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Predicting animal behaviour using deep learning: GPS data alone accurately predict diving in seabirds

机译:使用深度学习预测动物行为:单独预测海鸟的GPS数据预测潜水

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To prevent further global declines in biodiversity, identifying and understanding key habitats is crucial for successful conservation strategies. For example, globally, seabird populations are under threat and animal movement data can identify key at-sea areas and provide valuable information on the state of marine ecosystems. To date, in order to locate these areas, studies have used global positioning system (GPS) to record position and are sometimes combined with time-depth recorder (TDR) devices to identify diving activity associated with foraging, a crucial aspect of at-sea behaviour. However, the use of additional devices such as TDRs can be expensive, logistically difficult and may adversely affect the animal. Alternatively, behaviours may be resolved from measurements derived from the movement data alone. However, this behavioural analysis frequently lacks validation data for locations predicted as foraging (or other behaviours). Here, we address these issues using a combined GPS and TDR dataset from 108 individuals by training deep learning models to predict diving in European shags, common guillemots and razorbills. We validate our predictions using withheld data, producing quantitative assessment of predictive accuracy. The variables used to train these models are those recorded solely by the GPS device: variation in longitude and latitude, altitude and coverage ratio (proportion of possible fixes acquired within a set window of time). Different combinations of these variables were used to explore the qualities of different models, with the optimum models for all species predicting non-diving and diving behaviour correctly over 94% and 80% of the time, respectively. We also demonstrate the superior predictive ability of these supervised deep learning models over other commonly used behavioural prediction methods such as hidden Markov models. Mapping these predictions provides useful insights into the foraging activity of a range of seabird species, highlighting important at sea locations. These models have the potential to be used to analyse historic GPS datasets and further our understanding of how environmental changes have affected these seabirds over time.
机译:为了防止生物多样性进一步的全球下降,识别和理解关键栖息地对成功保护策略至关重要。例如,全球范围内,海鸟群体受到威胁,动物运动数据可以识别海洋区域的关键,并提供有关海洋生态系统状态的宝贵信息。迄今为止,为了找到这些领域,研究已经使用全球定位系统(GPS)来记录位置,有时与时间深度记录器(TDR)设备相结合,以识别与觅食相关的潜水活动,海上的一个关键方面。行为。然而,使用诸如TDR的附加装置可能是昂贵的,逻辑上困难,并且可能对动物产生不利影响。或者,可以从单独从移动数据导出的测量来解析行为。然而,这种行为分析经常缺乏预测为觅食(或其他行为)的位置的验证数据。在这里,我们通过培训深入学习模型来使用108个个人使用组合的GPS和TDR DataSet来解决这些问题,以预测欧洲牡蛎,普通吉列斯和Razorbills的潜水。我们使用扣留数据验证我们的预测,产生对预测准确性的定量评估。用于训练这些模型的变量是仅由GPS设备记录的变量:经度和纬度的变化,高度和覆盖率(在设定时间内获得的可能修复的比例)。这些变量的不同组合用于探讨不同模型的质量,其中所有物种的最佳模型分别预测非潜水和潜水行为的最佳模型分别超过94%和80%的时间。我们还展示了这些监督深入学习模型的卓越预测能力,而不是隐藏的马尔可夫模型等其他常用的行为预测方法。映射这些预测为一系列海鸟物种的觅食活动提供了有用的见解,突出了海上地点的重要性。这些模型有可能用于分析历史的GPS数据集,并进一步了解环境变化如何随着时间的推移影响这些海鸟。

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