AcademicJobs Jobs

AcademicJobs

Applications Close:

Manchester

5 Star Employer Ranking

"PhD Studentship: Stochastic vs Deterministic vs AI Accelerated Methods for HTGR Design"

Academic Connect
Applications Close

PhD Studentship: Stochastic vs Deterministic vs AI Accelerated Methods for HTGR Design

PhD Studentship: Stochastic vs Deterministic vs AI Accelerated Methods for HTGR Design

The University of Manchester - Mechanical and Aerospace Engineering

Qualification Type:PhD
Location:Manchester
Funding for:UK Students
Funding amount:£20,780 annual tax-free stipend set at the UKRI rate and tuition fees will be paid
Hours:Full Time
Placed On:3rd March 2026
Closes:30th March 2026

Application deadline: 30/04/2026
Research theme: Nuclear Engineering
How to apply: https://uom.link/pgr-apply-2425

This 3.5-year PhD project is fully funded; home students are eligible to apply. The successful candidate will receive an annual tax-free stipend set at the UKRI rate (£20,780 for 2025/26) and tuition fees will be paid. We expect the stipend to increase each year. The start date is October 2026.

We recommend that you apply early as the advert may be removed before the deadline.

High-temperature gas-cooled reactors (HTGRs) are of significant interest to the UK due to their ability to deliver high-temperature, low-carbon energy for applications beyond electricity generation, and building on the UK’s extensive experience of gas-cooled reactor operation. HMG has selected the High Temperature Gas-cooled Reactor (HTGR) as the most credible Advanced Modular Reactor (AMR) technology.

Achieving improved performance requires accurate, high-fidelity modelling to reliably predict power distributions and ensure fuel operates within design limits.

The aim of this project is to establish a robust, validated framework for neutronics and thermal analysis of prismatic HTGR cores, integrating Monte Carlo simulation, deterministic methods, and AI/ML-assisted techniques. The study seeks to improve predictive accuracy for key performance and safety parameters while addressing the challenges associated with cross-section generation and homogenisation in HTGRs.

The project will aim to:

  • Quantify the limitations of conventional deterministic HTGR analysis, particularly those arising from cross-section homogenisation and energy group structure.
  • Investigate the use of AI/ML algorithms to predict or generate cross sections, enabling deterministic solvers to better capture strong heterogeneities and flux gradients.
  • Provide insight on the appropriate use of Monte Carlo, deterministic, and AI-accelerated approaches for HTGR design, safety assessment, and operational analysis.
  • Develop and validate a multiscale thermal solver tailored to prismatic HTGRs, capable of resolving heat transfer at the TRISO particle, fuel compact, and graphite block levels, and tightly coupled to a Monte Carlo neutronics solver.

Applicants should have, or expect to achieve, at least a 2.1 honours degree or a master’s (or international equivalent) in a relevant science or engineering related discipline.

To apply, please contact the main supervisor, Dr Olga Negri - olga.negri@manchester.ac.uk. Please include details of your current level of study, academic background and any relevant experience and include a paragraph about your motivation to study this PhD project.

10

Unlock this job opportunity


View more options below

View full job details

See the complete job description, requirements, and application process

Stay on their radar

Join the talent pool for AcademicJobs

Join Talent Pool

Express interest in this position

Let AcademicJobs know you're interested in PhD Studentship: Stochastic vs Deterministic vs AI Accelerated Methods for HTGR Design

Add this Job Post to FavoritesExpress Interest

Get similar job alerts

Receive notifications when similar positions become available

Share this opportunity

Send this job to colleagues or friends who might be interested

332 Jobs Found
View More