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- Technical University of Denmark
- University of Luxembourg
- Cranfield University
- Delft University of Technology (TU Delft); yesterday published
- FUNDACIO INSTITU DE RECERCA EN ENERGIA DE CATALUNYA
- La Trobe University
- Ludwig-Maximilians-Universität München •
- Luleå University of Technology
- NTNU - Norwegian University of Science and Technology
- NTNU Norwegian University of Science and Technology
- Tallinn University of Technology
- Technical University of Denmark - DTU
- The University of Alabama
- University of Newcastle
- Wetsus - European centre of excellence for sustainable water technology
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Field
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smart grid services. To investigate these approaches, a consortium of 34 partners across 16 countries will develop solutions for various vehicle types (heavy-duty trucks with PV trailers, garbage trucks
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on turning high-quality (smart meter, grid, or weather) data into actionable insights and better-informed decisions through advanced data analytics. When this energy data is shared, it can be exploited by
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Systems, Smart Grids, Power Electronics and Control, or related discipline (upon PhD completion, will transition to Research Associate). In addition for Research Associate PhD awarded in field of Power
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technologies used in and connected to grids (e.g., distributed generation, storage, electric vehicles, heat pumps, smart energy management systems, etc.) and how to design grid tariffs that align grid and market
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systems and cyber-physical environments. The lab includes autonomous robots, ABB robots with interchangeable grippers, distributed control systems, and testbeds for smart grids and real-time simulations
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Wetsus - European centre of excellence for sustainable water technology | Netherlands | about 1 month ago
can be more predictable. A series of projects dedicated to inspection techniques, is being executed in the Smart Water Grids research theme. In the past, this has already led to multiple spinoff
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longer sustainable. This project pioneers a new paradigm: we design smart, low-power digital AI co-processors that learn and correct the imperfections of their analog counterparts in real-time. As a PhD