Geo-Aware Graph Learning for Transferable Flood Mapping from Earth Observation Data (GRAFT) - PhD (U.K. & E.U. nationals) via FindAPhD

Cardiff University

Cardiff, UK 🇬🇧

Details

Flood mapping from Earth observation (EO) data is a critical input to disaster risk management and climate resilience planning. However, machine learning models for flood detection and flood susceptibility mapping often struggle to generalise when applied to new geographical regions. Differences in hydrology, land cover, terrain, and climate introduce strong spatial heterogeneity, leading to severe performance degradation under geographical transfer. This limitation poses a major barrier to scalable, globally deployable flood monitoring systems. 

Aims and Methods 

The aim of this PhD project is to develop geo-aware graph learning models that explicitly incorporate geographical context as an inductive bias to improve cross-regional generalisation in flood mapping from EO data. The project will investigate how spatial relationships and geographical attributes can be modelled within graph-based machine learning frameworks to distinguish transferable flood-related patterns from region-specific environmental characteristics. 

Methodologically, the project will represent spatial entities (e.g. grid cells or spatial units) as nodes in a graph, with edges encoding geographical proximity or hydrological connectivity. Multi-source EO data (e.g. optical, thermal, land cover, and vegetation indices) will be integrated as node features. The student will design and evaluate geo-aware graph neural networks in which geographical information conditions message passing or representation learning, rather than being treated as a simple input feature. Models will be evaluated under explicit geographical transfer settings, where training and testing regions differ substantially in environmental properties. 

Deliverables (indicative) 

  • A proof-of-concept geo-aware graph learning model for cross-regional flood mapping that explicitly conditions representation learning on geographical context. 
  • Quantitative evaluation of model generalisation under geographical distribution shift, using standardised cross-region training and testing protocols. 
  • At least three conference or journal publications in remote sensing or machine learning venues. 
  • Reproducible geo-transfer datasets and modelling pipelines, including curated multi-region EO data, standardised geographical train–test splits, and end-to-end workflows for graph construction, training, and robustness evaluation, enabling fair comparison of transferable flood mapping models and supporting deployment in previously unseen regions. 

Keywords 

Flood mapping; Earth observation; Graph neural networks; Geographical transfer; Spatial machine learning; Climate resilience 

Contact for information on the project: 

Dr Oktay Karakuş – karakuso@cardiff.ac.uk 

Studentship information  

The School of Computer Science and Informatics Studentships are for 3.5 years full time UK Home and EU Students only. This covers fees and stipend at the standard UKRI rate. Please note however that if you are EU applicant the following postgraduate research fee discount scheme for EU students is available, however does not apply to part time students. If EU applicants intending to study full time wish to apply for this discount, they will need to ensure they are fully eligible. To enquire further as to whether or not you are eligible, please contact the central admissions team via: admissions@cardiff.ac.uk as the School will only pay the Home Fee rate 

The project is open to both Home and EU students, however the School will only fund the Home Fee rate 

Mode of Study 

Full-time only. 

How to Apply 

You can apply online – consideration is automatic on applying for a PhD with a 1st July 2026 start date.  

Please submit your application via Computer Science and Informatics – Study – Cardiff University 

In the funding field of your application, indicate “I am applying for 2026 COMSC funded PhD Studentship in Computer Science and Informatics”, and specify the project title and supervisors of this project in the text box provided. Please be aware that you cannot apply for multiple COMSC Studentship projects as part of one application via the application portal, you have to apply for each project in one separate individual application. 

Academic criteria: A 2:1 Honours undergraduate degree or a master’s degree, in computing or another subject with significant quantitative component e.g. maths, engineering, economics, psychology. Applicants with appropriate professional experience are also considered. 

Applicants must demonstrate English language proficiency. Students who do not have English as a first language must prove this by obtaining an IELTS score of at least 6.5 overall, with a minimum of 6.0 in each skills component. A full list of accepted qualifications is available here: https://www.cardiff.ac.uk/study/international/english-language-requirements/postgraduate 

If you are interested, please contact [Dr Oktay Karakuş; karakuso@cardiff.ac.uksending your CV in the first instance. The application process requires you to develop a research proposal jointly with the supervision team, prior to the deadline. If needed, we can make further suggestions for specific research projects within the above areas. 

Once you have developed the proposal with support from the supervisors, please submit your application following the instructions provided below. 

Please submit your application via Computer Science and Informatics – Study – Cardiff University 

In order to be considered candidates must submit the following information: 

  • In the ‘Research Proposal’ section of the application enter the name of the project you are applying to and upload your Individual research proposal. Your research proposal should not exceed 2000 words, including references and bibliography. 
  • A personal statement (as part of the university application form, or as a separate attachment, if you prefer).  
  • A CV. Guidance on CVs for a PhD position can be found on the FindAPhD website
  • Qualification certificates and Transcripts – original and English translation, if applicable. 
  • References x 2 which should be academic references. Please note you need to provide the reference documents as part of your application.
  • Proof of English language (if applicable). 

Interview – Candidates who demonstrate the best fit for the role will be invited to an interview (in person or remote). 

Application Deadline

23:59 on 13th February 2026 

Start Date: 1 July 2026 

Funding Notes

Where applicable, candidates will be required to cover the cost of a student visa, the healthcare surcharge, and any other costs of moving to the UK to study. These costs will not be covered by the School of Computer Science and Informatics.

References

[1] – Karakuş, O., & Corcoran, P. (2025). A Multi-Modal Spatial Risk Framework for EV Charging Infrastructure Using Remote Sensing. arXiv preprint arXiv:2506.19860.

[2] – Karakuş, O. (2026). Geo-Aware Graph Learning for Cross-Regional Flood Mapping from Earth Observation Data. arXiv preprint arXiv:2601.xxxxx

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Apply by 14 February, 2026

POSITION TYPE

ORGANIZATION TYPE

EXPERIENCE-LEVEL

DEGREE REQUIRED

IHE Delft - MSc in Water and Sustainable Development