gov.noaa.nmfs.inport:62985
eng
UTF8
dataset
Office for Coastal Management
resourceProvider
NOAA Office for Coastal Management
(843) 740-1202
2234 South Hobson Ave
Charleston
SC
29405-2413
coastal.info@noaa.gov
https://coast.noaa.gov
WWW:LINK-1.0-http--link
NOAA Office for Coastal Management Website
NOAA Office for Coastal Management Home Page
information
pointOfContact
2024-02-29T00:00:00
ISO 19115-2 Geographic Information - Metadata Part 2 Extensions for imagery and gridded data
ISO 19115-2:2009(E)
EPSG::5070
Salt Marsh Resilience, National, 2010
2020-09-25
publication
NOAA/NMFS/EDM
62985
https://www.fisheries.noaa.gov/inport/item/62985
WWW:LINK-1.0-http--link
Full Metadata Record
View the complete metadata record on InPort for more information about this dataset.
information
https://coast.noaa.gov/digitalcoast/data/ccaphighres
WWW:LINK-1.0-http--link
Citation URL
Online Resource
download
https://coast.noaa.gov/htdata/raster1/landcover/bulkdownload/hires
WWW:LINK-1.0-http--link
Citation URL
Online Resource
download
NOAA Office for Coastal Management, National Estuarine Research Reserve System, Great Bay NERR, Padilla Bay NERR, University of New Hampshire
This polygon data set includes raw values and normalized scores for thirteen landscape scale metrics that characterize marsh resilience to sea level rise within watersheds along the coast of the conterminous United States. These metrics fall into bins related to current marsh condition, marsh vulnerability, and adaptation potential. The data are summarized at the watershed scale (HUC-12 units).
This data set was developed to support a protocol to assess tidal marsh resilience at the landscape scale by using GIS-based metrics of current marsh condition, vulnerability to sea level rise, and potential for adaptation. The protocol supports standardized comparisons of marsh conditions over large areas along the coasts and within the National Estuarine Research Reserve System (NERRS). Used in tandem with other NERRS-based marsh assessment tools, it can provide an integrated continuum of assessment to inform efforts to study, restore, or protect tidal marshes at the local, state, regional, and national scales.
completed
NOAA Office for Coastal Management
(843) 740-1202
2234 South Hobson Ave
Charleston
SC
29405-2413
coastal.info@noaa.gov
https://coast.noaa.gov
WWW:LINK-1.0-http--link
NOAA Office for Coastal Management Website
NOAA Office for Coastal Management Home Page
information
pointOfContact
NOAA Office for Coastal Management
(843) 740-1202
2234 South Hobson Ave
Charleston
SC
29405-2413
coastal.info@noaa.gov
https://coast.noaa.gov
WWW:LINK-1.0-http--link
NOAA Office for Coastal Management Website
NOAA Office for Coastal Management Home Page
information
custodian
unknown
EARTH SCIENCE > LAND SURFACE > LAND USE/LAND COVER
EARTH SCIENCE > LAND SURFACE > LAND USE/LAND COVER > LAND USE/LAND COVER CLASSIFICATION
theme
Global Change Master Directory (GCMD) Science Keywords
17.0
CAMERAS
instrument
Global Change Master Directory (GCMD) Instrument Keywords
17.2
Airplane > Airplane
platform
Global Change Master Directory (GCMD) Platform Keywords
17.2
Ocean > North America > United States of America
place
Global Change Master Directory (GCMD) Location Keywords
Biota
Digital Coast
Lidar
NERRS
NOAA
National Estuarine Research Reserves
Remotely Sensed Imagery/Photos
Resilience
Salt Marsh
Sea Level Rise
Wetlands
theme
Coastal Zone
place
DOC/NOAA/NOS/OCM > Office of Coastal Management, National Ocean Service, NOAA, U.S. Department of Commerce
dataCentre
Global Change Master Directory (GCMD) Data Center Keywords
2017-04-24
publication
8.5
C-CAP
project
InPort
otherRestrictions
Cite As: Office for Coastal Management, [Date of Access]: Salt Marsh Resilience, National, 2010 [Data Date Range], https://www.fisheries.noaa.gov/inport/item/62985.
NOAA provides no warranty, nor accepts any liability occurring from any incomplete, incorrect, or misleading data, or from any incorrect, incomplete, or misleading use of the data. It is the responsibility of the user to determine whether or not the data is suitable for the intended purpose.
otherRestrictions
Access Constraints: None
otherRestrictions
Use Constraints: Data set is not for use in litigation. While efforts have been made to ensure that these data are accurate and reliable within the state of the art, NOAA, cannot assume liability for any damages, or misrepresentations, caused by any inaccuracies in the data, or as a result of the data to be used on a particular system. NOAA makes no warranty, expressed or implied, nor does the fact of distribution constitute such a warranty.
otherRestrictions
Distribution Liability: Users must assume responsibility to determine the usability of these data.
unclassified
NOAA Data Management Plan (DMP)
NOAA/NMFS/EDM
62985
https://www.fisheries.noaa.gov/inportserve/waf/noaa/nos/ocm/dmp/pdf/62985.pdf
WWW:LINK-1.0-http--link
NOAA Data Management Plan (DMP)
NOAA Data Management Plan for this record on InPort.
information
crossReference
eng; US
imageryBaseMapsEarthCover
Microsoft Windows XP Version 5.1 (Build 2600) Service Pack 3; ESRI ArcCatalog 9.2.2.1350
Data cover the coastal watersheds of the conterminous United States that contain estuarine wetland cover types.
-127.854
-65.362
22.885
51.534
| Currentness: Publication Date
2009-01-20
2011-11-11
Vulnerability scores were updated to fix an error caused by the erroneous inclusion of the hardened shoreline metric in the original scoring (3/23/2022).
NOAA Office for Coastal Management
(843) 740-1202
2234 South Hobson Ave
Charleston
SC
29405-2413
coastal.info@noaa.gov
https://coast.noaa.gov
WWW:LINK-1.0-http--link
NOAA Office for Coastal Management Website
NOAA Office for Coastal Management Home Page
information
distributor
https://coast.noaa.gov/digitalcoast/data/ccaphighres
WWW:LINK-1.0-http--link
https://coast.noaa.gov/digitalcoast/data/ccaphighres
Online Resource
download
https://coast.noaa.gov/htdata/raster1/landcover/bulkdownload/hires
WWW:LINK-1.0-http--link
https://coast.noaa.gov/htdata/raster1/landcover/bulkdownload/hires
Online Resource
download
dataset
Conceptual Consistency
Data are complete and cover all areas defined by the source data.
Standard mapping methods were used to develop the data, which are described in the Process Steps section. Outputs were inspected for errors and inconsistencies, which were addressed and remedied.
Marsh resilience quality assurance review.
Data passed an internal review.
Marsh Unit Codes (MUC) were created from the C-CAP 30 meter land cover data. Classes 16-18 (the estuarine wetland classes) were extracted and recoded using a morphometric algorithm to distinguish between different components of the marsh units. The following classification scheme was established:
gridcode1 = core wetland
gridcode2 = vegetated edge of wetland
gridcode3 = unvegetated edge of wetland
Core-to-edge ratio computed from MUCs and aggregated by 12-digit HUC. [Core_Edge_ratio = gridcode1 / ( gridcode2 + gridcode3 )]
Unvegetated edge to vegetated edge ratio was computed from MUCs and aggregated by 12-digit HUC. [UnvegVegEdge_ratio = gridcode3 / gridcode2]
A simplified version of the C-CAP 30 meter land cover was generated to facilitate derivation of land cover metrics. The resulting data layer had the following classification scheme:
gridcode2 = high intensity developed
gridcode3 = medium intensity developed
gridcode4 = low intensity developed
gridcode5 = open space developed
gridcode6 = agricultural classes (pasture/hay, cultivated)
gridcode7 = natural cover types (grassland, shrub, forest)
Percent impervious cover was computed from the simplified version of C-CAP 30 meter land cover data and aggregated by 12-digit HUCs. Analysis was performed within a 150 meter buffer around each marsh unit. [Perc_IC = ((gridcode2 * 0.8503) + (gridcode3 * 0.5768) + (gridcode4 * 0.2929) + (gridcode5 * 0.0941)) / Total_Area * 100]
Percent natural cover was computed from the simplified version of C-CAP 30 meter land cover data and aggregated by 12-digit HUCs. Analysis was performed within a 150 meter buffer around each marsh unit. [Perc_Natural = gridcode7 / Total_Area * 100]
Percent agricultural cover was computed from the simplified version of C-CAP 30 meter land cover data and aggregated by 12-digit HUCs. Analysis was performed within a 150 meter buffer around each marsh unit. [Perc_Ag = gridcode6 / Total_Area * 100]
Soil erodibility was computed using Esri's USA Soils Erodibility Factor image service (https://landscape11.arcgis.com/arcgis/rest/services/USA_Soils_Erodibility_Factor/ImageServer, accessed March 2018). Analysis was performed within each marsh unit, not the entire HUC. The average erodibility factor for each marsh unit was weighted by the size of the marsh unit and aggregated by 12-digit HUC.
Tidal range was computed as the height difference between Mean Higher High Water (MHHW) and Mean Lower Low Water (MLLW) measured in meters. The tidal datum data were extracted from the VDatum tool and interpolated across data gaps to provide complete coverage within the study area.
Percent of marsh below mean higher high water (MHHW) was computed by intersecting all marsh units below MHHW, dividing by the total marsh area, and aggregating by 12-digit HUC.
Percent of marsh below mean tide level (MTL) was computed by intersecting all marsh units below MTL, dividing by the total marsh area, and aggregating by 12-digit HUC.
Percent hardened shoreline was computed using the Environmental Sensitivity Index (ESI) database. The ESI shoreline data were divided by and associated with 12-digit HUC codes. Within each HUC, all shoreline features that were armored (GENERALIZED_ESI_TYPE LIKE '%Armored%') were divided by the total shoreline length and multiplied by 100.
Environmental Sensitivity Index (ESI) maps provide a concise summary of coastal resources that are at risk if an oil spill occurs nearby. Examples of at-risk resources include biological resources (such as birds and shellfish beds), sensitive shorelines (such as marshes and tidal flats), and human-use resources (such as public beaches and parks).
2020-09-01T00:00:00
NOAA ESI National Shoreline (2017)
Migration space was determined using NOAA's sea level rise inundation data. Within every 12-digit HUC and for each foot of inundation above MHHW, the area of potential future marsh was divided by the current area of marsh to generate a ratio of future to present "potential" marsh area. This operation was performed for 1-6 feet of sea level rise inundation scenarios. For each SLR scenario, the resulting migration ratio values were ranked and scored by a quantile distribution function. The six scenarios were were then averaged, a new quantile rank and score was generated and reported by AVG_migration_ratio.
Wetland connectedness, at this national level analysis, was computed using the marsh unit data (MUCs) and an analysis of projected fragmentation/consolidation under the 4 foot future sea level rise (SLR) scenario. A region grouping process was used to group all connected marsh units under current and future scenarios. Within each 12-digit HUC, the number of unique future marsh units were subtracted from the number of unique current marsh units, and divided by the number of unique current marsh units. This became the unitless raw value for the Wetland_Connectedness metric.
Shoreline sinuosity was assessed using the NOAA ESI shoreline vector data to characterize sinuosity within each 12-digit HUC. A sinuosity index was computed using a Sinuosity python script provided by Esri. High values represent linear shorelines and low values represent sinuous shorelines. Since the the sinuosity script generates values from 0-1, where 1 is a straight feature, we multiplied the sinuosity index by -1 so that values closer to 0 were scored higher in the quantile index.
Quantile scores were generated using a python script developed by NOAA OCM. Each metric was ranked and scored 1-10 based on the quantile position in the ranking. The quantile scores were then inversed if required based on the intent of the metric (negative or positive contributor to resilience). The quantile scores were summed by category (current condition, vulnerability, and adaptive capacity) and all combined, and new quantile rankings and scores were generated.
The numerical quantile scores were used to generate ordinal data describing the degree to which marsh units scored "low" or "high" for each resilience category (current condition, vulnerability, and adaptive capacity). Scores 1-5 were assigned "low" and scores 6-10 were assigned "high." An overall management category was generated using a concatenation of the three resilience categories, in the order just shown.
Vulnerability scores were updated to fix an error caused by the erroneous inclusion of the hardened shoreline metric in the original scoring (3/23/2022).
2020-09-01T00:00:00
Source Contribution: This digital data release consists of seven national data files of area- and depth-weighted averages of select soil attributes for every available county in the conterminous United States and the District of Columbia as of March 2014. The files are derived from Natural Resources Conservations Service's (NRCS) Soil Survey Geographic database (SSURGO). The data files can be linked to the raster datasets of soil mapping unit identifiers (MUKEY) available through the NRCS's Gridded Soil Survey Geographic (gSSURGO) database (http://www.nrcs.usda.gov/wps/portal/nrcs/detail/soils/survey/geo/?cid=nrcs142p2_053628).
Area- and Depth-Weighted Averages of Selected SSURGO Variables for the Conterminous United States and District of Columbia
U.S. Department of Agriculture, Natural Resources Conservation Service
https://water.usgs.gov/lookup/getspatial?ds866_ssurgo_variables
WWW:LINK-1.0-http--link
Source Citation URL
Source Citation URL
information
originator
Source Contribution: The NOAA Coastal Change Analysis Program (C-CAP) produces national standardized land cover and change products for the coastal regions of the U.S. C-CAP products inventory coastal intertidal areas, wetlands, and adjacent uplands with the goal of monitoring changes in these habitats, on a one-to-five year repeat cycle. The timeframe for this metadata is reported as 2010-Era, but the actual dates of the Landsat imagery used to create the land cover may have been acquired a few years before or after each era. These maps are developed utilizing Landsat Thematic Mapper imagery, and can be used to track changes in the landscape through time. This trend information gives important feedback to managers on the success or failure of management policies and programs and aid in developing a scientific understanding of the Earth system and its response to natural and human-induced changes. This understanding allows for the prediction of impacts due to these changes and the assessment of their cumulative effects, helping coastal resource managers make more informed regional decisions. NOAA C-CAP is a contributing member to the Multi-Resolution Land Characteristics consortium and C-CAP products are included as the coastal expression of land cover within the National Land Cover Database.
NOAA's Coastal Change Analysis Program (C-CAP) 2010 Regional Land Cover Data - Coastal United States
NOAA Office for Coastal Management
https://coast.noaa.gov/digitalcoast/data/
WWW:LINK-1.0-http--link
Source Citation URL
Source Citation URL
information
originator
Source Contribution: The Watershed Boundary Dataset (WBD) is a seamless, national hydrologic unit dataset. Simply put, hydrologic units represent the area of the landscape that drains to a portion of the stream network. More specifically, a hydrologic unit defines the areal extent of surface water drainage to an outlet point on a dendritic stream network or to multiple outlet points where the stream network is not dendritic. A hydrologic unit may represent all or only part of the total drainage area to an outlet point so that multiple hydrologic units may be required to define the entire drainage area at a given outlet. Hydrologic unit boundaries in the WBD are determined based on topographic, hydrologic, and other relevant landscape characteristics without regard for administrative, political, or jurisdictional boundaries. The WBD seamlessly represents hydrologic units at six required and two optional hierarchical levels.
USGS National Watershed Boundary Dataset
U.S. Geological Survey
https://www.sciencebase.gov/
WWW:LINK-1.0-http--link
Source Citation URL
https://water.usgs.gov/GIS/dsdl/Layer.zip
information
originator