首页> 外文期刊>The American Naturalist: Devoted to the Conceptual Unification of the Biological Sciences >From Fine-Scale Foraging to Home Ranges: A Semivariance Approach to Identifying Movement Modes across Spatiotemporal Scales
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From Fine-Scale Foraging to Home Ranges: A Semivariance Approach to Identifying Movement Modes across Spatiotemporal Scales

机译:从精细的觅食到家庭范围:一种半时空方法来识别跨时空尺度的运动模式

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摘要

Understanding animal movement is a key challenge in ecology and conservation biology. Relocation data often represent a complex mixture of different movement behaviors, and reliably decomposing this mix into its component parts is an unresolved problem in movement ecology. Traditional approaches, such as composite random walk models, require that the timescales characterizing the movement are all similar to the usually arbitrary data-sampling rate. Movement behaviors such as long-distance searching and fine-scale foraging, however, are often intermixed but operate on vastly different spatial and temporal scales. An approach that integrates the full sweep of movement behaviors across scales is currently lacking. Here we show how the semivariance function (SVF) of a stochastic movement process can both identify multiple movement modes and solve the sampling rate problem. We express a broad range of continuous-space, continuous-time stochastic movement models in terms of their SVFs, connect them to relocation data via variogram regression, and compare them using standard model selection techniques. We illustrate our approach using Mongolian gazelle relocation data and show that gazelle movement is characterized by ballistic foraging movements on a 6-h timescale, fast diffusive searching with a 10-week timescale, and asymptotic diffusion over longer timescales.RI Calabrese, Justin/B-9131-2012
机译:了解动物运动是生态学和保护生物学的主要挑战。重定位数据通常表示不同运动行为的复杂混合,并且可靠地将此混合分解为其组成部分是运动生态学中尚未解决的问题。传统方法,例如复合随机游走模型,要求表征运动的时标都与通常任意的数据采样率相似。然而,诸如长距离搜索和精细觅食之类的运动行为经常混杂在一起,但它们在空间和时间尺度上却有很大差异。当前缺少一种将跨刻度的运动行为的完整扫描整合在一起的方法。在这里,我们展示了随机运动过程的半方差函数(SVF)如何既可以识别多个运动模式又可以解决采样率问题。我们用它们的SVF表达了一系列连续空间,连续时间随机运动模型,通过变异函数回归将它们连接到重定位数据,并使用标准模型选择技术进行比较。我们使用蒙古瞪羚重定位数据说明了我们的方法,并表明瞪羚运动的特征在于6小时时标的弹道觅食运动,10周时标的快速扩散搜索以及更长时标的渐近扩散.RI Calabrese,Justin / B -9131-2012

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