Vittori Karla, Talbot Grégoire, Gautrais Jacques, Fourcassié Vincent, Araújo Aluizio F R, Theraulaz Guy
Department of Electrical Engineering, University of São Paulo, Av. Trabalhador Sãocarlense, 400-Centro-13566-590, São Carlos, SP, Brazil.
J Theor Biol. 2006 Apr 21;239(4):507-15. doi: 10.1016/j.jtbi.2005.08.017. Epub 2005 Sep 30.
In this paper we present an individual-based model describing the foraging behavior of ants moving in an artificial network of tunnels in which several interconnected paths can be used to reach a single food source. Ants lay a trail pheromone while moving in the network and this pheromone acts as a system of mass recruitment that attracts other ants in the network. The rules implemented in the model are based on measures of the decisions taken by ants at tunnel bifurcations during real experiments. The collective choice of the ants is estimated by measuring their probability to take a given path in the network. Overall, we found a good agreement between the results of the simulations and those of the experiments, showing that simple behavioral rules can lead ants to find the shortest paths in the network. The match between the experiments and the model, however, was better for nestbound than for outbound ants. A sensitivity study of the model suggests that the bias observed in the choice of the ants at asymmetrical bifurcations is a key behavior to reproduce the collective choice observed in the experiments.
在本文中,我们提出了一个基于个体的模型,该模型描述了蚂蚁在人工隧道网络中的觅食行为,在这个网络中有几条相互连接的路径可用于到达单一食物源。蚂蚁在网络中移动时会留下踪迹信息素,这种信息素充当一种大规模招募系统,吸引网络中的其他蚂蚁。模型中实施的规则基于在实际实验中蚂蚁在隧道分叉处做出决策的测量结果。通过测量蚂蚁在网络中选择给定路径的概率来估计蚂蚁的集体选择。总体而言,我们发现模拟结果与实验结果之间有很好的一致性,表明简单的行为规则可以引导蚂蚁在网络中找到最短路径。然而,实验与模型之间的匹配对于归巢蚂蚁比对出巢蚂蚁更好。对该模型的敏感性研究表明,在不对称分叉处蚂蚁选择中观察到的偏差是重现实验中观察到的集体选择的关键行为。