An ecosystem-scale predictive model of coastal seagrass distribution
β Scribed by A. Grech; R. G. Coles
- Book ID
- 101596762
- Publisher
- John Wiley and Sons
- Year
- 2010
- Tongue
- English
- Weight
- 418 KB
- Volume
- 20
- Category
- Article
- ISSN
- 1052-7613
- DOI
- 10.1002/aqc.1107
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β¦ Synopsis
Abstract
Maintaining ecological processes that underpin the functioning of marine ecosystems requires planning and management of marine resources at an appropriate spatial scale.
The Great Barrier Reef World Heritage Area (GBR) is the world's largest World Heritage Area (approximately 348β000βkm^2^) and second largest marine protected area. It is difficult to inform the planning and management of marine ecosystems at that scale because of the high cost associated with collecting data. To address this and to inform the management of coastal (approximately 15βm below mean sea level) habitats at the scale of the GBR, this study determined the presence and distribution of seagrass by generating a Geographic Information System (GIS)βbased habitat suitability model.
A Bayesian belief network was used to quantify the relationship (dependencies) between seagrass and eight environmental drivers: relative wave exposure, bathymetry, spatial extent of flood plumes, season, substrate, region, tidal range and sea surface temperature. The analysis showed at the scale of the entire coastal GBR that the main drivers of seagrass presence were tidal range and relative wave exposure. Outputs of the model include probabilistic GISβsurfaces of seagrass habitat suitability in two seasons and at a planning unit of cell size 2βkmΓ2βkm.
The habitat suitability maps developed in this study extend along the entire GBR coast, and can inform the management of coastal seagrasses at an ecosystem scale. The predictive modelling approach addresses the problems associated with delineating habitats at the scale appropriate for the management of ecosystems and the cost of collecting field data. Copyright Β© 2010 John Wiley & Sons, Ltd.
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