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Field
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– i.e., the light, volume and pitch changes from which we extract meaning – has increased continuously since we have been producing it. Our brains work by generating and testing predictions – but younger
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A funded PhD position is available on a project funded by the Leverhulme Trust. Description below: The density of information content in screen media – i.e., the light, volume and pitch changes from
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mass thermal management systems. Eligibility This studentship project is funded by UKRI. Due to restrictions on international student recruitment to UKRI grants, only applications from applicants who
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. However, there are significant challenges to a broad proof of concept that would be addressed in this PhD project. Laser beam sources, process development and control to enable better control of mass
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of laboratories for synthesis, electrochemistry and battery scale-up, which boast cutting-edge facilities for accelerating material developments at laboratory scale into pilot line validation. School
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-mechanical phase-field model incorporating hydrogen diffusion, mechanical degradation, and fracture evolution. - Employ physics-informed neural networks (PINNs) to infer hidden fields and accelerate
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research will contribute to the accelerated discovery and optimisation of next-generation materials, with the flexibility to focus on applications such as advanced battery cathodes, nuclear waste
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, supercapacitors, and hybrids) for volume, cost, reliability, safety, and lifecycle. Analysing converter topologies and control systems suitable for connecting storage to the HVDC bus, with a focus on MMC-based
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formulation. These models will enable rapid scenario testing, predictive analysis, and early decision-making, thereby reducing experimental workload and accelerating development timelines. Life cycle assessment
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! Where are they hiding? It turns out that binary systems containing high mass stars (and so those which go on to produce black holes), evolve through a number of stages; in one such stage there is a black