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A multi-agent system for enabling collaborative situation awareness via position-based stigmergy and neuro-fuzzy learning

机译:一种多主体系统,可通过基于位置的Stigmergy和神经模糊学习来实现协作态势感知

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摘要

Situation awareness is a computing paradigm which allows applications to sense parameters in the environment, comprehend their meaning and project their status in the next future. In collaborative situation awareness, a challenging area in the field of Ambient Intelligence applications, situation patterns emerge from users' collective behavior. In this paper we introduce a multi-agent system that exploits positioning information coming from mobile devices to detect the occurrence of user's situations related to social events. In the functional view of the system, the first level of information processing is managed by marking agents which leave marks in the environment in correspondence to the users' positions. The accumulation of marks enables a stigmergic cooperation mechanism, generating short-term memory structures in the local environment. Information provided by such structures is granulated by event agents which associate a certainty degree with each event. Finally, an inference level, managed by situation agents, deduces user situations from the underlying events by exploiting fuzzy rules whose parameters are generated automatically by a neuro-fuzzy approach. Fuzziness allows the system to cope with the uncertainty of the events. In the architectural view of the system, we adopt semantic web standards to guarantee structural interoperability in an open application environment. The system has been tested on different real-world scenarios to show the effectiveness of the proposed approach.
机译:态势感知是一种计算范式,它使应用程序可以感知环境中的参数,理解其含义并在未来的将来预测其状态。在协作态势感知(环境智能应用程序领域中的一个充满挑战的领域)中,态势模式来自用户的集体行为。在本文中,我们介绍了一种多代理系统,该系统利用来自移动设备的定位信息来检测与社交事件相关的用户情况的发生。在系统的功能视图中,信息处理的第一级是通过标记代理来管理的,这些代理将与用户位置相对应的标记留在环境中。标记的积累启用了一种污名化的合作机制,从而在本地环境中产生了短期记忆结构。这样的结构提供的信息由事件代理细化,事件代理将确定性程度与每个事件相关联。最后,由情境代理管理的推理级别通过利用模糊规则(其参数是由神经模糊方法自动生成的)从底层事件中推断出用户状况。模糊性使系统能够处理事件的不确定性。在系统的体系结构视图中,我们采用语义Web标准来保证开放应用程序环境中的结构互操作性。该系统已在不同的实际情况下进行了测试,以显示所提出方法的有效性。

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