PhD Studentship - AI-Driven Fault Diagnosis for Wind Turbine Generators (ABDIJALEBIS _U27EMPSFP1)
ExternalPrepare for this interview
EliteAI-generated questions, company research, and talking points tailored to this role
About the role
Primary supervisor - Dr Abdi Jalebi Salman Reliability is critical to the continued expansion of wind power, particularly for offshore installations, which already contribute around 10-15% of the UK's electricity and are central to achieving net-zero targets and ensuring the resilience of national grid infrastructure. Preventive maintenance enabled by condition monitoring systems (CMSs) plays a key role in improving turbine reliability and availability while reducing operational costs and the levelised cost of energy. However, the drivetrain, comprising the gearbox, generator, and power electronics, remains a major source of failures, accounting for roughly one third of incidents and nearly half of maintenance costs in offshore turbines. Early and accurate fault detection in this subsystem is therefore essential. Despite widespread deployment, existing CMS solutions are predominantly based on vibration measurements from accelerometers mounted on drivetrain components, and their performance remains limited. These systems often suffer from low fault detection rates, generate false alarms that reduce energy production, or fail to identify faults sufficiently early to avoid costly repairs. Moreover, they are largely ineffective at detecting electrical faults. The lack of commercially available CMS solutions based on electrical measurements is due to inherent complexity of interpreting electrical signatures of mechanical faults in real time. This creates a clear gap and opportunity for more advanced and integrated monitoring approaches. This project aims to address the identified gap by developing hybrid fault diagnosis methods that combine analytical approaches based on drivetrain physical properties with AI-driven data analysis techniques to enhance the accuracy and effectiveness of fault detection and classification. The work will involve analytical studies, computer simulations, and finite element (FE) analysis, alongside experimental development and validation. Entry requirements The minimum entry requirement is 2:1 in Electrical and Electronics Engineering, Mechanical Engineering, Physics. Mode of study: Full-time or part-time Start date: 1 st October 2026 Funding: This project is offered on a self-funded basis. It is open to applicants who are self-funded or who are in the process of securing external funding. A bench fee is payable in addition to the tuition fee, to cover the cost of specialist equipment and laboratory facilities required for the research. Applicants should contact the primary supervisor for details of the bench fee applicable to this project. If you are part of the UEA alumni community, you may be eligible for a tuition fee discount. For information on doctoral funding, visit our Postgraduate Student Loans page.
Your Match
How well this role fits your profile.
Company Intel
What employees say
Worked at University of East Anglia? Share your experience