The quest for seafloor macrolitter: a critical review of background knowledge, current methods and future prospects

Autor(en): Canals, Miquel
Pham, Christopher K.
Bergmann, Melanie
Gutow, Lars
Hanke, Georg
van Sebille, Erik
Angiolillo, Michela
Buhl-Mortensen, Lene
Cau, Alessando
Ioakeimidis, Christos
Kammann, Ulrike
Lundsten, Lonny
Papatheodorou, George
Purser, Autun
Sanchez-Vidal, Anna
Schulz, Marcus
Vinci, Matteo
Chiba, Sanae
Galgani, Francois
Langenkamper, Daniel
Moller, Tiia
Nattkemper, Tim W.
Ruiz, Marta
Suikkanen, Sanna
Woodall, Lucy
Fakiris, Elias
Jack, Maria Eugenia Molina
Giorgetti, Alessandra
Stichwörter: data harmonisation; deep sea; Environmental Sciences; Environmental Sciences & Ecology; marine litter; Meteorology & Atmospheric Sciences; modelling; seafloor; trawl surveys; visual surveys
Erscheinungsdatum: 2021
Herausgeber: IOP PUBLISHING LTD
Journal: ENVIRONMENTAL RESEARCH LETTERS
Volumen: 16
Ausgabe: 2
Zusammenfassung: 
The seafloor covers some 70% of the Earth's surface and has been recognised as a major sink for marine litter. Still, litter on the seafloor is the least investigated fraction of marine litter, which is not surprising as most of it lies in the deep sea, i.e. the least explored ecosystem. Although marine litter is considered a major threat for the oceans, monitoring frameworks are still being set up. This paper reviews current knowledge and methods, identifies existing needs, and points to future developments that are required to address the estimation of seafloor macrolitter. It provides background knowledge and conveys the views and thoughts of scientific experts on seafloor marine litter offering a review of monitoring and ocean modelling techniques. Knowledge gaps that need to be tackled, data needs for modelling, and data comparability and harmonisation are also discussed. In addition, it shows how research on seafloor macrolitter can inform international protection and conservation frameworks to prioritise efforts and measures against marine litter and its deleterious impacts.
ISSN: 17489326
DOI: 10.1088/1748-9326/abc6d4

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