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Do we need demographic data to forecast plant population dynamics?

机译:我们是否需要人口统计数据来预测植物种群动态?

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Rapid environmental change has generated growing interest in forecasts of future population trajectories. Traditional population models built with detailed demographic observations from one study site can address the impacts of environmental change at particular locations, but are difficult to scale up to the landscape and regional scales relevant to management decisions. An alternative is to build models using population-level data that are much easier to collect over broad spatial scales than individual-level data. However, it is unknown whether models built using population-level data adequately capture the effects of density-dependence and environmental forcing that are necessary to generate skillful forecasts. Here, we test the consequences of aggregating individual responses when forecasting the population states (percent cover) and trajectories of four perennial grass species in a semi-arid grassland in Montana, USA. We parameterized two population models for each species, one based on individual-level data (survival, growth and recruitment) and one on population-level data (percent cover), and compared their forecasting accuracy and forecast horizons with and without the inclusion of climate covariates. For both models, we used Bayesian ridge regression to weight the influence of climate covariates for optimal prediction. In the absence of climate effects, we found no significant difference between the forecast accuracy of models based on individual-level data and models based on population-level data. Climate effects were weak, but increased forecast accuracy for two species. Increases in accuracy with climate covariates were similar between model types. In our case study, percent cover models generated forecasts as accurate as those from a demographic model. For the goal of forecasting, models based on aggregated individual-level data may offer a practical alternative to data-intensive demographic models. Long time series of percent cover data already exist for many plant species. Modelers should exploit these data to predict the impacts of environmental change.
机译:快速的环境变化对未来人口轨迹的预测产生了日益增长的兴趣。来自一项研究现场的详细人口观测建立的传统人口模型可以解决特定地点环境变化的影响,但难以扩大到与管理决策相关的景观和区域尺度。替代方案是使用人口级数据构建模型,这些数据比单独的数据更容易收集到广泛的空间尺度上。然而,尚不清楚使用人口级数据建立的模型是否充分捕获了生成熟练预测所需的密度依赖性和环境迫使的效果。在这里,我们测试在美国蒙大拿州蒙大拿州半干旱草原中的人口态(百分比)和四个多年生草种的群体和轨迹时聚集各个反应的后果。我们根据个人级数据(生存,增长和招聘)和一个人口级数据(覆盖率),参数化了两个人口模型,并将其预测准确性和预测视野进行了比较,并在不包含气候的情况下进行比较协变量。对于两种型号,我们使用贝叶斯脊的回归来重量气候协变量对最佳预测的影响。在没有气候效应的情况下,我们发现基于人口级数据的个性级数据和模型的模型预测准确性没有显着差异。气候效果较弱,但两种物种的预测准确性增加。在模型类型之间的气候协变量中,气候协变量的准确性增加。在我们的案例研究中,百分比覆盖模型产生预测为来自人口统计模型的预测。为了预测预测,基于聚合的各个数据的模型可以提供数据密集型人口模型的实用替代方案。许多植物物种已经存在很长时间百分比百分比。建模者应该利用这些数据来预测环境变化的影响。

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