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This PhD studentship is an exciting, fully funded opportunity to work as part of an internationally renowned scientific and engineering team to develop a new innovative technology to meet and overcome the serious challenges of increasing dissolved organic carbon (DOC) in the UK’s drinking water...
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Engineering research group, we are developing a digital twin of a proof-of-concept power plant, so that design can be carried out iteratively, considering the plant as a whole system. A key requirement for
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Award summary 100% Home fees covered, and a minimum tax-free annual living allowance of £19,237 (2024/25 UKRI rate). Overview Soft robotics concerns the design and development of compliant
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analysis and uncertainty quantification. The output would not only provide a tool for optioneering, but would also help prioritise new avenues for research and serve as a testbed for the design of tritium
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capabilities beyond basic flight. This project aims to advance the real-world applicability of FWMAVs by investigating new bioinspired design and flight approaches. Focuses may include: endurance and payload
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assess the impact of hybrid electric propulsion and system architectures on the design and overall performance of future zero emission aircraft. The research will combine elements of electric power
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modelling with realistic perturbations dynamics become even more complex. Modern trajectory design aims to identify and exploit features in the natural dynamics to design trajectories meeting mission
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machine-learning techniques in ST studies. Our approach introduces two innovations: developing sparse Bayesian learning algorithms for efficient small dataset analysis and designing a simulator for
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. The primary focus of track design is often on isolating ground vibration rather than addressing rolling noise, interior noise within railway vehicles or wheel/rail wear issues. In practice, there is often a
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evaluation methods to serve as the Evaluation Researcher for the Fire Weather Testbed (FWT) within GSL. The Evaluation Researcher will design and implement experiments and evaluations in the FWT of new and