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Next generation bearings for reliable power transmission in large wind turbines


   Department of Mechanical Engineering

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  Prof R Dwyer-Joyce, Prof H Long, Dr Gary Nicholas  No more applications being accepted  Funded PhD Project (Students Worldwide)

About the Project

This PhD scholarship is offered by the Aura Centre for Doctoral Training in Offshore Wind Energy and the Environment; a partnership between the Universities of Durham, Hull, Newcastle and Sheffield. The successful applicant will undertake a PG-Dip training year at the University of Hull before completing their PhD research at the University of Sheffield.

For more information visit www.auracdt.hull.ac.uk. Or if you have a direct question about the project, please email [Email Address Removed] and we will forward the query to the relevant supervisor. Please do not contact the project supervisors directly.

Almost all the bearings in wind turbine transmissions are rolling element type. That includes slow and high-speed shafts, gearbox, blade pitch bearings, and the main bearing that supports the rotor. Wind loading is highly variable and so bearings can operate at changeable speed, high and very variable loading. This is a bad place for bearings and there are lots of wear and fatigue failures – design life is 20 years but bearings rarely last that long. As machines have got larger, this state has worsened. Manufacturing very large bearings (up to 5m diameter) is expensive and repairing or replacing them very difficult. For example, to replace the main bearing requires the removal of the whole rotor and blades – imagine doing that at sea from a ship mounted crane.

In other large scale machines (e.g. hydro-electric power stations, ships propeller bearing) sliding type or ‘hydrodynamic’ bearings are much more common (e.g. read about Waukesha’s Maxalign bearing).

There is increasing interest from industry to come up with new designs for these kinds of bearing for wind turbine applications. There is believed to be a prototype turbine in China that has operated successfully for a year. Other bearing companies are interested and embarking on similar technologies; see the cute little video, which nicely explains their concepts (https://www.daidometal.com/20220928-2/)

Some of the challenges will be around finding bearing design, materials, and lubricants that will withstand the high loads and start-stop nature of operation. This project is about supporting those developments. Some questions that will need to be addressed: will conventional bearing facing materials survive the extreme conditions, how will lubricant be supplied to the bearing faces in such a large assembly, will greases be adequate, the effect of salt-water contamination, and how will the oil film formation and performance be monitored?

There will be four approaches to this project and these will adapt as the project progresses and to suit the student’s needs and interests.

Firstly, there will be an experimental build part, designing and building lab scale test rigs to test out small bearings. This will be supported by technicians with rig building experience, and fellow PhD students who have built similar rigs.

Secondly, there will be a sensor design part. Here you will be building sensor systems to measure operating parameters of the bearing (load and speed, and temperature; but also new kinds of ultrasonic sensors to measure the oil film thickness or deflection/wear).

Thirdly, you will be modelling bearing operation. Either using standard design codes, or by building your own Python or Matlab models of how oil films form in bearings. We have access to wind loading data and so can use this to see how the bearings would perfmon under realistic conditions.

The fourth aspect is to bring these together, in the experimental testing of bearings and comparing with theoretical models.

You would be joining the Leonardo Centre for Tribology which is an active and friendly group. There are ~25 PhD students working on machine elements, tribology, lubrication, and sensor systems for wind, auto, rail and energy applications. The group has well equipped labs and its own office space for the PhD students.

Free Webinar

The University of Hull is running a webinar at 6pm on Tuesday 29 November to provide more information about the Aura CDT. The webinar will close with a Q&A giving you the opportunity to delve deeper into research opportunities, training provision and potential career paths. Book your place.

How to apply

Applications are via the University of Hull online portal; you must also download a supplementary application form from the Aura CDT website, complete and submit as part of the online application.

For more information about the Aura CDT including detailed instructions on how to apply, please visit the website: https://auracdt.hull.ac.uk/how-to-apply/

Eligibility

Research Council funding for postgraduate research has residence requirements. Our Aura CDT scholarships are available to Home (UK) Students. To be considered a Home student, and therefore eligible for a full award, a student must have no restrictions on how long they can stay in the UK and have been ordinarily resident in the UK for at least 3 years prior to the start of the scholarship (with some further constraint regarding residence for education). For full eligibility information, please refer to the EPSRC website. In addition, a number of Aura CDT Scholarships will be available to International Students across the projects offered by the partner institutions.


Funding Notes

The Aura CDT is funded by the EPSRC and NERC, allowing us to provide scholarships that cover fees plus a stipend set at the UKRI nationally agreed rates, circa £17,668 per annum at 2022/23 rates (subject to progress).
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