13 bayesian-object PhD positions at Delft University of Technology (TU Delft) in Netherlands
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modelling approach, and dynamic Bayesian Networks would be advantageous. Willingness to conduct research in a multi-national project team. Funding requirements: You cannot have resided in The Netherlands in
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for a longer period. An additional design objective is to enable automated repair and remanufacturing to increase the economic viability of these strategies. Your research will investigate how product
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environment perception in autonomous driving by integrating acoustics. Possible research directions include the use of audio-visual foundation models, audio-driven sensor fusion for object detection, cross
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—ranging from the mechanics of materials under climate change to full-scale testing and modelling—align closely with the MEDAS objectives. As part of this department, you will benefit from an inclusive
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for personnel require alternative solutions, such as moving rolling stock maintenance to daytime on days or periods with less transport demand. The objective of this PhD project is to develop and demonstrate a
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to explore how governments balance economic development objectives with adaptation to accelerating physical climate risks, as households-voters decide where to live given their preferences for public
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. This involves dynamic engagement like walking, observing, and handling objects. The relationship between perceptual experiences and the dynamic structures of the multi-sensorial information generated by active
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superposition and entanglement to “large” objects that we usually think of as classical particles. This is exactly what you will do at TU Delft. As a PhD student in our teams, you will investigate how
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theoretical modeling, numerical simulation, and experimental validation. Key objectives can include: Developing theoretical and computational models for friction-induced damping in joints and interfaces
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the material consumption and environmental impact of energy generation. This PhD project is part of the MSCA Doctoral Network AWETRAIN (Airborne Wind Energy TRAining for Industrialization Network). Its objective