deformation; Shape optimization;
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学科分类号
摘要
This contribution describes the implementation of a data-driven shape optimization pipeline in a naval architecture application. We adopt reduced order models in order to improve the efficiency of the overall optimization, keeping a modular and equation-free nature to target the industrial demand. We applied the above mentioned pipeline to a realistic cruise ship in order to reduce the total drag. We begin by defining the design space, generated by deforming an initial shape in a parametric way using free form deformation. The evaluation of the performance of each new hull is determined by simulating the flux via finite volume discretization of a two-phase (water and air) fluid. Since the fluid dynamics model can result very expensive—especially dealing with complex industrial geometries—we propose also a dynamic mode decomposition enhancement to reduce the computational cost of a single numerical simulation. The real-time computation is finally achieved by means of proper orthogonal decomposition with Gaussian process regression technique. Thanks to the quick approximation, a genetic optimization algorithm becomes feasible to converge towards the optimal shape.
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页码:211 / 230
页数:19
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