In the context of collaborative robotics, distributed situation awareness is essential for supporting collective intelligence in teams of robots and human agents where it can be used for both individual and collective decision support. This is particularly important in applications pertaining to emergency rescue and crisis management. During operational missions, data and knowledge is gathered incrementally and in different ways by heterogeneous robots and humans. We describe this as the creation of \emph{Hastily Formed Knowledge Networks} (HFKNs). The focus of this paper is the specification and prototyping of a general distributed system architecture that supports the creation of HFKNs by teams of robots and humans. The information collected ranges from low-level sensor data to high-level semantic knowledge, the latter represented in part as RDF Graphs. The framework includes a synchronization protocol and associated algorithms that allow for the automatic distribution and sharing of data and knowledge between agents. This is done through the distributed synchronization of RDF Graphs shared between agents. High-level semantic queries specified in SPARQL can be used by robots and humans alike to acquire both knowledge and data content from team members. The system is empirically validated and complexity results of the proposed algorithms are provided. Additionally, a field robotics case study is described, where a 3D mapping mission has been executed using several UAVs in a collaborative emergency rescue scenario while using the full HFKN Framework.
翻译:在合作机器人的背景下,对分布式情况的认识对于支持机器人和人类代理人团队的集体情报至关重要,这些机器人和人类代理人团队的集体情报可以用于个人和集体决策支持。这在与紧急救援和危机管理有关的应用中尤其重要。在行动任务期间,数据和知识由不同机器人和人类以不同方式逐步收集,并用不同的方式收集。我们将此描述为创建了数据与知识网络(HFKNs)。本文的重点是对一个通用分布式系统结构的规格和原型设计,该结构支持机器人和人类团队创建高频KN。所收集的信息从低级别传感器数据到高层次的语义知识,后者部分作为RDF图。框架包括一个同步协议和相关算法,允许不同机器人之间自动传播和分享数据和知识。这是通过在代理之间共享的RDFS图表的分布式同步来完成的。 SPARQL中指定的高层次的语义查询可以被机器人和人类团队和人类团队团队团队使用既获取知识和数据内容,也包括作为RDF图的高级知识与内容,后者部分作为RDF图图图。这个框架中的一项经验验证系统是在团队成员中提供的一种实地分析。一个实地分析,这是一份实地分析模型的系统,这是一份实地分析模型中的一项实地分析结果。