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Auteurs principaux: Kruger, Patrick, Diaz, Rafael, Hauschulz, Simon, Harries, Stefan, Gottschalk, Hanno
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2601.21637
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author Kruger, Patrick
Diaz, Rafael
Hauschulz, Simon
Harries, Stefan
Gottschalk, Hanno
author_facet Kruger, Patrick
Diaz, Rafael
Hauschulz, Simon
Harries, Stefan
Gottschalk, Hanno
contents In this paper, we explore the use of generative artificial intelligence (GenAI) for ship propeller design. While traditional forward machine learning models predict the performance of mechanical components based on given design parameters, GenAI models aim to generate designs that achieve specified performance targets. In particular, we employ conditional flow matching to establish a bidirectional mapping between design parameters and simulated noise that is conditioned on performance labels. This approach enables the generation of multiple valid designs corresponding to the same performance targets by sampling over the noise vector. To support model training, we generate data using a vortex lattice method for numerical simulation and analyze the trade-off between model accuracy and the amount of available data. We further propose data augmentation using pseudo-labels derived from less data-intensive forward surrogate models, which can often improve overall model performance. Finally, we present examples of distinct propeller geometries that exhibit nearly identical performance characteristics, illustrating the versatility and potential of GenAI in engineering design.
format Preprint
id arxiv_https___arxiv_org_abs_2601_21637
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Generative Design of Ship Propellers using Conditional Flow Matching
Kruger, Patrick
Diaz, Rafael
Hauschulz, Simon
Harries, Stefan
Gottschalk, Hanno
Machine Learning
68T07
In this paper, we explore the use of generative artificial intelligence (GenAI) for ship propeller design. While traditional forward machine learning models predict the performance of mechanical components based on given design parameters, GenAI models aim to generate designs that achieve specified performance targets. In particular, we employ conditional flow matching to establish a bidirectional mapping between design parameters and simulated noise that is conditioned on performance labels. This approach enables the generation of multiple valid designs corresponding to the same performance targets by sampling over the noise vector. To support model training, we generate data using a vortex lattice method for numerical simulation and analyze the trade-off between model accuracy and the amount of available data. We further propose data augmentation using pseudo-labels derived from less data-intensive forward surrogate models, which can often improve overall model performance. Finally, we present examples of distinct propeller geometries that exhibit nearly identical performance characteristics, illustrating the versatility and potential of GenAI in engineering design.
title Generative Design of Ship Propellers using Conditional Flow Matching
topic Machine Learning
68T07
url https://arxiv.org/abs/2601.21637