11 combinatorial-optimization Postdoctoral positions at Aalborg University in Denmark
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At the Faculty of Engineering and Science, AAU Energy, a position as Postdoc in inHealth-Aware Optimization of Lithium-Ion Battery Charging is available from 1stof March 2026 (or as soon as possible
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At the Faculty of Engineering and Science, AAU Energy, a position as Postdoc in Battery System Optimization and Management is open for appointment from January 1, 2026, or soon hereafter
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. The duration of the position is 36 months. Your work tasks The work will especially contribute to projects in the area of modelling and optimization of reactors and systems for Power-to-X, fuel cell systems, and
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Power Electronics and Power Electronic Control, Reliability and System Optimization research groups. They are also in relation to AAU Energy's Mission on Digital Transformation and AI as well as Energy
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characterisation Conduct advanced postprocessing of battery EIS data (e.g., using distribution of relaxation times) Collaboratewiththerestoftheteamacrossprojectsonmodelling,optimization,and electrochemistry
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At the Faculty of Engineering and Science, Department of Materials and Production one or more Postdoc positions in the area of Optimization and Algorithm Design are open for appointment from April
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at the intersection of AI, RF, and wireless communication. Your main tasks include developing machine-learning methods for wireless interference detection, mitigation, edge intelligence, and applying AI to optimize RF
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side, you will investigate and develop data-driven methods for optimal and nonlinear control with a particular focus on dual control and on approaches to measurement scheduling and active sensing
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, large datasets, physical modeling, optimization, and safety and security are key factors. Our main showcase is the water sector, where we have designed and built a specialized laboratory focused on
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to join our team working on next-generation speech enhancement technologies. The project explores innovative approaches that move beyond traditional reference-based methods, leveraging optimal transport and