Sort by
Refine Your Search
-
Listed
-
Field
- Computer Science
- Engineering
- Economics
- Materials Science
- Biology
- Medical Sciences
- Chemistry
- Mathematics
- Arts and Literature
- Electrical Engineering
- Linguistics
- Psychology
- Business
- Education
- Philosophy
- Physics
- Science
- Humanities
- Law
- Earth Sciences
- Social Sciences
- Sports and Recreation
- 12 more »
- « less
-
, rule-based or fuzzy methods. View DetailsEmail EnquiryApply Online
-
tool modelling and experimental methods to investigate the effect of the CNC micro milling process on part quality, and map the digital thread of the micro milling process. The candidate will work
-
, advanced statistical methods and the potential to develop pioneering reconstruction and calibration techniques involving machine learning. The PhD will prepare equally well for a career in industry and
-
via traditional analytical methods extremely challenging. This project will apply pattern recognition and machine learning techniques to a large database of experimental data to reveal early-stage
-
to exploit approximate or computational solutions; however, this can be unsatisfactory in that it lacks in valuable physical insight. This insight is often crucial in changing partial mathematical solutions
-
will enable the advanced monitoring and computing techniques of power systems, as well as to create a resilient control and operation for both energy network and distributed energy sources. This PhD
-
methods to understand hearing device user preferences in more complex settings, including leveraging virtual reality (VR) to simulate diverse acoustic environments and hearing aid algorithms. VR offers
-
teaching programmes, which will include identifying learning objectives and selecting appropriate curricula, selecting teaching methods, resources and reading, designing and producing study material using
-
digital recruitment methods. Build and maintain relationships with key stakeholders Plan and deliver short-term projects in collaboration with colleagues across MARC Assist with the recruitment, training
-
Computational Fluid Dynamics modelling of free surface flows over packing materials in a CO2 absorber School of Mechanical, Aerospace and Civil Engineering PhD Research Project Self Funded Prof