📣 Help Shape the Future of UKRI's Gateway to Research (GtR)

We're improving UKRI's Gateway to Research and are seeking your input! If you would be interested in being interviewed about the improvements we're making and to have your say about how we can make GtR more user-friendly, impactful, and effective for the Research and Innovation community, please email gateway@ukri.org.

Advancing process-based sargassum forecasts with Earth Observation and Machine Learning

Lead Research Organisation: University of Southampton
Department Name: Sch of Ocean and Earth Science

Abstract

Since 2011, free drifting (pelagic) sargassum has proliferated across the tropical Atlantic, consequential for coastal communities in the eastern Caribbean. Accumulation and decomposition on beaches threaten the vital tourism sector, yet sargassum may prove to be a 'golden tide', with commercial uses demonstrated in extraction of fuel, fertilizers, and pharmaceuticals. To optimize coastal management and commercial activities, it is imperative to develop accurate monitoring and forecasting of sargassum influxes. Earth Observation (EO) technologies bring step changes in monitoring and process-level understanding of sargassum. Forecasting open ocean drift of sargassum has extensively developed over the last decade, but two major challenges remain: (i) to incorporate near-shore processes into the offshore forecasts, to better predict the timing, location and quantities of major sargassum beaching; (ii) to better incorporate biological functionality into forecasts, accounting for differences between three dominant morphotypes of sargassum. These challenges will be tackled with the aid of machine learning.

Publications

10 25 50

Studentship Projects

Project Reference Relationship Related To Start End Student Name
NE/S007210/1 30/09/2019 29/09/2028
2923001 Studentship NE/S007210/1 22/09/2024 23/03/2028 Khalil Greene