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Offer Description Understand how large offshore wind farms reshape atmospheric and ocean processes, and help advance sustainable offshore energy through observations, high-resolution modelling and coupled
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of oyster reefs in the North Sea. In 2027 the real size structures will be placed on the seabed by offshore vessels. Before this, you will calculate their stability and conduct physical model tests
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Sea maritime infrastructure through AI-enabled, human-centred, and data-driven cyber-physical threat intelligence. Specifically, NEPTARGOS will employ an interdisciplinary approach, using insights from
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multifidelity modelling, and goal-oriented numerical error estimation. The resulting surrogate model will map uncertain meta-ocean conditions to key quantities of interest for OFPV performance and sustainability
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Postdoc position in Ocean Nanoplastics Faculty: Faculty of Geosciences Department: Department of Earth Sciences Hours per week: 36 to 40 Application deadline: 13 November 2025 Apply now The
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the present will create the required and desired resilient and dynamic multifunctional coastal landscapes of the future. SOURCE will deliver the scientific knowledge, models and design tools to develop and
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, direct air carbon capture and storage, biogenic carbon capture and storage, biochar, enhanced weathering, direct ocean capture, all of which have different profiles of resource use, associated emissions
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expanding renewable energy systems. The North Sea has hundreds of depleted and abandoned gas fields that are potential storage sites. Robust screening procedures are necessary to select the most suitable
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. Job description The geological storage of hydrogen is a promising alternative for large-scale energy storage in support of expanding renewable energy systems. The North Sea has hundreds of depleted and
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first proof of concept related to anomaly detection at sea already exists); implement explainable AI and uncertainty-aware models to ensure transparency and trust in hyperspectral-based decision-making