93 postdoc-in-thermal-network-of-the-physical-building PhD positions at University of Nottingham
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Thermally Sprayed Coatings for ablation and high heat flux conditions Background UK applicants are invited to undertake a 3-4 year, fully-funded PhD studentship (fees and enhanced stipend) within
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oxidation, particulate erosion, thermal shock, and phase instability, significantly limiting their performance and service life. This PhD project will focus on the design and development of UHT ceramics in
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-time 3D mapping on compact, low-power devices. The project will combine optical sensing, event-based vision, and radio-frequency (RF) data with advanced AI to build robust mapping systems for challenging
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Supervised by: Rasa Remenyte-Prescott (Faculty of Engineering, Resilience Engineering Research Group) Aim: Develop a comprehensive railway network delay propagation model capable of addressing a
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experience and expanding your research network. Motivation To achieve Net Zero targets, the transport sector needs high power density electric motors (see ATI roadmap link and APC roadmap link ). Current
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characterisation and AI‑assisted modelling. Working within the Composites Research Group, you will develop a digital twin of the PFA cure process, combining mechanistic modelling with neural‑network‑based prediction
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technologies and AI for developing community-led conservation strategies of heritage buildings at risk. This exciting opportunity is based within the Architecture, Culture and Tectonics Research Group
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promising sustainable alternatives to conventional epoxy systems. Their excellent thermal stability and favourable fire, smoke and toxicity performance make them strong candidates for safety‑critical
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physical activity has on health, for example the impact running has on joints, enabling them to make an evidence-based decision on their participation. Further information: Applicants should have at least a
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cryogenic modelling, two-phase CFD, and AI-based reduced-order models to accelerate modelling capability in net‑zero aerospace technologies. Motivation Hydrogen research has accelerated to address the need