| Qualification Type: | PhD |
|---|---|
| Location: | Guildford |
| Funding for: | UK Students |
| Funding amount: | Fully and directly funded for this project only, including UKRI standard stipend; funding is for 4 years; funded by AWE Nuclear Security Technologies. |
| Hours: | Full Time |
| Placed On: | 6th February 2026 |
|---|---|
| Closes: | 31st March 2026 |
| Reference: | PGR-2526-021 |
Neutron-nucleus cross sections can be divided into different energy ranges depending on the initial energy of the neutron. At lower energies, cross sections are characterised by peaks, called resonances, caused by the neutron being absorbed by the target nucleus. Positions and widths of these resonances cannot be predicted and must be measured. This energy range is called the “resolved resonance region” (RRR). Increasing further the energy of the neutron we reach a point where the resonances in the cross section are too close to each other to be resolved experimentally and we can only infer the average values of the widths and spacings between two adjacent resonances. This energy range is called the “unresolved resonance region” (URR).
Current computational methods treat the resonances in the URR using delta functions in place of full conditional cross section probability distributions to represent the probability of individual reaction channels (capture, elastic, fission), potentially missing more complex correlations between the channels. Moreover, this method does not allow to easily include information from different sources, for example from nuclear experiments. Additionally, for many applications we also need to know the cross sections at different temperatures and, thus, we need to properly account for the thermal motion of the target nuclei.
Due to these issues, we need to develop a theoretical framework that allows us to consistently treat the URR, the available experimental information, and the target thermal motion of the cross sections of neutron-induced reactions relevant for nuclear science and applications. This project aims to develop the required formalism using modern probabilistic and machine-learning approaches, reformulating the problem in terms of conditional probabilities. Bayesian networks and related machine-learning methods will be used to calculate cross-section probability density functions in a much faster way, enabling the combination of multiple probability distributions describing various physical effects.
Supervisors: Dr Matteo Vorabbi, Prof Paul Stevenson and James Benstead
Entry requirements
Open to candidates who pay UK/home rate fees. See UKCISA for further information. Starting in October 2026.
You will need to meet the minimum entry requirements for our PhD programme.
This project will allow the student to acquire highly transferable skills in probabilistic modelling, statistical inference, and machine-learning techniques, with potential applications well beyond nuclear science, including data science and AI-related fields.
Expertise in nuclear data and uncertainty quantification is highly desirable, making the student a strong candidate for both academic and applied research environments following completion of the project.
The PhD student is also expected to collaborate closely with a number of UK and international partners, including opportunities for visits to the US national laboratories of Brookhaven and Lawrence Livermore, providing exposure to large-scale scientific projects and interdisciplinary research environments.
How to apply
The application should be submitted via the Physics PhD programme page as a single PDF file containing CV, personal statement (one page maximum) and contacts for two references. Please clearly state the studentship title and supervisor on your application.
Funding
Fully and directly funded for this project only, including UKRI standard stipend.
Funding is for 4 years. Funded by AWE Nuclear Security Technologies.
Application deadline: 31 March 2026
Enquiries: Contact Dr Matteo Vorabbi
Ref: PGR-2526-021
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