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Emergence of Swarming Behavior: Foraging Agents Evolve Collective Motion Based on Signaling

机译:群体行为的出现:觅食者基于信号进化集体运动

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摘要

Swarming behavior is common in biology, from cell colonies to insect swarms and bird flocks. However, the conditions leading to the emergence of such behavior are still subject to research. Since Reynolds’ boids, many artificial models have reproduced swarming behavior, focusing on details ranging from obstacle avoidance to the introduction of fixed leaders. This paper presents a model of evolved artificial agents, able to develop swarming using only their ability to listen to each other’s signals. The model simulates a population of agents looking for a vital resource they cannot directly detect, in a 3D environment. Instead of a centralized algorithm, each agent is controlled by an artificial neural network, whose weights are encoded in a genotype and adapted by an original asynchronous genetic algorithm. The results demonstrate that agents progressively evolve the ability to use the information exchanged between each other via signaling to establish temporary leader-follower relations. These relations allow agents to form swarming patterns, emerging as a transient behavior that improves the agents’ ability to forage for the resource. Once they have acquired the ability to swarm, the individuals are able to outperform the non-swarmers at finding the resource. The population hence reaches a neutral evolutionary space which leads to a genetic drift of the genotypes. This reductionist approach to signal-based swarming not only contributes to shed light on the minimal conditions for the evolution of a swarming behavior, but also more generally it exemplifies the effect communication can have on optimal search patterns in collective groups of individuals.
机译:从细胞菌落到昆虫群和鸟群,群居行为在生物学中很常见。但是,导致这种行为出现的条件仍然有待研究。自从雷诺兹出手以来,许多人工模型都重现了蜂拥而至的行为,着重于从避障到引入固定领导者等细节。本文提出了一种进化的人工代理模型,能够仅利用它们侦听彼此信号的能力来发展成群。该模型模拟了在3D环境中寻找无法直接检测到的重要资源的特工群体。代替集中式算法,每个代理都由人工神经网络控制,人工神经网络的权重以基因型编码,并由原始异步遗传算法进行调整。结果表明,代理逐渐发展了使用相互之间通过信号交换的信息来建立临时领导者与从属关系的能力。这些关系使代理能够形成蜂拥而至的模式,这是一种短暂的行为,可提高代理对资源进行觅食的能力。一旦他们获得了蜂拥而至的能力,个人在寻找资源方面就可以胜过非蜂拥者。因此,种群达到了中性的进化空间,这导致了基因型的遗传漂移。这种基于信号的群集的简化派方法不仅有助于阐明群集行为演变的最小条件,而且更普遍地举例说明了通信对个体集体组中最佳搜索模式的影响。

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  • 页码 e0152756
  • 总页数 26
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