U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Cartographic Products and Services Branch
201803
2017 ZIP Code Tabulation Areas (ZCTAs) Boundary File for North Carolina, 1:500,000
vector digital data
Cartographic Boundary Files
2017
The 2017 cartographic boundary shapefiles are simplified representations of selected geographic areas from the U.S. Census Bureau's Master Address File / Topologically Integrated Geographic Encoding and Referencing (MAF/TIGER) Database (MTDB). These boundary files are specifically designed for small-scale thematic mapping. When possible, generalization is performed with the intent to maintain the hierarchical relationships among geographies and to maintain the alignment of geographies within a file set for a given year. Geographic areas may not align with the same areas from another year. Some geographies are available as nation-based files while others are available only as state-based files.
ZIP Code Tabulation Areas (ZCTAs) are approximate area representations of U.S. Postal Service (USPS) ZIP Code service areas that the Census Bureau creates to present statistical data for each decennial census. The Census Bureau delineates ZCTA boundaries for the United States, Puerto Rico, American Samoa, Guam, the Commonwealth of the Northern Mariana Islands, and the U.S. Virgin Islands once each decade following the decennial census. Data users should not use ZCTAs to identify the official USPS ZIP Code for mail delivery. The USPS makes periodic changes to ZIP Codes to support more efficient mail delivery.
The Census Bureau uses tabulation blocks as the basis for defining each ZCTA. Tabulation blocks are assigned to a ZCTA based on the most frequently occurring ZIP Code for the addresses contained within that block. The most frequently occurring ZIP Code also becomes the five-digit numeric code of the ZCTA. These codes may contain leading zeros.
Blocks that do not contain addresses but are surrounded by a single ZCTA (enclaves) are assigned to the surrounding ZCTA. Because the Census Bureau only uses the most frequently occurring ZIP Code to assign blocks, a ZCTA may not exist for every USPS ZIP Code. Some ZIP Codes may not have a matching ZCTA because too few addresses were associated with the specific ZIP Code or the ZIP Code was not the most frequently occurring ZIP Code within any of the blocks where it exists.
The generalized ZCTA boundaries in this file are based on those delineated following the 2010 Census.
These files were specifically created to support small-scale thematic mapping. To improve the appearance of shapes at small scales, areas are represented with fewer vertices than detailed TIGER/Line Shapefiles. Cartographic boundary files take up less disk space than their ungeneralized counterparts. Cartographic boundary files take less time to render on screen than TIGER/Line Shapefiles. You can join this file with table data downloaded from American FactFinder by using the AFFGEOID field in the cartographic boundary file. If detailed boundaries are required, please use the TIGER/Line Shapefiles instead of the generalized cartographic boundary files.
201803
201803
publication date
None planned. No changes or updates will be made to this version of the cartographic boundary files. New versions of the cartographic boundary files will be produced on an annual release schedule. Types of geography released may vary from year to year.
-179.148909
179.77847
71.365162
-14.548699
ISO 19115 Topic Categories
Boundaries
None
2017
SHP
Cartographic Boundary
Generalized
ZCTA
ZIP Code Tabulation Area
ZIP Code
ISO 3166 Codes for the representation of names of countries and their subdivisions
United States
US
None
The intended display scale for this file is 1:500,000. This file should not be displayed at scales larger than 1:500,000.
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 boundary information is for visual display at appropriate small scales only. Cartographic boundary files should not be used for geographic analysis including area or perimeter calculation. Files should not be used for geocoding addresses. Files should not be used for determining precise geographic area relationships.
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
mailing
4600 Silver Hill Road
Washington
DC
20233-7400
United States
301.763.1128
301.763.4710
geo.geography@census.gov
Accurate against American National Standards Institute (ANSI) Publication INCITS 446-2008 (Geographic Names Information System (GNIS)) at the 100% level for the codes and base names present in the file. The remaining attribute information has been examined but has not been fully tested for accuracy.
The Census Bureau performed automated tests to ensure logical consistency of the source database. Segments making up the outer and inner boundaries of a polygon tie end-to-end to completely enclose the area. All polygons were tested for closure. The Census Bureau uses its internally developed geographic update system to enhance and modify spatial and attribute data in the Census MAF/TIGER database. Standard geographic codes, such as INCITS (formerly FIPS) codes for states, counties, municipalities, county subdivisions, places, American Indian/Alaska Native/Native Hawaiian areas, and congressional districts are used when encoding spatial entities. The Census Bureau performed spatial data tests for logical consistency of the codes during the compilation of the original Census MAF/TIGER database files. Feature attribute information has been examined but has not been fully tested for consistency.
For the cartographic boundary files, the Point and Vector Object Count for the G-polygon SDTS Point and Vector Object Type reflects the number of records in the file's data table. For multi-polygon features, only one attribute record exists for each multi-polygon rather than one attribute record per individual G-polygon component of the multi-polygon feature. Cartographic Boundary File multi-polygons are an exception to the G-polygon object type classification. Therefore, when multi-polygons exist in a file, the object count will be less than the actual number of G-polygons.
The cartographic boundary files are generalized representations of extracts taken from the MAF/TIGER Database. Generalized boundary files are clipped to a simplified version of the U.S. outline. As a result, some off-shore areas may be excluded from the generalized files. Some small geographic areas, holes, or discontiguous parts of areas may not be included in generalized files if they are not visible at the target scale.
Data are not accurate. Data are generalized representations of geographic boundaries at 1:500,000.
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
Unpublished material
Census MAF/TIGER database
Geo-spatial Relational Database
201706
201705
The dates describe the effective date of 2017 cartographic boundaries.
MAF/TIGER
All spatial and feature data
Spatial data were extracted from the MAF/TIGER database and processed through a U.S. Census Bureau batch generalization system.
withheld
201803
ZCTA boundaries for North Carolina were extracted from the country-wide file and projected to NC Stateplane meters, NAD83.
201805
INCITS (formerly FIPS) codes
Vector
Simple
FALSE
0
TRUE
FALSE
North American Datum of 1983
Geodetic Reference System 80
6378137.000000
298.257222
cb_2017_us_zcta510_500k.shp
2010 ZIP Code Tabulation Areas (national)
U.S. Census Bureau
Feature Class
0
objectid
OBJECTID
OID
4
10
0
Internal feature number.
Esri
Sequential unique whole numbers that are automatically generated.
Shape
Feature geometry.
Esri
Coordinates defining the features.
Shape
Geometry
8
0
0
ZCTA5CE10
2010 Census 5-digit ZIP Code Tabulation Area code
U.S. Census Bureau
00401
99950
ZCTA5CE10
String
5
0
0
AFFGEOID10
American FactFinder summary level code + geovariant code + '00US' + GEOID
U.S. Census Bureau
American FactFinder geographic identifier
U.S. Census Bureau
AFFGEOID10
String
14
0
0
GEOID10
2010 Census 5-digit ZIP Code Tabulation Area identifier, 2010 Census 5-digit ZIP Code Tabulation Area code
U.S. Census Bureau
2010 Census 5-digit ZIP Code Tabulation Area code found in ZCTA5CE10
GEOID10
String
5
0
0
ALAND10
2010 Census land area (square meters)
U.S. Census Bureau
0
9,999,999,999,999
square meters
ALAND10
Double
8
38
8
AWATER10
2010 Census water area (square meters)
U.S. Census Bureau
0
9,999,999,999,999
square meters
AWATER10
Double
8
38
8
st_area(shape)
st_area(shape)
Double
0
0
0
st_perimeter(shape)
st_perimeter(shape)
Double
0
0
0
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
mailing
4600 Silver Hill Road
Washington
DC
20233-7400
United States
301.763.1128
301.763.4710
geo.geography@census.gov
No warranty, expressed or implied is made with regard to the accuracy of these data, and no liability is assumed by the U.S. Government in general or the U.S. Census Bureau in specific as to the spatial or attribute accuracy of the data. The act of distribution shall not constitute any such warranty and no responsibility is assumed by the U.S. government in the use of these files. The boundary information is for small-scale mapping purposes only; boundary depiction and designation for small-scale mapping purposes do not constitute a determination of jurisdictional authority or rights of ownership or entitlement and they are not legal land descriptions. NCCGIA is charged with the development and maintenance of NC OneMap and, in cooperation with other mapping organizations, is committed to offering its users accurate, useful, and current information. Although every effort has been made to ensure the accuracy of information, errors and conditions originating from physical sources used to develop this dataset may be reflected in the data supplied. The user must be aware of possible conditions and bear responsibility for the appropriate use of the information with respect to possible errors, original map scale, collection methodology, currency of data, and other conditions specific to certain data. NCCGIA does not support secondary distribution of this dataset without its current, compliant metadata record. The use of trade names or commercial products does not constitute their endorsement by NCCGIA or North Carolina State Government.
SHP
PK-ZIP, version 1.93A or higher
http://data.nconemap.gov/downloads/vector/zcta.zip
The online cartographic boundary files may be downloaded without charge.
To obtain more information about ordering Cartographic Boundary Files visit https://www.census.gov/geo/www/tiger.
The cartographic boundary files contain geographic data only and do not include display mapping software or statistical data. For information on how to use cartographic boundary file data with specific software package users shall contact the company that produced the software.
201803
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
mailing
4600 Silver Hill Road
Washington
DC
20233-7400
United States
301.763.1128
301.763.4710
geo.geography@census.gov
Content Standard for Digital Geospatial Metadata
FGDC-STD-001-1998
local time
None
This metadata file is to accompany the dataset. NCCGIA does not
support secondary distribution of this dataset without its current,
compliant metadata record. If the dataset described in this metadata
record was received from anyone besides NCCGIA, this metadata and
the dataset it describes may contain discrepancies.
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
301.763.1128
301.763.4710
4600 Silver Hill Road
Washington
DC
20233-7400
US
geo.geography@census.gov
20220609
ArcGIS Metadata
1.0
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
301.763.1128
301.763.4710
4600 Silver Hill Road
Washington
DC
20233-7400
US
geo.geography@census.gov
The online cartographic boundary files may be downloaded without charge.
To obtain more information about ordering Cartographic Boundary Files visit https://www.census.gov/geo/www/tiger.
SHP
PK-ZIP, version 1.93A or higher
The cartographic boundary files contain geographic data only and do not include display mapping software or statistical data. For information on how to use cartographic boundary file data with specific software package users shall contact the company that produced the software.
http://data.nconemap.gov/downloads/vector/zcta.zip
Enterprise Geodatabase Feature Class
2.631
2017 ZIP Code Tabulation Areas (ZCTAs) Boundary File for North Carolina, 1:500,000
2018-03-01
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Cartographic Products and Services Branch
vector digital data
Cartographic Boundary Files
2017
<DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>The 2017 cartographic boundary shapefiles are simplified representations of selected geographic areas from the U.S. Census Bureau's Master Address File / Topologically Integrated Geographic Encoding and Referencing (MAF/TIGER) Database (MTDB). These boundary files are specifically designed for small-scale thematic mapping. When possible, generalization is performed with the intent to maintain the hierarchical relationships among geographies and to maintain the alignment of geographies within a file set for a given year. Geographic areas may not align with the same areas from another year. Some geographies are available as nation-based files while others are available only as state-based files. ZIP Code Tabulation Areas (ZCTAs) are approximate area representations of U.S. Postal Service (USPS) ZIP Code service areas that the Census Bureau creates to present statistical data for each decennial census. The Census Bureau delineates ZCTA boundaries for the United States, Puerto Rico, American Samoa, Guam, the Commonwealth of the Northern Mariana Islands, and the U.S. Virgin Islands once each decade following the decennial census. Data users should not use ZCTAs to identify the official USPS ZIP Code for mail delivery. The USPS makes periodic changes to ZIP Codes to support more efficient mail delivery. The Census Bureau uses tabulation blocks as the basis for defining each ZCTA. Tabulation blocks are assigned to a ZCTA based on the most frequently occurring ZIP Code for the addresses contained within that block. The most frequently occurring ZIP Code also becomes the five-digit numeric code of the ZCTA. These codes may contain leading zeros. Blocks that do not contain addresses but are surrounded by a single ZCTA (enclaves) are assigned to the surrounding ZCTA. Because the Census Bureau only uses the most frequently occurring ZIP Code to assign blocks, a ZCTA may not exist for every USPS ZIP Code. Some ZIP Codes may not have a matching ZCTA because too few addresses were associated with the specific ZIP Code or the ZIP Code was not the most frequently occurring ZIP Code within any of the blocks where it exists. The generalized ZCTA boundaries in this file are based on those delineated following the 2010 Census.</SPAN></P></DIV></DIV></DIV>
These files were specifically created to support small-scale thematic mapping. To improve the appearance of shapes at small scales, areas are represented with fewer vertices than detailed TIGER/Line Shapefiles. Cartographic boundary files take up less disk space than their ungeneralized counterparts. Cartographic boundary files take less time to render on screen than TIGER/Line Shapefiles. You can join this file with table data downloaded from American FactFinder by using the AFFGEOID field in the cartographic boundary file. If detailed boundaries are required, please use the TIGER/Line Shapefiles instead of the generalized cartographic boundary files.
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
301.763.1128
301.763.4710
4600 Silver Hill Road
Washington
DC
20233-7400
US
geo.geography@census.gov
ISO 3166 Codes for the representation of names of countries and their subdivisions
US
United States
ZCTA
ZIP Code
Cartographic Boundary
Generalized
ZIP Code Tabulation Area
2017
SHP
ISO 19115 Topic Categories
Boundaries
ZCTA
ZIP Code
US
Cartographic Boundary
Generalized
Boundaries
United States
ZIP Code Tabulation Area
NC
North Carolina
Department of Information Technology
DIT
Center for Geographic Information and Analysis
CGIA
NC OneMap
No warranty, expressed or implied is made with regard to the accuracy of these data, and no liability is assumed by the U.S. Government in general or the U.S. Census Bureau in specific as to the spatial or attribute accuracy of the data. The act of distribution shall not constitute any such warranty and no responsibility is assumed by the U.S. government in the use of these files. The boundary information is for small-scale mapping purposes only; boundary depiction and designation for small-scale mapping purposes do not constitute a determination of jurisdictional authority or rights of ownership or entitlement and they are not legal land descriptions. NCCGIA is charged with the development and maintenance of NC OneMap and, in cooperation with other mapping organizations, is committed to offering its users accurate, useful, and current information. Although every effort has been made to ensure the accuracy of information, errors and conditions originating from physical sources used to develop this dataset may be reflected in the data supplied. The user must be aware of possible conditions and bear responsibility for the appropriate use of the information with respect to possible errors, original map scale, collection methodology, currency of data, and other conditions specific to certain data. NCCGIA does not support secondary distribution of this dataset without its current, compliant metadata record. The use of trade names or commercial products does not constitute their endorsement by NCCGIA or North Carolina State Government.
<DIV STYLE="text-align:Left;"><DIV><DIV><P><SPAN>The intended display scale for this file is 1:500,000. This file should not be displayed at scales larger than 1:500,000. 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 boundary information is for visual display at appropriate small scales only. Cartographic boundary files should not be used for geographic analysis including area or perimeter calculation. Files should not be used for geocoding addresses. Files should not be used for determining precise geographic area relationships.</SPAN></P><P><A href="https://www.nconemap.gov:443/pages/terms" target="_blank" STYLE="text-decoration:underline;"><SPAN>https://www.nconemap.gov/pages/terms</SPAN></A></P></DIV></DIV></DIV>
-179.148909
179.77847
-14.548699
71.365162
publication date
2018-03-01
2018-03-01
Esri ArcGIS 12.8.0.29751
1
-84.422154
-75.416938
36.617232
33.731258
This metadata file is to accompany the dataset. NCCGIA does not support secondary distribution of this dataset without its current, compliant metadata record. If the dataset described in this metadata record was received from anyone besides NCCGIA, this metadata and the dataset it describes may contain discrepancies.
The Census Bureau performed automated tests to ensure logical consistency of the source database. Segments making up the outer and inner boundaries of a polygon tie end-to-end to completely enclose the area. All polygons were tested for closure. The Census Bureau uses its internally developed geographic update system to enhance and modify spatial and attribute data in the Census MAF/TIGER database. Standard geographic codes, such as INCITS (formerly FIPS) codes for states, counties, municipalities, county subdivisions, places, American Indian/Alaska Native/Native Hawaiian areas, and congressional districts are used when encoding spatial entities. The Census Bureau performed spatial data tests for logical consistency of the codes during the compilation of the original Census MAF/TIGER database files. Feature attribute information has been examined but has not been fully tested for consistency. For the cartographic boundary files, the Point and Vector Object Count for the G-polygon SDTS Point and Vector Object Type reflects the number of records in the file's data table. For multi-polygon features, only one attribute record exists for each multi-polygon rather than one attribute record per individual G-polygon component of the multi-polygon feature. Cartographic Boundary File multi-polygons are an exception to the G-polygon object type classification. Therefore, when multi-polygons exist in a file, the object count will be less than the actual number of G-polygons.
The cartographic boundary files are generalized representations of extracts taken from the MAF/TIGER Database. Generalized boundary files are clipped to a simplified version of the U.S. outline. As a result, some off-shore areas may be excluded from the generalized files. Some small geographic areas, holes, or discontiguous parts of areas may not be included in generalized files if they are not visible at the target scale.
Accurate against American National Standards Institute (ANSI) Publication INCITS 446-2008 (Geographic Names Information System (GNIS)) at the 100% level for the codes and base names present in the file. The remaining attribute information has been examined but has not been fully tested for accuracy.
Data are not accurate. Data are generalized representations of geographic boundaries at 1:500,000.
All spatial and feature data
Census MAF/TIGER database
MAF/TIGER
U.S. Department of Commerce, U.S. Census Bureau, Geography Division, Geographic Customer Services Branch
The dates describe the effective date of 2017 cartographic boundaries.
2017-06-01
2017-05-01
Spatial data were extracted from the MAF/TIGER database and processed through a U.S. Census Bureau batch generalization system.
2018-03-01
MAF/TIGER
ZCTA boundaries for North Carolina were extracted from the country-wide file and projected to NC Stateplane meters, NAD83.
2018-05-01
0
INCITS (formerly FIPS) codes
0
20180607
15205400
1.0
zcta
002
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318094.947374
1
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GCS_NAD_1983_NSRS2007
Linear Unit: Meter (1.000000)
NAD_1983_NSRS2007_StatePlane_North_Carolina_FIPS_3200
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