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Understanding narwhal diving behaviour using Hidden Markov Models with dependent state distributions and long range dependence

机译:使用具有相关状态分布和远距离依赖性的隐马尔可夫模型了解独角鲸的潜水行为

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Author summary Narwhals live in pristine environments. However, the increase in average temperatures in the Arctic and the concomitant loss of summer sea ice, as well as increased human activities, such as ship traffic and mineral exploration leading to increased noise pollution, are changing the environment, and therefore probably also the behavior and well-being of the narwhal. Here, we use probabilistic models to unravel the diving and feeding behavior of a male narwhal, tagged in East Greenland in 2013, and followed for more than two months. The goal is to gain knowledge of the whales normal behavior, to be able to later detect possible changes in behavior due to climatic changes and human influences. We find that the narwhal uses around two thirds of its time searching for food, it typically feeds during deep dives (more than 350m), and it can have extended periods, up to 3 days, without feeding activity.
机译:作者摘要独角鲸生活在原始环境中。但是,北极平均温度的升高以及伴随着夏季海冰的流失,以及人类活动的增加,例如船舶交通和矿物勘探导致噪声污染的增加,都在改变环境,因此行为也可能发生变化。和独角鲸的福祉。在这里,我们使用概率模型来揭示雄性独角鲸的潜水和进食行为,该雌性独角鲸于2013年在东格陵兰岛进行了标记,并追踪了两个多月。目的是获得有关鲸鱼正常行为的知识,以便以后能够发现由于气候变化和人类影响而引起的行为变化。我们发现,独角鲸约有三分之二的时间用于寻找食物,通常在深潜(超过350m)内觅食,并且可能会长达3天,没有觅食活动。

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