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fragmentation process. The steps include: Model Development: Develop a high-resolution numerical model based on the principles of thermodynamics, fluid dynamics, and ice nucleation physics. Input Parameters: Use
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physics, electrodynamics, statistical physics, and fluid dynamics). To succeed as a PhD student, you must be creative and devoted to work. You must also have good interpersonal skills, be resourceful, and
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simulating fluid networks and dynamic phenomena for assessing different solutions is a necessity The overall aim of this project is to improve the confidence in fuel system design process for ultra-efficient
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experience in numerical fluid dynamics is beneficial but not essential; determination, curiosity, and a willingness to learn are key attributes we value. Applicants with alternative qualifications, industry
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formation. Complementing these experimental efforts, Computational Fluid Dynamics (CFD) simulation will be employed to interpret CRUD build-up measurements, identify key phenomena influencing CRUD deposition
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; excellent skills in scientific programming and numerical / statistical analysis of simulated and observed data; basic knowledge of (geophysical) fluid dynamics; excellent writing and communication skills
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will use advanced unsteady computational fluid dynamic methods for the analysis of coupled intake/fan configurations in crosswind and high-incidence conditions. The research will adopt these methods
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with engineering, physics, mathematics, acoustics, fluids, electronics or instrumentation background. Prior experience in computational modelling is beneficial, but not mandatory. Similarly, experience
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of complex, dynamic flows relevant to closely coupled engine aircraft configurations. You’ll join a pioneering multidisciplinary team that values equity, diversity, and inclusion, gaining unique expertise in
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I offer projects broadly related to supernova explosions and the final stages in the lives of massive stars. Specific topics of interest include fluid dynamics processes in stellar explosions and