Riding the AI wave toward rapid, precise ocean simulations
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Riding the AI wave toward rapid, precise ocean simulations


AI has created a sea change in society; now, it is setting its sights on the sea itself.

Researchers at Osaka Metropolitan University have developed a machine learning-powered fluid simulation model that significantly reduces computation time without compromising accuracy. Their fast and precise technique opens up potential applications in offshore power generation, ship design and real-time ocean monitoring.

Accurately predicting fluid behavior is crucial for industries relying on wave and tidal energy, as well as for design of maritime structures and vessels. Whilst particle methods — which allow particles to simulate the behavior of fluid flow — are a common approach, they require extensive computational resources, including processing power and time. By simplifying and accelerating fluid simulations, AI-powered surrogate models are making waves in fluid dynamics research.

However, AI is not without its flaws.

“AI can deliver exceptional results for specific problems but often struggles when applied to different conditions,” said Takefumi Higaki, an assistant professor at Osaka Metropolitan University’s Graduate School of Engineering and lead author of the study.

Aiming to create a tool that is consistently fast and accurate, the team developed a new surrogate model using a deep learning technology called graph neural networks. The researchers first compared different training conditions to determine what factors were essential for high-precision fluid calculations. They then systematically evaluated how well their model adapted to different simulation speeds, known as time step sizes, and various types of fluid movements.

The results demonstrated strong generalization capabilities across different fluid behaviors.

“Our model maintains the same level of accuracy as traditional particle-based simulations, throughout various fluid scenarios, while reducing computation time from approximately 45 minutes to just three minutes,” Higaki said.

This research marks a step forward in high-performance fluid simulation, offering a scalable and generalizable solution that balances accuracy with efficiency. Such improvements extend beyond the lab.

“Faster and more precise fluid simulations can mean a significant acceleration in the design process for ships and offshore energy systems,” Higaki said. “They also enable real-time fluid behavior analysis, which could maximize the efficiency of ocean energy systems.”

The study was published in Applied Ocean Research.

Funding
JSPS KAKENHI (Grant Number 24K22934)

Declaration of competing interest
The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

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About OMU
Established in Osaka as one of the largest public universities in Japan, Osaka Metropolitan University is committed to shaping the future of society through the “Convergence of Knowledge” and the promotion of world-class research. For more research news, visit https://www.omu.ac.jp/en/ and follow us on social media: X, Facebook, Instagram, LinkedIn.
Journal: Applied Ocean Research
Title: Step-by-step enhancement of a graph neural network-based surrogate model for Lagrangian fluid simulations with flexible time step sizes
DOI: 10.1016/j.apor.2025.104424
Authors: Takefumi Higaki, Yuki Tanabe, Hirotada Hashimoto, Takahito Iida
Publication date: 15 January 2025
URL: https://doi.org/10.1016/j.apor.2025.104424
Fichiers joints
  • Fluid simulation comparison: Particle method (top) vs. AI-driven surrogate model (time step: 0.0020 sec). The AI model reduces computation time to one-fifteenth of the traditional model’s time while preserving accuracy. Credit: Osaka Metropolitan University
Regions: Asia, Japan
Keywords: Applied science, Artificial Intelligence, Computing, Engineering, Technology, Science, Earth Sciences

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