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A continuous-time state-space model for rapid quality control of argos locations from animal-borne tags

机译:用于从动物传播标签快速控制Argos位置的连续时间 - 空间模型

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Background:State-space models are important tools for quality control and analysis of error-prone animal movement data. The near real-time (within 24 h) capability of the Argos satellite system can aid dynamic ocean management of human activities by informing when animals enter wind farms, shipping lanes, and other intensive use zones. This capability also facilitates the use of ocean observations from animal-borne sensors in operational ocean forecasting models. Such near real-time data provision requires rapid, reliable quality control to deal with error-prone Argos locations.Methods:We formulate a continuous-time state-space model to filter the three types of Argos location data (Least-Squares, Kalman filter, and Kalman smoother), accounting for irregular timing of observations. Our model is deliberately simple to ensure speed and reliability for automated, near real-time quality control of Argos location data. We validate the model by fitting to Argos locations collected from 61 individuals across 7 marine vertebrates and compare model-estimated locations to contemporaneous GPS locations. We then test assumptions that Argos Kalman filter/smoother error ellipses are unbiased, and that Argos Kalman smoother location accuracy cannot be improved by subsequent state-space modelling.Results:Estimation accuracy varied among species with Root Mean Squared Errors usually 5 km and these decreased with increasing data sampling rate and precision of Argos locations. Including a model parameter to inflate Argos error ellipse sizes in the north - south direction resulted in more accurate location estimates. Finally, in some cases the model appreciably improved the accuracy of the Argos Kalman smoother locations, which should not be possible if the smoother is using all available information.Conclusions:Our model provides quality-controlled locations from Argos Least-Squares or Kalman filter data with accuracy similar to or marginally better than Argos Kalman smoother data that are only available via fee-based reprocessing. Simplicity and ease of use make the model suitable both for automated quality control of near real-time Argos data and for manual use by researchers working with historical Argos data.? The Author(s) 2020.
机译:背景:状态空间模型是质量控制和易于易受动物运动数据分析的重要工具。 Argos卫星系统的近期实时(24小时内)能够通过通知动物进入风电场,运输车道和其他密集使用区域时,可以帮助人类活动的动态海洋管理。这种能力还促进了在运营海洋预测模型中的动物传感器中使用海洋观察。在近实时数据提供需要快速,可靠的质量控制来处理错误易于argos位置。方法:我们制定了连续时间状态空间模型,以过滤三种类型的Argos位置数据(最小二乘,卡尔曼滤波器和卡尔曼更顺畅),占观察的不规则时间。我们的模型是故意简单的,以确保自动化的速度和可靠性,近乎实时的Argos位置数据控制。我们通过拟合到从7个海洋脊椎动物的61个个人收集的Argos位置来验证模型,并将模型估计位置与同期GPS位置进行比较。然后,我们测试Argos Kalman滤波器/更漂亮错误椭圆取消偏见的假设,并且Argos Kalman通过后续状态空间模型无法提高argos卡尔曼的位置精度。结果:估计精度在具有螺根均方误差的物种之间变化,通常<5km随着越来越多的数据采样率和Argos位置的精度减少。包括模型参数以使北方方向膨胀argos错误椭圆尺寸导致更准确的位置估计。最后,在某些情况下,模型明显提高了argos卡尔曼更顺畅的位置的准确性,如果更顺畅使用的所有可用信息,这是不可能的.Conclusions:我们的模型提供来自Argos最小二乘或卡尔曼滤波器数据的质量控制的位置比Argos Kalman更好的数据更好或比仅通过基于费用的再处理可用的更好或略微好转。简单性和易用性使模型适用于自动化质量控制的近实时Argos数据,并由研究人员使用历史argos数据的手动使用。作者2020年。

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