<?xml version="1.0" encoding="UTF-8"?><metadata>
<idinfo>
<citation>
<citeinfo>
<pubdate>20240614</pubdate>
<title>West Coast USA CMECS Substrate Data Quality</title>
<edition>1.0</edition>
<geoform>vector digital data</geoform>
<othercit>This product was created by the Pacific Marine and Estuarine Fish Habitat Partnership, and is part of a spatial data system for estuarine and nearshore environments for the West Coast of the contiguous United states. For more information, email gis@psmfc.org.</othercit>
<onlink>https://psmfc.sharefile.com/share/view/9c597c7a5ffa49c7</onlink>
<onlink>https://gis.psmfc.org/server/rest/services/PMEP/West_Coast_Nearshore_CMECS_Substrate_Habitat/MapServer</onlink>
<onlink>https://psmfc.maps.arcgis.com/home/item.html?id=7fa15591b9924ced95558026331a9e91</onlink>
</citeinfo>
</citation>
<descript>
<abstract>The Pacific Marine and Estuarine Fish Habitat Partnership (PMEP), is a nationally recognized partnership that seeks to advance regional and national goals relating to fish habitat. PMEP is a consortium of organizations focused on West Coast fish habitat in the region's estuaries and nearshore marine waters.These data represent data quality scores for West Coast USA CMECS Substrate Data. The Substrate dataset is a data compilation; we cross-walked attributes from 71 datasets into CMECS SC ecological units. These source data are from a variety of sources, collected using multiple methods across different scales. These data quality scores are intended to provide more information about the quality of source data inputs to the substrate dataset for data users. Version 1.0, Last Updated September, 2024.</abstract>
<purpose>These data represent data quality scores for West Coast USA CMECS Substrate Data. These data are intended to provide more information about the quality of source data inputs to the substrate dataset for data users.</purpose>
</descript>
<status>
<update>As needed</update>
</status>
<spdom>
<bounding>
<westbc>-125.395907</westbc>
<eastbc>-115.863008</eastbc>
<northbc>49.014926</northbc>
<southbc>32.523408</southbc>
</bounding>
</spdom>
<keywords>
<theme>
<themekt>None</themekt>
<themekey>Coastal and Marine Ecological Classification Standard</themekey>
<themekey>Pacific Estuarine and Marine Fish Habitat Partnership</themekey>
<themekey>PMEP</themekey>
<themekey>nearshore habitat</themekey>
<themekey>substrate component</themekey>
<themekey>Nearshore</themekey>
<themekey>substrate</themekey>
<themekey>habitat</themekey>
<themekey>West Coast</themekey>
<themekey>CMECS</themekey>
<themekey>data quality</themekey>
</theme>
<theme>
<themekt>ISO 19115 Topic Categories</themekt>
<themekey>environment</themekey>
<themekey>oceans</themekey>
</theme>
</keywords>
<accconst>None</accconst>
<useconst>This product is for informational purposes only and is not intended for navigational, legal, engineering, or surveying purposes; it is provided with the understanding that conclusions drawn from the information are the responsibility of the user.</useconst>
<ptcontac>
<cntinfo>
<cntorgp>
<cntorg>Pacific States Marine Fisheries Commission</cntorg>
<cntper>PSMFC GIS</cntper>
</cntorgp>
</cntinfo>
</ptcontac>
<ptcontac>
<cntinfo>
<cntorgp>
<cntorg>Pacific States Marine Fisheries Commission</cntorg>
<cntper>PSMFC GIS</cntper>
</cntorgp>
</cntinfo>
</ptcontac>
<datacred>Pacific Marine and Estuarine Fish Habitat Partnership, Pacific States Marine Fisheries Commission</datacred>
<native>ArcGIS Pro 3.2.2</native>
</idinfo>
<dataqual>
<lineage>
<procstep>
<procdesc>Step 3: Joined the data quality metadata information (step 1) with the substrate footprint dataset (step 2).</procdesc>
<procdate>20240229</procdate>
</procstep>
<procstep>
<procdesc>Step 4: Erased NearshoreSourceUID=3 (Essential Fish Habitat Mapping (SGH V5)) from the data quality score footprint dataset (Step 3). This dataset had existing data quality scores that provided more detail spatially on scores. </procdesc>
<procdate>20240229</procdate>
</procstep>
<procstep>
<procdesc>Step 5: Converted the data quality score raster from the EFH mapping V5 dataset to vector features. </procdesc>
<procdate>20240229</procdate>
</procstep>
<procstep>
<procdesc>Step 6: Erased results of Step 4 (PMEP data quality dataset without NearshoreSourceUID=3) from Step 5 (EFH mapping V5 data quality dataset). The results gave the data quality scores of the extent of the SGH V5 dataset used in PMEP's substrate layer.</procdesc>
<procdate>20240229</procdate>
</procstep>
<procstep>
<procdesc>Step 1: Identified a list of all datasets included in PMEP CMECS Nearshore Substrate dataset, and identified the unique IDs (NearshoreSourceUID) used in the creation of the Substrate dataset. Documented metadata about each data source, including type of dataset, year it was collected, resolution or scale, information on groundtruthing, and the how habitat interpretation was conducted. Following the scheme outlined in the statement above, created scores for data type, interpretation type, and groundtruthing for each dataset, and then calculated the data quality score for each source dataset. </procdesc>
<procdate>20240229</procdate>
<srcprod>withheld</srcprod>
</procstep>
<procstep>
<procdesc>Step 2: Dissolved PMEP CMECS Substrate dataset by NearshoreSourceUID, creating a "footprint" for each data source. </procdesc>
<procdate>20240229</procdate>
</procstep>
</lineage>
</dataqual>
<spdoinfo>
<direct>Vector</direct>
<ptvctinf>
<esriterm Name="PMEP_West_Coast_Nearshore_CMECS_Substrate_DataQuality_wm">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="4"/>
<esritopo Sync="TRUE">FALSE</esritopo>
<efeacnt Sync="TRUE">0</efeacnt>
<spindex Sync="TRUE">TRUE</spindex>
<linrefer Sync="TRUE">TRUE</linrefer>
</esriterm>
</ptvctinf>
</spdoinfo>
<spref>
<horizsys>
<planar>
<planci>
<plance>coordinate pair</plance>
<coordrep>
<absres>0.0001</absres>
<ordres>0.0001</ordres>
</coordrep>
<plandu>meter</plandu>
</planci>
</planar>
<geodetic>
<horizdn>D WGS 1984</horizdn>
<ellips>WGS 1984</ellips>
<semiaxis>6378137.0</semiaxis>
<denflat>298.257223563</denflat>
</geodetic>
</horizsys>
</spref>
<eainfo>
<detailed Name="PMEP_West_Coast_Nearshore_CMECS_Substrate_DataQuality_wm">
<enttyp>
<enttypl>PMEP_West_Coast_Nearshore_CMECS_Substrate_DataQuality</enttypl>
<enttypt Sync="TRUE">Feature Class</enttypt>
<enttypc Sync="TRUE">0</enttypc>
</enttyp>
<attr>
<attrlabl>OBJECTID</attrlabl>
<attrdef>Internal feature number.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Sequential unique whole numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">OBJECTID1</attalias>
<attrtype Sync="TRUE">OID</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape</attrlabl>
<attrdef>Feature geometry.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Coordinates defining the features.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape</attalias>
<attrtype Sync="TRUE">Geometry</attrtype>
<attwidth Sync="TRUE">0</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Year</attrlabl>
<attrdef>Data publication year</attrdef>
<attrdefs>PMEP</attrdefs>
<attalias Sync="TRUE">Year</attalias>
<attrtype Sync="TRUE">Integer</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Dataset</attrlabl>
<attalias Sync="TRUE">Dataset</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Source</attrlabl>
<attalias Sync="TRUE">Source</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>NearshoreSourceUID</attrlabl>
<attrdef>Unique ID for the data source created by PMEP. </attrdef>
<attrdefs>PMEP</attrdefs>
<attalias Sync="TRUE">NearshoreSourceUID</attalias>
<attrtype Sync="TRUE">SmallInteger</attrtype>
<attwidth Sync="TRUE">2</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Resolution_or_Scale</attrlabl>
<attalias Sync="TRUE">Resolution or Scale</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Type</attrlabl>
<attalias Sync="TRUE">Type</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PMEP_Region</attrlabl>
<attrdef>Based on slight modifications from Marine Ecoregions of the World (MEOW) (Spalding et al. 2007), the ecoregion that that the feature is nested within. There are four ecoregions: Salish Sea, Pacific Northwest, Central California, and Southern California Bight.</attrdef>
<attrdefs>PMEP</attrdefs>
<attrdomv>
<edom>
<edomv>1</edomv>
<edomvd>Salish Sea</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>2</edomv>
<edomvd>Pacific Northwest</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>3</edomv>
<edomvd>Central California</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>4</edomv>
<edomvd>Southern California Bight</edomvd>
<edomvds>PMEP</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">PMEP Region</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Classification_Systen</attrlabl>
<attalias Sync="TRUE">Classification Systen</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Habitat_Interpretation</attrlabl>
<attalias Sync="TRUE">Habitat Interpretation</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Data</attrlabl>
<attrdef>Data Score Value input to the overall data quality score. This value is determined by the resolution of the source multibeam bathymetry or sidescan/backscatter, seismic lines, bathymetric contour maps, or habitat classification maps that were used to create the substrate map. </attrdef>
<attrdefs>OSU/NOAA</attrdefs>
<attrdomv>
<edom>
<edomv>0.25</edomv>
<edomvd>Low resolution data (cores, &gt; 100 m gridded or &gt; 1:100,000 scale multibeam bathymetry or sidescan/backscatter, seismic lines, bathymetric contour maps, habitat classification lines)</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
<edom>
<edomv>1.5 </edomv>
<edomvd>Medium resolution data (&gt; 10-100 m gridded or &gt; 1:10,000-100,000 scale multibeam bathymetry or sidescan/backscatter, aerial imagery)</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
<edom>
<edomv>3.0</edomv>
<edomvd>High resolution data (&lt; 10 m gridded or 1 :&lt; 10,000 scale multibeam bathymetry or sidescan/backscatter) </edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">Data</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Interpretation</attrlabl>
<attrdef>Interpretation value input to the overall data quality score. This value is determined by the type of interpretation used to classify the substrate type.</attrdef>
<attrdefs>OSU/NOAA</attrdefs>
<attrdomv>
<edom>
<edomv>1.5</edomv>
<edomvd>Unsupervised classification (e.g., Terrain Ruggedness (VRM))</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
<edom>
<edomv>3.0</edomv>
<edomvd>Supervised classification (e.g., machine learning or expert interpretation)</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">Interpretation</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Groundtruthing</attrlabl>
<attrdef>Groundtruthing value input to the overall data quality score. This value is determied by the relative amount of groundtruthing used as an input to develop the substrate maps.</attrdef>
<attrdefs>OSU/NOAA</attrdefs>
<attrdomv>
<edom>
<edomv>0</edomv>
<edomvd>No groundtruthing</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
<edom>
<edomv>1.5</edomv>
<edomvd>Limited groundtruthing</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
<edom>
<edomv>3.0</edomv>
<edomvd>Comprehensive groundtruthing</edomvd>
<edomvds>OSU/NOAA</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">Groundtruthing</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Total</attrlabl>
<attrdef>Total combined score of Data Type, Interpretation, and Groundtruthing.</attrdef>
<attrdefs>OSU/NOAA</attrdefs>
<attalias Sync="TRUE">Total</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Weighted</attrlabl>
<attrdef>Categories also were weighted based on perceived relative importance as follows: Data Type = 3, Groundtruthing = 1.5, Interpretation Type = 1.0. Eighteen different data quality scores are possible based on this category, ranging from 1-10. </attrdef>
<attrdefs>OSU/NOAA</attrdefs>
<attalias Sync="TRUE">Weighted</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>DQ_Score_Final</attrlabl>
<attrdef>Final Data Quality scores (for cartography). PMEP’s data product resulted in 14 unique scores. </attrdef>
<attrdefs>PMEP</attrdefs>
<attrdomv>
<edom>
<edomv>0</edomv>
<edomvd>No Data</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>10</edomv>
<edomvd>Low resolution, unsupervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>19</edomv>
<edomvd>Low resolution, supervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>24</edomv>
<edomvd>Low resolution unsupervised, limited groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>33</edomv>
<edomvd>Medium resolution, unspervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>43</edomv>
<edomvd>Medium resolution, supervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>48</edomv>
<edomvd>Medium resolution, unsupervised, limited groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>57</edomv>
<edomvd>Medium resolution, supervised, limited groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>62</edomv>
<edomvd>High resolution, unsupervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>63</edomv>
<edomvd>Medium resolution, unsupervised, comprehensive groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>71</edomv>
<edomvd>High resolution, supervised, no groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>72</edomv>
<edomvd>Medium resolution, supervised, comprehensive groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>86</edomv>
<edomvd>High resolution, supervised, limited groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
<edom>
<edomv>100</edomv>
<edomvd>High resolution, supervised, comprehensive groundtruthing</edomvd>
<edomvds>PMEP 2024</edomvds>
</edom>
</attrdomv>
<attalias Sync="TRUE">Data Quality Score</attalias>
<attrtype Sync="TRUE">Integer</attrtype>
<attwidth Sync="TRUE">4</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape_Length</attrlabl>
<attrdef>Length of feature in internal units.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Positive real numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape_Length</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>Shape_Area</attrlabl>
<attrdef>Area of feature in internal units squared.</attrdef>
<attrdefs>Esri</attrdefs>
<attrdomv>
<udom>Positive real numbers that are automatically generated.</udom>
</attrdomv>
<attalias Sync="TRUE">Shape_Area</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
</detailed>
</eainfo>
<metainfo>
<metd>20241120</metd>
<metc>
<cntinfo>
<cntorgp>
<cntorg>Pacific States Marine Fisheries Commission</cntorg>
<cntper>PSMFC GIS</cntper>
</cntorgp>
</cntinfo>
</metc>
<metstdn>FGDC Content Standard for Digital Geospatial Metadata</metstdn>
<metstdv>FGDC-STD-001-1998</metstdv>
<mettc>local time</mettc>
<metuc>This product is for informational purposes only and is not intended for navigational, legal, engineering, or surveying purposes; it is provided with the understanding that conclusions drawn from the information are the responsibility of the user.</metuc>
</metainfo>
<dataIdInfo>
<idPurp>These data represent data quality scores for West Coast USA CMECS Substrate Data. These data are intended to provide more information about the quality of source data inputs to the substrate dataset for data users.</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;The Pacific Marine and Estuarine Fish Habitat Partnership (PMEP), is a nationally recognized partnership that seeks to advance regional and national goals relating to fish habitat. PMEP is a consortium of organizations focused on West Coast fish habitat in the region's estuaries and nearshore marine waters.These data represent data quality scores for West Coast USA CMECS Substrate Data. The Substrate dataset is a data compilation; we cross-walked attributes from 71 datasets into CMECS SC ecological units. These source data are from a variety of sources, collected using multiple methods across different scales. These data quality scores are intended to provide more information about the quality of source data inputs to the substrate dataset for data users. &lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;Version 1.1, Last Updated June, 2025.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
<idCredit>Pacific Marine and Estuarine Fish Habitat Partnership, Pacific States Marine Fisheries Commission</idCredit>
<idCitation>
<resTitle>PMEP West Coast Substrate Data Quality</resTitle>
<date>
<pubDate>2024-06-07T00:00:00</pubDate>
<reviseDate>2025-06-27T00:00:00</reviseDate>
</date>
<resEd>1.1</resEd>
<resEdDate>20250627</resEdDate>
<citRespParty>
<rpIndName>PSMFC GIS</rpIndName>
<rpOrgName>Pacific States Marine Fisheries Commission</rpOrgName>
<displayName>PSMFC GIS</displayName>
<displayName>PSMFC GIS</displayName>
<rpCntInfo>
<cntAddress addressType="both">
<delPoint>6720 S. Macadam Ave., Suite 200</delPoint>
<city>Portland</city>
<adminArea>Oregon</adminArea>
<postCode>97219</postCode>
<eMailAdd>gis@psmfc.org</eMailAdd>
</cntAddress>
</rpCntInfo>
<displayName>PSMFC GIS</displayName>
<editorSave>False</editorSave>
<displayName>PSMFC GIS</displayName>
</citRespParty>
<presForm>
<PresFormCd Sync="TRUE" value="005"/>
</presForm>
</idCitation>
<searchKeys>
<keyword>Coastal and Marine Ecological Classification Standard</keyword>
<keyword>Pacific Estuarine and Marine Fish Habitat Partnership</keyword>
<keyword>PMEP</keyword>
<keyword>nearshore habitat</keyword>
<keyword>substrate component</keyword>
<keyword>Nearshore</keyword>
<keyword>substrate</keyword>
<keyword>habitat</keyword>
<keyword>West Coast</keyword>
<keyword>CMECS</keyword>
<keyword>data quality</keyword>
<keyword>environment</keyword>
<keyword>oceans</keyword>
</searchKeys>
<resConst>
<Consts>
<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;This product is for informational purposes only and is not intended for navigational, legal, engineering, or surveying purposes; it is provided with the understanding that conclusions drawn from the information are the responsibility of the user.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
</Consts>
</resConst>
<dataChar>
<CharSetCd value="004"/>
</dataChar>
<dataExt>
<exDesc>West coast of the contiguous United States, including the Salish Sea. Data extent ranges from the shoreline out to 2,500 meters on the seaward side along the coast of the Pacific Northwest and approximately 4,000 meters at the deepest extent of the data in the Southern California Bight.</exDesc>
<geoEle>
<GeoBndBox>
<westBL>-126.543820</westBL>
<eastBL>-115.847148</eastBL>
<southBL>49.153342</southBL>
<northBL>31.861951</northBL>
</GeoBndBox>
</geoEle>
</dataExt>
<idPoC>
<rpIndName>PSMFC GIS</rpIndName>
<rpOrgName>Pacific States Marine Fisheries Commission</rpOrgName>
<displayName>PSMFC GIS</displayName>
<displayName>PSMFC GIS</displayName>
<rpCntInfo>
<cntAddress addressType="both">
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<statement>Accounting for differential quality of substrate data is a crucial piece of information for data users, since not all input substrate data inputs are of consistent quality for a variety of reasons. The scheme for scoring data quality used in this dataset was created for the West Coast Substrate Induration Layer developed by the National Oceanic and Atmospheric Administration modified from an original scheme developed by Oregon State Universities Active Tectonics Mapping Lab. This scoring scheme has three fundamental components (or categories): data type, interpretation type, and ground truthing. Scoring ranged from 0-3 in each category, and differential scoring among categories was based on their perceived relative importance in accurately distinguishing induration and substrate type.
Data Type:
0.25: Low resolution data (cores, &gt; 100 m gridded or &gt; 1:100,000 scale multibeam bathymetry or sidescan/backscatter, seismic lines, bathymetric contour
maps, habitat classification lines)
1.5: Medium resolution data (&gt; 10-100 m gridded or &gt; 1:10,000-100,000 scale multibeam bathymetry or sidescan/backscatter, aerial imagery)
3.0: High resolution data (&lt;= 10 m gridded or 1 :&lt;= 10,000 scale multibeam bathymetry or sidescan/backscatter)
Interpretation Type:
1.5: Unsupervised classification (e.g., Terrain Ruggedness (VRM))
3.0: Supervised classification (e.g., machine learning or expert interpretation)
0: No groundtruthing
1.5: Limited groundtruthing
3.0: Comprehensive groundtruthing
Categories also were weighted based on perceived relative importance as follows: Data Type = 3, Groundtruthing = 1.5, Interpretation Type = 1.0. Eighteen different data quality scores are possible based on this category, ranging from 1-10 (DQ Score). For cartographic sorting purposes, a final data quality score was created by multiple the data quality score by 10 to create scores of 10-100 (DataQuality_Score). A score of zero represents no data.</statement>
<prcStep>
<stepDesc>Step 3: Joined the data quality metadata information (step 1) with the substrate footprint dataset (step 2).
</stepDesc>
<stepRat>To join the data quality score with substrate spatial data footprints.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 4: Erased NearshoreSourceUID=3 (Essential Fish Habitat Mapping (SGH V5)) from the data quality score footprint dataset (Step 3). This dataset had existing data quality scores that provided more detail spatially on scores.</stepDesc>
<stepRat>To remove NearshoreSourceUID=3 from the dataset to insert existing data scores.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 5: Converted the data quality score raster from the EFH mapping V5 dataset to vector features.</stepDesc>
<stepRat>To work in vector data format with the EFH mapping V5 data quality dataset.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 6: Append results of Step 5 (data quality vector of EFH mapping V5 data quality dataset) to results of Step 4 (footprint of all other datasets). This results in the full data quality layer.</stepDesc>
<stepRat>To create a footprint, including data quality scores, of the EFH mapping V5 dataset used in PMEP's CMECS Substrate layer.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 2: Dissolved PMEP CMECS Substrate dataset by NearshoreSourceUID, creating a "footprint" for each data source.</stepDesc>
<stepRat>To create a data source footprint for each source used in the PMEP CMECS Substrate dataset.</stepRat>
<stepDateTm>2024-02-29T00:00:00</stepDateTm>
<stepSrc type="">
<srcDesc>During data processing for PMEP's West Coast Nearshore CMECS Substrate Habitat dataset, ID's for the source datasets are kept associated with each feature. This allows for tracking of each feature back to the data source. In one of the last steps before publication, data are dissolved and the source ID is removed as an attribute. It is this pre-dissolved version of the data that is used to develop the data quality data.
This pre-dissolve version of the data that includes data source ID attributes is available by request at gis@psmfc.org.</srcDesc>
<srcCitatn>
<resTitle>West Coast CMECS Nearshore Substrate All Features</resTitle>
</srcCitatn>
</stepSrc>
</prcStep>
<prcStep>
<stepDesc>Step 1: Identified a list of all datasets included in PMEP CMECS Nearshore Substrate dataset, and identified the unique IDs (NearshoreSourceUID) used in the creation of the Substrate dataset. Documented metadata about each data source, including type of dataset, year it was collected, resolution or scale, information on groundtruthing, and the how habitat interpretation was conducted. Following the scheme outlined in the statement above, created scores for data type, interpretation type, and groundtruthing for each dataset, and then calculated the data quality score for each source dataset.</stepDesc>
<stepRat>To calculate data quality scores for each substrate data source.</stepRat>
<stepDateTm>2024-02-29T00:00:00</stepDateTm>
<stepSrc type="produced">
<srcDesc>Appendix 4 from the report U.S. West Coast nearshore habitat use by fish assemblages and select invertebrates. Portland, OR: Pacific Marine &amp; Estuarine
Fish Habitat Partnership. https://www.pacificfishhabitat.org/assessment-reports/ lists the original datasets published as part of the West Coast USA CMECS Substrate Habitat dataset.
Report citation: Bizzarro, J.J., Selleck, J., Sherman, K., Drinkwin, J., Hare, V.C., and Fox, D.S. 2022. State of the knowledge: U.S. West Coast nearshore
habitat use by fish assemblages and select invertebrates. Portland, OR: Pacific
Marine &amp; Estuarine Fish Habitat Partnership. https://www.pacificfishhabitat.org/assessment-reports/
An additional 18 datasets were identified from 2022-2024 for inclusion in the West Coast USA Nearshore CMECS Substrate Habitat dataset.</srcDesc>
<srcCitatn>
<resTitle>U.S. West Coast nearshore habitat use by fish assemblages and select invertebrates</resTitle>
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<linkage>https://maps.psmfc.org/media/PMEP/Documents/PMEP_Nearshore_FishInvert_Habitat_Report.pdf</linkage>
<orName>U.S. West Coast nearshore habitat use by fish assemblages and select invertebrates</orName>
<orDesc>report</orDesc>
</citOnlineRes>
</srcCitatn>
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<srcDesc>PMEP West Coast USA Substrate Habitat feature class metadata identifies all of the data sources scored in this layer.</srcDesc>
<srcCitatn>
<resTitle>West Coast CMECS Substrate Habitat</resTitle>
<date>
<pubDate>2022-08-05T00:00:00</pubDate>
<reviseDate>2024-09-13T00:00:00</reviseDate>
</date>
<citOnlineRes>
<linkage>https://www.pacificfishhabitat.org/data/nearshore-cmecs-substrate-habitat/</linkage>
</citOnlineRes>
</srcCitatn>
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