4.7 Article

Forests of the sea: Predictive habitat modelling to assess the abundance of canopy forming kelp forests on temperate reefs

期刊

REMOTE SENSING OF ENVIRONMENT
卷 170, 期 -, 页码 178-187

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2015.09.020

关键词

Bathymetric LiDAR; Multibeam sonar; Ecklonia radiata; Foundation species; Macroalgae; Species distribution models; Spatial autocorrelation; Wave exposure

资金

  1. National Heritage Trust
  2. Caring for Country as part of the Victorian Marine Habitat Mapping Project
  3. Glenelg Hopkins Catchment Management Authority, Department of Environment and Primary Industries, Parks Victoria
  4. University of Western Australia and Fugro Survey

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Large brown seaweeds (kelps) form forests in temperate and boreal marine systems that serve as foundations to the structure and dynamics of communities. Mapping the distributions of these species is important to understanding the ecology of coastal environments, managing marine ecosystems (e.g., spatial planning), predicting consequences of climate change and the potential for carbon production. We demonstrate how combining seafloor mapping technologies (LiDAR and multibeam bathymetry) and models of wave energy to map the distribution and relative abundance of seaweed forests of Ecklonia radiata can provide complete coverage over hundreds of square kilometers. Using generalized linear mixed models (GLMMs), we associated observations of E. radiata abundance from video transects with environmental variables. These relationships were then used to predict the distribution of E. radiata across our 756.1 km(2) study area off the coast of Victoria, Australia. A reserved dataset was used to test the accuracy of these predictions. We found that the abundance distribution of E. radiata is strongly associated with depth, presence of rocky reef, curvature of the reef topography, and wave exposure. In addition, the GLMM methodology allowed us to adequately account for spatial autocorrelation in our sampling methods. The predictive distribution map created from the best GLMM predicted the abundance of E. radiata with an accuracy of 72%. The combination of LiDAR and multibeam bathymetry allowed us to model and predict E. radiata abundance distribution across its entire depth range for this study area. Using methods like those presented in this study, we can map the distribution of macroalgae species, which will give insight into ecological communities, biodiversity distribution, carbon uptake, and potential sequestration. (C) 2015 Elsevier Inc. All rights reserved.

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