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in complex engineer-to-order shipbuilding. Realizing the full potential of AI is both a technical and an integrative challenge. It requires combining what AI excels at, such as pattern recognition and
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contributions impact on how changes are understood and considered in landscape planning and decision-making. Within this framework the PhD-project should address one or a combination of the following perspectives
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circular, nature-based method for removing PFAS from soil, water, and food systems. We combine three innovative steps: Phytoremediation: Plants absorb soluble PFAS from contaminated soil. Pyrolysis
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-supervisors. The interdisciplinary supervision team combines expertise in (cryosphere) remote sensing, Arctic vegetation and herbivore ecology, and snow and permafrost science. The exact role distribution
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. The University of Agder combines the unique warmth and charm of Southern Norway with first-class scientific, technological and artistic expertise. Would you like to work with us to create better solutions to our
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into reliable information about structural and aerodynamic behaviour remains a challenge. The PhD will develop data-driven methods that combine measurements, physics-based models, and machine learning to extract
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approaches for identifying, modelling, and integrating uncertainty factors originating from IoE devices and system dynamics, combining data-driven learning with knowledge-based modelling techniques
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into reliable information about structural and aerodynamic behaviour remains a challenge. The PhD will develop data-driven methods that combine measurements, physics-based models, and machine learning to extract
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uncertainty factors originating from IoE devices and system dynamics, combining data-driven learning with knowledge-based modelling techniques. The developed methods will be evaluated in representative energy
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) Partnership (DUT Call 2024), the UrbanBREATH is an interdisciplinary project focused on measuring, modeling and mitigating air pollution in urban environments. We combine low-cost sensing, community