Bailey Liam D, van de Pol Martijn
Department of Evolution, Ecology and Genetics, Research School of Biology, The Australian National University, Canberra, Australia.
Department of Animal Ecology, Netherlands Institute of Ecology (NIOO-KNAW), Wageningen, The Netherlands.
PLoS One. 2016 Dec 14;11(12):e0167980. doi: 10.1371/journal.pone.0167980. eCollection 2016.
When studying the impacts of climate change, there is a tendency to select climate data from a small set of arbitrary time periods or climate windows (e.g., spring temperature). However, these arbitrary windows may not encompass the strongest periods of climatic sensitivity and may lead to erroneous biological interpretations. Therefore, there is a need to consider a wider range of climate windows to better predict the impacts of future climate change. We introduce the R package climwin that provides a number of methods to test the effect of different climate windows on a chosen response variable and compare these windows to identify potential climate signals. climwin extracts the relevant data for each possible climate window and uses this data to fit a statistical model, the structure of which is chosen by the user. Models are then compared using an information criteria approach. This allows users to determine how well each window explains variation in the response variable and compare model support between windows. climwin also contains methods to detect type I and II errors, which are often a problem with this type of exploratory analysis. This article presents the statistical framework and technical details behind the climwin package and demonstrates the applicability of the method with a number of worked examples.
在研究气候变化的影响时,人们倾向于从一小部分任意的时间段或气候窗口(例如春季温度)中选择气候数据。然而,这些任意的窗口可能并未涵盖气候敏感度最强的时期,并且可能导致错误的生物学解释。因此,有必要考虑更广泛的气候窗口,以便更好地预测未来气候变化的影响。我们引入了R包climwin,它提供了多种方法来测试不同气候窗口对选定响应变量的影响,并比较这些窗口以识别潜在的气候信号。climwin为每个可能的气候窗口提取相关数据,并使用这些数据来拟合一个统计模型,其结构由用户选择。然后使用信息准则方法比较模型。这使得用户能够确定每个窗口对响应变量变化的解释程度,并比较不同窗口之间的模型支持度。climwin还包含检测I型和II型错误的方法,而这在这类探索性分析中往往是个问题。本文介绍了climwin包背后的统计框架和技术细节,并通过一些实例展示了该方法的适用性。