Identificador persistente para citar o vincular este elemento: https://accedacris.ulpgc.es/jspui/handle/10553/156923
Título: Novel approach to large-scale monitoring of submerged aquatic vegetation: a nationwide example from Sweden
Autores/as: Huber, Silvia
Hansen, Lars B.
Nielsen, Lisbeth T.
Rasmussen, Mikkel L.
Sølvsteen, Jonas
Berglund, Johnny
Paz von Friesen, Carlos
Danbolt, Magnus
Envall, Mats
Infantes Oanes, Eduardo 
Moksnes, Per
Clasificación UNESCO: 251004 Botánica marina
3308 Ingeniería y tecnología del medio ambiente
Palabras clave: Ecological status
Environmental monitoring
Machine learning
Sentinel‐2
Fecha de publicación: 2021
Publicación seriada: Integrated environmental assessment and management 
Resumen: According to the EU Habitats directive, the Water Framework Directive, and the Marine Strategy Framework Directive, member states are required to map, monitor, and evaluate changes in quality and areal distribution of different marine habitats and biotopes to protect the marine environment more effectively. Submerged aquatic vegetation (SAV) is a key indicator of the ecological status of coastal ecosystems and is therefore widely used in reporting related to these directives. Environmental monitoring of the areal distribution of SAV is lacking in Sweden due to the challenges of large-scale monitoring using traditional small-scale methods. To address this gap, in 2020, we embarked on a project to combine Copernicus Sentinel-2 satellite imagery, novel machine learning (ML) techniques, and advanced data processing in a cloud-based web application that enables users to create up-to-date SAV classifications. At the same time, the approach was used to derive the first high-resolution SAV map for the entire coastline of Sweden, where an area of 1550 km2 was mapped as SAV. Quantitative evaluation of the accuracy of the classification using independent field data from three different regions along the Swedish coast demonstrated relative high accuracy within shallower areas, particularly where water transparency was high (average total accuracy per region 0.60–0.77). However, the classification missed large proportions of vegetation growing in deeper water (on average 31%–50%) and performed poorly in areas with fragmented or mixed vegetation and poor water quality, challenges that should be addressed in the development of the mapping methods towards integration into monitoring frameworks such as the EU directives. In this article, we present the results of the first satellite-derived SAV classification for the entire Swedish coast and show the implementation of a cloud-based SAV mapping application (prototype) developed within the frame of the project. Integr Environ Assess Manag 2022;18:909–920. © 2021 The Authors. Integrated Environmental Assessment and Management published by Wiley Periodicals LLC on behalf of Society of Environmental Toxicology & Chemistry (SETAC)
URI: https://accedacris.ulpgc.es/jspui/handle/10553/156923
ISSN: 1551-3777
DOI: 10.1002/ieam.4493
Fuente: Integrated environmental assessment and management [ISSN], v. 18, n. 4, p. 909-920
Colección:Artículos
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