Publisher
source

Xinhui Ma

1 month ago

PhD Studentship: Explainable Predictive AI Models for Environmental Impact of Offshore Wind Farms University of Hull in United Kingdom

Degree Level

PhD

Field of study

Computer Science

Funding

Available

Deadline

Nov 30, 2026

Country flag

Country

United Kingdom

University

University of Hull

Social connections

How do Pakistani students apply for this?

Sign in for free to reveal details, requirements, and source links.

Where to contact

Official Email

Keywords

Computer Science
Data Science
Environmental Science
Mathematics
Predictive Modeling
Environmental Sustainability
Statistics
Explainability
Socioeconomic
Machine learning

About this position

[£20,780 per annum stipend for 4 years, plus training and development opportunities through the EPSRC CDT partnership.]

This fully funded PhD studentship at the University of Hull, in partnership with the EPSRC Centre for Doctoral Training (CDT) in Offshore Wind Energy Sustainability and Resilience, offers a unique opportunity to advance research at the intersection of artificial intelligence and environmental science. The project focuses on developing explainable predictive AI models to assess and forecast the environmental and socio-economic impacts of offshore wind farms. As offshore wind energy expands to support the UK's net zero ambitions, understanding its effects on marine ecosystems, seabed mobility, and local industries such as fishing is increasingly critical.

Unlike traditional black-box AI approaches, this research emphasizes model explainability, ensuring that predictions are transparent and trustworthy for regulators, developers, and local communities. The successful candidate will integrate diverse datasets from ecological monitoring, geospatial surveys, and socio-economic sources (including DEFRA and MMO datasets) to build models that capture both environmental and human dimensions of offshore wind. By combining machine learning with physics-informed modeling, the project aims to deliver predictive tools that are scientifically robust and interpretable to non-specialists, enabling stakeholders to anticipate biodiversity changes, manage seabed risks, and understand socio-economic trade-offs.

The student will join a vibrant research environment at Hull and Loughborough Universities, collaborating with other PhDs in the cluster focused on sustainable offshore wind. Engagement with industry partners and policymakers will ensure that research outputs have direct real-world impact. The studentship includes an intensive six-month training programme at the University of Hull, followed by continued research and professional development throughout the four-year scholarship. Training covers current and emerging needs in the offshore wind sector, supplemented by Continuing Professional Development (CPD) opportunities.

Eligibility requirements include a First-class Honours degree, or a 2:1 Honours degree and a Masters, or a Distinction at Masters level with any undergraduate degree (or international equivalents) in Computer Science, Data Science, Mathematics and Statistics, or related quantitative disciplines. Strong programming and machine learning skills are essential, and experience or interest in environmental science and sustainability is highly advantageous. Applicants whose first language is not English, or who require a Tier 4 student visa, must provide evidence of English language proficiency (IELTS 7.0 overall, with no less than 6.0 in each skill).

The studentship provides a stipend of £20,780 per annum for four years, along with access to training and development opportunities through the EPSRC CDT partnership. The application deadline is November 30, 2026. For further information or enquiries, contact Dr Xinhui Ma at [email protected]. Apply via the Aura CDT website, ensuring your application highlights relevant skills and experience in AI, programming, and environmental science.

Funding details

Available

What's required

Applicants must hold a First-class Honours degree, or a 2:1 Honours degree and a Masters, or a Distinction at Masters level with any undergraduate degree (or international equivalents) in Computer Science, Data Science, Mathematics and Statistics, or related quantitative disciplines. Strong programming and machine learning skills are required. Experience or interest in environmental science and sustainability is highly advantageous. Non-native English speakers or those requiring a Tier 4 visa must provide evidence of English proficiency meeting Aura CDT requirements: IELTS 7.0 overall, with no less than 6.0 in each skill.

How to apply

Apply via the Aura CDT website using the provided application link. Prepare your academic transcripts, CV, and evidence of English language proficiency if required. Contact Dr Xinhui Ma for enquiries. Ensure your application demonstrates relevant skills and experience.

Ask ApplyKite AI

Start chatting
Can you summarize this position?
What qualifications are required for this position?
How should I prepare my application?

Professors