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Forecasting Alpine Vegetation Change Using Repeat Sampling and a Novel Modeling Approach
Authors:David R. Johnson  Diane Ebert-May  Patrick J. Webber  Craig E. Tweedie
Affiliation:(1) Department of Biology, University of Texas at El Paso, 500 West University Ave, El Paso, TX 79968-0519, USA;(2) Department of Plant Biology, Michigan State University, 166 Plant Biology Building, East Lansing, MI 48824-1312, USA;(3) P.O. Box 1380, Ranchos de Taos, NM 87557, USA
Abstract:Global change affects alpine ecosystems by, among many effects, by altering plant distributions and community composition. However, forecasting alpine vegetation change is challenged by a scarcity of studies observing change in fixed plots spanning decadal-time scales. We present in this article a probabilistic modeling approach that forecasts vegetation change on Niwot Ridge, CO using plant abundance data collected from marked plots established in 1971 and resampled in 1991 and 2001. Assuming future change can be inferred from past change, we extrapolate change for 100 years from 1971 and correlate trends for each plant community with time series environmental data (1971–2001). Models predict a decreased extent of Snowbed vegetation and an increased extent of Shrub Tundra by 2071. Mean annual maximum temperature and nitrogen deposition were the primary a posteriori correlates of plant community change. This modeling effort is useful for generating hypotheses of future vegetation change that can be tested with future sampling efforts.
Keywords:Probabilistic modeling   Alpine vegetation change   Snowbeds   Climate warming   Plant community change
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