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<CreaDate>20260205</CreaDate>
<CreaTime>16000900</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<scaleRange>
<minScale>150000000</minScale>
<maxScale>5000</maxScale>
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<ArcGISProfile>ItemDescription</ArcGISProfile>
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<dataIdInfo>
<idCitation>
<resTitle>BLM_ID_Range_Improvement_Poly</resTitle>
</idCitation>
<searchKeys>
<keyword>biota</keyword>
<keyword>BLM</keyword>
<keyword>Boise District Office</keyword>
<keyword>Bruneau Field Office</keyword>
<keyword>Bureau of Land Management</keyword>
<keyword>Burley Field Office</keyword>
<keyword>Department of the Interior</keyword>
<keyword>DOI</keyword>
<keyword>Facility</keyword>
<keyword>farming</keyword>
<keyword>Four Rivers Field Office</keyword>
<keyword>ID</keyword>
<keyword>Idaho</keyword>
<keyword>inlandWaters</keyword>
<keyword>Jarbidge Field Office</keyword>
<keyword>Management</keyword>
<keyword>Nevada</keyword>
<keyword>NV</keyword>
<keyword>Owyhee Field Office</keyword>
<keyword>Pocatello Field Office</keyword>
<keyword>Range</keyword>
<keyword>range improvement</keyword>
<keyword>Range Improvement Project System</keyword>
<keyword>RIPS</keyword>
<keyword>Salmon Field Office</keyword>
<keyword>Shoshone Field Office</keyword>
<keyword>structure</keyword>
<keyword>Twin Falls District Office</keyword>
<keyword>United States</keyword>
<keyword>US</keyword>
<keyword>Vegetation</keyword>
<keyword>Wildlife</keyword>
</searchKeys>
<idPurp>To show the location of range improvements on BLM-managed lands in Idaho. Currently, the polygon feature class has some data for all of the BLM field offices except the Coeur d'Alene and Cottonwood field offices. The intended use of all data in the BLM's GIS library is to support diverse activities including planning, management, maintenance, research, and interpretation.</idPurp>
<idAbs>This geodatabase of point, line and polygon features is an effort to consolidate all of the range improvement locations on BLM-managed land in Idaho into one database. Currently, the polygon feature class has some data for all of the BLM field offices except the Coeur d'Alene and Cottonwood field offices. Range improvements are structures intended to enhance rangeland resources, including wildlife, watershed, and livestock management. Examples of range improvements include water troughs, spring headboxes, culverts, fences, water pipelines, gates, wildlife guzzlers, artificial nest structures, reservoirs, developed springs, corrals, exclosures, etc. These structures were first tracked by the Bureau of Land Management (BLM) in the Job Documentation Report (JDR) System in the early 1960s, which was predominately a paper-based tracking system. In 1988 the JDRs were migrated into and replaced by the automated Range Improvement Project System (RIPS), and version 2.0 is currently being used today. It tracks inventory, status, objectives, treatment, maintenance cycle, maintenance inspection, monetary contributions and reporting. Not all range improvements are documented in the RIPS database; there may be some older range improvements that were built before the JDR tracking system was established. There also may be unauthorized projects that are not in RIPS. Official project files of paper maps, reports, NEPA documents, checklists, etc., document the status of each project and are physically kept in the office with management authority for that project area. In addition, project data is entered into the RIPS system to enable managers to access the data to track progress, run reports, analyze the data, etc. Before Geographic Information System technology most offices kept paper atlases or overlay systems that mapped the locations of the range improvements. The objective of this geodatabase is to migrate the location of historic range improvement projects into a GIS for geospatial use with other data and to centralize the range improvement data for the state. This data set is a work in progress and does not have all range improvement projects that are on BLM lands. Some field offices have not migrated their data into this database, and others are partially completed. New projects may have been built but have not been entered into the system. Historic or unauthorized projects may not have case files and are being mapped and documented as they are found. Many field offices are trying to verify the locations and status of range improvements with GPS, and locations may change or projects that have been abandoned or removed on the ground may be deleted. Attributes may be incomplete or inaccurate. This data was created using the standard for range improvements set forth in Idaho IM 2009-044, dated 6/30/2009. However, it does not have all of the fields the standard requires. Fields that are missing from the polygon feature class that are in the standard are: ALLOT_NO, POLY_TYPE, MGMT_AGCY, ADMIN_ST, and ADMIN_OFF. The polygon feature class also does not have a coincident line feature class, so some of the fields from the polygon arc feature class are included in the polygon feature class: COORD_SRC, COORD_SRC2, DEF_FET, DEF_FEAT2, ACCURACY, CREATE_DT, CREATE_BY, MODIFY_DT, MODIFY_BY, GPS_DATE, and DATAFILE. There is no National BLM standard for GIS range improvement data at this time. For more information contact us at blm_id_stateoffice@blm.gov.</idAbs>
<idCredit>Bureau of Land Management (BLM), Idaho State Office</idCredit>
<resConst>
<Consts>
<useLimit>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.</useLimit>
</Consts>
</resConst>
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<mdDateSt Sync="TRUE">20260213</mdDateSt>
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