<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata>
<idinfo>
<citation>
<citeinfo>
<origin>Center for Geographic Information Science</origin>
<pubdate>20040101</pubdate>
<title Sync="TRUE">FutureLandUse_FromLaxVec</title>
<geoform Sync="TRUE">vector digital data</geoform>
<onlink>\\PROJECTS1\D\LaxCnty\Landuse\</onlink>
<ftname Sync="TRUE">FutureLandUse</ftname>
</citeinfo>
</citation>
<descript>
<abstract>Displays the land use of La Crosse County. Imported from LAXVEC 12-7-21 in preparation for the 2021 Comp Plan and Future Land Use plan.</abstract>
<purpose>This data set provides land use information for La Crosse County.</purpose>
<langdata Sync="TRUE">en</langdata>
</descript>
<timeperd>
<timeinfo>
<sngdate>
<caldate>20040101</caldate>
</sngdate>
</timeinfo>
<current>publication date</current>
</timeperd>
<status>
<progress>Complete</progress>
<update>Irregular</update>
</status>
<spdom>
<bounding>
<westbc>-91.427859</westbc>
<eastbc>-90.907149</eastbc>
<northbc>44.093467</northbc>
<southbc>43.720255</southbc>
</bounding>
<lboundng>
<leftbc Sync="TRUE">1593123.780319</leftbc>
<rightbc Sync="TRUE">1728712.735847</rightbc>
<bottombc Sync="TRUE">630178.559475</bottombc>
<topbc Sync="TRUE">763236.246115</topbc>
</lboundng>
</spdom>
<keywords>
<theme>
<themekt>none</themekt>
<themekey>Land use</themekey>
</theme>
<place>
<placekt>none</placekt>
<placekey>La Crosse County</placekey>
</place>
</keywords>
<accconst>none</accconst>
<useconst>none</useconst>
<ptcontac>
<cntinfo>
<cntperp>
<cntper>Jim Handley</cntper>
<cntorg>Center for Geographic Information Science, University of Wisconsin - La Crosse</cntorg>
</cntperp>
<cntpos>Director</cntpos>
<cntvoice>608.785.8342</cntvoice>
<cntfax>608.785-8332</cntfax>
<cntemail>handley.jame@uwlax.edu</cntemail>
</cntinfo>
</ptcontac>
<native Sync="TRUE">Microsoft Windows XP Version 5.1 (Build 2600) Service Pack 3; ESRI ArcCatalog 9.3.1.3000</native>
<crossref>
<citeinfo>
<origin>Center for Geographic Information Science</origin>
<pubdate>20040101</pubdate>
<title>lax_co_lu</title>
</citeinfo>
</crossref>
<natvform Sync="TRUE">Shapefile</natvform>
</idinfo>
<dataqual>
<logic>Observations are consistent to the methodology described in the process step.</logic>
<complete>All polygons have been classified based on their land use.</complete>
<posacc>
<horizpa>
<horizpar>N/A</horizpar>
</horizpa>
<vertacc>
<vertaccr>N/A</vertaccr>
</vertacc>
</posacc>
<lineage>
<procstep>
<procdesc>
This shapefile was started by with the union of La Crosse county taxparcels (2004), DNR hydo, and a 33-foot buffer of the road centerlines. Using the methodology described below along with, aerial photographs (2000), and field analysis (2004), land use was determined for La Crosse County.
Land Use Methodology
1. Minimum Mapping Unit will be 100 by 100 feet. This will be used when deciding if a land use, such as woodlands, should be separated from an adjacent land use or included with the adjacent land use. 2. A 1:3000 scale will be maintained while digitizing. 3. All digitizing will be completed with reference to the 1992 DOQ. The rectified 2000 photos will be continually viewed and checked against the 92 DOQ for any variations between the images. 4. We will digitize and identify polygons based on the 2000 photos. Subdivisions that are shown on the tax parcel shapefile but are not shown on the 2000 aerial photos will be field checked. 5. A bookmark of a location will be created if a question of a land use arises. The bookmark will be brought to another team member's attention within an adequate amount of time. 6. At the end of every work day a backup file will be created for northeast_lu and southeast_lu shapefiles and saved in a folder titled backup. There will consistently be four backup files and the oldest, or 5th file, will be deleted daily.
7. The hydro polygons, from the DNR will be used for coding all areas of water. If the air photo shows a shoreline which is not dynamic and the hydro layer does not line up accurately, then the 2000 air photo will be used for digitizing shoreline.
8. The roads buffer will define the borders of all roads except for the interstate. All polygons near the road buffer will be allotted categories of adjacent polygons. 9. We will log daily activities, and once a week these activities will be recorded into a weekly report.
Land Use: 1000	Residential
Includes activities that occur in all types of residential uses, structures, ownership characteristics, or the character of the development. The residential land use will include mowed yards. Residences that are located in pastures that do not have an obvious yard will be given a 200 by 200 foot yard that will be included in the residential polygon. Residential polygons will not include wooded lands. An isolate building that cannot be determined as anything other that residential will be allotted the category 1110. Houses that may be broken up into apartments and that cannot be distinguished from single family residences, such as off-campus student housing, will be allotted the category 1110. Vacant lots in urban residential areas that are smaller than the minimum mapping unit and that are surrounded by houses will be allotted the category 1110.	Land Use: 1100	Household Activities
Includes those activities normally associated with single-family, multifamily, town homes, manufactured homes, etc.	Land Use: 1110	Single Family Residential
Single family housing.	Land Use: 1120	2 -4 Families Residential
Housing for two to four families.	Land Use: 1130	5 or More Families Residential
Housing for five or more families.	Land Use: 1140	Mobile Home
Mobile Home.	Land Use: 1150	Farmstead
A residence that includes farm related structures. A polygon will be defined as a farmstead if the residence consists of more than three structures grouped together and if the residence is adjacent to land uses 8100 ( agriculture activities) or 8300 ( pasture, grazing). Many residences contain three structures (house, garage, shed) so additional structures from these three basic structuresindicate a farmstead land uses. Land Use: 1200	Transient Living - Motels/Lodging
Activities associated with hotels, motels, tourist homes, bed and breakfast, etc. Note that the distinction between various residential activities is independent of the definition of a family.	Land Use: 1300	Institutional Living
Residential living activity associated with dormitories, group homes, barracks, retirement homes, nursing homes, etc. These activities may occur in any number of structural types (single-family homes, multi-family homes, manufactured homes, etc.), but the activity characteristics of such living is not the same as the other subcategories under residential activities. Also note that the distinction between various residential activities is independent of the definition of a family.	Land Use: 2000	Shopping, Business, or Trade
This category captures uses that are business related. Use it as a catch-all category for all retail, wholesale, service, office, and restuarant activities.	Land Use: 2100	Shopping, Business, or Trade
This category captures uses that are business related. Use it as a catch-all category for all retail, wholesale, and service activities.	Land Use: 2110	Retail
Primarily for all retail shops and stores that sell goods. This is not to be confused with shops that sell services.	Land Use: 2120	Wholesale
Primarily warehouses and distribution centers.	Land Use: 2130	Service
Shops that primarily sell services such as hairdressing, contractors, dry cleaning, plumbers, electricians, banking, car wash, lube stations, animal hospitals, mini storage facilities, funeral home, etc.	Land Use: 2200	Restaurant Type Activity
Eating, dining, and such activities associated with restaurants and other establishments that serve food, drink, and related products to be consumed on or off premises.	Land Use: 2300	Office Activities
Typical office uses should be categorized here including those that are primarily office-use in character. Use this category as a catch-all designation for all office-type uses such as realty, insurance, and law activities.	Land Use: 3000	Industrial, Manufacturing, and Waste Related Activities
All manufacturing, assembly, goods storage or handling activities, and waste management activities. Use this as a catch-all category for anything not specified in subcategories below.	Land Use: 3100	Plant, Factory, or Heavy Goods Storage or Handling Activities
All industrial activities. Use this as a catch-all category for anything not specified in subcategories below.	Land Use: 3110	Primarily Plant or Factory Type Activity
Assembly plants, manufacturing plants, industrial machinery, etc.	Land Use: 3120	Primarily Goods Storage or Handling Activity
Characterized by large storage structures, movement of goods, shipping and trucking.	Land Use: 3200	Solid Waste Management Includes storing, collecting, dumping, waste processing, and other related operations.	Land Use: 4000	Social, Institutional, or Infrastructure Related Activities
Use this category for all institutional activities.	Land Use: 4100	School, Library, and Municipal Activities
Catch-all category for those associated with educational, instructional, teaching activities, government buildings and city funded maintenance activities.	Land Use: 4110	School, Libraries
Primarily those associated with educational, instructional, teaching activities, and school yards.	Land Use: 4120	Municipal Activities
Government building and city funded maintenance activities.	Land Use: 4200	Emergency Response or Public-Safety-Related Activities
Broad category to group all fire, police, rescue, EMS, and other public safety activities. Land Use: 4300	Utilities
Group all utilities: water, sewer, power, gas, etc.	Land Use: 4500	Health Care, Medical
Activities in this category encompass those associated with clinics, hospitals, and other facilities that treat, house, or care for patients.	Land Use: 4600	Interment, Cremation
This category encompasses activities associated with cemeteries.	Land Use: 4700	Military base Activities
Military bases are typically complex collection of activities that include a wide range of activities associated with military training, living and recreational facilities for military personnel, storage and maintenance facilities, and other related facilities.	Land Use: 5000	Travel or Movement Activities
This category encompasses activities associated with all modes of transportation. It includes rights-of-way and such linear features associated with transportation.	Land Use: 5200	Vehicle Movement
This is a catch-all category for automobile movement on roads and alleys. Tax parcel polygons that do not contain road center lines from the roads_sps83.shp will be according to a adjacent polygon land uses and will not be allotted the category 5200.
All roads that are on the roads shapefile, even if they do not appear on the 2000 photos will be allotted the category 5200.
Thin, undetectable slivers that are adjacent to roads will be allotted the category 5200. All alleys will be given the category 5200.	Land Use: 5400	Trains or Rail Movement
Includes activities associated with movement of rails and other vehicles on railroads. It includes activities associated with rail maintenance, storage, and rights-of-way for railroads.	Land Use: 5600	Aircraft Movement Activities
These activities encompass all aspects of air travel and transportation that occur at ground facilities, such as airports, hangars, and similar facilities. Land Use: 6000	Mass Assembly of People
This is a catch-all category for activities associated with mass assembly of people for either, spectator sports, entertainment, or other social and institutional reasons. Use the subcategories to further classify the type of mass assembly.	Land Use: 6200	Spectator Sports Assembly
Spectator sports assembly may occur in stadiums, open grounds, or other venues occasionally used for such purposes. Identifying such activities may be required for public safety related applications.	Land Use: 6400	Fairs, Exhibitions
Mass assembly of people at fairs and exhibitions includes activities associated with food and souvenir vending, purchasing tickets, and related activities. This category also includes activities associated with entertainment shows, park rides, etc., at fairs.	Land Use: 6600	Social, Cultural, or Religious Use this category for mass assembly of people for social, cultural, or religious purposes such as churches, VFW, etc.	Land Use: 7000	Leisure Activities
This is a catch-all category for classifying all forms of leisure activities.	Land Use: 7100	Active Leisure Activities
Active leisure activities such as golf cources, boy scout and girl scout clubs, gun clubs, baseball diamonds, tennis courts, bike and jogging trails, etc.	Land Use: 7200	Passive leisure Activities
Leisure activities such as camping, parks, etc.	Land Use: 8000	Natural Resources Related Activities
Natural resources such as aricultural, livestock, pasture, grazing, and quarrying activities.	Land Use: 8100	Agricultural Activities - Crops, Nursuries, Orchards
Agricultural activities, such as farming, plowing, tilling, cropping, seeding, cultivating, and harvesting for the production of food and fiber products. Also includes sod production, nurseries, and orchards. A polygon that is composed of land that contains evidence of furrowed or fallowed land will be allotted the category 8100.
A polygon that provides obvious evidence of agricultural activities or provides evidence of recent agricultural activities from the 1992 image regardless of present lack of furrows will be allotted the category 8100. A polygon that provides present evidence of grass and additional land covers, such as shrubs, saplings, etc. will not be allotted the category 8100 (It will be allotted the category 8300).
A polygon that consists of an open field that does not contain furrows, is adjacent to obvious agricultural fields, and does not provide evidence of shrubs, saplings, etc. will be allotted the category 8100.
Isolated structures within agricultural lands will be allotted the category 8100. Structures that are difficult to recognize from the air photo (blurred), that do not provide evidence of recent activity, and are isolated structures located within agricultural land, will be included in polygons that are allotted the category 8100. Vacant lots in rural suburban areas will be allotted the category 8300.
Land Use: 8200	Livestock Related Activities
Activities associated with feeding and raising of livestock in pens and confined structures.	Land Use: 8300	Pasturing, Grazing
Activities normally associated with feeding and grazing in open ranges. A polygon that does not provide evidence of furrowed or fallowed land and does not contain dense tree coverage or contains only sparse and separated tree coverage will be allotted the category 8300.
A polygon that provides current evidence of grass and some additional land covers, such as shrubs, saplings, etc. that is not residential land, will be allotted the category 8300. The category 8300 will be alloted to any rural lot that is vacant of a structure.	Land Use: 8500	Quarrying Includes activities normally associated with borrow pits.	Land Use: 9000	No Human Activity or Unclassifiable Activity
Areas of no human activity or unclassifiable activity. Land Use: 9100	Grasslands, Prairies
Large areas of open grasslands.	Land Use: 9200	Woodlands
Wooded areas including areas of siliculture.	Land Use: 9300	Wetlands
Areas of shallow water and emergent vegetation.	Land Use: 9400	Water
The DNR hydrology layer was used for determining areas of water. Land Use: 9500	Vacant of Human Activity and Structures
Areas that are vacant of human activity and structures. A vacant polygon in an urban setting that is larger that the minimum mapping unit will be categorized as 9500. A vacant polygon smaller than the MMU in an urban setting that is in a residential neighborhood will be categorized as 1110.
</procdesc>
<srcused>C:\DOCUME~1\HANSON~1.GEO\LOCALS~1\Temp\xml3B.tmp</srcused>
<proccont>
<cntinfo>
<cntperp>
<cntper>Charlie Handy</cntper>
<cntorg>Zoning and planning Department, La Crosse County</cntorg>
</cntperp>
<cntpos>La Crosse County Planner</cntpos>
</cntinfo>
</proccont>
</procstep>
<procstep>
<procdesc>Metadata imported.</procdesc>
<srcused>C:\DOCUME~1\hanson\LOCALS~1\Temp\xml150.tmp</srcused>
</procstep>
<procstep>
<procdesc>Metadata imported.</procdesc>
<srcused>C:\DOCUME~1\hanson\LOCALS~1\Temp\xml169.tmp</srcused>
</procstep>
<procstep>
<procdesc Sync="TRUE">Metadata imported.</procdesc>
<srcused Sync="TRUE">C:\DOCUME~1\handley\LOCALS~1\Temp\xml6F5.tmp</srcused>
<date Sync="TRUE">20050202</date>
<time Sync="TRUE">08301100</time>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">P:\projects\2100\2104-LaCrsCoSG\CAD\GIS\ShapefileMerge\AgEnvWatBluff_Union1</srcused>
<date Sync="TRUE">20080620</date>
<time Sync="TRUE">10100200</time>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">P:\projects\2100\2104-LaCrsCoSG\CAD\GIS\ShapefileMerge\Landuse</srcused>
<procdate Sync="TRUE">20091208</procdate>
<proctime Sync="TRUE">08143400</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">C:\LaCrosse Future Land Use\REMERGE\Area1234</srcused>
<procdate Sync="TRUE">20100312</procdate>
<proctime Sync="TRUE">11460100</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">C:\LaCrosse Future Land Use\Medary Clip\FLUWITHMED</srcused>
<procdate Sync="TRUE">20100312</procdate>
<proctime Sync="TRUE">16140200</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">C:\LaCrosse Future Land Use\Final Edits\FLU1</srcused>
<procdate Sync="TRUE">20100312</procdate>
<proctime Sync="TRUE">16291300</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">C:\LaCrosse Future Land Use\Final Edits\FLUSlivereElim</srcused>
<procdate Sync="TRUE">20100314</procdate>
<proctime Sync="TRUE">14105100</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE">P:\projects\2100\2104.01-TownHollandIS\CAD\Final Edits\Future Land Use</srcused>
<procdate Sync="TRUE">20100315</procdate>
<proctime Sync="TRUE">08164800</proctime>
</procstep>
<procstep>
<procdesc Sync="TRUE">Dataset copied.</procdesc>
<srcused Sync="TRUE"/>
<procdate Sync="TRUE">20101228</procdate>
<proctime Sync="TRUE">14114000</proctime>
</procstep>
</lineage>
</dataqual>
<spdoinfo>
<direct Sync="TRUE">Vector</direct>
<ptvctinf>
<esriterm Name="Environmental_2024">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="4"/>
<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>
<planar>
<planci>
<plance>coordinate pair</plance>
<coordrep>
<absres>0.000256</absres>
<ordres>0.000256</ordres>
</coordrep>
<plandu>survey feet</plandu>
</planci>
</planar>
<geodetic>
<horizdn>North American Datum of 1983</horizdn>
<ellips>Geodetic Reference System 80</ellips>
<semiaxis>6378137.000000</semiaxis>
<denflat>298.257222</denflat>
</geodetic>
<cordsysn>
<projcsn>Wisconsin State Plane South</projcsn>
<geogcsn Sync="TRUE">GCS_North_American_1983</geogcsn>
</cordsysn>
</horizsys>
</spref>
<eainfo>
<detailed Name="Environmental_2024">
<enttyp>
<enttypl Sync="TRUE">Environmental_2024</enttypl>
<enttypd>Displays land use information of La Crosse County.</enttypd>
<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>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 Sync="TRUE">FLU</attrlabl>
<attalias Sync="TRUE">FLU</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">FLUDESC</attrlabl>
<attalias Sync="TRUE">FLUDESC</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">50</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
</attr>
<attr>
<attrlabl Sync="TRUE">LAXVEC_DBO</attrlabl>
<attalias Sync="TRUE">LAXVEC_DBO</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">Shape_Leng</attrlabl>
<attalias Sync="TRUE">Shape_Leng</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">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>
<attr>
<attrlabl Sync="TRUE">Shape_Area</attrlabl>
<attalias Sync="TRUE">Shape_Area</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef Sync="TRUE">Area of feature in internal units squared.</attrdef>
<attrdefs Sync="TRUE">Esri</attrdefs>
<attrdomv>
<udom Sync="TRUE">Positive real numbers that are automatically generated.</udom>
</attrdomv>
</attr>
</detailed>
</eainfo>
<distinfo>
<resdesc>Downloadable Data</resdesc>
<stdorder>
<digform>
<digtinfo>
<transize>37.244</transize>
<dssize Sync="TRUE">18.968</dssize>
</digtinfo>
</digform>
</stdorder>
</distinfo>
<metainfo>
<metd Sync="TRUE">20111012</metd>
<metc>
<cntinfo>
<cntperp>
<cntper>Charlie Handy</cntper>
<cntorg>La Crosse County Zoning, Planning and Land Information Dept.</cntorg>
</cntperp>
<cntpos>La Crosse County Planner</cntpos>
<cntaddr>
<addrtype>mailing and physical address</addrtype>
<city>La Crosse</city>
<state>WI</state>
<postal>54601</postal>
<address>400 4th Street N Room 2040</address>
<country>USA</country>
</cntaddr>
<cntvoice>(608) 785-5919</cntvoice>
<cntfax>(608) 785-5922</cntfax>
<cntemail>handy.charlie@co.la-crosse.wi.us</cntemail>
<hours>8:30 a.m. - 5:00 p.m. CST</hours>
<cntinst>Ron Roth (GIS Specialist), (608) 785-9637, roth.ron@co.la-crosse.wi.us</cntinst>
</cntinfo>
</metc>
<metstdn Sync="TRUE">FGDC Content Standards for Digital Geospatial Metadata</metstdn>
<metstdv Sync="TRUE">FGDC-STD-001-1998</metstdv>
<mettc Sync="TRUE">local time</mettc>
<metac>none</metac>
<metuc>none</metuc>
<metextns>
<onlink>http://www.esri.com/metadata/esriprof80.html</onlink>
<metprof>ESRI Metadata Profile</metprof>
</metextns>
<metextns>
<onlink>http://www.esri.com/metadata/esriprof80.html</onlink>
<metprof>ESRI Metadata Profile</metprof>
</metextns>
<metextns>
<onlink>http://www.esri.com/metadata/esriprof80.html</onlink>
<metprof>ESRI Metadata Profile</metprof>
</metextns>
<langmeta Sync="TRUE">en</langmeta>
</metainfo>
<Esri>
<CreaDate>20230523</CreaDate>
<CreaTime>11182800</CreaTime>
<SyncOnce>FALSE</SyncOnce>
<SyncDate>20240501</SyncDate>
<SyncTime>09235400</SyncTime>
<ModDate>20240501</ModDate>
<ModTime>09235400</ModTime>
<DataProperties>
<lineage>
<Process Date="20080619" Name="Union_4" Time="102732" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "Export_Output_2 '';lax_co_lu ''" P:\projects\2100\2104-LaCrsCoSG\CAD\GIS\ShapefileMerge\bottom.shp ALL # GAPS</Process>
<Process Date="20080619" Name="Union_9" Time="130934" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "Merged\allCities '';Merged\bottom ''" P:\projects\2100\2104-LaCrsCoSG\CAD\GIS\ShapefileMerge\AllCitiesBottom.shp ALL # GAPS</Process>
<Process Date="20080619" Name="Union_14" Time="170432" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "Merged\AgEnvWatBluff '';Merged\AllCitiesBottom ''" P:\projects\2100\2104-LaCrsCoSG\CAD\GIS\ShapefileMerge\AgEnvWatBluff_Union1.shp ALL # GAPS</Process>
<Process Date="20091208" Name="" Time="155624" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Select" export="">Select Landuse "C:\LaCrosse Future Land Use\FLU_PI.shp" ""Future_LU" = 'PI'"</Process>
<Process Date="20091208" Name="" Time="162339" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "'FLU Categories\FLU_PI' #;'FLU Categories\FLU_R' #" "C:\LaCrosse Future Land Use\PI_R.shp" ALL # GAPS</Process>
<Process Date="20091208" Name="" Time="162939" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "'FLU Union\PI_R' #;'FLU Union\VGA_W' #" "C:\LaCrosse Future Land Use\PI_R_VGA_W.shp" ALL # GAPS</Process>
<Process Date="20091208" Name="" Time="163056" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "'FLU Union\PI_R_VGA_W' #;'FLU Union\A_E_EEA_NR' #" "C:\LaCrosse Future Land Use\Union_FLU.shp" ALL # GAPS</Process>
<Process Date="20091210" Name="" Time="105652" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Data Management Tools.tbx\RepairGeometry" export="">RepairGeometry Union_FLU DELETE_NULL Union_FLU</Process>
<Process Date="20091211" Name="" Time="095957" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Clip" export="">Clip Union_FLU taxparcelsshp-SAA_Edit "C:\LaCrosse Future Land Use\Union_FLU_Clip.shp" #</Process>
<Process Date="20091211" Name="" Time="130647" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Data Management Tools.tbx\CopyFeatures" export="">CopyFeatures "C:\LaCrosse Future Land Use\Union_FLU_Clip.shp" "C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip" # 0 0 0</Process>
<Process Date="20091211" Name="" Time="140615" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass" export="">FeatureClassToFeatureClass "C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip" "C:\LaCrosse Future Land Use" Union_FLU_Clip_ToBeSplit.shp # "FLU 'FLU' true true false 50 Text 0 0 ,First,#,C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip,FLU,-1,-1;Area 'Area' true true false 8 Double 0 0 ,First,#,C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip,Area,-1,-1;FLUDESC 'FLUDESC' true true false 50 Text 0 0 ,First,#,C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip,FLUDESC,-1,-1;Shape_Leng 'Shape_Length' false true true 8 Double 0 0 ,First,#,C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip,Shape_Length,-1,-1;Shape_Area 'Shape_Area' false true true 8 Double 0 0 ,First,#,C:\LaCrosse Future Land Use\LaCrosseFLU.gdb\Union_FLU_Clip,Shape_Area,-1,-1" # "C:\LaCrosse Future Land Use\Union_FLU_Clip_ToBeSplit.shp"</Process>
<Process Date="20091211" Name="" Time="145551" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Clip" export="">Clip Union_FLU_Clip_ToBeSplit Split3 "C:\LaCrosse Future Land Use\SplitFLU\Area3.shp" #</Process>
<Process Date="20100312" Name="" Time="091431" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "Area3 #;Area4 #" "C:\LaCrosse Future Land Use\REMERGE\Area34.shp" ALL # GAPS</Process>
<Process Date="20100312" Name="" Time="105334" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "Area34 #;New\AREA12 #" "C:\LaCrosse Future Land Use\REMERGE\Area1234.shp" ALL # GAPS</Process>
<Process Date="20100312" Name="" Time="114927" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Clip" export="">Clip LUpreClip MedCoCLip "C:\LaCrosse Future Land Use\Medary Clip\LUMEDCLIP.shp" #</Process>
<Process Date="20100312" Name="" Time="120216" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "LUMEDCLIP #;'Medary Recommended Land Use' #" "C:\LaCrosse Future Land Use\Medary Clip\FLUWITHMED.shp" ALL # GAPS</Process>
<Process Date="20100312" Name="" Time="162421" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Analysis Tools.tbx\Union" export="">Union "FLUADDAG #;AG1_Union1_Union #" "C:\LaCrosse Future Land Use\Final Edits\FLU1.shp" ALL # GAPS</Process>
<Process Date="20101228" Name="" Time="141147" ToolSource="C:\Program Files\ArcGIS\ArcToolbox\Toolboxes\Data Management Tools.tbx\Project" export="">Project "Future Land Use" "M:\ESRISHAR\Projects\Township-Village-City Maps\county\Planning\Future Land Use\La Crosse County\FutureLandUse.shp" PROJCS['NAD_1983_StatePlane_Wisconsin_South_FIPS_4803_Feet',GEOGCS['GCS_North_American_1983',DATUM['D_North_American_1983',SPHEROID['GRS_1980',6378137.0,298.257222101]],PRIMEM['Greenwich',0.0],UNIT['Degree',0.0174532925199433]],PROJECTION['Lambert_Conformal_Conic'],PARAMETER['False_Easting',1968500.0],PARAMETER['False_Northing',0.0],PARAMETER['Central_Meridian',-90.0],PARAMETER['Standard_Parallel_1',42.73333333333333],PARAMETER['Standard_Parallel_2',44.06666666666667],PARAMETER['Latitude_Of_Origin',42.0],UNIT['Foot_US',0.3048006096012192]] # PROJCS['Custom',GEOGCS['GCS_North_American_1983',DATUM['D_North_American_1983',SPHEROID['GRS_1980',6378137.0,298.257222101]],PRIMEM['Greenwich',0.0],UNIT['Degree',0.0174532925199433]],PROJECTION['Lambert_Conformal_Conic'],PARAMETER['False_Easting',1968500.0],PARAMETER['False_Northing',0.0],PARAMETER['Central_Meridian',-90.0],PARAMETER['Standard_Parallel_1',42.73333333333333],PARAMETER['Standard_Parallel_2',44.06666666666667],PARAMETER['Latitude_Of_Origin',42.0],UNIT['Foot_US',0.3048006096012192]]</Process>
<Process Date="20131108" Name="" Time="134104" ToolSource="c:\program files (x86)\arcgis\desktop10.1\ArcToolbox\Toolboxes\Data Management Tools.tbx\CopyFeatures" export="">CopyFeatures "M:\ESRISHAR\Projects\Township-Village-City Maps\county\Planning\Future Land Use\La Crosse County\FutureLandUse.shp" "Database Connections\NEWServerVector.sde\LAXVEC.DBO.ZoningRegulations\LAXVEC.DBO.FutureLandUse" # 0 0 0</Process>
<Process Date="20220224" Time="104654" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass">FeatureClassToFeatureClass "FutureLandUse_FromLaxVec selection" "W:\Comprehensive Planning\GIS\GIS_Projects_Files\LandUse_LaCrosseCountyFuture\FLU_2050_Adam.gdb" FLU2013_Enviro # "FLU "FLU" true true false 50 Text 0 0,First,#,FutureLandUse_FromLaxVec selection,FLU,0,50;FLUDESC "FLUDESC" true true false 50 Text 0 0,First,#,FutureLandUse_FromLaxVec selection,FLUDESC,0,50;LAXVEC_DBO_FutureLandUse_Area "LAXVEC.DBO.FutureLandUse.Area" true true false 8 Double 0 0,First,#,FutureLandUse_FromLaxVec selection,LAXVEC_DBO_FutureLandUse_Area,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,FutureLandUse_FromLaxVec selection,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,FutureLandUse_FromLaxVec selection,Shape_Area,-1,-1" #</Process>
<Process Date="20220707" Time="154923" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures FLU2013_Enviro P:\Adam_W\GIS\Comp_Plan\Comp_Plan_Land_Use\FLU_2050\SHPs\Old_Environmental.shp # NOT_USE_ALIAS "FLU "FLU" true true false 50 Text 0 0,First,#,FLU2013_Enviro,FLU,0,50;FLUDESC "FLUDESC" true true false 50 Text 0 0,First,#,FLU2013_Enviro,FLUDESC,0,50;LAXVEC_DBO_FutureLandUse_Area "LAXVEC.DBO.FutureLandUse.Area" true true false 8 Double 0 0,First,#,FLU2013_Enviro,LAXVEC_DBO_FutureLandUse_Area,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,FLU2013_Enviro,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,FLU2013_Enviro,Shape_Area,-1,-1" #</Process>
<Process Date="20230523" Time="111828" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Project">Project Old_Environmental O:\ESRISHAR\InternProjects\Travis\FLU_Combined\FLU_Combined.gdb\Old_Environmental PROJCS["NAD_1983_StatePlane_Wisconsin_South_FIPS_4803_Feet",GEOGCS["GCS_North_American_1983",DATUM["D_North_American_1983",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1968500.0],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-90.0],PARAMETER["Standard_Parallel_1",42.73333333333333],PARAMETER["Standard_Parallel_2",44.06666666666667],PARAMETER["Latitude_Of_Origin",42.0],UNIT["Foot_US",0.3048006096012192]] 'WGS_1984_(ITRF08)_To_NAD_1983_2011 + WGS_1984_(ITRF00)_To_NAD_1983' PROJCS["NAD_1983_2011_StatePlane_Wisconsin_South_FIPS_4803_Ft_US",GEOGCS["GCS_NAD_1983_2011",DATUM["D_NAD_1983_2011",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1968500.0],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-90.0],PARAMETER["Standard_Parallel_1",42.73333333333333],PARAMETER["Standard_Parallel_2",44.06666666666667],PARAMETER["Latitude_Of_Origin",42.0],UNIT["Foot_US",0.3048006096012192]] NO_PRESERVE_SHAPE # NO_VERTICAL</Process>
<Process Date="20230523" Time="131347" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Merge">Merge Old_Environmental;New_Environmental O:\ESRISHAR\InternProjects\Travis\FLU_Combined\FLU_Combined.gdb\Environmental_Merge "FLU "FLU" true true false 50 Text 0 0,First,#,Old_Environmental,FLU,0,50,New_Environmental,FLU,0,50;FLUDESC "FLUDESC" true true false 50 Text 0 0,First,#,Old_Environmental,FLUDESC,0,50,New_Environmental,FLUDESC,0,50;LAXVEC_DBO "LAXVEC_DBO" true true false 8 Double 0 0,First,#,Old_Environmental,LAXVEC_DBO,-1,-1,New_Environmental,LAXVEC_DBO,-1,-1;Shape_Leng "Shape_Leng" true true false 8 Double 0 0,First,#,Old_Environmental,Shape_Leng,-1,-1,New_Environmental,Shape_Leng,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,Old_Environmental,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,Old_Environmental,Shape_Area,-1,-1,New_Environmental,Shape_Area,-1,-1" NO_SOURCE_INFO</Process>
<Process Date="20240501" Time="092356" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures Environmental_Merge O:\ESRISHAR\InternProjects\Travis\FLU_Final\FLU_Final.gdb\Environmental_2024 # NOT_USE_ALIAS "FLU "FLU" true true false 50 Text 0 0,First,#,Environmental_Merge,FLU,0,50;FLUDESC "FLUDESC" true true false 50 Text 0 0,First,#,Environmental_Merge,FLUDESC,0,50;LAXVEC_DBO "LAXVEC_DBO" true true false 8 Double 0 0,First,#,Environmental_Merge,LAXVEC_DBO,-1,-1;Shape_Leng "Shape_Leng" true true false 8 Double 0 0,First,#,Environmental_Merge,Shape_Leng,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,Environmental_Merge,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,Environmental_Merge,Shape_Area,-1,-1" #</Process>
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<idPurp>This data set provides land use information for La Crosse County. To be used in pair with FLU_2024. It is a combination of water and high percent slope areas.</idPurp>
<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;Displays the land use of La Crosse County. Imported from LAXVEC 12-7-21 in preparation for the 2021 Comp Plan and Future Land Use plan.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
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