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snippet: This group of layers is part of a collection and inventory of seafloor mapping, ground-truthing, and predictive habitat modeling data within the Gulf of Mexico. The inventory was compiled to support the mesophotic and deep benthic community (MDBC) portfolio that aims to restore MDBC in the Gulf of Mexico as part of a Natural Resources Damage Assessment (NRDA) following the Deepwater Horizon Oil Spill.
summary: This group of layers is part of a collection and inventory of seafloor mapping, ground-truthing, and predictive habitat modeling data within the Gulf of Mexico. The inventory was compiled to support the mesophotic and deep benthic community (MDBC) portfolio that aims to restore MDBC in the Gulf of Mexico as part of a Natural Resources Damage Assessment (NRDA) following the Deepwater Horizon Oil Spill.
accessInformation: Kinlan BP, Poti M, Etnoyer P, Siceloff L, Jenkins C, Dorfman D, Caldow C. 2013. Digital data: Predictive models of deep-sea coral habitat suitability in the U.S. Gulf of Mexico. Downloadable digital data package. Department of Commerce (DOC), National Oceanic and Atmospheric Administration (NOAA), National Ocean Service (NOS), National Centers for Coastal Ocean Science (NCCOS), Center for Coastal Monitoring and Assessment (CCMA), Biogeography Branch. Released August 2013.
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description: <DIV STYLE="text-align:Left;font-size:12pt"><DIV><P><SPAN>This group of layers is part of the predictive habitat modeling component of the MDBC seafloor mapping, ground-truthing, and predictive habitat modeling inventory. The layers are rasters representing predictions from predictive habitat modeling. The layers specifically display predictions from the modeling study associated with the unique dataset identifier PHM000007 (Kinlan et al. 2013). A maximum entropy modeling framework was applied to presence-background data to predict habitat suitability at a spatial resolution of 371 m.</SPAN></P></DIV></DIV>
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title: Study #7
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culture: en-US
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