Department of Environmental Conservation, University of Massachusetts-Amherst, Amherst, MA, USA.
Organismal and Evolutionary Biology Interdisciplinary Program, University of Massachusetts-Amherst, Amherst, MA, USA.
J Anim Ecol. 2022 Oct;91(10):2050-2060. doi: 10.1111/1365-2656.13783. Epub 2022 Jul 30.
Connectivity is a fundamental concept linking dispersal to the emergent dynamics and persistence of spatially structured populations. Functional measures of connectivity typically seek to integrate aspects of landscape structure and animal movement to describe ecologically meaningful connectedness at the landscape and population scale. Despite this focus on function, traditional measures of landscape connectivity assume it is a static property of the landscape, hence abstracting out the underlying spatiotemporal population dynamics. Connectivity is, arguably, a dynamic property of landscapes, and is inherently related to the spatial distribution of individuals and populations across the landscape. Static representations of connectivity potentially overlook this variation and therefore adopting a dynamic approach should offer improved insights about connectivity and associated ecological processes. Using a large-scale, long-term time series of occupancy data from a metapopulation of water voles Arvicola amphibius, we tested competing hypotheses about how considering the dynamic nature of connectivity improves the ability of spatially explicit occupancy models to recover population dynamics. Iteratively relaxing standing assumptions of connectivity metrics, these models ranged from spatially and temporally fixed connectivity metrics that are widely applied, to the more flexible, but lesser used model that allowed temporally varying connectivity measures that incorporate spatiotemporally dynamic patch occupancy states. Our results provide empirical evidence that demographic weighting using patch occupancy dynamics and temporal variability in connectivity measures are important for describing metapopulation dynamics. We highlight the implications of commonly held assumption in connectivity modelling and demonstrate how they result in different and highly variable predictions of metapopulation capacity. Thus, we argue that the concept of connectivity and its potential applications would benefit from recognizing inherent spatiotemporal variation in connectivity that is explicitly linked to underlying ecological state variables.
连通性是一个基本概念,将扩散与空间结构种群的涌现动态和持久性联系起来。连通性的功能度量通常试图整合景观结构和动物运动的各个方面,以描述景观和种群尺度上具有生态意义的连通性。尽管如此关注功能,但传统的连通性度量假设它是景观的静态属性,因此抽象出潜在的时空种群动态。可以说,连通性是景观的动态属性,与个体和种群在景观中的空间分布密切相关。连通性的静态表示可能忽略了这种变化,因此采用动态方法应该可以更好地了解连通性和相关的生态过程。我们使用水鼠(Arvicola amphibius)的一个复合种群的大规模、长期的占有数据时间序列,检验了关于考虑连通性的动态性质如何提高空间显式占有模型恢复种群动态的能力的竞争假设。通过迭代放宽连通性度量的固定假设,这些模型从广泛应用的空间和时间固定连通性度量到更灵活但使用较少的模型,这些模型允许包含时空动态斑块占有状态的时间变化的连通性度量。我们的研究结果提供了经验证据,表明使用斑块占有动态和连通性度量的时间变异性进行人口加权对于描述复合种群动态非常重要。我们强调了连通性建模中常见假设的含义,并展示了它们如何导致对复合种群容量的不同且高度可变的预测。因此,我们认为连通性的概念及其潜在应用将受益于认识到与基础生态状态变量明确相关的连通性的固有时空变化。