CEFE, Université de Montpellier, CNRS, EPHE, IRD, Montpellier, France.
CNRS, Université de Lyon, Université Lyon1, Laboratoire de Biométrie et Biologie Evolutive UMR 5558, 69622, Villeurbanne, France.
Ecology. 2024 Feb;105(2):e4233. doi: 10.1002/ecy.4233. Epub 2024 Jan 5.
Resource selection functions are commonly used to evaluate animals' habitat selection, for example, the disproportionate use of habitats relative to their availability. While environmental conditions or animal motivations may vary over time, sometimes in an unknown manner, studying changes in habitat selection usually requires an a priori segmentation of time in distinct periods. This limits our ability to precisely answer the question "When is an animal's habitat selection changing?" Here, we present a straightforward and flexible alternative approach based on fitting dynamic logistic models to used/available data. First, using simulated datasets, we demonstrate that dynamic logistic models perform well in recovering temporal variations in habitat selection. We then show real-world applications for studying diel, seasonal, and post-release changes in the habitat selection of the blue wildebeest (Connochaetes taurinus). Dynamic logistic models allow the study of temporal changes in habitat selection in a framework consistent with resource selection functions but without the need to segment time in distinct periods, which can be a difficult task when little is known about the process studied or may obscure interindividual variability in timing of change. These models should undoubtedly find their place in the movement ecology toolbox. We provide R scripts to facilitate their adoption. We also encourage future research to focus on how to account for temporal autocorrelation in location data, as this would allow statistical inference from location data collected at a high frequency, an increasingly common situation.
资源选择函数通常用于评估动物的栖息地选择,例如,相对于栖息地的可利用性,动物对栖息地的不成比例的利用。虽然环境条件或动物动机可能随时间变化,但有时变化方式未知,研究栖息地选择的变化通常需要事先将时间划分为不同的时期。这限制了我们准确回答“动物的栖息地选择何时发生变化?”这个问题的能力。在这里,我们提出了一种简单灵活的替代方法,该方法基于将动态逻辑模型拟合到使用/可用数据中。首先,使用模拟数据集,我们证明动态逻辑模型在恢复栖息地选择的时间变化方面表现良好。然后,我们展示了在研究蓝牛羚(Connochaetes taurinus)的昼夜、季节性和释放后栖息地选择变化时的实际应用。动态逻辑模型允许在与资源选择函数一致的框架中研究栖息地选择的时间变化,而无需将时间划分为不同的时期,如果对所研究的过程知之甚少或可能掩盖变化时间的个体间可变性,则这可能是一项艰巨的任务。这些模型无疑将在运动生态学工具包中找到自己的位置。我们提供了 R 脚本,以方便采用。我们还鼓励未来的研究集中于如何在位置数据中考虑时间自相关,因为这将允许从高频收集的位置数据中进行统计推断,这种情况越来越普遍。