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From animal tracks to fine‐scale movement modes: a straightforward approach for identifying multiple spatial movement patterns

机译:从动物轨道到微尺度运动模式:用于识别多个空间运动模式的直接方法

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摘要

1. Thanks to developments in animal tracking technology, detailed data on the movement tracks of individual animals are now attainable for many species. However, straightforward methods to decompose individual tracks into high-resolution, spatial modes are lacking but are essential to understand what an animal is doing. 2. We developed an analytical approach that combines separately validated methods into a straightforward tool for converting animal GPS tracks into short-range movement modes. Our three-step analytical process comprises: (i) decomposing data into separate movement segments using behavioural change point analysis; (ii) defining candidate movement modes and translating them into nonlinear or linear equations between net squared displacement (NSD) and time and (iii) fitting each candidate equationto NSD segments and determining the best-fitting modes using Concordance Criteria, Akaike's Information Criteria and other fine-scale segment characteristics. We illustrate our approach for three sub-adults, male wild boar Sus scrofa tracked at 15-min intervals over 4 months using GPS collars. We defined five candidate movement modes based on previously published studies of short-term movements: encamped, ranging, round trips (complete and partial) and wandering. 3. Our approach successfully classified over 80% of the tracks into these movement modes lasting between 5 and 54 h and covering between 300 m to 20 km. Repeated analyses of GPS data resampled at different rates indicated that one positional fix every 3–4 h was sufficient for >70% classification success. Classified modes were consistent with published observations of wild boar movement, further validating our method. 4. The proposed approach advances the status quo by permitting classification into multiple movement modes (where these are adequately discernable from spatial fixes) facilitating analyses at high temporal and spatial resolutions, and is straightforward, largely objective, and without restrictive assumptions, necessary parameterizations or visual interpretation. Thus, it should capture the complexity and variability of tracked animal movement mode for a variety of taxa across a wide range of spatial and temporal scales.
机译:1.由于动物跟踪技术的发展,对各种动物的运动轨道的详细数据达到了许多物种。然而,将单个轨道分解为高分辨率的直接方法缺乏,但对于理解动物正在做的是至关重要的。 2.我们开发了一种分析方法,将单独验证的方法结合成用于将动物GPS轨道转换成短距离运动模式的直接工具。我们的三步分析过程包括:(i)使用行为改变点分析将数据分解成单独的移动段; (ii)将候选运动模式定义并将它们转换为净平方位移(NSD)和时间和(iii)拟合每个候选方程之间的非线性或线性方程,并使用一致性标准,akaike的信息标准和其他确定最佳拟合模式。细尺段特征。我们说明了三个亚成人的方法,使用GPS项圈以15分钟的间隔跟踪的雄性野猪SUS Scrofa。我们根据先前发布的短期运动研究定义了五种候选运动模式:营地,测距,圆形旅行(完整和部分)和徘徊。 3.我们的方法成功地将80%的轨道分类为这些运动模式,持续在5到54小时之间,占地300米到20公里。以不同的速率重新采样的GPS数据的重复分析表明每3-4小时的一个位置修复足以实现> 70%的分类成功。分类模式与发表的野公猪运动的观察结果一致,进一步验证了我们的方法。所提出的方法通过允许分类进入多种运动模式(从空间修复中获得足够可辨别),促进在高时和空间分辨率下进行分析,并且在很大程度上是目标,并且没有限制性的假设,必要的参数化或视觉解释。因此,它应该捕获跟踪动物运动模式的复杂性和可变性,在各种空间和时间尺度上进行各种分类群。

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