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            <resTitle>Maine Ecoregions</resTitle>
            			
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                <createDate>2022-12-05T00:00:00</createDate>
                				
                <pubDate>2022-12-05T00:00:00</pubDate>
                			
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                <rpIndName>Lisa St. Hilaire</rpIndName>
                				
                <rpOrgName>DACF Maine Natural Areas Program</rpOrgName>
                				
                <rpPosName>Information Manager</rpPosName>
                				
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        <idPurp>These seven datasets identify non-tidal lands within existing tidal estuaries that could be inundated and facilitate the development of new areas of tidal marsh if sea level rises by 0, 1.2, 1.6, 3.9, 6.1, 8.8, or 10.9 feet above current highest astronomical tide (HAT). The primary purpose of these data is to enable appropriate land use planning for lands that may become future tidal marshes, and to inform other investigations as to the impacts of and strategic conservation, restoration, and management planning for predicted sea level rise on critical coastal habitats.</idPurp>
        		
        <idAbs>&lt;span style='font-family:&amp;quot;Avenir Next W01&amp;quot;, &amp;quot;Avenir Next W00&amp;quot;, &amp;quot;Avenir Next&amp;quot;, Avenir, &amp;quot;Helvetica Neue&amp;quot;, sans-serif; font-size:16px;'&gt;These seven datasets identify non-tidal lands within existing tidal estuaries that could be inundated and facilitate the development of new areas of tidal marsh if sea level rises by 0, 1.2, 1.6, 3.9, 6.1, 8.8, or 10.9 feet above current highest astronomical tide (HAT). The primary purpose of these data is to enable appropriate land use planning for lands that may become future tidal marshes, and to inform other investigations as to the impacts of and strategic conservation, restoration, and management planning for predicted sea level rise on critical coastal habitats.&lt;/span&gt;</idAbs>
        		
        <idCredit>Maine Natural Areas Program</idCredit>
        		
        <searchKeys>
            			
            <keyword>Sea Level Rise</keyword>
            			
            <keyword>Marsh Migration Space</keyword>
            			
            <keyword>Highest Astronomical Tide</keyword>
            			
            <keyword>Saltmarsh</keyword>
            			
            <keyword>Salt Marsh</keyword>
            			
            <keyword>Tidal Marsh</keyword>
            			
            <keyword>Climate Change</keyword>
            			
            <keyword>MEDACF</keyword>
            			
            <keyword>MNAP</keyword>
            			
            <keyword>Maine</keyword>
            			
            <keyword>Estuary</keyword>
            			
            <keyword>Biodiversity</keyword>
            			
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        <rpIndName>Lisa St. Hilaire</rpIndName>
        		
        <rpOrgName>DACF Maine Natural Areas Program</rpOrgName>
        		
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