ShipGen: A Diffusion Model for Parametric Ship Hull Generation with Multiple Objectives and Constraints
Noah J. Bagazinski, Faez Ahmed

TL;DR
This paper introduces a diffusion model-based approach for generating parametric ship hull designs that optimize multiple objectives, significantly improving design efficiency and performance metrics such as wave drag and volume.
Contribution
It presents a novel application of denoising diffusion probabilistic models with guidance techniques for multi-objective ship hull design generation.
Findings
99.5% dataset coverage with feasible hulls
91.4% reduction in wave drag coefficients
47.9x increase in hull volume
Abstract
Ship design is a years-long process that requires balancing complex design trade-offs to create a ship that is efficient and effective. Finding new ways to improve the ship design process can lead to significant cost savings for ship building and operation. One promising technology is generative artificial intelligence, which has been shown to reduce design cycle time and create novel, high-performing designs. In literature review, generative artificial intelligence has been shown to generate ship hulls; however, ship design is particularly difficult as the hull of a ship requires the consideration of many objectives. This paper presents a study on the generation of parametric ship hull designs using a parametric diffusion model that considers multiple objectives and constraints for the hulls. This denoising diffusion probabilistic model (DDPM) generates the tabular parametric design…
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Taxonomy
TopicsShip Hydrodynamics and Maneuverability
MethodsDiffusion
