702 web-programmer-developer "https:" "https:" "https:" "https:" "https:" "https:" "University of Kent" positions at University of Sheffield
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project will develop a physics-informed digital twin for offshore wind foundations, combining ultrasonic guided wave monitoring, high-fidelity finite element simulations, Bayesian inference, and machine
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bridges and wind turbines respond to traffic, wind, waves, temperature, and other factors. In doing so, they help engineers monitor condition, anticipate problems, and proactively plan maintenance, and are
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evidence-based, climate-aware tools to plan infrastructure improvements. With limited budgets and the challenge of reducing emissions while adapting to climate change, it must prioritise investments
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capture technologies. In this project, you will: Develop a 3D Digital Model: Create an advanced computational model of high-pressure mechanical seals. Apply Computational Fluid Dynamics (CFD): Simulate gas
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-dispersive X-ray spectroscopy (EDX), which will generate enhanced chemical sensitivity and improved precision for investigating atomically thin films. We will develop a new and cheap methodology that can
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Development and Validation of a Multimodal Wearable Headband for Objective Bruxism Monitoring Using Machine Learning (S3.5-DEN-Boissonade)
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to changing conditions, and recover quickly, ensuring continuity of energy supply even under stress. This PhD project aims to address this critical challenge by developing a flexible and transferable resilience
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computationally prohibitive for full-scale reactor design. To bridge this gap, we are developing a low-cost Coarse-Grid CFD (CG-CFD) approach. This methodology combines the industrial efficiency of sub-channel
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Method. The basic idea is that the direction into which stiffness recovery under compression takes place is altered for a crack that develops under compression. Only one layer of elements per ply might be
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Developing a Mechanistic and Predictive 'Source-to-Health' Model for Airborne Engineered Wear Particle Toxicity (S3.5-SMP-Johnston)