利用多智能体的内在异质性减少理想觅食任务中的空间干扰

C. Bennett, J. Lawry, S. Bullock
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引用次数: 1

摘要

通常,集体行为研究倾向于关注同质主体群体中产生的行为。然而,人类、动物、机器人和软件代理通常表现出各种形式的异质性。在自然系统中,这种异质性通常与性能的提高有关。在这项工作中,我们询问是否可以通过利用人口内在异质性的冲突解决机制有效地管理合作移动代理群体中的空间干扰。提出了一种理想的觅食模型,在这种模型中,一群模拟的类蚂蚁智能体的任务是沿着一条路线进行尽可能多的往返旅行,这条路线包括只允许一个智能体通行的隧道。当两个或多个代理在隧道内相遇时,使用了四种冲突解决方案来确定哪个代理具有优先级。这些方案在不同大小的异质种群的背景下进行了测试。研究结果表明,利用代理异质性的冲突解决机制可以显著降低空间干扰的影响。然而,一个特定方案是否成功取决于它所利用的异质性如何与支撑系统级性能的人口范围动态有关。
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Exploiting Intrinsic Multi-Agent Heterogeneity for Spatial Interference Reduction in an Idealised Foraging Task
Typically, collective behaviour research has tended to focus on behaviour arising in populations of homogeneous agents. However, humans, animals, robots and software agents typically exhibit various forms of heterogeneity . In natural systems, this heterogeneity has often been associated with improved performance. In this work, we ask whether spatial interference within a population of co-operating mobile agents can be managed effectively via conflict resolution mechanisms that exploit the population’s intrinsic heterogeneity. An idealised model of foraging is presented in which a population of simulated ant-like agents is tasked with making as many journeys as possible back and forth along a route that includes tunnels that are wide enough for only one agent. Four conflict resolution schemes are used for determining which agent has priority when two or more meet within a tunnel. These schemes are tested in the context of heterogeneous populations of varying size. The findings demonstrate that a conflict resolution mechanism that exploits agent heterogeneity can achieve a significant reduction in the impact of spatial interference. However, whether or not a particular scheme is successful depends on how the heterogeneity that it exploits is implicated in the population-wide dynamics that underpin system-level performance.
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