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have opportunity to spend time at the field site and with James Hutton Institute, as well as at CEH and UCL. For further information on the project, we will be hosting a ‘Prospective applicant webinar
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their operational reliability. The PhD student will combine mathematical models, in-house laboratory tests in a wind-wave-current flume (https://research.ncl.ac.uk/amh/ ) and numerical methodology to quantify
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inaccurate, and rain gauge networks, while reliable, are too sparse to capture highly localised storms. Reliable, high-resolution rainfall data is urgently needed to improve flood prediction, climate
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bespoke training. For further information on the project, we will be hosting a ‘Prospective applicant webinar’ at 2:00pm on the 26th of November. Link to the event can be found here: https
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the physics of both static and dynamic molecules. Further details: https://gtr.ukri.org/projects?ref=MR%2FX03660X%2F1 The student will gain expertise in nanofabrication, microscopy, and electrokinetic
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waters. This limitation prevents effective early warning, targeted sampling and timely mitigation of pollution events. Furthermore, while real time telemetry from water companies provides valuable data
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well as at CEH and UCL. For further information on the project, we will be hosting a ‘Prospective applicant webinar’ at 2:00pm on the 26th of November. Link to the event can be found here: https
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, industry, and society. For further information on the project, we will be hosting a ‘Prospective applicant webinar’ at 2:00pm on the 26th of November. Link to the event can be found here: https
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an interdisciplinary 'systems-of-systems' methodology. The research is structured around four critical activities: 1. Evidence Gathering: Collect both qualitative and quantitative data through a systematic review of
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evolve under and after mining. These observations will be complemented by physical experiments in the Ven Te Chow Hydrosystems Laboratory at UIUC, using 3D-printed riverbed models derived from field data