Seabed morphology and bed shear stress predict temperate reef habitats in a high energy marine region

Allbwn ymchwil: Cyfraniad at gyfnodolynErthygladolygiad gan gymheiriaid

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Seabed morphology and bed shear stress predict temperate reef habitats in a high energy marine region. / Jackson-Bue, Tim; Williams, Gareth; Whitton, Timothy et al.
Yn: Estuarine, Coastal and Shelf Science, Cyfrol 274, 107934, 05.09.2022.

Allbwn ymchwil: Cyfraniad at gyfnodolynErthygladolygiad gan gymheiriaid

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APA

Jackson-Bue, T., Williams, G., Whitton, T., Roberts, M., Goward Brown, A., Amir, H., King, J., Powell, B., Rowlands, S., Llewelyn Jones, G., & Davies, A. (2022). Seabed morphology and bed shear stress predict temperate reef habitats in a high energy marine region. Estuarine, Coastal and Shelf Science, 274, Erthygl 107934. https://doi.org/10.1016/j.ecss.2022.107934

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MLA

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Jackson-Bue T, Williams G, Whitton T, Roberts M, Goward Brown A, Amir H et al. Seabed morphology and bed shear stress predict temperate reef habitats in a high energy marine region. Estuarine, Coastal and Shelf Science. 2022 Medi 5;274:107934. Epub 2022 Meh 15. doi: 10.1016/j.ecss.2022.107934

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RIS

TY - JOUR

T1 - Seabed morphology and bed shear stress predict temperate reef habitats in a high energy marine region

AU - Jackson-Bue, Tim

AU - Williams, Gareth

AU - Whitton, Timothy

AU - Roberts, Michael

AU - Goward Brown, Alice

AU - Amir, Hana

AU - King, Jonathan

AU - Powell, Ben

AU - Rowlands, Steven

AU - Llewelyn Jones, Gerallt

AU - Davies, Andrew

PY - 2022/9/5

Y1 - 2022/9/5

N2 - High energy marine regions host ecologically important habitats like temperate reefs, but are less anthropogenically developed and understudied compared to lower energy waters. In the marine environment direct habitat observation is limited to small spatial scales, and high energy waters present additional logistical challenges and constraints. Semi-automated predictive habitat mapping is a cost-effective tool to map benthic habitats across large extents, but performance is context specific. High resolution environmental data used for predictive mapping are often limited to bathymetry, acoustic backscatter and their derivatives. However, hydrodynamic energy at the seabed is a critical habitat structuring factor and likely an important, yet rarely incorporated, predictor of habitat composition and spatial patterning. Here, we used a machine learning classification approach to map temperate reef substrate and biogenic reef habitat in a tidal energy development area, incorporating bathymetric derivatives at multiple scales and simulated tidally induced seabed shear stress. We mapped reef substrate (four classes: sediment (not reef), stony reef (low resemblance), stony reef (medium – high resemblance) and bedrock reef) with overall balanced accuracy of 71.7%. Our model to predict potential biogenic Sabellaria spinulosa reef performed less well with an overall balanced accuracy of 63.4%. Despite low performance metrics for the target class of potential reef in this model, it still provided insight into the importance of different environmental variables for mapping S. spinulosa biogenic reef habitat. Tidally induced mean bed shear stress was one of the most important predictor variables for both reef substrate and biogenic reef models, with ruggedness calculated at multiple scales from 3 m to 140 m also important for the reef substrate model. We identified previously unresolved relationships between temperate reef spatial distribution, hydrodynamic energy and seabed three-dimensional structure in energetic waters. Our findings contribute to a better understanding of the spatial ecology of high energy marine ecosystems and will inform evidence-based decision making for sustainable development, particularly within the growing tidal energy sector.

AB - High energy marine regions host ecologically important habitats like temperate reefs, but are less anthropogenically developed and understudied compared to lower energy waters. In the marine environment direct habitat observation is limited to small spatial scales, and high energy waters present additional logistical challenges and constraints. Semi-automated predictive habitat mapping is a cost-effective tool to map benthic habitats across large extents, but performance is context specific. High resolution environmental data used for predictive mapping are often limited to bathymetry, acoustic backscatter and their derivatives. However, hydrodynamic energy at the seabed is a critical habitat structuring factor and likely an important, yet rarely incorporated, predictor of habitat composition and spatial patterning. Here, we used a machine learning classification approach to map temperate reef substrate and biogenic reef habitat in a tidal energy development area, incorporating bathymetric derivatives at multiple scales and simulated tidally induced seabed shear stress. We mapped reef substrate (four classes: sediment (not reef), stony reef (low resemblance), stony reef (medium – high resemblance) and bedrock reef) with overall balanced accuracy of 71.7%. Our model to predict potential biogenic Sabellaria spinulosa reef performed less well with an overall balanced accuracy of 63.4%. Despite low performance metrics for the target class of potential reef in this model, it still provided insight into the importance of different environmental variables for mapping S. spinulosa biogenic reef habitat. Tidally induced mean bed shear stress was one of the most important predictor variables for both reef substrate and biogenic reef models, with ruggedness calculated at multiple scales from 3 m to 140 m also important for the reef substrate model. We identified previously unresolved relationships between temperate reef spatial distribution, hydrodynamic energy and seabed three-dimensional structure in energetic waters. Our findings contribute to a better understanding of the spatial ecology of high energy marine ecosystems and will inform evidence-based decision making for sustainable development, particularly within the growing tidal energy sector.

KW - Reef mapping

KW - bathymetry

KW - Tidal energy

KW - Machine learning

KW - seascape ecology

KW - Spatial scale

KW - Sabellaria spinulosa

KW - benthic ecology

U2 - 10.1016/j.ecss.2022.107934

DO - 10.1016/j.ecss.2022.107934

M3 - Article

VL - 274

JO - Estuarine, Coastal and Shelf Science

JF - Estuarine, Coastal and Shelf Science

SN - 0272-7714

M1 - 107934

ER -