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, multidisciplinary PhD research projects across areas such as: Zero Emission Technologies. Ultra Efficient Aircraft, Propulsion, Aerodynamics, Structures and Systems. Aerospace Materials, Manufacturing, and Life Cycle
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Supervisors: Prof. Reinhard Maurer (Chemistry), Prof. Richard Beanland (Physics) Understanding how local atomic structure and long-range emergent magnetic and electronic properties in defective 2D
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Join our diverse and inclusive team to transform the future of aviation as part of the UK’s EPSRC Centre for Doctoral Training in Net Zero Aviation. Offering fully funded, multidisciplinary PhD
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of the work such as informing industry standards for aero engine operability. While working on this exciting research project, you will be provided with: A fully funded 4 year full-time PhD - £24,000
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Join our diverse and inclusive team to transform the future of aviation as part of the UK’s EPSRC Centre for Doctoral Training in Net Zero Aviation. Offering fully funded, multidisciplinary PhD
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supporting sustainable infrastructure and a circular economy. The core objective of this project is to engineer a self-adapting structure that adjusts to the prescribed loading conditions. This adaptation is
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to quantify and propagate uncertainty towards the estimation of future stages of the structure evolution. This project is supervised by Dr David Garcia Cava (School of Engineering, University of Edinburgh). It
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), they are not feasible at the scale of millions of predictions per day. The need to predict the transition state structure as input for quantum chemical barrier predictions adds further complications. Machine
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structural changes (frequently anisotropic) due to the absorption of lithium ions during electro-chemical cycling of batteries in operation. In turn, swollen battery cells are at risk of internal damage, thus
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infinite extent models and limited extend data based on trust over particular sets, and naturally create explainable AI structures which can further be analysed from a verification and validation perspective