景观破碎化和运动数据采样频率对景观连通性评估的综合影响

IF 3.4 1区 生物学 Q2 ECOLOGY
Marie-Caroline Prima, Mathieu Garel, Pascal Marchand, James Redcliffe, Luca Börger, Florian Barnier
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引用次数: 0

摘要

网络理论主要应用于现实世界的系统中,利用经验网络或理论网络来评估景观连通性。经验网络通常由不连续的个体运动轨迹构建而成,不知道迁移频率对景观连通性评估的影响,而理论网络通常依赖于简单的运动规则。我们利用阿尔卑斯山山羊(Capra ibex)的模拟轨迹和经验性高分辨率(1 Hz)轨迹,研究了迁移采样频率和景观破碎化对景观连通性评估的综合影响。我们还量化了常用理论网络从多种运动过程中准确预测景观连通性的能力。我们在具有三种景观破碎程度的模拟景观中模拟了连续相关偏向随机行走的觅食者轨迹。我们使用 GPS 多传感器生物测定数据和死重定位技术重建了高分辨率的山羊运动轨迹。对于模拟轨迹和经验轨迹,我们从定期重采样的轨迹中生成了空间网络,并根据重采样频率和景观破碎度评估了其拓扑结构和信息损失的变化。最后,我们在相同的地貌中建立了常用的理论网络,并将其预测结果与实际连通性进行了比较。我们证明,与动物运动的时间动态相比,如果重新取样频率过低,景观连通性的准确评估就会受到严重影响(例如,高达 66% 的未发现访问斑块和 29% 的虚假链接)。然而,景观破碎程度和潜在的运动过程都可以减轻迁移采样频率的影响。我们的研究还表明,不同运动行为和各种地貌破碎程度所形成的网络拓扑结构是复杂的,常用的理论网络只能准确预测此类环境中 30-50% 的地貌连通性。要准确识别复杂的网络拓扑结构,避免产生虚假的景观连通性信息,通常需要非常高分辨率的轨迹数据。因此,长期提供这种高分辨率数据集的新技术应在运动生态学领域得到发展。此外,在研究真实世界系统中的景观连通性时,应谨慎应用常用的理论模型,因为这些模型并不能很好地作为预测工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined effects of landscape fragmentation and sampling frequency of movement data on the assessment of landscape connectivity
Network theory is largely applied in real-world systems to assess landscape connectivity using empirical or theoretical networks. Empirical networks are usually built from discontinuous individual movement trajectories without knowing the effect of relocation frequency on the assessment of landscape connectivity while theoretical networks generally rely on simple movement rules. We investigated the combined effects of relocation sampling frequency and landscape fragmentation on the assessment of landscape connectivity using simulated trajectories and empirical high-resolution (1 Hz) trajectories of Alpine ibex (Capra ibex). We also quantified the capacity of commonly used theoretical networks to accurately predict landscape connectivity from multiple movement processes. We simulated forager trajectories from continuous correlated biased random walks in simulated landscapes with three levels of landscape fragmentation. High-resolution ibex trajectories were reconstructed using GPS-enabled multi-sensor biologging data and the dead-reckoning technique. For both simulated and empirical trajectories, we generated spatial networks from regularly resampled trajectories and assessed changes in their topology and information loss depending on the resampling frequency and landscape fragmentation. We finally built commonly used theoretical networks in the same landscapes and compared their predictions to actual connectivity. We demonstrated that an accurate assessment of landscape connectivity can be severely hampered (e.g., up to 66% of undetected visited patches and 29% of spurious links) when the relocation frequency is too coarse compared to the temporal dynamics of animal movement. However, the level of landscape fragmentation and underlying movement processes can both mitigate the effect of relocation sampling frequency. We also showed that network topologies emerging from different movement behaviours and a wide range of landscape fragmentation were complex, and that commonly used theoretical networks accurately predicted only 30–50% of landscape connectivity in such environments. Very high-resolution trajectories were generally necessary to accurately identify complex network topologies and avoid the generation of spurious information on landscape connectivity. New technologies providing such high-resolution datasets over long periods should thus grow in the movement ecology sphere. In addition, commonly used theoretical models should be applied with caution to the study of landscape connectivity in real-world systems as they did not perform well as predictive tools.
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来源期刊
Movement Ecology
Movement Ecology Agricultural and Biological Sciences-Ecology, Evolution, Behavior and Systematics
CiteScore
6.60
自引率
4.90%
发文量
47
审稿时长
23 weeks
期刊介绍: Movement Ecology is an open-access interdisciplinary journal publishing novel insights from empirical and theoretical approaches into the ecology of movement of the whole organism - either animals, plants or microorganisms - as the central theme. We welcome manuscripts on any taxa and any movement phenomena (e.g. foraging, dispersal and seasonal migration) addressing important research questions on the patterns, mechanisms, causes and consequences of organismal movement. Manuscripts will be rigorously peer-reviewed to ensure novelty and high quality.
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