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This PhD scholarship is offered by the EPSRC CDT in Offshore Wind Energy Sustainability and Resilience; a partnership between the Universities of Durham, Hull, Loughborough and Sheffield. The project is part of a Research Cluster focusing on Predicting Offshore Wind wake interactions for Energy and enviRonment (POWER). The successful applicant will undertake six-month of training with the rest of the CDT cohort at the University of Hull before continuing their PhD research at the University of Sheffield.
Large scale wind farms often consist of hundreds of wind turbines with diameters going up to hundreds of metres. The wakes generated by these turbines interact with each other. The accurate modelling of the interaction between the wakes can have significant impact on our ability to optimise the operations of large wind farms and maximise their energy output.
Models of different levels of fidelity are developed in parallel to model wake-wake interactions. Novel semi-analytical wake models provide efficient estimate of the key mean features. High-fidelity simulations such as large eddy simulations (LES) can provide highly resolved three-dimensional turbulence, which are often used to understand the underlying physicsof the flows and to provide detailed databases for the calibration of engineering models.
Some recent research has focused on controlling wind farms for power generation optimisation or power tracking, as wind energy gradually becomes main source of electric power. For example, Bastankhah and Porte-Agel show that yaw angle control can increase power by 17%. However, the control algorithms often introduce additional unsteady modulation to the wakes. For example, it was found by Munters and Meyers that the optimal yaw and induction control strongly oscillates in time. To capture accurately the impact of the unsteadiness is the new challenge for large eddy simulations as well as other modelling approaches, which has not been fully accounted for. For example, Lin, M. and Porte-Agel, F. shows that the usual ADM and ALM models perform poorly in simulations with active yaw control. More generally, as stated in the recent review by Shapiro et.al. on the topic: “Computational approaches that enable higher-fidelity representations under the rapidly changing behaviour of a controlled wind farm remain an ongoing challenge”.
The scientific question behind these new challenges is how to model or parametrise the non-equilibrium features in the wakes (which in this case are introduced or amplified by the controls). This question has long been at the core of wind farm modelling and is one of the main questions being addressed by this cluster. This project intends to focus on a data driven approach, taking advantage of the availability of wind tunnel as well as field data that have been accumulated rapidly. The aim is to synthesise data assimilation (DA) techniques with LES to develop a modelling approach that will improve the understanding and prediction of wake-wake interactions. The application of data assimilation in the context of LES has received only limited research; many questions remain open. The project is composed of several inter-connected objectives.
Methodology
Outline the different methodologies that the project will adopt and develop. Be as specific as possible and provide references for further reading.
The project will involve:
Training & Skills
You will benefit from a taught programme, giving you a broad understanding of the breadth and depth of current and emerging offshore wind sector needs. This begins with an intensive six-month programme at the University of Hull for the new student intake, drawing on the expertise and facilities of all four academic partners. It is supplemented by Continuing Professional Development (CPD), which is embedded throughout your 4-year research scholarship.
In addition, the successful candidate will also develop skills in:
Entry Requirements
If you have received 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 the international equivalents) in engineering, mathematics or statistics, we would like to hear from you.
If your first language is not English, or you require Tier 4 student visa to study, you will be required to provide evidence of your English language proficiency level that meets the requirements of the Aura CDT’s academic partners. This course requires academic IELTS 7.0 overall, with no less than 6.0 in each skill.
Guaranteed interview scheme
The CDT is committed to generating a diverse and inclusive training programme and is looking to attract applicants from all backgrounds. We offer a Guaranteed Interview Scheme for home fee status candidates who identify as Black or Black mixed or Asian or Asian mixed if they meet the programme entry requirements. This positive action is to support recruitment of these under-represented ethnic groups to our programme and is an opt in process. Find out more.
How to apply
Applications to the EPSRC CDT in Offshore Wind Energy Sustainability and Resilience are made to the University where the PhD project is based. You will find full instructions and links on the CDT website.
The Offshore Wind CDT is funded by EPSRC, allowing us to provide scholarships for Home students that cover fees plus a stipend set at the UKRI nationally agreed rates, circa £19,795 per annum at 2025/26 rates (subject to progress). In addition, a number of scholarships will be made available for International students.
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