23 postdoctoral-laminate-composite-simulation PhD positions at Technical University of Denmark
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or passive components into organic substrates; has experiences in magnetic components design, optimization and integration; is familiar with the simulation tools such as Ansys (Maxwell, Q3D, Icepak), LTSpice
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qualifications include experience in one or more of the following areas: Indoor air quality measurements and analysis Synthesis and characterization of smart materials Numerical simulations (e.g., Computational
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linked data Sensors as part of Internet of Things (IoT) and integration of sensory information in simulation models as part of Digital Building Twins (DBT) during run-time Life cycle and sustainability
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. Responsibilities and qualifications Conduct original research on AWES flow environment, control systems, & simulation. Develop & validate AWES models for flight dynamics and energy harvesting efficiency. Participate
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company, where you’ll take wind farm design and simulation tools to the next level. By fusing cutting-edge physics-based modeling with rapid, data-driven engineering, you’ll develop innovative solutions
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resulting phenomena. Developing novel detection methods and innovative light sources. Developing state-of-the-art simulation methods for hybrid light-matter systems. Responsibilities and qualifications As a
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flow structures, as well as turbulence. Realistic evaluation of tethered aircraft response requires a stable aero-servo-elastic simulation tool of suitable fidelity. Transient wind events contribute
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the field of electrical engineering or physics. As an ideal candidate, you should also have one or more competences listed below: Experience in simulation, design, and layout of high-frequency integrated
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. Experience with simulation tools, including Isaac Gym, Isaac Sim, Aerial Gym. Experience with ROS, and especially real-life aerial robots. Experience with open-source tools for deep learning, computer vision
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following: Prior work with probabilistic deep learning, Bayesian inference, and uncertainty quantification in computer vision. Experience with simulation tools, including Isaac Gym, Isaac Sim, Aerial Gym