Modelling collective states and individual-level interactions in small sheep flocks

M. Welch, Sharifah Alzubaidi, T. Schaerf
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引用次数: 0

Abstract

: Flocking sheep can produce impressive visual displays with movements that are synchronized and coordinated, allowing the group moving as a cohesive unit. These movement patterns emerge without a central point of control and are shaped by the interactions and decisions of the individuals participating in the flock. Collective movement serves a functional purpose, as it allows the flock to move efficiently and stay together, providing protection from predators by diluting the risk of attack to the individuals. This study builds upon previous work (Ginelli et al., 2015) by investigating the emergent collective movement properties exhibited by small flocks of sheep and inferring the underlying interactions that drive the observed emergent behaviours. Data was collected from three randomly selected flocks of four individuals using collar-mounted, Real-Time Kinematic (RTK) satellite navigation receivers running at a sample rate of 10Hz. The flocks were left grazing pasture un-interrupted and isolated from other sheep across the observation period of 1-day each. The resulting dataset contains a mixture of flock-level behaviour including actively grazing/foraging and marching between locations in the pasture. The data was transformed using the Universal Transverse Mercator (UTM) coordinate system and the polarisation and angular momentum order parameters (which measure the degree of alignment between individuals and group rotation respectively), along with the mean group speed and the area of the flock’s convex hull were calculated for each time step to characterise the emergent group-level behaviour. The changes in speed and direction of motion for all possible pairs of sheep were calculated at each time step, breaking them down into component form. This method has been extensively detailed in previous studies (Mudaliar and Schaerf, 2020) and is applied here to map the social forces that govern each individuals motion in response to the relative position of flock mates. An agent-based collective motion model was then developed to simulate that movement dynamics of a small flock in the grazing state. This model captures a range parameters that control individual motion, such as movement speed, maximum turning speeds and distances over which individuals experience social forces (e.g. repulsion/attraction). A sensitivity analysis was conducted to understand the impact of these parameter on the emergent properties. The initial findings from this study show that the flock exhibits two key collective states. The flock adopts either a highly ordered marching state where the flock moves at a higher mean speed (ranging from 0.5 through 1.5msec -1 ) with high polarisation/low angular momentum or a grazing state with a lower mean group speed (ranging from 0.0 through 0.5msec -1 ) and a lower degree of collective order with a wider distribution of polarisation/angular momentum values. The grazing state is characterised by a pattern of expansion and contraction of the convex hull area, where individuals move away from each other while foraging and then spontaneously collapse back to a compact flock. When in the marching state, a flock remains relatively compact. Analysis of the changes in speed and direction show that an attraction force drives the emergent trends in both states. This force appears to be weaker and less consistent in the grazing state to facilitate exploration. These results demonstrate the trade-off between the need to forage and explore in the grazing state, and the survival imperative of remaining part of a cohesive group. The agent-based model developed was able to replicate the group-level emergent behaviour and social forces observed in the data. The sensitivity analysis on the model revealed that interaction ranges between individuals plays a key role in shaping the group-level emergent properties.
模拟小羊群的集体状态和个体水平的相互作用
羊群可以产生令人印象深刻的视觉效果,它们的动作是同步和协调的,使羊群作为一个有凝聚力的单位移动。这些运动模式的出现没有一个中心控制点,是由参与群体的个体的相互作用和决定形成的。集体行动有一个功能性的目的,因为它可以让鸟群有效地移动并保持在一起,通过稀释个体被攻击的风险来保护自己免受捕食者的攻击。本研究建立在之前的工作(Ginelli et al., 2015)的基础上,通过调查小羊群表现出的紧急集体运动特性,并推断驱动观察到的紧急行为的潜在相互作用。数据采集随机选择三群,每群4只,使用安装在项圈上的实时运动学(RTK)卫星导航接收器,以10Hz的采样率运行。在每只羊1天的观察期内,不间断地让羊群放牧,并与其他羊隔离。由此产生的数据集包含了羊群级行为的混合,包括主动放牧/觅食和在牧场的不同位置之间行进。使用通用横向墨卡托(UTM)坐标系统对数据进行转换,并计算极化和角动量顺序参数(分别测量个体和群体旋转之间的对齐程度),以及平均群体速度和群体凸壳面积,以描述每个时间步长的紧急群体行为。在每个时间步骤中,计算所有可能成对的羊的速度和运动方向的变化,将它们分解成分量形式。这种方法在以前的研究中得到了广泛的详细介绍(Mudaliar和Schaerf, 2020),并在这里应用于绘制控制每个个体响应群体伴侣相对位置的运动的社会力量。在此基础上,建立了基于智能体的群体运动模型来模拟放牧状态下小羊群的运动动态。该模型捕获了控制个体运动的一系列参数,例如运动速度,最大转弯速度和个体经历社会力量(例如排斥/吸引)的距离。进行了灵敏度分析,了解这些参数对紧急特性的影响。这项研究的初步发现表明,鸟群表现出两种关键的集体状态。羊群采取高度有序的行进状态,羊群以较高的平均速度(0.5 ~ 1.5msec -1)运动,具有较高的极化/低角动量;羊群采取放牧状态,羊群以较低的平均群速度(0.0 ~ 0.5msec -1)运动,集体有序程度较低,极化/角动量值分布较广。放牧状态的特点是凸壳区域的扩张和收缩模式,在那里,个体在觅食时彼此远离,然后自发地坍缩回一个紧凑的群体。在行进状态下,鸟群保持相对紧凑。对速度和方向变化的分析表明,在这两种状态下,一种吸引力驱动着出现的趋势。在放牧状态下,这种力量似乎更弱,更不稳定,以方便勘探。这些结果表明,在放牧状态下,觅食和探索的需要与作为一个有凝聚力的群体的一部分的生存必要性之间存在权衡。开发的基于主体的模型能够复制数据中观察到的群体层面的紧急行为和社会力量。对模型的敏感性分析表明,个体之间的相互作用范围在群体层面的涌现特性形成中起着关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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