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Recursive Filtering for Zero Offset Correction of Diving Depth Time Series with GNU R Package diveMove

机译:递归滤波,用于使用GNU R包diveMove对潜水深度时间序列进行零偏移校正

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摘要

Zero offset correction of diving depth measured by time-depth recorders is required to remove artifacts arising from temporal changes in accuracy of pressure transducers. Currently used methods for this procedure are in the proprietary software domain, where researchers cannot study it in sufficient detail, so they have little or no control over how their data were changed. GNU R package diveMove implements a procedure in the Free Software domain that consists of recursively smoothing and filtering the input time series using moving quantiles. This paper describes, demonstrates, and evaluates the proposed method by using a “perfect” data set, which is subsequently corrupted to provide input for the proposed procedure. The method is evaluated by comparing the corrected time series to the original, uncorrupted, data set from an Antarctic fur seal (Arctocephalus gazella Peters, 1875). The Root Mean Square Error of the corrected data set, relative to the “perfect” data set, was nearly identical to the magnitude of noise introduced into the latter. The method, thus, provides a flexible, reliable, and efficient mechanism to perform zero offset correction for analyses of diving behaviour. We illustrate applications of the method to data sets from four species with large differences in diving behaviour, measured using different sampling protocols and instrument characteristics.
机译:需要使用时间深度记录仪测量的潜水深度进行零偏移校正,以消除因压力传感器的精度随时间变化而产生的伪影。当前用于此过程的方法位于专有软件领域,研究人员无法对其进行足够详细的研究,因此他们几乎或根本无法控制数据的更改方式。 GNU R包diveMove在Free Software域中实现了一个过程,该过程包括使用移动分位数递归平滑和过滤输入时间序列。本文通过使用“完美”数据集来描述,演示和评估所提出的方法,随后将其破坏以为所提出的过程提供输入。通过将校正后的时间序列与来自南极海狗的原始无损数据集(Arctocephalus gazella Peters,1875年)进行比较来评估该方法。相对于“完美”数据集,校正后的数据集的均方根误差几乎与引入后者的噪声大小相同。因此,该方法提供了一种灵活,可靠且有效的机制来执行零偏移校正以用于潜水行为的分析。我们举例说明了该方法在潜水行为差异很大的四个物种的数据集上的应用,这些物种使用不同的采样方案和仪器特性进行了测量。

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  • 年度 2011
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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