Institution: University of Nottingham – Mechanical and Aerospace Systems Research Group
Location: UK
Reference: ENG305
Closing Date: Wednesday, 29 April 2026
Funding: Fully funded – UK Home fees + tax-free stipend of £24,000/year for 4 years
This Industrial Doctoral Landscape Award, in partnership with Siemens Digital Industry Software, focuses on advancing Computational Fluid Dynamics (CFD) for industrial applications using machine learning (ML). Key objectives:
Enhance boundary layer modelling in under-resolved aerodynamic simulations.
Develop ML architectures trained on high-fidelity CFD datasets.
Integrate ML-based boundary layer models into open-source finite volume CFD codes.
Conduct a 3-month industrial placement at Siemens for hands-on experience.
The PhD combines fundamental fluid mechanics with modern data-driven methods for direct industrial impact.
Essential:
High 2:1 (preferably 1st class) honours degree in Mechanical/Aerospace Engineering or related discipline
Strong understanding of numerical methods and fluid mechanics
Experience with scientific programming and data analysis (Python, MATLAB, Julia, C/C++ etc.)
Ability to work independently and collaboratively
Desirable:
Prior experience with CFD applications
Understanding of meshing requirements for aerodynamic simulations
Experience with machine learning or data-driven modelling techniques
Note: Studentship is limited to UK (home fees) applicants.
Submit the following documents to Hadrian.moran@nottingham.ac.uk:
CV
Cover letter
Academic transcripts
For informal enquiries, contact Dr Stephen Ambrose.
This PhD is ideal for candidates interested in CFD, fluid mechanics, and ML for industrial engineering applications.