<?xml version="1.0" encoding="UTF-8" standalone="no"?><metadata>
    	
    <idinfo>
        		
        <citation>
            			
            <citeinfo>
                				
                <origin>U.S. Department of Commerce, U.S. Census Bureau, Geography 
                    Division</origin>
                				
                <pubdate>2015</pubdate>
                				
                <title>TIGER/Line Shapefile, 2015,  county, Brevard County, FL, All Roads County-based Shapefile</title>
                				
                <edition>2015</edition>
                				
                <geoform>vector digital data</geoform>
                				
                <onlink>http://www2.census.gov/geo/tiger/TIGER2015/ROADS/tl_2015_12009_roads.zip</onlink>
                			
            </citeinfo>
            		
        </citation>
        		
        <descript>
            			
            <abstract>The TIGER/Line shapefiles and related database files (.dbf) are an extract of selected geographic and cartographic information from the U.S. Census Bureau's Master Address File / Topologically Integrated Geographic Encoding and Referencing (MAF/TIGER) Database (MTDB).  The MTDB represents a seamless national file with no overlaps or gaps between parts, however, each TIGER/Line shapefile is designed to stand alone as an independent data set, or they can be combined to cover the entire nation.


The All Roads Shapefile includes all features within the MTDB Super Class "Road/Path Features" distinguished where the MAF/TIGER Feature Classification Code (MTFCC) for the feature in MTDB that begins with "S".  This includes all primary, secondary, local neighborhood, and rural roads, city streets, vehicular trails (4wd), ramps, service drives, alleys, parking lot roads, private roads for service vehicles (logging, oil fields, ranches, etc.), bike paths or trails, bridle/horse paths, walkways/pedestrian trails, and stairways.  
</abstract>
            			
            <purpose>In order for others to use the information in the Census MAF/TIGER database in a geographic information system (GIS) or for other geographic applications, the Census Bureau releases to the public extracts of the database in the form of TIGER/Line Shapefiles.</purpose>
            		
        </descript>
        		
        <timeperd>
            			
            <timeinfo>
                				
                <rngdates>
                    					
                    <begdate>201406</begdate>
                    					
                    <enddate>201505</enddate>
                    				
                </rngdates>
                			
            </timeinfo>
            			
            <current>Publication Date</current>
            		
        </timeperd>
        		
        <status>
            			
            <progress>Complete</progress>
            			
            <update>No changes or updates will be made to this version of the TIGER/Line Shapefiles.  Future releases of TIGER/Line Shapefiles will reflect updates made to the Census MAF/TIGER database.</update>
            		
        </status>
        		
        <spdom>
            			
            <bounding>
                				
                <westbc>-80.98725</westbc>
                				
                <eastbc>-80.385069</eastbc>
                				
                <northbc>28.791396</northbc>
                				
                <southbc>27.822058</southbc>
                			
            </bounding>
            		
        </spdom>
        		
        <keywords>
            			
            <theme>
                				
                <themekt>NGDA Portfolio Themes</themekt>
                				
                <themekey>NGDA</themekey>
                				
                <themekey>Transportation Theme</themekey>
                				
                <themekey>National Geospatial Data Asset</themekey>
                			
            </theme>
            			
            <theme>
                				
                <themekt>None</themekt>
                				
                <themekey>County or equivalent entity</themekey>
                				
                <themekey>Linear Feature</themekey>
                				
                <themekey>Address Range</themekey>
                				
                <themekey>Street Centerline</themekey>
                				
                <themekey>Road Feature</themekey>
                				
                <themekey>Roads</themekey>
                			
            </theme>
            			
            <theme>
                				
                <themekt>ISO 19115 Topic Categories</themekt>
                				
                <themekey>Transportation</themekey>
                			
            </theme>
            			
            <place>
                				
                <placekt>ANSI INCITS 38:2009 (Formerly FIPS 5-2), 
                              ANSI INCITS 31:2009 (Formerly FIPS 6-4),ANSI 
                              INCITS 454:2009 (Formerly FIPS 8-6), ANSI INCITS 
                              455:2009(Formerly FIPS 9-1), ANSI INCITS 446:2008                           (Geographic Names Information System (GNIS))
</placekt>
                				
                <placekey>
United States
</placekey>
                				
                <placekey>
U.S.
</placekey>
                				
                <placekey>
County or Equivalent Entity
</placekey>
                				
                <placekey>
Brevard
</placekey>
                				
                <placekey>
12009
</placekey>
                			
            </place>
            		
        </keywords>
        		
        <accconst>None</accconst>
        		
        <useconst>The TIGER/Line Shapefile products are not copyrighted however TIGER/Line and Census TIGER are registered trademarks of the U.S. Census Bureau.  These products are free to use in a product or publication, however acknowledgement must be given to the U.S. Census Bureau as the source.
The horizontal spatial accuracy information present in these files is provided for the purposes of statistical analysis and census operations only.  No warranty, expressed or implied is made with regard to the accuracy of the spatial accuracy, and no liability is assumed by the U.S. Government in general or the U.S. Census Bureau, specifically as to the spatial or attribute accuracy of the data.  The TIGER/Line Shapefiles may not be suitable for high-precision measurement applications such as engineering problems, property transfers, or other uses that might require highly accurate measurements of the earth's surface.Coordinates in the TIGER/Line shapefiles have six implied decimal places, but the positional accuracy of these coordinates is not as great as the six decimal places suggest.</useconst>
        		
        <ptcontac>
            			
            <cntinfo>
                				
                <cntorgp>
                    					
                    <cntorg>U.S. Department of Commerce, U.S. Census Bureau, 
                         Geography Division, Geographic Products Branch</cntorg>
                    				
                </cntorgp>
                				
                <cntaddr>
                    					
                    <addrtype>mailing</addrtype>
                    					
                    <address>4600 Silver Hill Road, Stop 7400</address>
                    					
                    <city>Washington</city>
                    					
                    <state>DC</state>
                    					
                    <postal>20233-7400</postal>
                    					
                    <country>United States</country>
                    				
                </cntaddr>
                				
                <cntvoice>301-763-1128</cntvoice>
                				
                <cntfax>301-763-4710</cntfax>
                				
                <cntemail>geo.tiger@census.gov</cntemail>
                			
            </cntinfo>
            		
        </ptcontac>
        	
    </idinfo>
    	
    <dataqual>
        		
        <attracc>
            			
            <attraccr>Accurate against National Standard Codes, Federal Information Processing (FIPS) and the Geographic Names Information System (GNIS) at the 100% level for the codes and base names.  The remaining attribute information has been examined but has not been fully tested for accuracy.</attraccr>
            		
        </attracc>
        		
        <logic>There may be some inconsistencies in feature names along features.  An anomaly exists with the sporadic occurrence of road segments comprising a complete chain with different MAF/TIGER Feature Census Class Code (MTFCC) values assigned.  This problem could affect applications that use the MTFCC values for network analysis, routing, or for assigning symbology to a feature when creating a map.
The Census Bureau performed automated tests to ensure logical consistency and limits of shapefiles.  Node/geometry and topology relationships are collected or generated to satisfy topological edit requirements.  These requirements include:
(1) Complete chains must begin and end at nodes.
(2) Complete chains must connect to each other at nodes.
(3) Complete chains do not extend through nodes.
(4) Left and right polygons are defined for each complete chain element and are consistent throughout the extract process.
(5) The chains representing the limits of the files are free of gaps.</logic>
        		
        <complete>Data completeness of the TIGER/Line Shapefiles reflects the contents of the Census MAF/TIGER database at the time the TIGER/Line Shapefiles were created.</complete>
        		
        <posacc>
            			
            <horizpa>
                				
                <horizpar>The Census Bureau uses Global Positioning System (GPS) coordinates at road centerline intersections to evaluate the horizontal spatial accuracy of source files that may be used to realign road features in the MAF/TIGER database and test the horizontal spatial accuracy of the road features in the TIGER/Line Shapefiles.  The test compares a survey-grade GPS coordinate to its associated road centerline intersection in the TIGER/Line Shapefiles.  The test is based on an independent collection of GPS coordinates for a random sample of road intersections from a centerline file that meet certain criteria.  The points are referred to as the sample points and are gathered through a private contractor working for the Census Bureau.  Since the collection method uses survey-quality GPS-based field techniques, the resulting control points are considered 'ground truth' against which the TIGER road centerline intersection coordinates are compared.  The distances between the coordinates are calculated and the Census Bureau determines the Circular Error 95% (CE95).  That is, the accuracy of the file in meters with 95% confidence.  The CE95 can be calculated from the mean and standard deviation by using the formula: mean of differences plus (2.65 times the standard deviation).  CE95 results reported for each file tested are determined using a spreadsheet with embedded statistical formula.  The use and applicability of the spreadsheet and its embedded formula have been verified by Census Bureau statisticians.  The basis of the calculation is the use of the root mean square error (RMSE).  This is the method as stated in the U.S. Government's Federal Geographic Data Committee Standard FGDC-STD-007.3-1998, Geospatial Positioning Accuracy Standards.  Part 3: National Standard for Spatial Data Accuracy.  The results of using this measure of accuracy are in compliance with Federal Spatial Data requirements.  In terms of the Census Bureau application, the dataset coordinate values are those taken from the centerline file and the coordinate values from an independent source of higher accuracy are those acquired through the Census Bureau's contractor.  Please note that the horizontal spatial accuracy, where reported, refers only to the realigned road features identified as matched to the positionally accurate source file with that accuracy.  It is not the spatial accuracy of the TIGER/Line Shapefile as a whole.</horizpar>
                				
                <qhorizpa>
                    					
                    <horizpav>6.62 meters for 3871</horizpav>
                    					
                    <horizpae>The Census Bureau uses root mean square error (RMSE) as stated in the FGDC-STD-007. 3-1998, Geospatial Positioning Accuracy Standards, Part 3: National Standard for Spatial Data Accuracy.</horizpae>
                    				
                </qhorizpa>
                			
            </horizpa>
            		
        </posacc>
        		
        <lineage>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>U.S. Department of Commerce, U.S. Census Bureau, Geography Division</origin>
                        						
                        <pubdate>Unpublished material</pubdate>
                        						
                        <title>Census MAF/TIGER database</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>online</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>201406</begdate>
                            							
                            <enddate>201505</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Publication Date</srccurr>
                    				
                </srctime>
                				
                <srccitea>MAF/TIGER</srccitea>
                				
                <srccontr>All line segments</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>3871
				Brevard County
				E911 Admn - Info Tech Dept</origin>
                        						
                        <pubdate>20050914</pubdate>
                        						
                        <title>brevard_street.shp</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>CD-ROM</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>20050914</begdate>
                            							
                            <enddate>20050914</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Unknown</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected road features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>4942
				United States Geological Survey
				National Mapping Division</origin>
                        						
                        <pubdate>20020101</pubdate>
                        						
                        <title>USGS- DOQ and DOQQ</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>CD-ROM</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>20020101</begdate>
                            							
                            <enddate>20020101</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>20020101</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected road features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>4943
				USGS - National Hydrography Dataset
				Coordination and Requirements (C&amp;R)</origin>
                        						
                        <pubdate>Unknown</pubdate>
                        						
                        <title>National Hydrography Dataset - High Res.</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>Internet Download</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>Unknown</begdate>
                            							
                            <enddate>Unknown</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Unknown</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected hydrographic features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>5248
				USGS - National Hydrography Dataset
				Coordination and Requirements (C&amp;R)</origin>
                        						
                        <pubdate>Unknown</pubdate>
                        						
                        <title>National Hydrography Dataset - High Res.</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>Internet Download</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>Unknown</begdate>
                            							
                            <enddate>Unknown</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Unknown</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected hydrographic features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>7190
				Census Bureau - Geography Division
				US Census Bureau - Geo Div - LFGPB</origin>
                        						
                        <pubdate>Unknown</pubdate>
                        						
                        <title>2010 ADCAN GPS Feature Updates</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>Unknown</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>Unknown</begdate>
                            							
                            <enddate>Unknown</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Unknown</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected road features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>7191
				Census Bureau - Geography Division
				US Census Bureau - Geo Div - LFGPB</origin>
                        						
                        <pubdate>Unknown</pubdate>
                        						
                        <title>2010 ADCAN Manual Feature Updates</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>Unknown</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>Unknown</begdate>
                            							
                            <enddate>Unknown</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>Unknown</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>Coordinates to realign selected road features in the Census MAF/TIGER database.</srccontr>
                			
            </srcinfo>
            			
            <srcinfo>
                				
                <srccite>
                    					
                    <citeinfo>
                        						
                        <origin>12422
				Acquired from USDA</origin>
                        						
                        <pubdate>2013</pubdate>
                        						
                        <title>12_FL_2013_NAIP</title>
                        					
                    </citeinfo>
                    				
                </srccite>
                				
                <typesrc>Unknown</typesrc>
                				
                <srctime>
                    					
                    <timeinfo>
                        						
                        <rngdates>
                            							
                            <begdate>2013</begdate>
                            							
                            <enddate>2013</enddate>
                            						
                        </rngdates>
                        					
                    </timeinfo>
                    					
                    <srccurr>2013</srccurr>
                    				
                </srctime>
                				
                <srccitea>None</srccitea>
                				
                <srccontr>All line segments</srccontr>
                			
            </srcinfo>
            			
            <procstep>
                				
                <procdesc>TIGER/Line Shapefiles are extracted from the Census MAF/TIGER database by nation, state, county, and entity.  Census MAF/TIGER data for all of the aforementioned geographic entities are then distributed among the shapefiles each containing attributes for line, polygon, or landmark geographic data. </procdesc>
                				
                <srcused>withheld</srcused>
                				
                <procdate>2015</procdate>
                			
            </procstep>
            		
        </lineage>
        	
    </dataqual>
    	
    <spdoinfo>
        		
        <indspref>Federal Information Processing Series (FIPS), Geographic Names Information System (GNIS), and feature names.</indspref>
        		
        <direct>Vector</direct>
        		
        <ptvctinf>
            			
            <esriterm Name="Work_Week_3_to_5_Trends">
                				
                <efeatyp Sync="TRUE">Simple</efeatyp>
                				
                <efeageom Sync="TRUE" code="3">
				</efeageom>
                				
                <esritopo Sync="TRUE">FALSE</esritopo>
                				
                <efeacnt Sync="TRUE">0</efeacnt>
                				
                <spindex Sync="TRUE">TRUE</spindex>
                				
                <linrefer Sync="TRUE">FALSE</linrefer>
                			
            </esriterm>
            		
        </ptvctinf>
        	
    </spdoinfo>
    	
    <spref>
        		
        <horizsys>
            			
            <geodetic>
                				
                <horizdn>North American Datum of 1983</horizdn>
                				
                <ellips>Geodetic Reference System 80</ellips>
                				
                <semiaxis>6378137</semiaxis>
                				
                <denflat>298.257</denflat>
                			
            </geodetic>
            		
        </horizsys>
        	
    </spref>
    	
    <eainfo>
        		
        <detailed Name="Work_Week_3_to_5_Trends">
            			
            <enttyp>
                				
                <enttypl>ROADS.shp</enttypl>
                				
                <enttypd>All Roads County-based</enttypd>
                				
                <enttypds>U.S. Census Bureau</enttypds>
                				
                <enttypt Sync="TRUE">Feature Class</enttypt>
                				
                <enttypc Sync="TRUE">0</enttypc>
                			
            </enttyp>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">OBJECTID</attrlabl>
                				
                <attalias Sync="TRUE">OBJECTID</attalias>
                				
                <attrtype Sync="TRUE">OID</attrtype>
                				
                <attwidth Sync="TRUE">4</attwidth>
                				
                <atprecis Sync="TRUE">0</atprecis>
                				
                <attscale Sync="TRUE">0</attscale>
                				
                <attrdef Sync="TRUE">Internal feature number.</attrdef>
                				
                <attrdefs Sync="TRUE">Esri</attrdefs>
                				
                <attrdomv>
                    					
                    <udom Sync="TRUE">Sequential unique whole numbers that are automatically generated.</udom>
                    				
                </attrdomv>
                			
            </attr>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">Shape</attrlabl>
                				
                <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>
                				
                <attrdef Sync="TRUE">Feature geometry.</attrdef>
                				
                <attrdefs Sync="TRUE">Esri</attrdefs>
                				
                <attrdomv>
                    					
                    <udom Sync="TRUE">Coordinates defining the features.</udom>
                    				
                </attrdomv>
                			
            </attr>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">UniqID</attrlabl>
                				
                <attalias Sync="TRUE">UniqID</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">CrashRate</attrlabl>
                				
                <attalias Sync="TRUE">CrashRate</attalias>
                				
                <attrtype Sync="TRUE">Double</attrtype>
                				
                <attwidth Sync="TRUE">8</attwidth>
                				
                <atprecis Sync="TRUE">0</atprecis>
                				
                <attscale Sync="TRUE">0</attscale>
                			
            </attr>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">GiZScore</attrlabl>
                				
                <attalias Sync="TRUE">GiZScore NwSWM360ft.swm</attalias>
                				
                <attrtype Sync="TRUE">Double</attrtype>
                				
                <attwidth Sync="TRUE">8</attwidth>
                				
                <atprecis Sync="TRUE">0</atprecis>
                				
                <attscale Sync="TRUE">0</attscale>
                			
            </attr>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">GiPValue</attrlabl>
                				
                <attalias Sync="TRUE">GiPValue NwSWM360ft.swm</attalias>
                				
                <attrtype Sync="TRUE">Double</attrtype>
                				
                <attwidth Sync="TRUE">8</attwidth>
                				
                <atprecis Sync="TRUE">0</atprecis>
                				
                <attscale Sync="TRUE">0</attscale>
                			
            </attr>
            			
            <attr>
                				
                <attrlabl Sync="TRUE">NNeighbors</attrlabl>
                				
                <attalias Sync="TRUE">NNeighbors NwSWM360ft.swm</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">Gi_Bin</attrlabl>
                				
                <attalias Sync="TRUE">Gi_Bin NwSWM360ft.swm_FDR</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">AnalysisYear</attrlabl>
                				
                <attalias Sync="TRUE">AnalysisYear</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">Shape_Length</attrlabl>
                				
                <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>
                				
                <attrdef Sync="TRUE">Length of feature in internal units.</attrdef>
                				
                <attrdefs Sync="TRUE">Esri</attrdefs>
                				
                <attrdomv>
                    					
                    <udom Sync="TRUE">Positive real numbers that are automatically generated.</udom>
                    				
                </attrdomv>
                			
            </attr>
            		
        </detailed>
        	
    </eainfo>
    	
    <distinfo>
        		
        <distrib>
            			
            <cntinfo>
                				
                <cntorgp>
                    					
                    <cntorg>U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Products Branch</cntorg>
                    				
                </cntorgp>
                				
                <cntaddr>
                    					
                    <addrtype>mailing</addrtype>
                    					
                    <address>4600 Silver Hill Road, Stop 7400</address>
                    					
                    <city>Washington</city>
                    					
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