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We have 9 Energy Technologies (ai) PhD Projects, Programmes & Scholarships

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Energy Technologies (ai) PhD Projects, Programmes & Scholarships

We have 9 Energy Technologies (ai) PhD Projects, Programmes & Scholarships

Generative AI for the Next Generation of Manufacturing Automation Systems PhD

The application of emerging technologies such as artificial intelligence, digital twin, blockchain, and the internet of things are growing fast, and their integration with complex manufacturing systems enables effective digitalisation and automation transition. Read more

PhD in Thermal route optimization of predictive controls to improve BEV efficiency using AI & ML

Route information has significantly improved the optimization of hybrid vehicle propulsion by determining the most efficient power source for different parts of a journey. Read more

PhD in multi-energy systems analysis with Artificial Intelligence models

Background. The UK and the World are rapidly shifting towards multi-energy systems, such as districts and industrial parks with large amounts of renewable electricity, renewable heating & cooling, clean fuels (e.g. Read more

Developing Dynamic Line Rating Determination of Transmission Lines Using Artificial Intelligence Techniques

Transmission lines play a crucial role in ensuring the reliable and efficient transfer of electricity over long distances. However, their static rating limits often lead to underutilization or the risk of overloading during peak demands or under dynamic weather conditions. Read more

Advanced control of inverter-based resources to realize stable smart grids

Summary. The smart grid concept is paving the way towards efficient, reliable, and sustainable power systems. Inverter-based resources are among the most crucial components of the smart grid, interfacing renewable energy sources, storage devices, and electronic loads. Read more

Data centric modelling of adhesive wear

Supervisory Team:  Robert Wood, Jo Grundy and Dave Stewart (RRSL).  Project description. The occurrence of adhesive wear between sliding surfaces can cause high friction, vibration, material transfer between surfaces and even seizure of components. Read more
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