Publisher
source

Andrew Cunliffe

2 months ago

Fully Funded PhD in Geospatial Ecology, Earth Observation, and AI for Forest Damage Assessment University of Exeter in United Kingdom

Degree Level

PhD

Field of study

Computer Science

Funding

This PhD studentship is fully funded via the EPSRC Doctoral Landscape Award. It covers full UK tuition fees and provides a stipend at the UKRI rate (currently £19,237 per annum for 2025/26). Funding includes support for research costs and training. International students may be eligible for fee waivers or partial support.

Deadline

Expired

Country flag

Country

United Kingdom

University

University of Exeter

Social connections

How do Korean students apply for this?

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

Where to contact

Keywords

Computer Science
Ecology
Environmental Science
Deep Learning
Remote Sensing
Geography
Artificial Intelligence
Computer Vision
Earth Science
Reinforcement Learning
Earth Observation
Multimodal Fusion

About this position

The University of Exeter is offering a fully funded PhD studentship through the EPSRC Doctoral Landscape Award, focusing on quantifying forest plantation damage after cyclones using advanced Earth Observation and AI-driven computer vision techniques. The project addresses the urgent global challenge of rapidly assessing storm damage in forest plantations, with a particular emphasis on New Zealand and the UK, where forestry is a major economic sector vulnerable to extreme weather events.

Supervised by Milto Miltiadou and a team including Andrew Cunliffe, Sareh Rowlands, Steven Palmer, Susana Gonzalez Aracil, and Todd Redpath, the research will develop scalable methods that integrate pre-storm LiDAR, post-storm SAR, LiDAR, and optical satellite data. The aim is to enable rapid, safe, and accurate quantification of forest damage, supporting industry partners and contributing to forestry resilience and Net Zero ambitions.

Potential research techniques include spatio-temporal AI models (such as LSTMs and transformers like ST-ViT), statistical baselines (ARIMA, Kalman filters), fine-tuning foundation models (e.g., Cambridge TESSERA, IBM–NASA Prithvi), agent-based routing tools using PostGIS, and interactive visualisation tools for decision-making. The project is highly interdisciplinary, combining geospatial ecology, computer science, environmental science, and applied AI.

Applicants should have a strong academic background in a relevant discipline (environmental science, computer science, geography, or related fields), with experience in AI, computer vision, remote sensing, or geospatial data analysis. Programming skills and an interest in applied, impactful research are highly desirable. The studentship covers full UK tuition fees and provides a generous stipend, with additional support for research costs and training. International applicants may be eligible for fee waivers or partial support and must meet English language requirements.

The application deadline is 12 January 2026. For more details and to apply, visit the University of Exeter funding page and follow the application instructions. This is an excellent opportunity to join a dynamic research team and contribute to innovative solutions for environmental resilience.

Funding details

This PhD studentship is fully funded via the EPSRC Doctoral Landscape Award. It covers full UK tuition fees and provides a stipend at the UKRI rate (currently £19,237 per annum for 2025/26). Funding includes support for research costs and training. International students may be eligible for fee waivers or partial support.

What's required

Applicants should hold or expect to obtain a first or upper second class UK Honours degree, or equivalent, in a relevant discipline such as environmental science, computer science, geography, or a related field. Experience with AI, computer vision, remote sensing, or geospatial data analysis is highly desirable. Strong programming skills and interest in applied research are preferred. International applicants may need to meet English language requirements (IELTS/TOEFL).

How to apply

Visit the University of Exeter funding page for the project description. Apply online via the provided application link before the deadline. Prepare your CV, academic transcripts, and a statement of interest. Contact the supervisors for further information if needed.

Ask ApplyKite AI

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

Professors