论文标题

异质性在多机器人系统中的影响对使用搜索和救援问题研究的集体行为的影响

Impact of Heterogeneity in Multi-Robot Systems on Collective Behaviors Studied Using a Search and Rescue Problem

论文作者

O V, Sanjay Sarma, Parasuraman, Ramviyas, Pidaparti, Ramana

论文摘要

自然界中的许多物种都表现出通过合作导致紧急行为的共生关系,这有时超出了同一物种内的伙伴关系的范围。这些共生关系被归类为基于所涉及的利益水平的互惠,相称和寄生虫。尽管这些伙伴关系本质上是普遍存在的,但必须了解集体行为在设计异质多机器人系统(HMRS)方面的好处。在本文中,我们研究了异质性对应用于搜索问题的HMR的性能的影响。由搜索者和救援人员组成的组在各个机器人行为中有多种功能重叠和组组成的各种行为,证明了各种级别的异质性。我们提出了一种新技术,通过使用行为树来衡量代理中的异质性,并使用它从我们的蒙特卡洛模拟中获取异质性信息学。结果表明,在大多数情况下,该小组的异质性度量与救援效率之间存在正相关。但是,我们还看到异质性可能会妨碍小组的能力指出需要确定需要在实际应用中最大程度地受益的组中的最佳异质性的情况。

Many species in nature demonstrate symbiotic relationships leading to emergent behaviors through cooperation, which are sometimes beyond the scope of the partnerships within the same species. These symbiotic relationships are classified as mutualism, commensalism, and parasitism based on the benefit levels involved. While these partnerships are ubiquitous in nature, it is imperative to understand the benefits of collective behaviors in designing heterogeneous multi-robot systems (HMRS). In this paper, we investigate the impact of heterogeneity on the performance of HMRS applied to a search and rescue problem. The groups consisting of searchers and rescuers, varied in the individual robot behaviors with multiple degrees of functionality overlap and group compositions, demonstrating various levels of heterogeneity. We propose a new technique to measure heterogeneity in the agents through the use of Behavior Trees and use it to obtain heterogeneity informatics from our Monte Carlo simulations. The results show a positive correlation between the group's heterogeneity measure and the rescue efficiency demonstrating benefits in most of the scenarios. However, we also see cases where heterogeneity may hamper the group's abilities pointing to the need for determining the optimal heterogeneity in group required to maximally benefit from HMRS in real-world applications.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源