<?xml version="1.0" encoding="UTF-8" standalone="no"?><metadata xml:lang="en">
    	
    <Esri>
        		
        <CreaDate>20251106</CreaDate>
        		
        <CreaTime>15160000</CreaTime>
        		
        <ArcGISFormat>1.0</ArcGISFormat>
        		
        <SyncOnce>TRUE</SyncOnce>
        	
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    <dataIdInfo>
        		
        <idCitation>
            			
            <resTitle>Map</resTitle>
            		
        </idCitation>
        		
        <idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;These are the cadastral reference features that provide the basis and framework for parcel mapping and for other mapping. This feature data set contains PLSS and Other Survey System data. The other survey systems include subdivision plats and those types of survey reference systems. This feature data set also include feature classes to support the special conditions in Ohio. This data set represents the GIS Version of the Public Land Survey System including both rectangular and non-rectangular surveys. The primary source for the data is cadastral survey records housed by the BLM supplemented with local records and geographic control coordinates from states, counties as well as other federal agencies such as the USGS and USFS. The data has been converted from source documents to digital form and transferred into a GIS format that is compliant with FGDC Cadastral Data Content Standards and Guidelines for publication. This data is optimized for data publication and sharing rather than for specific "production" or operation and maintenance. This data set includes the following: PLSS Fully Intersected (all of the PLSS feature at the atomic or smallest polygon level), PLSS Townships, First Divisions and Second Divisions (the hierarchical break down of the PLSS Rectangular surveys) PLSS Special surveys (non rectangular components of the PLSS) Meandered Water, Corners and Conflicted Areas (known areas of gaps or overlaps between Townships or state boundaries). The Entity-Attribute section of this metadata describes these components in greater detail.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Downloaded data on December 11, 2025 from BLM EGIS Hub. Created five fields: Meridian, Township, Range, Section, TRS_Combined. Ran a Python script to parse the First Division Identifier field and populate these fields. This field uses zeros as spaces, leaving some zeros in the new fields. Used Calculate Field with VBScript to remove zeros and Find and Replace in ArcGIS Pro to convert meridian numbers to letters. Reset TRS_Combined to &amp;lt;Null&amp;gt; due to extra zeros, then ran an Arcade script to concatenate the four fields into TRS_Combined.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
        		
        <searchKeys>
            			
            <keyword>BLM</keyword>
            			
            <keyword>Cadastral</keyword>
            			
            <keyword>CADNSDI</keyword>
            			
            <keyword>California</keyword>
            			
            <keyword>Management</keyword>
            			
            <keyword>planning cadastral</keyword>
            			
            <keyword>PLSS</keyword>
            			
            <keyword>Public Land Survey System</keyword>
            		
        </searchKeys>
        		
        <idPurp>The Public Land Survey System (PLSS) is a method used in the United States for surveying and dividing land, established by the Land Ordinance of 1785 to facilitate land distribution and settlement.
Overview of the PLSS

The PLSS is a standardized system for surveying and distributing public land in the United States. It was created to manage the vast territories acquired by the U.S. government, particularly after the American Revolutionary War. The system divides land into townships, ranges, and sections, providing a clear framework for land ownership and use.</idPurp>
        		
        <idCredit>U.S. Department of the Interior, Bureau of Land Management (BLM), California State Office</idCredit>
        		
        <resConst>
            			
            <Consts>
                				
                <useLimit>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;These data are provided by Bureau of Land Management (BLM) 'as is' and might contain errors or omissions. The User assumes the entire risk associated with its use of these data and bears all responsibility in determining whether these data are fit for the User's intended use. The information contained in these data is dynamic and may change over time. The data are not better than the sources from which they were derived, and both scale and accuracy may vary across the data set. These data might not have the accuracy, resolution, completeness, timeliness, or other characteristics appropriate for applications that potential users of the data may contemplate. The User is encouraged to carefully consider the content of the metadata file associated with these data. These data are neither legal documents nor land surveys, and must not be used as such. Official records may be referenced at most BLM offices. Please report any errors in the data to the BLM office from which it was obtained. The BLM should be cited as the data source in any products derived from these data. Any Users wishing to modify the data should describe the types of modifications they have performed. The User should not misrepresent the data, nor imply that changes made were approved or endorsed by BLM. This data may be updated by the BLM without notification.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</useLimit>
                			
            </Consts>
            		
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