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			<resTitle>Sea Level 2040 and 2070 Conservation Scenarios: Existing and Priority Conservation - 2022</resTitle>
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				<pubDate>2023-05-08T00:00:00</pubDate>
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				<rpIndName>Mike Volk</rpIndName>
				<rpOrgName>University of Florida Center for Landscape Conservation Planning</rpOrgName>
				<rpPosName>Research Associate Professor, Department of Landscape Architecture</rpPosName>
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						<postCode>32611-5706</postCode>
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				<displayName>Mike Volk</displayName>
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		<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P STYLE="margin:0 0 6 0;"&gt;&lt;SPAN&gt;This dataset includes a representation of existing and future priority conservation lands in Florida. This data was used to identify areas where development should be avoided in the Conservation 2040 and 2070 Scenarios as part of the Sea Level 2040/2070 project (https://1000fof.org/sealevel2040/). Protected lands include Florida Managed Lands (FLMA), Florida Forever conservation land protection projects, and Priorities 1, 2, and 3 in the Florida Ecological Greenways Network (FEGN), otherwise known as the Florida Wildlife Corridor.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
		<idPurp>This dataset includes a representation of existing and future priority conservation lands in Florida. This data was used to identify areas where development should be avoided in the Conservation 2040 and 2070 Scenarios as part of the Sea Level 2040/2070 project (https://1000fof.org/sealevel2040/). Existing and future priority conservation lands included in this dataset include 2021 Florida Managed Lands (FLMA), 2021 Florida Forever conservation land protection projects, and Priorities 1, 2, and 3 in the 2021 Florida Ecological Greenways Network (FEGN), also known as the Florida Wildlife Corridor.</idPurp>
		<idCredit>The Sea Level 2040/2070 project is a joint project of the Florida Department of Agriculture and Consumer Services (DACS), University of Florida Center for Landscape Conservation Planning (CLCP) and 1000 Friends of Florida, with funding provided by DACS. This dataset was developed using 2021 data obtained from Florida Natural Areas Inventory and developed by the Center for Landscape Conservation Planning [CLCP].

			See the technical reports:
			Sea Level 2040
			https://1000fof.org/sealevel2040/wp-content/uploads/2023/03/FOF-1268-Sea-Level-2040-Print-Reports-v5.pdf

			Sea level 2070
		https://1000fof.org/sealevel2040/wp-content/uploads/2023/05/FOF-1283-Sea-Level-2070-Print-Report-Phase-II-v5.pdf</idCredit>
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			<rpIndName>Mike Volk</rpIndName>
			<rpOrgName>University of Florida Center for Landscape Conservation Planning</rpOrgName>
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					<adminArea>FL</adminArea>
					<postCode>32611-5706</postCode>
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			<rpIndName>Dan Farrah</rpIndName>
			<rpOrgName>University of Florida Center for Landscape Conservation Planning</rpOrgName>
			<rpPosName>Development and Land Use Analyst</rpPosName>
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			<keyword>Sea Level 2040</keyword>
			<keyword>Land Use</keyword>
			<keyword>Population Projections</keyword>
			<keyword>Land Development</keyword>
			<keyword>Urban Densities</keyword>
			<keyword>Urban Density</keyword>
			<keyword>Greenfields</keyword>
			<keyword>Agricultural Lands</keyword>
			<keyword>Natural Lands</keyword>
			<keyword>Landuse</keyword>
			<keyword>Redevelopment</keyword>
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			<keyword>Sea Level 2040</keyword>
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			<keyword>Urban Densities</keyword>
			<keyword>Urban Density</keyword>
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			<keyword>Natural Lands</keyword>
			<keyword>Landuse</keyword>
			<keyword>Florida</keyword>
			<keyword>Development Scenarios</keyword>
			<keyword>Alternative Development Scenarios</keyword>
			<keyword>Sprawl</keyword>
			<keyword>Sea Level Rise</keyword>
			<keyword>Conservation</keyword>
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				<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P STYLE="margin:0 0 14 0;"&gt;&lt;SPAN&gt;This data is intended to be used for general informational and planning purposes, and is not appropriate for legal and/or cadastral purposes. &lt;/SPAN&gt;&lt;SPAN&gt;&lt;SPAN&gt;GIS data from the Center for Landscape Conservation Planning (CLCP) is provided as a public service by CLCP. &lt;/SPAN&gt;&lt;/SPAN&gt;&lt;SPAN&gt;CLCP makes every effort to provide accurate and complete data. Metadata is provided for all datasets and no data should be used without first reading and understanding the limitations of the data. The CLCP provides NO WARRANTY as to the accuracy of this data or any corresponding attributes or metadata. Data is provided in an &#8220;as is&#8221; condition, without warranty of any kind, either expressed or implied, including any assurance that the data is fit for a particular purpose. CLCP shall have no liability, in any case, to the use of provided data (including redistribution and reproduction). Full liability, responsibility and consequence relating to the use of provided data rest with the user.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
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				<useLimit>The Florida Geographic Data Library is a collection of Geospatial Data compiled by the University of Florida GeoPlan Center with support from the Florida Department of Transportation. GIS data available in FGDL is collected from various state, federal, and other agencies (data sources) who are data stewards, producers, or publishers. The data available in FGDL may not be the most current version of the data offered by the data source. University of Florida GeoPlan Center makes no guarantees about the currentness of the data and suggests that data users check with the data source to see if more recent versions of the data exist. Furthermore, the GIS data available in the FGDL are provided 'as is'. The University of Florida GeoPlan Center makes no warranties, guaranties or representations as to the truth, accuracy or completeness of the data provided by the data sources. The University of Florida GeoPlan Center makes no representations or warranties about the quality or suitability of the materials, either expressly or implied, including but not limited to any implied warranties of merchantability, fitness for a particular purpose, or non-infringement. The University of Florida GeoPlan Center shall not be liable for any damages suffered as a result of using, modifying, contributing or distributing the materials. A note about data scale: Scale is an important factor in data usage. Certain scale datasets are not suitable for some project, analysis, or modeling purposes. Please be sure you are using the best available data. 1:24000 scale datasets are recommended for projects that are at the county level. 1:24000 data should NOT be used for high accuracy base mapping such as property parcel boundaries. 1:100000 scale datasets are recommended for projects that are at the multi-county or regional level. 1:125000 scale datasets are recommended for projects that are at the regional or state level or larger. Vector datasets with no defined scale or accuracy should be considered suspect. Make sure you are familiar with your data before using it for projects or analysis. Every effort has been made to supply the user with data documentation. For additional information, see the References section and the Data Source Contact section of this documentation.</useLimit>
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		<suppInfo>See the Technical Reports

			Sea Level 2040
			https://1000fof.org/sealevel2040/wp-content/uploads/2023/03/FOF-1268-Sea-Level-2040-Print-Reports-v5.pdf

			Sea level 2070
		https://1000fof.org/sealevel2040/wp-content/uploads/2023/05/FOF-1283-Sea-Level-2070-Print-Report-Phase-II-v5.pdf</suppInfo>
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				<useLimit>The Sea Level 2040 and Sea Level 2070 Project datasets should not be used below the project's regional scales. Specifically these datasets should not be used below the county scale or at municipal scale.
				This data is intended to be used for general informational and planning purposes, and is not appropriate for legal and/or cadastral purposes. The Center for Landscape Conservation Planning (CLCP) GIS data is provided as a public service by CLCP. CLCP makes every effort to provide accurate and complete data. Metadata is provided for all datasets and no data should be used without first reading and understanding the limitations of the data. The CLCP provides NO WARRANTY as to the accuracy of this data or any corresponding attributes or metadata. Data is provided in an &#8220;as is&#8221; condition, without warranty of any kind, either expressed or implied, including any assurance that the data is fit for a particular purpose. CLCP shall have no liability, in any case, to the use of provided data (including redistribution and reproduction). Full liability, responsibility and consequence relating to the use of provided data rest with the user.</useLimit>
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			<RoleCd value="007"/>
		</role>
		<rpCntInfo xmlns="">
			<cntAddress addressType="postal">
				<eMailAdd>mikevolk@ufl.edu</eMailAdd>
				<delPoint>P. O. Box 115706</delPoint>
				<city>Gainesville</city>
				<adminArea>FL</adminArea>
				<postCode>32611-5706</postCode>
				<country>US</country>
			</cntAddress>
			<cntPhone>
				<voiceNum tddtty="">mikevolk@ufl.edu</voiceNum>
			</cntPhone>
		</rpCntInfo>
		<displayName>Mike Volk</displayName>
		<displayName>Mike Volk</displayName>
	</mdContact>
	<mdMaint xmlns="">
		<maintFreq>
			<MaintFreqCd value="009"/>
		</maintFreq>
	</mdMaint>
	<dqInfo xmlns="">
		<dataLineage>
			<statement>This dataset contains a representation of 2040 and 2070 conservation lands in Florida in 2022 used in the Sea Level 2040 and 2070 projects. Protected lands include Florida Managed Lands (FLMA), Florida Forever conservation land protection projects, and Priorities 1, 2, and 3 in the Florida Ecological Greenways Network (FEGN), otherwise known as the Florida Wildlife Corridor. This data was created by CLCP.</statement>
			<dataSource xmlns="" type="">
				<srcDesc>Spatial and Attribute Information</srcDesc>
				<srcMedName>
					<MedNameCd value="015"/>
				</srcMedName>
			</dataSource>
			<prcStep xmlns="">
				<stepDesc>This dataset contains a representation of 2040 and 2070 conservation lands in Florida in 2022 used in the Sea Level 2040 and 2070 projects. Protected lands include Florida Managed Lands (FLMA), Florida Forever conservation land protection projects, and Priorities 1, 2, and 3 in the Florida Ecological Greenways Network (FEGN), otherwise known as the Florida Wildlife Corridor. This data was created by CLCP.

					See the Technical Reports:
					Sea Level 2040
					https://1000fof.org/sealevel2040/wp-content/uploads/2023/03/FOF-1268-Sea-Level-2040-Print-Reports-v5.pdf

					Sea Level 2070
				https://1000fof.org/sealevel2040/wp-content/uploads/2023/05/FOF-1283-Sea-Level-2070-Print-Report-Phase-II-v5.pdf</stepDesc>
				<stepDateTm>2022-06-23T00:00:00</stepDateTm>
				<stepProc xmlns="">
					<rpIndName>Dan Farrah</rpIndName>
					<rpOrgName>University of Florida Center for Landscape Conservation Planning</rpOrgName>
					<rpPosName>Development and Land Use Analyst</rpPosName>
					<role>
						<RoleCd value="009"/>
					</role>
					<rpCntInfo xmlns="">
						<cntAddress addressType="postal">
							<eMailAdd>dfarrah@ufl.edu</eMailAdd>
							<delPoint>P. O. Box 115706</delPoint>
							<city>Gainesville</city>
							<adminArea>FL</adminArea>
							<postCode>32611-5706</postCode>
							<country>US</country>
						</cntAddress>
						<cntPhone>
							<voiceNum tddtty="">dfarrah@ufl.edu</voiceNum>
						</cntPhone>
					</rpCntInfo>
					<displayName>Dan Farrah</displayName>
				</stepProc>
			</prcStep>
			<prcStep xmlns="">
				<stepDesc>The GeoPlan Center received via email, the following CLCP datasets
					on July 10th, 2023 from Dan Farrah (uf.farrah@dogcubed.com):

					sl_2040_2070.gdb 7-10-23.zip
					sl_2040_2070.gdb
					FGDB contained the following feature datasets:
					sl2040_2070_baseline_may23
					sl2040_2070_cons_protect_may23
					sl2040_conservation_may23
					sl2040_sprawl_may23
					sl2070_conservation_may23
					sl2070_sprawl_may23

					--------------------------
					Original Projection Information:
					NAD_1983_HARN_Florida_GDL_Albers (3087)
					--------------------------

					During the QA/QC process the following tasks were undertaken:
					- Each feature dataset was exported to its own FGDB of the same name.
					- Uppercased all records in the table except any URL fields.
					- A FGDLAQDATE field was added based on the date FGDL acquired the data from the Source.
					- Updated Metadata.
				</stepDesc>
				<stepDateTm>2023-07-10T00:00:00</stepDateTm>
				<stepProc xmlns="">
					<rpIndName>Kate Norris</rpIndName>
					<rpOrgName>University of Florida GeoPlan Center</rpOrgName>
					<rpPosName>Geospatial Data Manager &amp; Senior GIS Specialist</rpPosName>
					<rpCntInfo xmlns="">
						<cntPhone>
							<voiceNum tddtty="">www.fgdl.org</voiceNum>
						</cntPhone>
						<cntAddress addressType="both">
							<delPoint>131 Architecture Building | PO Box 115706</delPoint>
							<city>Gainesville</city>
							<adminArea>FL</adminArea>
							<postCode>32611-5706</postCode>
							<country>US</country>
							<eMailAdd>data@fgdl.org</eMailAdd>
						</cntAddress>
					</rpCntInfo>
					<displayName>Kate Norris</displayName>
					<displayName>Kate Norris</displayName>
					<role>
						<RoleCd value="009"/>
					</role>
				</stepProc>
			</prcStep>
		</dataLineage>
		<report xmlns="" type="DQConcConsis" dimension="">
			<measDesc>This data is provided 'as is'. GeoPlan relied on the integrity of the original data layer's topology.</measDesc>
		</report>
		<report xmlns="" type="DQCompOm" dimension="">
			<measDesc>This data is provided 'as is' by GeoPlan and is complete to our knowledge.</measDesc>
		</report>
		<report xmlns="" type="DQQuanAttAcc" dimension="">
			<measDesc>GeoPlan relied on the integrity of the attribute information within the original data.</measDesc>
			<evalMethType>
				<EvalMethTypeCd value="003"/>
			</evalMethType>
		</report>
		<report xmlns="" type="DQAbsExtPosAcc" dimension="horizontal">
			<measDesc>This data is provided 'as is' and its horizontal positional accuracy has not been verified by GeoPlan.</measDesc>
		</report>
		<report xmlns="" type="DQAbsExtPosAcc" dimension="vertical">
			<measDesc>This data is provided 'as is' and its vertical positional accuracy has not been verified by GeoPlan.</measDesc>
			<measResult>
				<ConResult>
					<conPass>0</conPass>
				</ConResult>
			</measResult>
		</report>
	</dqInfo>
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