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首页> 外文期刊>PLoS Computational Biology >Deciphering Interactions in Moving Animal Groups
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Deciphering Interactions in Moving Animal Groups

机译:在移动的动物群中解密交互

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摘要

Collective motion phenomena in large groups of social organisms have long fascinated the observer, especially in cases, such as bird flocks or fish schools, where large-scale highly coordinated actions emerge in the absence of obvious leaders. However, the mechanisms involved in this self-organized behavior are still poorly understood, because the individual-level interactions underlying them remain elusive. Here, we demonstrate the power of a bottom-up methodology to build models for animal group motion from data gathered at the individual scale. Using video tracks of fish shoal in a tank, we show how a careful, incremental analysis at the local scale allows for the determination of the stimulus/response function governing an individual's moving decisions. We find in particular that both positional and orientational effects are present, act upon the fish turning speed, and depend on the swimming speed, yielding a novel schooling model whose parameters are all estimated from data. Our approach also leads to identify a density-dependent effect that results in a behavioral change for the largest groups considered. This suggests that, in confined environment, the behavioral state of fish and their reaction patterns change with group size. We debate the applicability, beyond the particular case studied here, of this novel framework for deciphering interactions in moving animal groups.
机译:长期以来,大型社会有机体中的集体运动现象使观察者着迷,尤其是在鸟群或鱼群等情况下,在没有明显领导者的情况下出现了大规模高度协调的行动。但是,这种自组织行为所涉及的机制仍然知之甚少,因为它们背后的个人层面的相互作用仍然难以捉摸。在这里,我们展示了一种自下而上的方法的强大功能,该方法可从以个体规模收集的数据中建立动物群体运动的模型。通过使用鱼缸中鱼群的视频轨迹,我们展示了如何在本地规模上进行仔细的增量分析,从而确定控制个体移动决策的刺激/响应功能。我们特别发现,位置和方向效应都存在,影响鱼类的转弯速度,并取决于游泳速度,从而产生了一种新颖的训练模型,其参数均从数据中估算。我们的方法还可以确定与密度有关的效应,从而导致所考虑的最大群体的行为发生变化。这表明,在密闭环境中,鱼类的行为状态及其反应方式会随着群体规模的变化而变化。除了在这里研究的特殊案例之外,我们还讨论了这种新颖的框架用于解密运动的动物群体中的相互作用的适用性。

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