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Searching for Oil Spills on Sea Surfaces

Descrizione del progetto

Rimodellare il panorama delle strategie per la pulizia delle fuoriuscite di petrolio

Le catastrofiche fuoriuscite di petrolio sono fenomeni imprevedibili che rappresentano una grave minaccia per l’ambiente e l’economia, ai quali risulta fondamentale rispondere in modo rapido ed efficace. La chiave per garantire una risposta di successo in tal senso risiede in operazioni quali individuazione precoce, contenimento e pulizia efficiente. Con il sostegno del programma di azioni Marie Skłodowska-Curie, il progetto SOSeas utilizzerà l’intelligenza artificiale e radar ad apertura sintetica all’avanguardia per rilevare lo spessore relativo del petrolio. Eliminando lo svantaggio della soggettività che caratterizza i rilievi aerei tradizionali, questa innovazione offre una valutazione precisa. Grazie alla sua capacità di acquisire immagini diurne e notturne in qualsiasi condizione atmosferica, la tecnologia del radar ad apertura sintetica è in grado di trasformare il monitoraggio delle fuoriuscite di petrolio. SOSeas sfrutta i dati liberi ricavati dai radar e algoritmi di intelligenza artificiale per fornire in modo efficiente informazioni essenziali ad assicurare una risposta efficace alle fuoriuscite di petrolio.

Obiettivo

"Oil spills rapidly spread on sea surfaces covering wide areas, assuming different appearances and thicknesses. The faster the actions to detect, stop, and contain the released oil from spreading, the higher the Oil Spill Response (OSR) success rate. Since, clean-up effectiveness is higher over thicker layers of oil - referred to as actionable oil - detecting these regions is crucial to enhance oil recovery efficiency, thus minimizing environmental and socio-economic impacts. The objective of ""Searching for Oil Spills on Sea Surfaces"" (SOSeas) project is to develop an artificial intelligence-based system to extract relative oil thicknesses by using multifrequency and multiresolution Synthetic Aperture Radars (SAR). Aerial reconnaissance is currently the most common method to estimate the extent, thickness, and volume of oil spills. However, it is subjective, biased and imprecise, demanding well-trained experts to visually estimate the extent of an oil slick and distinguish different oil appearances. Conversely, SAR are key-operational sensors for oil pollution monitoring, offering a synoptic view over affected sites, acquiring images during day and night regardless of weather conditions. The use of SAR data to detect the location and extent of oil pollution, as well as to discriminate it from false alarms has been well-researched. However, oil slicks characterization is under-explored, but a promising, new, and highly innovative research area, owing to the increasing availability of free SAR data, the development of powerful learning algorithms combined with high-performance computing advances. An automatic system well-trained to recognize patterns related to qualitative thickness ranging will indicate the actionable oil regions. These outputs can offer a less subjective and more precise oil pollution assessment than that of visual reconnaissance, improving situational awareness in time to guide trustworthy decision-making during clean-up operations.
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Coordinatore

UNIVERSITEIT TWENTE
Contribution nette de l'UE
€ 187 624,32
Indirizzo
DRIENERLOLAAN 5
7522 NB Enschede
Paesi Bassi

Mostra sulla mappa

Regione
Oost-Nederland Overijssel Twente
Tipo di attività
Higher or Secondary Education Establishments
Collegamenti
Costo totale
Nessun dato

Partner (1)