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Forecasting Alpine Vegetation Change Using Repeat Sampling and a Novel Modeling Approach

机译:使用重复采样和新型建模方法预测高山植被变化

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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.
机译:全球变化通过改变植物分布和群落组成等多种方式影响着高山生态系统。然而,缺乏观测跨十年时间尺度的固定地块变化的研究,对预测高山植被变化提出了挑战。我们在本文中提出一种概率建模方法,该方法使用从1971年建立的有标明地块收集的植物丰度数据并在1991年和2001年重新采样来预测科罗拉多州Niwot Ridge的植被变化。从1971年开始的100年,并将每个植物群落的趋势与时间序列环境数据(1971-2001年)相关联。模型预测到2071年雪床植被的减少程度和灌木苔原的增加程度。年平均最高温度和氮沉降是植物群落变化的主要后验相关因素。这种建模工作对于生成可以用将来的采样工作进行检验的未来植被变化的假设很有用。

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