用于推断特定行为的栖息地选择和利用分布的多状态Langevin扩散。

IF 4.4 2区 环境科学与生态学 Q1 ECOLOGY
Ecology Pub Date : 2023-10-05 DOI:10.1002/ecy.4186
Brett T. McClintock, Michelle E. Lander
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引用次数: 0

摘要

重要栖息地及其相关行为的识别对于保护和基于地点的管理决策至关重要。行为还将生活史要求和栖息地使用联系起来,这是理解动物为什么使用某些栖息地的关键。动物种群研究通常使用跟踪数据来量化空间使用和栖息地选择,但它们通常要么忽略运动行为(如觅食、迁徙、筑巢),要么采用两阶段方法,这可能会引发偏见,无法传播不确定性。我们为表现出不同运动行为状态的动物开发了一种栖息地驱动的Langevin扩散,从而提供了一种新的单阶段统计方法来推断连续时间内特定行为的栖息地选择和利用分布。从业者可以使用提供的R包定制、拟合、评估和模拟我们的集成模型。模拟实验表明,只要观测值具有足够的时间分辨率,该模型在一系列采样场景下都能很好地工作。我们的模拟还证明了解释不同行为的重要性,以及当忽略这些行为时可能产生的误导性推断。我们提供了使用平原斑马(Equus quagga)和斯特勒海狮(Eumetoas jubatus)遥测数据的案例研究。在斑马的例子中,我们的模型确定了不同的“露营”和“探索”状态,其中“露营”状态的特点是强烈选择草原和避免其他植被类型,这可能代表了对觅食资源的选择。在海狮的例子中,我们的模型确定了通常与这种海洋中心地觅食者有关的不同运动行为模式,与之前的分析不同,我们发现觅食类型的运动与大陆架、海底峡谷和海山的陡峭离岸斜坡有关,这些斜坡被认为会提高猎物的集中度。这是第一个从跟踪数据推断特定行为栖息地选择和利用分布的单阶段方法,可以很容易地用用户友好的软件实现。由于某些行为通常与特定的保护或管理目标更相关,从业者可以使用我们的模型来帮助确定重要栖息地的识别和优先级。此外,通过将个体层面的运动行为与种群层面的空间过程联系起来,多状态Langevin扩散可以在种群、运动和景观生态学的交叉点推进推断。这篇文章受版权保护。保留所有权利。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A multistate Langevin diffusion for inferring behavior-specific habitat selection and utilization distributions

A multistate Langevin diffusion for inferring behavior-specific habitat selection and utilization distributions

The identification of important habitat and the behavior(s) associated with it is critical to conservation and place-based management decisions. Behavior also links life-history requirements and habitat use, which are key to understanding why animals use certain habitats. Animal population studies often use tracking data to quantify space use and habitat selection, but they typically either ignore movement behavior (e.g., foraging, migrating, nesting) or adopt a two-stage approach that can induce bias and fail to propagate uncertainty. We develop a habitat-driven Langevin diffusion for animals that exhibit distinct movement behavior states, thereby providing a novel single-stage statistical method for inferring behavior-specific habitat selection and utilization distributions in continuous time. Practitioners can customize, fit, assess, and simulate our integrated model using the provided R package. Simulation experiments demonstrated that the model worked well under a range of sampling scenarios as long as observations were of sufficient temporal resolution. Our simulations also demonstrated the importance of accounting for different behaviors and the misleading inferences that can result when these are ignored. We provide case studies using plains zebra (Equus quagga) and Steller sea lion (Eumetopias jubatus) telemetry data. In the zebra example, our model identified distinct “encamped” and “exploratory” states, where the encamped state was characterized by strong selection for grassland and avoidance of other vegetation types, which may represent selection for foraging resources. In the sea lion example, our model identified distinct movement behavior modes typically associated with this marine central-place forager and, unlike previous analyses, found foraging-type movements to be associated with steeper offshore slopes characteristic of the continental shelf, submarine canyons, and seamounts that are believed to enhance prey concentrations. This is the first single-stage approach for inferring behavior-specific habitat selection and utilization distributions from tracking data that can be readily implemented with user-friendly software. As certain behaviors are often more relevant to specific conservation or management objectives, practitioners can use our model to help inform the identification and prioritization of important habitats. Moreover, by linking individual-level movement behaviors to population-level spatial processes, the multistate Langevin diffusion can advance inferences at the intersection of population, movement, and landscape ecology.

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来源期刊
Ecology
Ecology 环境科学-生态学
CiteScore
8.30
自引率
2.10%
发文量
332
审稿时长
3 months
期刊介绍: Ecology publishes articles that report on the basic elements of ecological research. Emphasis is placed on concise, clear articles documenting important ecological phenomena. The journal publishes a broad array of research that includes a rapidly expanding envelope of subject matter, techniques, approaches, and concepts: paleoecology through present-day phenomena; evolutionary, population, physiological, community, and ecosystem ecology, as well as biogeochemistry; inclusive of descriptive, comparative, experimental, mathematical, statistical, and interdisciplinary approaches.
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