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categories for a better capability of managing the uncertainty related to system complexity and data availability to achieve more accurate RUL estimations The student will have the opportunity to work with
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at the University of Lund. It is funded under the auspices of the Horizon Europe Marie Skłodowska‑Curie Doctoral Networks. The Principal Investigator at Birmingham University is Prof Chris Thornhill (School of Law
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at the University of Lund. It is funded under the auspices of the Horizon Europe Marie Skłodowska‑Curie Doctoral Networks. The Principal Investigator at Birmingham University is Prof Chris Thornhill (Law). This post
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complexity of tactics, techniques, and procedures that are supported, as well as justification for actions taken. This project aims to advance the state of AI-powered red agents by developing an adaptive
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modelling capabilities for the prediction of energy extraction efficiency, especially focusing on improving the understanding and prediction of the complex flow phenomena, including buoyancy effects in AGS
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-processing crucial. However, video restoration and enhancement are complex due to information loss and the lack of ground truth data. This project addresses these issues innovatively. We propose using prior
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of representative failure models for gear failures causes difficulties in their useful lifetime prediction. Critical operational parameters such as loading, speed and lubrication affect the physics of gear meshing