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In this project, different optimal control problems will be considered under a contagious financial and insurance market with regime switching and risk uncertainty. In the first chapter, an optimal
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into practical performance solutions. The “Travel, sleep and fatigue optimal management for long-haul performance” PhD programme will focus on mitigating circadian and travel fatigue challenges associated with
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DigiTUTO is a forward-thinking PhD aimed at leveraging digital twin (DT) technology to transform urban transportation systems. The project will initially focus on the West Midlands, a region with a diverse and complex urban environment, providing a place-based approach to improving mobility,...
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conditions, deriving the optimal link to be used at each layer at every time is a challenging large scale scheduling problem. The successful candidate will work closely with expert researchers and contribute
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PhD Studentship - Analysis and Optimization of Wound Field Synchronous Machine e-NVH for Vehicle Traction Applications This exciting opportunity is based within the PEMC Research Group at Faculty
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its environment and respond optimally in dynamic operating conditions. Meanwhile, you will also develop intelligent control strategies that minimise energy use while ensuring punctuality and safety
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techniques. This research proposes a novel framework that integrates Machine Learning (ML) for structural health monitoring (SHM) and design optimization of CFDST wind turbine towers. The study will focus
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multiple objectives in real-time. The complexity of coordinating these distributed systems while ensuring stability and optimal performance presents a significant technical barrier that must be overcome
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and embrittlement by precisely optimizing additive manufacturing parameters. By combining experimental investigations, advanced microstructural analyses, and numerical simulations, a novel manufacturing
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store energy by exploiting quantum phenomena (for example, by exploiting entanglement) in order to improve the performance of the device. There are still many questions surrounding the optimal