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moments and use of rudder for course keeping. The applicant must have a strong background in marine hydrodynamics or applied mathematics, as the study will involve mathematical modelling and taking
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research scientists, public authorities and industries. Your immediate leader is Prof. Francesco Cherubini. Duties of the position Process-based modelling of hydrogen-based systems, coupled with electricity
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, and employ innovative design approaches and modelling techniques such as optimization algorithms. Specifically, your study will involve: Thermal Insulation Behaviour: The research will model how thermal
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of Science and Technology (NTNU) for general criteria for the position. Preferred selection criteria Work and/or research experience in the following areas: methods and models related to power system
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(wind) data. The PhD position entails a combination of theoretical and practical developments, and the candidate will work with simulations, programming, and data processing. The methodologies applied by
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interest in exploring this topic beyond the state-of-the-art. The relevant candidate must thus be interested and capable in physical modelling of marine hydrodynamic problems. The relevant candidate also has
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under the “Cryptographic elements of trustworthy AI” project. The main research objectives for the project are the following: Analyze security of Machine Learning (ML) models against data modifications
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the reversibility of their phase transformations. In this project, the PhD Candidate will be responsible for conducting experimental studies into the basic mechanisms of alloy-anode materials using model electrode
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methods may include physical models, multivariable analysis, self-diagnosis, and AI algorithms. Given the importance of long operating times for underwater sensors, energy-efficient processing is central to
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other PhD projects within SFI Smart Ocean. These methods may include physical models, multivariable analysis, self-diagnosis, and AI algorithms. Given the importance of long operating times for underwater