<?xml version="1.0" encoding="UTF-8"?><metadata>
<idinfo>
<citation>
<citeinfo>
<pubdate>20220822</pubdate>
<title>West Coast USA Nearshore Substrate Habitat</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>
</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 the Substrate Component (SC) of the Coastal and Marine Ecological Classification Standard (CMECS) out to deepest edge of available data on the West Coast of the contiguous United States.. The SC is organized into a branched hierarchy of five nested levels: substrate origin, substrate class, substrate subclass, substrate group, and substrate subgroup. Groups and subgroups of the SC are determined by the dominant substrate (defined as the most abundant in terms of percent cover). This is a data compilation; we cross-walked attributes from 70 datasets into CMECS SC ecological units.. These classifications were applied to Nearshore Zones currently part of the Pacific Marine and Estuarine Fish Habitat Partnership’s (PMEP) spatial data system, within the “West Coast USA Nearshore Zones” (PMEP) layer. For full documentation of CMECS, see https://coast.noaa.gov/data/digitalcoast/pdf/cmecs.pdf.Vers. 2.0, Last Updated September 2024</abstract>
<purpose>These data represent the Substrate Component (SC) of the Coastal and Marine Ecological Classification Standard (CMECS) out to the deepest edge of available data on the West Coast of the contiguous United States.</purpose>
</descript>
<status>
<progress>Complete</progress>
<update>As needed</update>
</status>
<spdom>
<bounding>
<westbc>-126.437100</westbc>
<eastbc>-117.122637</eastbc>
<northbc>49.132247</northbc>
<southbc>31.939699</southbc>
</bounding>
</spdom>
<keywords>
<theme>
<themekey>environment</themekey>
<themekey>oceans</themekey>
<themekey>Coastal and Marine Ecological Classificaiton Standard</themekey>
<themekey>PMEP</themekey>
<themekey>nearshore habitat</themekey>
<themekey>substrate component</themekey>
<themekey>Pacific Estuarine and marine Fish Habitat Partnership</themekey>
<themekey>Nearshore</themekey>
<themekey>substrate</themekey>
<themekey>habitat</themekey>
<themekey>West Coast</themekey>
<themekey>CMECS</themekey>
</theme>
<theme>
<themekey>environment</themekey>
<themekey>oceans</themekey>
<themekey>Coastal and Marine Ecological Classificaiton Standard</themekey>
<themekey>PMEP</themekey>
<themekey>nearshore habitat</themekey>
<themekey>substrate component</themekey>
<themekey>Pacific Estuarine and marine Fish Habitat Partnership</themekey>
<themekey>Nearshore</themekey>
<themekey>substrate</themekey>
<themekey>habitat</themekey>
<themekey>West Coast</themekey>
<themekey>CMECS</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>
<cntaddr>
<addrtype>unknown</addrtype>
<address>205 SE Spokane St., Suit 100</address>
<city>Portland</city>
<state>Oregon</state>
<postal>97202</postal>
<country>US</country>
</cntaddr>
<cntvoice>503-595-3100</cntvoice>
<cntemail>gis@psmfc.org</cntemail>
</cntinfo>
</ptcontac>
<ptcontac>
<cntinfo>
<cntorgp>
<cntorg>Pacific States Marine Fisheries Commission</cntorg>
<cntper>PSMFC GIS</cntper>
</cntorgp>
<cntaddr>
<addrtype>unknown</addrtype>
<address>205 SE Spokane St., Suit 100</address>
<city>Portland</city>
<state>Oregon</state>
<postal>97202</postal>
<country>US</country>
</cntaddr>
<cntvoice>503-595-3100</cntvoice>
<cntemail>gis@psmfc.org</cntemail>
</cntinfo>
</ptcontac>
<datacred>Pacific Marine and Estuarine Fish Habitat Partnership, Pacific States Marine Fisheries Commission</datacred>
<native> Version 6.2 (Build 9200) ; Esri ArcGIS 10.7.0.10450</native>
</idinfo>
<spdoinfo>
<direct>Vector</direct>
<ptvctinf>
<esriterm Name="PMEP_West_Coast_Nearshore_CMECS_Substrate_wm">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="4"/>
<esritopo Sync="TRUE">FALSE</esritopo>
<efeacnt Sync="TRUE">1618</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_wm">
<enttyp>
<enttypl>West_Coast_USA_Nearshore_CMECS_Substrate_Habitat</enttypl>
<enttypt Sync="TRUE">Feature Class</enttypt>
<enttypc Sync="TRUE">1618</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>PMEP_Region</attrlabl>
<attalias>PMEP Region</attalias>
<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>
<attrtype>String</attrtype>
<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>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PMEP_Section</attrlabl>
<attalias>PMEP Section</attalias>
<attrdef>The section, or subregion, with which the feature is nested within. There are 18 subregions integrated within the 4 ecoregions. In the U.S. waters of the Salish Sea, there are seven (7) subregions that align with Puget Sound Nearshore Ecosystem Restoration Project (PSNERP) subregions and with previous efforts by PMEP (Fig. 3). For the three outer coast ecoregions, 10 subregions were defined by existing The Nature Conservancy (TNC) ecoregional assessment boundaries (Gleason et al. 2004, 2013; Vander Schaaf 2013). </attrdef>
<attrdefs>PMEP</attrdefs>
<attrtype>String</attrtype>
<attrdomv>
<edom>
<edomv>10</edomv>
<edomvd>San Juan Islands and georgia Strait Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>11</edomv>
<edomvd>Whidbey Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>12</edomv>
<edomvd>South Central Puget Sound Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>13</edomv>
<edomvd>South Puget Sound Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>14</edomv>
<edomvd>Hood Canal</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>15</edomv>
<edomvd>North Central Puget Sound Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>16</edomv>
<edomvd>Strait of Juan de Fuca Basin</edomvd>
<edomvds>PSNERP</edomvds>
</edom>
<edom>
<edomv>20</edomv>
<edomvd>Point Grenville to International Boundary</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>21</edomv>
<edomvd>Cape Lookout to Point Grenville</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>22</edomv>
<edomvd>Cape Blanco to Cape Lookout</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>23</edomv>
<edomvd>Cape Mendocino to Cape Blanco</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>30</edomv>
<edomvd>Cape Mendocino to Point Reyes</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>31</edomv>
<edomvd>Point Reyes to Point Sur</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>32</edomv>
<edomvd>Point Sur to Point Arguello</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>33</edomv>
<edomvd>Point Arguello South including San Juan Seamount</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>40</edomv>
<edomvd>Point Conception to Palos Verdes</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
<edom>
<edomv>41</edomv>
<edomvd>Palos Verdes to US-Mexico Border</edomvd>
<edomvds>TNC, PMEP</edomvds>
</edom>
</attrdomv>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PMEP_Zone</attrlabl>
<attalias>PMEP Zone</attalias>
<attrdef>Zones with PMEP's boundaries defined by depth, using CMECS Aquatic Setting as the basis for zone breaks. </attrdef>
<attrdefs>PMEP, CMECS</attrdefs>
<attrtype>Text</attrtype>
<attrdomv>
<edom>
<edomv>0</edomv>
<edomvd>Landward Zone</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>1</edomv>
<edomvd>Core Zone (Estuary Overlap)</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>2</edomv>
<edomvd>Core Zone (Shoreline to -30m), State Waters</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>3</edomv>
<edomvd>Core Zone (Shoreline to -30m), Federal</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>4</edomv>
<edomvd>Seaward Zone (-30m to -100m), State Waters</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>5</edomv>
<edomvd>Seaward Zone (-30m to -100m), Federal</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>6</edomv>
<edomvd>Deep Shelf or Channel (-100m to -200m), State Waters</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>7</edomv>
<edomvd>Deep Shelf or Channel (-100m to -200m), Federal</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>8</edomv>
<edomvd>Outside PMEP Score (&gt;-300m) or International Waters</edomvd>
<edomvds>PMEP</edomvds>
</edom>
</attrdomv>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>PMEP_NSID</attrlabl>
<attrdef>Unique ID for each particular zone, it is a combination of PMEP Region, Section, Zone and State</attrdef>
<attrdefs>PMEP</attrdefs>
<attalias Sync="TRUE">PMEP_NSID</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">250</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>State</attrlabl>
<attrdef>U.S. state of the feature</attrdef>
<attrtype>Text</attrtype>
<attalias Sync="TRUE">State</attalias>
<attwidth Sync="TRUE">250</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Code</attrlabl>
<attrdefs>NOAA Coastal Services Center</attrdefs>
<attrdomv>
<edom>
<edomv>1.1</edomv>
<edomvd>Rock Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.1.1</edomv>
<edomvd>Bedrock</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.1.2</edomv>
<edomvd>Megaclast</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2</edomv>
<edomvd>Unconsolidated Mineral Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1</edomv>
<edomvd>Coarse Unconsolidated Substrate </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.1 </edomv>
<edomvd>Gravel</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.1.1</edomv>
<edomvd>Boulder</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.1.2 </edomv>
<edomvd>Cobble</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.1.3 </edomv>
<edomvd>Pebble</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.2 </edomv>
<edomvd>Gravel Mixes</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.2.1</edomv>
<edomvd>Sandy Gravel </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.2.2 </edomv>
<edomvd>Muddy Sandy Gravel </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.2.3 </edomv>
<edomvd>Muddy Gravel </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.3 </edomv>
<edomvd>Gravelly</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.3.1 </edomv>
<edomvd>Gravelly Sand</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1.3.2 </edomv>
<edomvd>Gravelly Muddy Sand </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2 </edomv>
<edomvd>Fine Unconsolidated Substrate </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.1</edomv>
<edomvd>Slightly Gravelly </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.1.1 </edomv>
<edomvd>Slightly Gravelly Sand </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.1.2 </edomv>
<edomvd>Slightly Gravelly Muddy Sand </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.1.3 </edomv>
<edomvd>Slightly Gravelly Sandy Mud </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.1.4 </edomv>
<edomvd>Slightly Gravelly Mud </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.2 </edomv>
<edomvd>Sand</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.3 </edomv>
<edomvd>Muddy Sand </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.4 </edomv>
<edomvd>Sandy Mud </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2.5 </edomv>
<edomvd>Mud</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>2.3.1.2.3</edomv>
<edomvd>Very Coarse Woody Debris</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>2.5.3</edomv>
<edomvd>Shell Hash</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3</edomv>
<edomvd>Anthropogenic Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3.1</edomv>
<edomvd>Anthropogenic Rock</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3.1.2</edomv>
<edomvd>Anthropogenic Rock Rubble</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3.2</edomv>
<edomvd>Anthropogenic Wood</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3.4</edomv>
<edomvd>Metal</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>9.9.9.9.9</edomv>
<edomvd>Unknown</edomvd>
<edomvds>PMEP</edomvds>
</edom>
</attrdomv>
<attalias>CMECS Substrate Code</attalias>
<attrdef>CMECS Substrate Unit Code for feature.</attrdef>
<attrtype>Text</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Name</attrlabl>
<attalias>CMECS Substrate Name</attalias>
<attrdef>CMECS Substrate Unit Code name for feature.</attrdef>
<attrdefs>NOAA Coastal Services Center</attrdefs>
<attrtype>Text</attrtype>
<attrdomv>
<edom>
<edomv>Anthropogenic Rock</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Anthropogenic Substrate that is primarily composed of natural mineral materials that were purposefully or accidentally deposited by humans.</edomvd>
</edom>
<edom>
<edomv>Anthropogenic Rock Rubble</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Substrate that is dominated by Anthropogenic Rock with a median particle size of 64 millimeters to &lt; 4,096 millimeters (Cobbles and Boulders).</edomvd>
</edom>
<edom>
<edomv>Anthropogenic Substrate</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Substrates where percent cover of Anthropogenic Substrate exceeds percent cover of both Geologic Substrate and Biogenic Substrates, considered separately.</edomvd>
</edom>
<edom>
<edomv>Anthropogenic Wood</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Anthropogenic Substrate that is primarily composed of woody materials that were processed or assembled by humans.</edomvd>
</edom>
<edom>
<edomv>Bedrock</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Substrate with mostly continuous formations of bedrock that cover 50% or more of the Geologic Substrate surface.</edomvd>
</edom>
<edom>
<edomv>Boulder</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate contains &gt; 80% Gravel, with a median Gravel size of 256 millimeters to &lt; 4,096 millimeters.</edomvd>
</edom>
<edom>
<edomv>Clay</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains &lt; 10% Sand; the remaining Clay-Silt mix is 67% or more Clay.</edomvd>
</edom>
<edom>
<edomv>Coarse Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of &gt; 90% Sand, with a median grain size of 0.5 millimeters to &lt; 1 millimeter.</edomvd>
</edom>
<edom>
<edomv>Coarse Unconsolidated Substrate</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains &gt; 5% Gravel (particles 2 millimeters to &lt; 4,096 millimeters). These sediments are classified using the upper three rows of the Folk (1954) Gravel-Sand-Mud diagram.</edomvd>
</edom>
<edom>
<edomv>Cobble</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate contains &gt; 80% Gravel, with a median Gravel size of 64 millimeters to &lt; 256 millimeters.</edomvd>
</edom>
<edom>
<edomv>Cobble Mix</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Subtrate surface layer contains 30% to less than 80% Cobble.</edomvd>
</edom>
<edom>
<edomv>Cobbley</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Cobbley Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains 5% to &lt; 30% Cobble (particles with a median Gravel size of 64 millimeters to &lt; 256 millimeters.).</edomvd>
</edom>
<edom>
<edomv>Cobbley Sandy Mud</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Fine Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of &gt; 90% Sand with a median grain size of 0.125 millimeters to &lt; 0.25 millimeters.</edomvd>
</edom>
<edom>
<edomv>Fine Unconsolidated Substrate</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains less than 5% gravel (particles 2 millimeters to &lt; 4,096 millimeters in diameter). These sediments are classified using the bottom two rows of the Folk (1954) Gravel-Sand-Mud diagram, and the entire Folk (1954) Sand-Silt-Clay diagram.</edomvd>
</edom>
<edom>
<edomv>Granule</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate contains &gt; 80% Gravel, with a median Gravel size of 2 millimeters to &lt; 4 millimeters.</edomvd>
</edom>
<edom>
<edomv>Gravel</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains &gt; 80% Gravel (particles 2 millimeters to &lt; 4,096 millimeters diameter).</edomvd>
</edom>
<edom>
<edomv>Gravel Mix</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Gravel Mixes</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains 30% to &lt; 80% Gravel (particles 2 millimeters to &lt; 4,096 millimeters in diameter).</edomvd>
</edom>
<edom>
<edomv>Gravelly</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains 5% to &lt; 30% Gravel (particles 2 millimeters to &lt; 4,096 millimeters in diameter).</edomvd>
</edom>
<edom>
<edomv>Gravelly Mud</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 5% to &lt; 30% Gravel, and the remaining Sand-Mud mix is 50% or more Mud.</edomvd>
</edom>
<edom>
<edomv>Gravelly Muddy Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 5% to &lt; 30% Gravel, and the remaining Sand-Mud mix is 50% to &lt; 90% Sand.</edomvd>
</edom>
<edom>
<edomv>Gravelly Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 5% to &lt; 30% Gravel, and the remaining Sand-Mud mix is 90% or more Sand.</edomvd>
</edom>
<edom>
<edomv>Medium Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of &gt; 90% Sand, with a median grain size of 0.25 millimeters to &lt; 0.5 millimeters.</edomvd>
</edom>
<edom>
<edomv>Megaclast</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Substrate where individual rocks—with particle sizes greater than or equal to 4.0 meters (4,096 millimeters) in any dimension—cover 50% or more of the Geologic Substrate surface.</edomvd>
</edom>
<edom>
<edomv>Metal</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Anthropogenic Substrate that is dominantly composed of metal that was manufactured by humans. Shape for this substrate class is covered in the GC (e.g., Cable Area, Wreck [if metal]).</edomvd>
</edom>
<edom>
<edomv>Metal Reef</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Substrate that is dominated by Metal with a median particle size of 4,096 millimeters or greater in any dimension.</edomvd>
</edom>
<edom>
<edomv>Mud</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of 10% to &lt; 50% Sand; the remainder is composed of Mud (particles less than 0.0625 millimeters in diameter).</edomvd>
</edom>
<edom>
<edomv>Muddy Gravel</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 30% to &lt; 80% Gravel, with Mud composing 50% or more of the remaining Mud-Sand mix.</edomvd>
</edom>
<edom>
<edomv>Muddy Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of 50% to &lt; 90% Sand (particles 0.0625 millimeters to 2 millimeters in diameter); the remainder is composed of Mud (particles less than 0.0625 millimeters in diameter).</edomvd>
</edom>
<edom>
<edomv>Muddy Sandy Cobble Mix</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Muddy Sandy Gravel</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 30% to &lt; 80% Gravel, with Sand composing from 50% to &lt; 90% of the remaining Sand-Mud mix.</edomvd>
</edom>
<edom>
<edomv>Organic Substrate</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Surface layers of substrate are primarily composed of non-living organic material, including fine or coarse organic particles up to 4,096 millimeters in any dimension. Substrates dominated by roots of live vegetation may be classified after removing the root material, and/or they may be classified by specialized methods considering, for example, below-ground biomass. Live fauna, and live flora together with their living root masses, are covered in the BC.</edomvd>
</edom>
<edom>
<edomv>Pebble</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate contains &gt; 80% Gravel, with a median Gravel size of 4 millimeters to &lt; 64 millimeters.</edomvd>
</edom>
<edom>
<edomv>Rock Substrate</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Igneous, metamorphic, or sedimentary rock with particle sizes greater than or equal to 4.0 meters (4,096 millimeters) in any dimension that cover 50% or greater of the Geologic Substrate surface.</edomvd>
</edom>
<edom>
<edomv>Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate surface layer contains no trace of Gravel and is composed of &gt; 90% Sand (particles 0.0625 millimeters to &lt; 2 millimeters in diameter).</edomvd>
</edom>
<edom>
<edomv>Sandy Cobble</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 30% to &lt; 80% Cobble, with Sand composing 90% or more of the remaining Sand-Mud mix.</edomvd>
</edom>
<edom>
<edomv>Sandy Gravel</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 30% to &lt; 80% Gravel, with Sand composing 90% or more of the remaining Sand-Mud mix.</edomvd>
</edom>
<edom>
<edomv>Sandy Mud</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>If 100% of the sample passes sieve 10, and 50-90% of the sample passes sieve 200, then the sample is Sandy Mud. </edomvd>
</edom>
<edom>
<edomv>Sandy Muddy Cobble</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
<edomvd>Geologic Substrate is 30% to &lt; 80% Muddy Cobble, with Sand composing 90% or more of the remaining Sand-Mud mix. </edomvd>
</edom>
<edom>
<edomv>Sandy Silt</edomv>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains 10% to &lt; 50% Sand; the remaining Silt-Clay mix is 67% or more Silt.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Sandy Silt-Clay</edomv>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains 10% to &lt; 50% Sand; the remaining Silt-Clay mix is 33% to &lt; 67% Silt.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Shell Hash</edomv>
<edomvd>Surface substrate layers are dominated by loose shell accumulations with a median particle size of 2 millimeters to &lt; 64 millimeters (Granules and Pebbles). Shells may be broken or whole. The presence of Shell Hash is noted in this subclass (and in the following groups). The presence of living organisms is described in the biotic component.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Silt</edomv>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains 10% to &lt; 50% Sand; the remaining Silt-Clay mix is 67% or more Silt.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Silt-Clay</edomv>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains &lt; 10% Sand; the remaining Silt-Clay mix is &lt; 33% to 67% Silt.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Silty Sand</edomv>
<edomvd>Geologic Substrate surface layer shows no trace of Gravel and contains 50% to &lt; 90% Sand; the remaining Silt-Clay mix is 67% or more Silt.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Slightly Cobbley Sand</edomv>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Slightly Gravelly Mud</edomv>
<edomvd>If more than 95% of the sample passes sieve 10, and 90-100% of the sample passes sieve 200, then the sample is Slightly Gravelly Mud. </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Slightly Gravelly Muddy Sand</edomv>
<edomvd>If more than 95% of the sample passes sieve 10, and 10-50% of the sample passes sieve 200, then the sample is Slightly Gravelly Muddy Sand. </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Slightly Gravelly Sand</edomv>
<edomvd>If more than 95% of the sample passes sieve 10, and less than 10% of the sample passes sieve 200, then the sample is Slightly Gravelly Sand.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Unclassified</edomv>
<edomvd>Unclassified / no data</edomvd>
<edomvds>PMEP</edomvds>
</edom>
<edom>
<edomv>Unconsolidated Mineral Substrate</edomv>
<edomvd>Geologic Substrate with less than 50% cover of Rock Substrate. It is any mix of loose mineral substrate that occurs at any range of sizes—from Boulders to Clay.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Very Coarse Woody Debris</edomv>
<edomvd>Woody Debris with a median particle size from 256 millimeters to &lt; 4,096 millimeters.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Woody Debris</edomv>
<edomvd>Organic substrates that are primarily composed of small trees, branches, wood, or wood fragments that are broken into particles with a median particle size from 4 millimeters to 4,096 millimeters.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
</attrdomv>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Category</attrlabl>
<attalias>CMECS Substrate Category</attalias>
<attrdef>Summary level substrate category based on CMECS Origin, Class, or Subclass Units.</attrdef>
<attrdefs>PMEP</attrdefs>
<attrtype>Text</attrtype>
<attrdomv>
<edom>
<edomv>Rock Substrate</edomv>
<edomvd>Igneous, metamorphic, or sedimentary rock with particle sizes greater than or equal to 4.0 meters (4,096 millimeters) in any dimension that cover 50% or greater of the Geologic Substrate surface.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Unconsolidated Mineral Substrate</edomv>
<edomvd>Geologic Substrates with less than 50% cover of Rock Substrate. </edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Coarse Unconsolidated Substrate</edomv>
<edomvd>Geologic Substrate surface layer contains &gt; 5% Gravel (particles 2 millimeters to &lt; 4,096 millimeters).</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Fine Unconsolidated Substrate</edomv>
<edomvd>Geologic Substrate surface layer contains less than 5% gravel (particles 2 millimeters to &lt; 4,096 millimeters in diameter).</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Biogenic Substrate</edomv>
<edomvd>Substrates where percent cover of non-living Biogenic Substrate exceeds percent cover of both Geologic Substrate and Anthropogenic Substrates, when all are considered separately.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>Anthropogenic Substrate</edomv>
<edomvd>Substrates where percent cover of Anthropogenic Substrate exceeds percent cover of both Geologic Substrate and Biogenic Substrates, considered separately.</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
</attrdomv>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Category_Code</attrlabl>
<attalias>CMECS Substrate Category code</attalias>
<attrdef>Code for the summary level substrate category based on CMECS Origin, Class, or Subclass Units.</attrdef>
<attrdefs>PMEP / Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</attrdefs>
<attrtype>Text</attrtype>
<attrdomv>
<edom>
<edomv>1.1</edomv>
<edomvd>Rock Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2</edomv>
<edomvd>Unconsolidated Mineral Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.1</edomv>
<edomvd>Coarse Unconsolidated Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>1.2.2</edomv>
<edomvd>Fine Unconsolidated Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>2</edomv>
<edomvd>Biogenic Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
<edom>
<edomv>3</edomv>
<edomvd>Anthropogenic Substrate</edomvd>
<edomvds>Coastal and Marine Ecological Classification Standard (CMECS) version 4.0</edomvds>
</edom>
</attrdomv>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">Induration</attrlabl>
<attalias Sync="TRUE">Induration</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Cartography</attrlabl>
<attalias>CMECS Cartography</attalias>
<attrdef>A combination of CMECS Category Code and CMECS Category for use in cartography</attrdef>
<attrdefs>PMEP</attrdefs>
<attrtype>Text</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>CMECS_SC_Cartography_Detail</attrlabl>
<attalias>CMECS Substrate Cartography Detail</attalias>
<attrdef>A combinated of CMECS Substrate Code and CMECS Substrate Name.</attrdef>
<attrdefs>PMEP</attrdefs>
<attrtype>Text</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Modifier</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Modifier</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_Co_Oc</attrlabl>
<attalias Sync="TRUE">CMECS_Co_Oc</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">255</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl>StateWaters</attrlabl>
<attrdef>Yes or No: is the feature within U.S. State Waters</attrdef>
<attrdefs>PMEP</attrdefs>
<attrtype>Text</attrtype>
<attalias Sync="TRUE">StateWaters</attalias>
<attwidth Sync="TRUE">250</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Subgroup</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Subgroup</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>Substrate subgroups are determined by Folk (1954) mixes for Geologic Sediments and by taxa for the Biogenic
Substrates. Subgroups are not used for Anthropogenic Substrates.</attrdef>
<attrdefs>CMECS 2012</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Level</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Level</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>The lowest level of CMECS Substrate unit level classified. This includes Origin, Class, Subclass, Group, and Subgroup.</attrdef>
<attrdefs>PMEP</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Origin</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Origin</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>The first level of classification in the SC is substrate origin, which is subdivided into Geologic Substrate, Biogenic
Substrate, and Anthropogenic Substrate. The substrate origin type is assigned based on dominance (greatest percent
cover) of either the geologic, biogenic (but no longer living), or anthropogenic upper layer of substrate. Mixes of origins
are addressed through Co-occurring Elements Modifiers (see CMECS Section 10).</attrdef>
<attrdefs>CMECS 2012</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Class</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Class</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>Substrate classes are determined by the composition and particle size of the dominant substrate origin in the surface
sediments. Class definitions represent a merging of approaches from Wentworth (1922), Folk (1954), and the FGDC-STD-
004.</attrdef>
<attrdefs>CMECS 2012</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Subclass</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Subclass</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>Substrate subclasses are determined by the composition and particle size of the dominant substrate origin in the surface
sediments. Subclass definitions represent a merging of approaches from Wentworth (1922), Folk (1954), and the FGDCSTD-
004.</attrdef>
<attrdefs>CMECS 2012</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">NMFS_HAPC</attrlabl>
<attalias Sync="TRUE">NMFS_HAPC</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">255</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">CMECS_SC_Group</attrlabl>
<attalias Sync="TRUE">CMECS_SC_Group</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">500</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>Substrate groups are determined by Folk (1954) mixes for Geologic Sediments and by taxa for the Biogenic Substrates.
Groups are not used for Anthropogenic Substrates.</attrdef>
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<resTitle>PMEP West Coast Nearshore Substrate Habitat</resTitle>
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<otherCitDet>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.</otherCitDet>
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<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;&lt;SPAN&gt;The &lt;/SPAN&gt;&lt;/SPAN&gt;&lt;A href="http://www.pacificfishhabitat.org/"&gt;&lt;SPAN&gt;&lt;SPAN&gt;Pacific Marine and Estuarine Fish Habitat Partnership&lt;/SPAN&gt;&lt;/SPAN&gt;&lt;/A&gt;&lt;SPAN /&gt;&lt;SPAN&gt; (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 the Substrate Component (SC) of the Coastal and Marine Ecological Classification Standard (CMECS) out to the deepest edge of available data on the West Coast of the conterminous United States. The SC is organized into a branched hierarchy of five nested levels: substrate origin, substrate class, substrate subclass, substrate group, and substrate subgroup. Groups and subgroups of the SC are determined by the dominant substrate (defined as the most abundant in terms of percent cover). This is a data compilation; we cross-walked attributes from 70 datasets into CMECS SC ecological units. These classifications were applied to Nearshore Zones currently part of the Pacific Marine and Estuarine Fish Habitat Partnership’s (PMEP) spatial data system, within the “&lt;/SPAN&gt;&lt;A href="https://psmfc.maps.arcgis.com/home/item.html?id=e7797a548fe74ee0a5dd387a090b41e7"&gt;&lt;SPAN&gt;West Coast USA Nearshore Zones&lt;/SPAN&gt;&lt;/A&gt;&lt;SPAN&gt;” (PMEP) layer. For full documentation of CMECS, see https://coast.noaa.gov/data/digitalcoast/pdf/cmecs.pdf.&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;Vers. 2.1, Last Updated June 2025&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
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<statement>These data are based on a combination of datasets of varying quality and resolution, and represent the Substrate Component (SC) of the Coastal and marine Ecological Classification Standard (CMECS) in nearshore and coastal waters within the Exclusive Economic Zone (EEZ) of the West Coast of the contiguous United States.. This is a data compilation; all source datasets are listed below. For full details on data processing, please email gis@psmfc.org.
These data are a companion to the 2022 report, "State of the Knowledge of U.S. West Coast Nearshore Habitat Use by Fish Assemblages and Select Invertebrates." which is available at www.pacificfishhabitat/assessment-reports. These data are also a part of PMEP's spatial data system.
Substrate Datasets (Salish Sea):
• Essential Fish Habitat Mapping (SGH V5) (Oregon State University, Active Tectonics &amp; Seafloor Mapping Lab (AT&amp;SML), NOAA Fisheries Northwest Fisheries Science Center, and the Bureau of Ocean Energy Management, 2014)
• Olympic Coast Sanctuary Seafloor Mapping Data (OCNMS, 2015)
• Skagit County Intertidal Habitat Inventory (WA DNR, 1996)
• Whatcom County Intertidal Habitat Inventory (WA DNR, 1995)
• Tulalip Intertidal Habitat Inventory (North Puget Sound, Possession Sound, and Port Susan) (Tulalip and Stillaguamish Tribes, 2001)
• Bloch Marine Substrate (WA DNR, 2005)
• Salish Sea Benthic Habitat Maps (TNC, 2014)
• National Wetlands Inventory (NWI, 2016)
Substrate Datasets (Pacific Northwest)
• Essential Fish Habitat Mapping (SGH V5) (Oregon State University, Active Tectonics &amp; Seafloor Mapping Lab (AT&amp;SML), NOAA Fisheries Northwest Fisheries Science Center, and the Bureau of Ocean Energy Management, 2014)
• Olympic Coast Sanctuary Seafloor Mapping Data (OCNMS, 2015)
• California Substrate Habitat (USCS &amp; CDFW, 2020)
• California Substrate Habitat (modeled white zone) (USCS &amp; CDFW, 2020)
• Oregon’s Shore Substrate Habitats (CMECS) (DLCD, 2020)
• Offshore Eel River, CSWMS (USGS, 2023)
• Offshore Cape Mendocino, CSWMS (USGS, 2023)
• Offshore Eureka, CSWMS (USGS, 2024)
• Offshore Arcata, CSWMS (USGS, 2024)
• Visual observations of geologic substrate, Oregon OCS Survey (USGS, 2017)
Substrate Datasets (Central California)
• Essential Fish Habitat Mapping (SGH V5) (Oregon State University, Active Tectonics &amp; Seafloor Mapping Lab (AT&amp;SML), NOAA Fisheries Northwest Fisheries Science Center, and the Bureau of Ocean Energy Management, 2014)
• California Substrate Habitat (USCS &amp; CDFW, 2020)
• Nearshore Habitat Mapping - North Central Coast (Ocean Imaging, 2010)
• Drakes Bay and Vicinity (CSMP) (USGS, 2014)
• Fanny Shoal Habitat (CSMP) (USGS, 2006)
• Monterey Canyon and Vicinity (CSMP) (USGS, 2016)
• North Anacapa Island (CSMP) (USGS, 2002)
• Offshore Aptos (CSMP) (USGS, 2016)
• Offshore Bodega Head (CSMP) (USGS, 2014)
• Offshore Bolinas (CSMP) (USGS, 2015)
• Offshore Fort Ross (CSMP) (USGS, 2015)
• Offshore of Half Moon Bay, California (CSMP) (USGS, 2014)
• Offshore Pacifica (CSMP) (USGS, 2014)
• Offshore Pigeon Point (CSMP) (USGS, 2015)
• Offshore Point Reyes (CSMP) (USGS, 2015)
• Offshore Salt Point (CSMP) (USGS, 2015)
• Offshore Santa Cruz (CSMP) (USGS, 2016)
• Offshore Scott Creek (CSMP) (USGS, 2015)
• Offshore of Monterey, California (CSMP) (USGS, 2016)
• Offshore Tomales Point (CSMP) (USGS, 2015)
• Offshore Ventura (CSMP) (USGS, 2013)
• San Miguel Island Habitat (CSMP) (USGS, 2003)
• Offshore of San Gregorio (CSMP) (USGS, 2014)
• Big Sycamore Reserve Area (CSMP) (USGS, 2002)
• Golden Gate National Recreation Area (GGNRA) Habitats (U.S. NPS, 2009)
• Golden Gate National Recreation Area (GGNRA) Habitats (White Zone) (U.S. NPS, 2009)
• Point Reyes National Seashore Habitats (U.S. NPS, 2009)
• Point Reyes National Seashore Habitats (White Zone) (U.S. NPS, 2009)
• Offshore Point Estero, CSWMS (USGS, 2022)
• Offshore Morro Bay, CSWMS (USGS, 2022)
• Offshore Point Buchon, CSWMS (USGS, 2022)
• CalDIG (BOEM, 2022)
• Tanner Bank (ATSML, 2007)
• Cherry Bank (ATSML, 2007)
• Potato Bank (ATSML, 2007)
• Osborn Bank (ATSML, 2007)
• 43 FathomBank (ATSML, 2007)
• Pilgrim/Kidney Banks(ATSML, 2007)
• Upper Farallon Escarpment Seafloor Character (USGS, 2014)
• Rittenburg Bank Seafloor Character (USGS, 2014)
• Cordell Bank Habitat Map (CSUMB, 2005)
Substrate Datasets (Southern California Bight)
• Essential Fish Habitat Mapping (SGH V5) (Oregon State University, Active Tectonics &amp; Seafloor Mapping Lab (AT&amp;SML), NOAA Fisheries Northwest Fisheries Science Center, and the Bureau of Ocean Energy Management, 2014)
• California Substrate Habitat (USCS &amp; CDFW, 2020)
• Offshore Coal Oil Point (CSMP) (USGS, 2014)
• Offshore Point Conception (CSMP) (USGS, 2018)
• North Anacapa Island Habitat (CSMP) (USGS, 2003)
• Offshore Ventura (CSMP) (USGS, 2013)
• Hueneme Canyon (CSMP) (USGS, 2023)
• Offshore Carpinteria (CSMP) (USGS, 2013)
• Offshore Gaviota (CSMP) (USGS, 2018)
• Offshore Refugio Beach (CSMP) (USGS, 2015)
• Offshore Santa Barbara (CSMP) (USGS, 2013)
• South Anacapa Island (sanahab) (CSMP) (USGS, 2005)
• South Anacapa Passage (sanphab) (CSMP) (USGS, 2005)
• South East Santa Cruz Island (secruhab) (CSMP) (USGS, 2005)
• North Anacapa Passage (nanphab) (CSMP) (USGS, 2005)
• Channel Islands National Park Habitats (U.S. NPS, 2015)
• Channel Islands National Park Habitats (including White Zone) (U.S. NPS, 2015)
• Seafloor Habitat Mapping Nearshore San Diego County (SANDAG, 2005)
• Nearshore Substrate Mapping Change Analysis using Multispectral Imagery, California South Coast MPA Baseline Study (Ocean Imaging, 2011)</statement>
<prcStep>
<stepDesc>Step 1: Projected source datasets into West Coast Custom Mercator projection.</stepDesc>
<stepRat>To have standardized spatial project for all source datasets for geoprocessing.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 2: Converted any source raster datasets to vector format.</stepDesc>
<stepRat>To work with consistently formatted source datasets.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 3: Cross-walked data from source habitat classification into CMECS. </stepDesc>
<stepRat>To standardize source habitat information into CMECS ecological units. </stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 4: Assigned data source ID’s for each unique dataset to track source attribute information.</stepDesc>
<stepRat>To track data source throughout data processing steps. </stepRat>
<stepSrc type="">
<srcDesc>PMEP's U.S. West Coast Nearshore Zones</srcDesc>
</stepSrc>
</prcStep>
<prcStep>
<stepDesc>Step 5: Using the results of the CMECS crosswalks from Step 3, Standardized attributes were calculated.</stepDesc>
<stepRat>To standardize source habitat information into CMECS ecological units.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 6: Standardized datasets from Step 3 were overlayed with the PMEP Nearshore Zones dataset and PMEP's estuary extent dataset to identify zones, regions and estuary overlap for datasets.</stepDesc>
<stepRat>To standardize data within PMEP Nearshore Zones and PMEP Estuary Extent to be part of PMEP's spatial data system.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 7: Determined hierarchy of input datasets in order to identify the best available data for a location. Dataset prioritizations were based on the quality of data within an Ecoregion, which were determine based on the resolution or scale of the data, year collected, and data collection method (imagery classification, remote sensing interpretations, ground-trothing). High quality data were given priority over moderate, low, or modeled data. In some cases, datasets classified as “high” data quality had limited habitat classifications, and if other moderate or high quality data were available for the area with a more detailed level of classification, they were given priority. Data priority and rational, by PMEP Region:
Salish Sea: 1. All three intertidal habitat inventories were merged and given top priority since they were more recent and the substrate classifications were a result of groundtruthing and expert interpretation. 2. Olympic Coast Sanctuary Seafloor Mapping Data have the best and most recently available information for the outer portion of the Strait of Juan de Fuca.
3. Salish Sea Benthic Habitat Maps by TNC. This dataset is a compilation of data sources compiled by the Nature Conservancy. These data were given the next priority, with the exception of if their underlying data source came from NOAA Bathymetry Maps, since those features were older and of lower quality.
4. National Wetlands Inventory was given the next level priority, and priority over the NOAA Bathymetry Maps source data from the TNC dataset.
5. Block Marine Substrate filled remaining holes where available. 6. Remaining areas with no data classified as “Unclassified.”
Pacific Northwest:
1. Olympic Coast Sanctuary Seafloor Mapping Data have the best and most recently available information for the northwest portion of the region.
2. Oregon's Shore Substrate Habitats (CMECS) by the Oregon Coastal Management Program provided the most detailed information on shallow areas adjacent to the shoreline.
3. California Substrate Habitat and modeled white zone data were given highest priority for the areas in California state waters of the PNW region. 4. Essential Fish Habitat Mapping (SGH V5) data were used for any remaining areas of the region.
Central California
1. All USGS data collected as part of the CSWMS were merged and given the top priority as they are all high resolution with detailed classifications.
2. National Park Service data were given the next level of priority.
3. Ocean Imaging’s Nearshore Habitat Mapping for the North-Central California coast data was given the next priority because of the resolution and area of focus, which was the nearshore and areas along the shoreline.
4. California Substrate Habitat and modeled white zone data were given the next highest priority for the areas in California state waters. These data do overlap with USGS and Ocean Imaging’s data, and were given a lower priority, despite being high resolution, since the classification was limited to two categories (either rock or sediment).
5. Essential Fish Habitat Mapping (SGH V5) data were used for any remaining areas of the region.
Southern California:
1. All USGS data collected as part of the CSWMS were merged (they all represent different areas of the coast) and given the top priority as they are all high resolution with detailed classifications.
2. National Park Service data were given the next level of priority.
3. Ocean Imaging’s Nearshore Substrate Mapping Change Analysis using Multispectral Imagery, California South Coast MPA Baseline Study data were given the next priority because of the resolution and area of focus, which was the nearshore and areas along the shoreline.
4. California Substrate Habitat and modeled white zone data were given the next highest priority for the areas in California state waters. These data do overlap with USGS and Ocean Imaging’s data, and were given a lower priority, despite being high resolution, since the classification was limited to two categories (either rock or sediment).
5. Essential Fish Habitat Mapping (SGH V5) data were used for any remaining areas of the region.
</stepDesc>
<stepRat>Create a priority hierarchy for data integration into West Coast wide product using best available data for a specific location.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 8: Data were combined based on their priority, with any higher priority dataset replacing any lower priority dataset. Using Model Builder, higher ranked datasets erased and replaced lower ranked dataset within the study area footprint. The erase and append tools were used for this processing step. </stepDesc>
<stepRat>To combine data based on priority hierarchy.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 9: Removed overlaps. Used the “Count overlapping features” to identify and then remove any overlaps across datasets that may have occurred during data processing. Classification choice between overlapping polygons, where present, was based on data priority.</stepDesc>
<stepRat>To remove any overlapping features.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 10: Eliminate polygons &lt; 30m in size. Using the “Elimate” tool, removed any polygons that were less than 30m in size. This reduced the noise from high resolution source raster datasets, and enforced a 30m minimum mapping unit (MMU) size for the dataset.</stepDesc>
<stepRat>To enforce a 30m MMU.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 11: Dissolve based on CMECS habitat classification and Nearshore Zones attributes.</stepDesc>
<stepRat>To simplify data and enhance data loading capabilities.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 12: Repaired geometry. </stepDesc>
<stepRat>QA/QC, to inspect feature for geometry and repair them.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Step 13: Using the Merge tool, combined region-based datasets into one West Coast wide dataset.</stepDesc>
<stepRat>To have a standardized, West Coast wide habitat dataset.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Built spatial data index</stepDesc>
<stepRat>To create a grid that makes the data easier and quicker to load.</stepRat>
</prcStep>
<prcStep>
<stepDesc>Data update March 2024:
• Identified 18 datasets to update the substrate data; 7 were published since the original dataset release (2022), 11 were datasets not included in the original version. New data included:
• Visual observations of geologic substrate, Oregon OCS Survey (USGS, 2017)
• CalDIG (BOEM, 2022)
• Tanner Bank (ATSML, 2007)
• Cherry Bank (ATSML, 2007)
• Potato Bank (ATSML, 2007)
• Osborn Bank (ATSML, 2007)
• 43 FathomBank (ATSML, 2007)
• Pilgrim/Kidney Banks(ATSML, 2007)
• Upper Farallon Escarpment Seafloor Character (USGS, 2014)
• Rittenburg Bank Seafloor Character (USGS, 2014)
• Cordell Bank Habitat Map (CSUMB, 2005)
• Offshore Point Estero, CSWMS (USGS, 2022)
• Offshore Morro Bay, CSWMS (USGS, 2022)
• Offshore Point Buchon, CSWMS (USGS, 2022)
• Offshore Eel River, CSWMS (USGS, 2023)
• Offshore Cape Mendocino, CSWMS (USGS, 2023)
• Offshore Eureka, CSWMS (USGS, 2024)
• Offshore Arcata, CSWMS (USGS, 2024)
• Updated classifications on the following datasets:
-Datasets #16 &amp; 17 (Ocean Imaging), changed classification of "Sandy Beach" from "Sand" to "Unconsolidated Mineral Substrate". There was not enough details on source grain size to classify to a finer level in cmecs.
-Datasets #96 (USGS Southern Salish Sea Habitat Map Series), changed classification of "Cobbley" to "Gravelly" and changed "Cobble Mixes" and "Muddy Sandy Cobble Mix" to "Gravel Mixes".
• Followed processing steps 1-6 outlined above for the 6 new datasets.
• Erased the extent of the 18 datasets from the August 2022 version of PMEP Substrate data (remove older data), where relevant. 2 datasets were beyond the scope of the original dataset (deeper than -200m).
• Appended datasests, updating the Pacific Northwest (PNW) regional data and Central California (CC) regional data.
• Appended data beyond -200m out to the exclusive economic zone (data previously not included in the August 2022 substrate data), including 2 new datasets.
• Followed data processing steps 9-14 outlined above.</stepDesc>
<stepRat>To include new substrate data made available since publication in 2022 and data not included in the origal version. In addition, extend the original dataset beyond -200 out to the deepest edge of available data.</stepRat>
<stepDateTm>2024-04-15T00:00:00</stepDateTm>
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<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN STYLE="font-size:12pt"&gt;This product is the result of compiling unique datasets into one standardized dataset. Source datasets ranged in spatial and temporal scale, and were collected and interpreted using different methodologies. This dataset though classified using the same system (CMECS) may vary by location due to source inputs.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
</Consts>
</mdConst>
</metadata>
