Early-stage failure prediction in fusion materials using machine learning

University of Sheffield

About the Project

In fusion reactors, materials experience extreme temperatures, stresses, and radiation damage. Safe operation requires identification of deformation patterns that are early warning signs of materials failure. These characteristic patterns result from the interaction of deformation mechanisms across multiple scales making detection via traditional analytical methods extremely challenging. This project will apply pattern recognition and machine learning techniques to a large database of experimental data to reveal early-stage fingerprints for damage hidden in the data.

Project Description:

In nuclear fusion reactors, particularly plasma-facing first wall components and breeder blanket modules, materials are subjected to extreme temperatures, stresses, and radiation damage during their operating conditions. Critical to the safe design and operation of a fusion reactor is the early-stage identification of deformation patterns that is a consistent precursor to material failure.

Supervisor:

  1. Chris Race ()

If you are interested in this PhD, we encourage you to contact the project supervisor(s) directly. 

Application Deadline:

Applications open until successful candidate is recruited (no later than Summer 2025) 

Funding Notes:

This is a fully funded project, part of cohort 2 of the EPSRC CDT in Materials 4.0. CDT. The studentship covers fees (home & international), a tax-free stipend of at least £19,237 plus London allowance if applicable, and a research training support grant.

Candidates of all nationalities are welcome to apply; up to 30% of studentships across the CDT can be awarded to outstanding international applicants. Early applications from interested overseas candidates are encouraged.

The Materials 4.0 CDT is committed to Equality, Diversity and Inclusion. Five countries are represented in cohort 1. We would like to see a more gender-balanced cohort 2, so we strongly encourage applications from female candidates.

Enquiries:

For application-related queries, please contact Sharon Brown (). Please note that each partner of the CDT in Materials 4.0 will have its own application process.

Application Webpage:

https://www.sheffield.ac.uk/postgradapplication/login.do

After the personal details, you need to ‘add research course’, and select ‘Doctoral Training Course’, and then ‘Developing National Capability for Materials 4.0’. 

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