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Electronic tracking tag programming is critical to data collection for behavioral time‐series analysis

机译:电子跟踪标签编程对于行为时序分析的数据收集至关重要

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Electronic tracking tags are major tools of ecological research and management, but programming sophisticated tags can be challenging. We discovered that a common programming scheme can negatively affect the quality of tracks collected by Argos tags. Here we describe the problem and how it occurred. We then simulated a series of tracks with different data collection schemes to investigate how spatial precision and temporal frequency affect the overall quality of tracking data. Tracks were simulated using a two‐state composite correlated random walk (CCRW). Tracks were simulated with two spatial scales, using parameters estimated from northern elephant seal (large scale) and California sea lion (small scale) tracking data. Onto each simulated track, observations of varying precision, frequency, and censoring were imposed. We then fit the CCRW in a state‐space model (SSM) to the simulated observations in order to assess how data quality and frequency affected recovery of known behavioral state and location. We show that when movement scales are small, regular observations were critical to recover behavior and location. In addition, tracks with frequent regular locations (increasing N) overcame low spatial accuracy (e.g., Argos) to detect small‐scale movement patterns, suggesting frequently collected Argos locations may be as good as infrequently collected GPS in some circumstances. From these results and our experience tracking animals generally, we produce a set of guidelines for those manufacturing, programming, and deploying electronic tracking tags to maximize the utility of the data they produce.
机译:电子跟踪标签是生态研究和管理的主要工具,但是对复杂的标签进行编程可能具有挑战性。我们发现一种通用的编程方案会对Argos标签收集的曲目质量产生负面影响。在这里,我们描述问题及其发生的方式。然后,我们使用不同的数据收集方案模拟了一系列轨道,以研究空间精度和时间频率如何影响跟踪数据的整体质量。使用两状态复合相关随机游走(CCRW)来模拟轨道。使用从北象海豹(大比例尺)和加利福尼亚海狮(小比例尺)跟踪数据估算的参数,通过两个空间比例来模拟航迹。在每个模拟轨道上,都施加了各种精度,频率和检查结果的观察结果。然后,我们在状态空间模型(SSM)中将CCRW拟合到模拟的观测值,以评估数据质量和频率如何影响已知行为状态和位置的恢复。我们表明,当运动规模较小时,定期观察对于恢复行为和位置至关重要。此外,具有经常性常规位置(N增大)的轨道克服了较低的空间精度(例如Argos),无法检测到小规模的运动模式,这表明在某些情况下频繁收集的Argos位置可能与不经常收集的GPS一样好。根据这些结果以及我们对动物的总体跟踪经验,我们为这些制造,编程和部署电子跟踪标签制定了一套准则,以最大程度地利用它们产生的数据。

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