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Active STUDENTSHIP UKRI Gateway to Research

Machine Learning for Computational Fluid Dynamics (Coding, Machine Learning & Fluid Dynamics)


Funder Engineering and Physical Sciences Research Council
Recipient Organization Brunel University London
Country United Kingdom
Start Date Sep 30, 2024
End Date Mar 30, 2028
Duration 1,277 days
Number of Grantees 2
Roles Student; Supervisor
Data Source UKRI Gateway to Research
Grant ID 2927037
Grant Description

As machine learning (ML) transforms our society, the next generation of engineering will also be revolutionised by these models.

Computational fluid dynamics (CFD) solves equations to model fluid flow, to allow the design of faster cars and planes, optimise green technologies like wind turbines, enable biotechnology and make computer games and films more realistic.

This project will look to apply transformers, the basic architecture of large language models (LLMs) like ChatGPT, to predict fluid dynamics in the same way they predict the next word in a sentence.

This will be applied to the simplest example of turbulence, the minimal flow unit, incorporating molecular detail as part of a multi-physics simulation.

This will be coupled with cutting-edge techniques like physics informed neural networks (PINNs) and super resolution from generative adversarial network (GANS) all run on a supercomputer with GPUs.

During the project, the student will become an expert in machine learning, fluid dynamics and multi-physics simulation, while researching at the forefront of this exciting new field.

All Grantees

Brunel University London

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