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首页> 外文期刊>Global change biology >Uncertainty in predicting range dynamics of endemic alpine plants under climate warming
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Uncertainty in predicting range dynamics of endemic alpine plants under climate warming

机译:气候变暖下地方性高山植物预测范围动态的不确定性

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摘要

Correlative species distribution models have long been the predominant approach to predict species' range responses to climate change. Recently, the use of dynamic models is increasingly advocated for because these models better represent the main processes involved in range shifts and also simulate transient dynamics. A well-known problem with the application of these models is the lack of data for estimating necessary parameters of demographic and dispersal processes. However, what has been hardly considered so far is the fact that simulating transient dynamics potentially implies additional uncertainty arising from our ignorance of short-term climate variability in future climatic trends. Here, we use endemic mountain plants of Austria as a case study to assess how the integration of decadal variability in future climate affects outcomes of dynamic range models as compared to projected long-term trends and uncertainty in demographic and dispersal parameters. We do so by contrasting simulations of a so-called hybrid model run under fluctuating climatic conditions with those based on a linear interpolation of climatic conditions between current values and those predicted for the end of the 21st century. We find that accounting for short-term climate variability modifies model results nearly as differences in projected long-term trends and much more than uncertainty in demographic/dispersal parameters. In particular, range loss and extinction rates are much higher when simulations are run under fluctuating conditions. These results highlight the importance of considering the appropriate temporal resolution when parameterizing and applying range-dynamic models, and hybrid models in particular. In case of our endemic mountain plants, we hypothesize that smoothed linear time series deliver more reliable results because these long-lived species are primarily responsive to long-term climate averages.
机译:长期以来,相关物种分布模型一直是预测物种对气候变化的范围响应的主要方法。近年来,越来越多地提倡使用动态模型,因为这些模型可以更好地表示范围转换所涉及的主要过程,并且还可以模拟瞬态动力学。这些模型的应用中的一个众所周知的问题是缺乏用于估计人口统计和分散过程的必要参数的数据。但是,到目前为止,几乎没有考虑过的事实是,模拟瞬态动力学可能意味着由于我们对未来气候趋势的短期气候变异性的无知而产生了额外的不确定性。在这里,我们以奥地利的地方性山地植物为案例研究,以评估与未来的长期趋势以及人口和分散参数的不确定性相比,未来气候中年代际变化的整合如何影响动态范围模型的结果。为此,我们将在气候条件波动的情况下进行的所谓混合模型的仿真与基于当前值与21世纪末预测的气候条件之间线性插值的模型进行对比。我们发现,考虑到短期气候变异性,几乎可以预测长期趋势的差异,而不仅仅是人口统计/分散参数的不确定性,从而可以修正模型结果。尤其是,在波动条件下进行模拟时,距离损失和消光率要高得多。这些结果凸显了在参数化和应用范围动态模型(尤其是混合模型)时考虑适当的时间分辨率的重要性。对于本地特有的山区植物,我们假设平滑的线性时间序列可提供更可靠的结果,因为这些长寿物种主要是对长期气候平均值的响应。

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