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Using Assessment, Inventory, and Monitoring Data for Evaluating Rangeland Treatment Effects in Northern New Mexico

Rangelands(2020)

Department of Forest | U.S. Department of Interior Bureau of Land Management

Cited 8|Views3
Abstract
•The Bureau of Land Management used the Assessment, Inventory and Monitoring (AIM) program to assess sagebrush and pinyon-juniper removal areas in Northern New Mexico.•A broad network of nontreated AIM data were used as a “reference” to evaluate treatments with respect to their management objectives.•Groupings of reference data enabled informative comparisons among treatment methods based on land potential.•Mechanical treatments showed lower cover of wildlife-desirable vegetation and slower recovery of foliar cover compared with chemical treatments.•AIM data, when summarized using appropriate groups, was a cost-efficient and accessible tool for evaluating restoration treatments.
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Key words
Assessment, inventory and monitoring,Restoration,Adaptive management,Vegetation treatment,Discing,Tebuthiuron
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