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fog nets, aiming to create new designs that optimize water yield. The project aspires to elucidate the physics governing droplet impact and wetting on fibrous networks in order to enhance fog net
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to optimize performance and safety. Integration of Human Factors in Autonomous Systems: Examining how human capabilities and limitations impact autonomous system design and operation. This can include research
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electricity markets designed to optimize cross-border power exchanges by explicitly incorporating physical transmission constraints into the market-clearing process. Unlike traditional market coupling
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brain and cognition through the entire lifespan, as well as how brain and cognition can be optimized. LCBC is an active multidisciplinary research center, with a staff of about 25 full-time positions
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experiments, including setup of detectors, electronics, and data acquisition systems. Experience analyzing complex experimental and Monte-Carlo simulated data to optimize the analysis of raw detector data in
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-hjem , discounted public transport to and from work as an employee in Norway, you will have access to an optimal health service, as well as good pensions, generous maternity/paternity leave, and a
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and research, in and outside academia. About the project The proposed research aims to optimize the design of timber building systems with innovative connections and achieve an extended service-life
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energy planning, optimizing wind, wave, and solar integration, especially during peak production seasons. Qualifications and personal qualities Applicants must hold a master's degree or equivalent
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underground conditions. Apply machine learning and AI techniques to enhance model accuracy and optimize design parameters. Contribute to the development of a comprehensive, AI-based design methodology for LUS
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criteria Demonstrated knowledge and experience in electrical system modeling and analysis, applied control, power electronic systems, optimization techniques, and/or machine learning. Experience with