Mathematical Institute, University of Oxford, Oxford, United Kingdom.
Wildlife Conservation Research Unit (WildCRU), Department of Zoology, University of Oxford, Oxford, United Kingdom.
Sci Rep. 2022 Oct 6;12(1):16680. doi: 10.1038/s41598-022-20370-w.
Landscape connectivity, the extent to which a landscape facilitates the flow of ecological processes such as organism movement, has grown to become a central focus of applied ecology and conservation science. Several computational algorithms have been developed to understand and map connectivity, and many studies have validated their predictions using empirical data. Yet at present, there is no published comparative analysis which uses a comprehensive simulation framework to measure the accuracy and performance of the dominant methods in connectivity modelling. Given the widespread usage of such models in spatial ecology and conservation science, a thorough evaluation of their predictive abilities using simulation techniques is essential for guiding their appropriate and effective application across different contexts. In this paper, we address this by using the individual-based movement model Pathwalker to simulate different connectivity scenarios generated from a wide range of possible movement behaviours and spatial complexities. With this simulated data, we test the predictive abilities of three major connectivity models: factorial least-cost paths, resistant kernels, and Circuitscape. Our study shows the latter two of these three models to consistently perform most accurately in nearly all cases, with their abilities varying substantially in different contexts. For the majority of conservation applications, we infer resistant kernels to be the most appropriate model, except for when the movement is strongly directed towards a known location. We conclude this paper with a review and interdisciplinary discussion of the current limitations and possible future developments of connectivity modelling.
景观连通性是指景观促进生态过程(如生物运动)流动的程度,已成为应用生态学和保护科学的核心关注点。已经开发了几种计算算法来理解和绘制连通性,并且许多研究已经使用经验数据验证了它们的预测。然而,目前还没有发表的比较分析使用综合模拟框架来衡量连通性建模中主要方法的准确性和性能。鉴于这些模型在空间生态学和保护科学中的广泛应用,使用模拟技术对其预测能力进行彻底评估对于指导其在不同背景下的适当和有效应用至关重要。在本文中,我们通过使用基于个体的移动模型 Pathwalker 来模拟来自广泛可能的移动行为和空间复杂性的不同连通性场景来解决这个问题。使用这些模拟数据,我们测试了三种主要连通性模型的预测能力:因子最小成本路径、抗性核和 Circuitscape。我们的研究表明,这三个模型中的后两个在几乎所有情况下都表现出最准确的性能,它们的能力在不同的情况下有很大的变化。对于大多数保护应用,我们推断抗性核是最合适的模型,除非运动强烈指向已知位置。最后,我们对连通性建模的当前限制和可能的未来发展进行了回顾和跨学科讨论。