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首页> 外文期刊>Behavioral Ecology and Sociobiology >Using time-series similarity measures to compare animal movement trajectories in ecology
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Using time-series similarity measures to compare animal movement trajectories in ecology

机译:使用时间序列相似措施比较生态学的动物运动轨迹

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Identifying and understanding patterns in movement data are amongst the principal aims of movement ecology. By quantifying the similarity of movement trajectories, inferences can be made about diverse processes, ranging from individual specialisation to the ontogeny of foraging strategies. Movement analysis is not unique to ecology however, and methods for estimating the similarity of movement trajectories have been developed in other fields but are currently under-utilised by ecologists. Here, we introduce five commonly used measures of trajectory similarity: dynamic time warping (DTW), longest common subsequence (LCSS), edit distance for real sequences (EDR), Frechet distance and nearest neighbour distance (NND), of which only NND is routinely used by ecologists. We investigate the performance of each of these measures by simulating movement trajectories using an Ornstein-Uhlenbeck (OU) model in which we varied the following parameters: (1) the point of attraction, (2) the strength of attraction to this point and (3) the noise or volatility added to the movement process in order to determine which measures were most responsive to such changes. In addition, we demonstrate how these measures can be applied using movement trajectories of breeding northern gannets (Morus bassanus) by performing trajectory clustering on a large ecological dataset. Simulations showed that DTW and Frechet distance were most responsive to changes in movement parameters and were able to distinguish between all the different parameter combinations we trialled. In contrast, NND was the least sensitive measure trialled. When applied to our gannet dataset, the five similarity measures were highly correlated despite differences in their underlying calculation. Clustering of trajectories within and across individuals allowed us to easily visualise and compare patterns of space use over time across a large dataset. Trajectory clusters reflected the bearing on which birds departed the colony and highlighted the use of well-known bathymetric features. As both the volume of movement data and the need to quantify similarity amongst animal trajectories grow, the measures described here and the bridge they provide to other fields of research will become increasingly useful in ecology.
机译:识别和理解运动数据模式是运动生态的主要目标之一。通过量化运动轨迹的相似性,可以对各种过程进行推断,从个人专业化到觅食策略的组织化。然而,运动分析不是生态学的独特,并且在其他领域开发了估计运动轨迹的相似性的方法,但目前被生态学家利用。在这里,我们介绍了五种常用的轨迹相似度量:动态时间翘曲(DTW),最长的常见子序列(LCSS),编辑真实序列(EDR),FreeRent距离和最近邻距离(NND)的距离,其中只有NND经济学家常规使用。我们通过使用Ornstein-Uhlenbeck(OU)模型模拟​​移动轨迹来调查每个措施的性能,我们在其中改变以下参数:(1)吸引力,(2)吸引力的强度和( 3)添加到运动过程中的噪声或挥发性,以确定哪些措施对这些变化最敏感。此外,我们通过在大型生态数据集上执行轨迹聚类来展示如何使用繁殖北部Gannets(Morus Bassanus)的运动轨迹来应用这些措施。模拟表明,DTW和FRECHET距离最响应于运动参数的变化,并且能够区分我们试验的所有不同参数组合。相比之下,NND是试验中最不敏感的措施。应用于我们的Gannet DataSet时,尽管其潜在的计算差异,但五个相似度措施非常相关。在个人内部和跨越各个轨迹的聚类使我们能够轻松地在大型数据集中轻松地对象和比较空间使用模式。轨迹集群反映了鸟类离开殖民地的轴承,并突出了众所周知的碱基特征。随着运动数据的数量和量化动物轨迹之间的相似度,这里描述的措施和他们提供的桥梁在其它研究领域的措施将在生态学中变得越来越有用。

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