Funding and scholarships for students

Reliable Resource Orchestration for Agile Aerial Edge Computing-PhD Ref: 5851

About the award

Supervisors

Dr. Haozhe Wang   University of Exeter Faculty of Environment, Science and Economy

Prof. Geyong Min  University of Exeter Faculty of Environment, Science and Economy

Mobile Edge Computing (MEC) has emerged as a promising computing paradigm to support emerging high-performance applications by deploying resources at the network edge. However, most existing MEC systems are built upon fixed ground infrastructure, such as terrestrial base stations. This stationary deployment lacks the necessary flexibility to adapt to dynamic environments. In scenarios where ground communication is interrupted, such as during disaster recovery, in remote industrial sites, or for temporary large-scale events, fixed infrastructure is either unavailable or easily damaged, creating "blind spots" in service coverage. To overcome these limitations, Aerial Edge Computing (AEC) is required to provide an agile, on-demand computing layer. By mounting edge servers on Unmanned Aerial Vehicles (UAVs), AEC enables flexible deployment and can establish Line-of-Sight (LoS) communication links with ground users, significantly improving signal quality. This mobility allows AEC nodes to "follow" the demand, providing high-speed data transfer and low-latency processing exactly where and when it is needed. Despite its potential, AEC faces unique challenges for Quality-of-Service (QoS) guarantees due to the highly dynamic mobility of UAVs, limited onboard energy, and the stochastic nature of 3D wireless channels. Therefore, this project aims to develop novel reliable resource orchestration solutions for AEC by harvesting recent breakthroughs in Machine Learning (ML) and analytical modelling. Specifically, this project seeks to quantify key performance metrics and create powerful adaptive ML-driven management methods to control risk while maximizing resource utilization and minimizing energy consumption.

WP1: QoS Quantitative Analysis (Months 1-11): This WP focuses on developing original analytical models to investigate performance behaviour and QoS metrics specifically for AEC systems. Models will analyse key features such as 3D mobility patterns, bursty traffic arrivals, and the dynamics of aerial-to-ground wireless transmissions.

WP2: Smart Resource Orchestration (Months 12-26): Driven by WP1, this WP will formulate a multi-objective optimization problem to balance latency, throughput, and the flight-related energy consumption of UAVs. A distributed ML algorithm based on Liquid State Machines will be designed to adaptively optimize resource assignment and UAV positioning.

WP3: Algorithms Validation and Use Case Demonstration (Months 26-36): Using an existing simulator, WP3 will establish an AEC testbed to evaluate the solutions from WPs 1-2. A typical use case of accurate environment perception will be developed to demonstrate AEC’s ability to support high-stakes autonomous operations.

For eligible students, the studentship will cover home tuition fees plus an annual tax-free stipend of at least £20,780 for 3.5 years full-time, or pro rata for part-time study.  The student would be based in the Faculty of Environment, Science and Economy at the Streatham Campus in Exeter.

Entry requirements

Applicants for this studentship must have obtained, or be about to obtain, a First or Upper Second-Class UK Honors degree, or the equivalent qualifications gained outside the UK, in an appropriate area of computer science, telecommunication engineering, information engineering, or mathematics-related majors.

If English is not your first language you will need to meet the English language requirements and provide proof of proficiency. Click here for more information

How to apply

To apply, please click the ‘Apply Now’ button above. In the application process you will be asked to upload several documents

•             CV

•             Letter of application (outlining your academic interests, prior research experience and reasons for wishing to undertake the project).

•             Transcript(s) giving full details of subjects studied and grades/marks obtained (this should be an interim transcript if you are still studying)

•             Names of two referees familiar with your academic work. You are not required to obtain references yourself. We will request references directly from your referees if you are shortlisted.

•             If you are not a national of a majority English-speaking country you will need to submit evidence of your proficiency in English.

The closing date for applications is midnight on 9th March 2026.  Interviews will be held virtually/in-person on the University of Exeter Streatham in the week commencing 16th March 2026.

All application documents must be submitted in English. Certified translated copies of academic qualifications must also be provided.

Summary

Application deadline: 30th April 2026
Number of awards:1
Value: UK tuition fees and an annual tax-free stipend of at least £21,805 per year
Duration of award: per year
Contact: PGR Admissions Team pgrapplicants@exeter.ac.uk