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Scale-insensitive estimation of speed and distance traveled from animal tracking data

机译:从动物跟踪数据传播的速度和距离的尺度不敏感估计

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Background:Speed and distance traveled provide quantifiable links between behavior and energetics, and are among the metrics most routinely estimated from animal tracking data. Researchers typically sum over the straight-line displacements (SLDs) between sampled locations to quantify distance traveled, while speed is estimated by dividing these displacements by time. Problematically, this approach is highly sensitive to the measurement scale, with biases subject to the sampling frequency, the tortuosity of the animal's movement, and the amount of measurement error. Compounding the issue of scale-sensitivity, SLD estimates do not come equipped with confidence intervals to quantify their uncertainty.Methods:To overcome the limitations of SLD estimation, we outline a continuous-time speed and distance (CTSD) estimation method. An inherent property of working in continuous-time is the ability to separate the underlying continuous-time movement process from the discrete-time sampling process, making these models less sensitive to the sampling schedule when estimating parameters. The first step of CTSD is to estimate the device's error parameters to calibrate the measurement error. Once the errors have been calibrated, model selection techniques are employed to identify the best fit continuous-time movement model for the data. A simulation-based approach is then employed to sample from the distribution of trajectories conditional on the data, from which the mean speed estimate and its confidence intervals can be extracted.Results:Using simulated data, we demonstrate how CTSD provides accurate, scale-insensitive estimates with reliable confidence intervals. When applied to empirical GPS data, we found that SLD estimates varied substantially with sampling frequency, whereas CTSD provided relatively consistent estimates, with often dramatic improvements over SLD.Conclusions:The methods described in this study allow for the computationally efficient, scale-insensitive estimation of speed and distance traveled, without biases due to the sampling frequency, the tortuosity of the animal's movement, or the amount of measurement error. In addition to being robust to the sampling schedule, the point estimates come equipped with confidence intervals, permitting formal statistical inference. All the methods developed in this study are now freely available in the ctmmR package or the ctmmweb point-and-click web based graphical user interface.? The Author(s) 2019.
机译:背景:行动速度和距离提供行为和能量之间的可量化链接,并且是从动物跟踪数据常规估计的度量之间的可量化链路。研究人员通常在采样位置之间的直线位移(SLD)上,以量化行进的距离,而通过划分这些位移估计这些位移估计这些位移。有问题的是,这种方法对测量标度非常敏感,偏差受到采样频率的偏差,动物运动的曲折,以及测量误差的量。复杂的尺度敏感性问题,SLD估计不会置于置信区间,以量化其不确定性。方法:克服SLD估计的局限性,概述了连续时间速度和距离(CTSD)估计方法。在连续时间内工作的固有属性是能够将下面的连续时间移动过程与离散时间采样过程分开,使这些模型在估计参数时对采样时间表的敏感性较低。 CTSD的第一步是估计设备的错误参数以校准测量误差。一旦校准错误,就采用了模型选择技术来识别数据的最佳拟合连续运动模型。然后采用基于仿真的方法来从数据上的轨迹分布上进行采样,从中可以提取平均速度估计和其置信区间。结果:使用模拟数据,我们展示了CTSD如何提供准确,尺度不区分估计可靠的置信区间。当应用于经验GPS数据时,我们发现SLD估计随着采样频率的变化大大变化,而CTSD提供了相对一致的估计,而且经常通过SLD剧烈改善。结论:本研究中描述的方法允许计算效率,尺度不敏感估计速度和距离行驶,由于采样频率而无偏见,动物的运动的曲折,或测量误差的量。除了对采样时间表的稳健之外,点估计均置于置信区间,允许正式统计推断。本研究开发的所有方法现在都在CTMMR包或CTMMWeb点击基于Web的图形用户界面中自由使用。作者2019年。

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