Occurrence and environmental data for aquatic plants of Minnesota from 1999–2018

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  • Metadata: DNR Watersheds – DNR Level 08 – All Catchments. Minnesota Department of Natural Resources, St. Paul, MN. https://resources.gisdata.mn.gov/pub/gdrs/data/pub/us_mn_state_dnr/geos_dnr_watersheds/metadata/dnr_watersheds_dnr_level_08_all_catchments.html.

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