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Identifying leatherback turtle foraging behaviour from satellite telemetry using a switching state-space model

机译:使用切换状态空间模型从卫星遥测中识别棱皮龟的觅食行为

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Identifying the foraging habitat of marine predators is vital to understanding the ecology of these species and for their management and conservation. Foraging habitat for many marine predators is dynamic, and this poses a serious challenge for understanding how oceanographic features may shape the ecology of these animals. To help resolve this issue, we present a switching state-space model (SSSM) for discerning different movement behaviours hidden within error-prone satellite telemetry data. Along with modelling the movement dynamics, the SSSM estimates the probability that an animal is in a particular discrete behavioural mode, such as transiting or foraging. Using Argos satellite telemetry for leatherback sea turtles, we show that the SSSM readily identifies distinct classes of movement behaviour from the noisy data. Moreover, patterns in simultaneously collected diving data, to which the model is blind, match well with behavioural mode estimates. By combining behavioural mode estimates from the model with the diving data, we show that while transiting, leatherbacks make longer, deeper dives; and while foraging, they encounter cooler waters that range from 13 to 22℃. These differences are consistent among the turtles studied and within the same turtle in different years. This modelling approach can enhance standard kernel density estimators for identifying habitat use by incorporating behavioural information into the estimation procedure. Ultimately, we can build predictive models of habitat use by incorporating environmental data and diving behaviour directly into the SSSM framework.
机译:识别海洋捕食者的觅食栖息地对于了解这些物种的生态及其管理和保护至关重要。许多海洋捕食者的觅食栖息地是动态的,这对理解海洋特征如何塑造这些动物的生态构成了严峻的挑战。为帮助解决此问题,我们提出了一种切换状态空间模型(SSSM),用于识别隐藏在容易出错的卫星遥测数据中的不同运动行为。除了对运动动力学建模之外,SSSM还估计动物处于特定离散行为模式(例如过境或觅食)的可能性。使用针对棱皮海龟的Argos卫星遥测技术,我们表明SSSM可以轻松从嘈杂的数据中识别出不同的运动行为类别。此外,该模型是盲目的同时收集的潜水数据中的模式与行为模式估计值非常匹配。通过将模型中的行为模式估计值与潜水数据结合起来,我们表明,在过渡过程中,棱皮龟会进行更长,更深的潜水;在觅食时会遇到13至22℃的凉水。这些差异在所研究的海龟之间以及不同年份的同一只海龟中是一致的。这种建模方法可以通过将行为信息纳入估算程序来增强用于识别栖息地用途的标准核密度估算器。最终,我们可以通过将环境数据和潜水行为直接纳入SSSM框架来建立栖息地使用的预测模型。

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